Abstract
The current study aims at predicting the strength of the problematic clayey soils treated with combinations of pozzolan of natural sources and lime powder when added as soil additives at a nano scale. Multiple linear regression (MLR), artificial neural networks (ANN) and fuzzy logic (FL) tools were employed in the analytical study. The variables of the present study include the following: nano pozzoaln of natural source (NNP) content, nano lime content (NL), median particle size of NNP, active silica content of NNP (SiO2active), Initial liquid limit (ILL) and initial plastic limit (IPL) of the investigated soils. NNP was added at five percentages, i.e. 0%, 0.5%, 1%, 1.5% and 2%, while NL was added at five percentages, i.e. 0%, 0.3%, 0.6%, 0.9% and 1.2%. Three median particle sizes namely 50, 100 and 500 nm size were studied. Based on the different investigated soils and combinations, 120 soil mixtures were prepared and tested. California bearing ratio (CBR) and plasticity index (PI) were particularly examined. CBR tests were conducted at a soaked condition on specimens compacted to a maximum dry density (MDD) at the optimum moisture content (OMC). PI values were obtained following the Atterberg limits test. Based on the results of the performance criteria of the developed predictive models, it can be concluded that the CBR and PI of the expansive clayey soils can be effectively predicted using ANN and FL techniques. The results obtained by MLR were far from those obtained by both ANN & FL. In addition, ANN tool was slightly more accurate than FL as far as prediction of CBR and PI is concerned. The higher capability of ANN & FL models in predicting CBR & PI values, which generally obtained through time-consuming and expensive tests, could be useful for geotechnical engineers to assess or design a new pavement project. Further, it is recommended to do a re-evaluation of the current study in future, particularly when more data is available in the literature.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
Introduction
Problematic soils, such as expansive clayey soils, with poor geotechnical properties are frequently encountered worldwide. In Syria, the southern and southern-east provinces are particularly covered with such problematic soils [11]. Therefore, there is an urgent need to mitigate the effects of their undesirable properties, such as high plasticity, high compressibility, low strength, and high sensitivity to the variations in water content to make such soils suitable for possible construction and road projects [4, 12, 16]. The stabilization of problematic soils was introduced many years ago with the main aim of making soils capable of meeting the requirements of specific technical projects. Several attempts were made to stabilize these problematic soils using natural additives, such as lime and natural pozzolan [43, 46, 54, 62]. However, these additives were mostly used at micro levels. There is a lack of investigation into the use of nano natural additives for soil improvement applications [11, 13].
The pavement courses consist mainly of a surface layer (generally a bituminous layer) constructed on a base and sub-base layers, Fig. 1. These layers are usually laid on a compacted subgrade [81]. Sub-base materials are usually local aggregates. The subgrade course, which may be considered the functional part of the pavement, should be properly compacted to be able to carry the loads originating from the vehicles and the weights of the upper layers. Therefore, as the pavement will rest on this layer, it should be carefully examined and evaluated [5]. One of the most widely tools to assess the strength of the subgrade layer is the CBR test which can be of a great importance to the pavement designers. The pavement that will be rested on a subgrade layer having a lower CBR value will be thicker when compared with a subgrade layer having a higher CBR value [47]. Generally, all types of expansive clayey soils have very low CBR values. To be suitable for pavement construction materials, they should be improved using the possible stabilization approaches [69]. One of these ecological and economic approaches is the use of a combination of lime and NP, particularly when added together at a nano scale.
CBR test may be considered costly and laborious, as well as it needs a large amount of the soil mixture. Therefore, a quick and reliable method to predict CBR value could be a beneficial approach. Development of such reliable prediction method is the main goal of the current study. Many researchers have attempted to estimate CBR values using soft computing systems [7,8,9, 63, 71, 74, 77, 79]. In Taskiran [74]’ study, an attempt was made to compare ANN with Gene expression programming (GEP) techniques in predicting CBR of fine-grained soils. He concluded that both techniques performed best when seven input parameters were employed in the developed models. He further emphasized that such predictive models could be helpful tool to be used for preliminary identification of soil. Varghese et al. [77] have also estimated the soaked CBR of fine-grained soils based on four influential input parameters. Their ANN constructed models revealed that CBR can be accurately predicted. Such an accurate prediction can also make a preliminary assessment of soil to be used in novel engineering project where there is a financial shortage and limited time. On the other hand, the study of Yildirim and Gunaydin [79] has compared ANN with MLR models to predict CBR of 124 fine-grained soils in Turkey. MLR and ANN models gave good performance with correlation coefficients exceeding 0.9, while the better performance in Hariri’ study [44] was noted in the ANN model. Farias et al. [32] found in their study conducted on a wide range of soils, that plasticity index (PI) was the most influential factor on CBR prediction, while Al-Busultan et al. [8], based on the sensitivity analysis of the ANN model developed for prediction of CBR, concluded that PI was the least important factor when compared with the other 15 input variables.
Plasticity index (PI) is considered very important property of fine-grained soils. PI is the range of moisture contents where the soil exhibits plastic properties. In general, soils with high PI values tend to be clay and soils with low PI values tend to have no or little content of clay. Clayey soils are characterized by higher PI values (˃ 10) (AASHTO T 89). PI is the numerical difference between the liquid limit and the plastic limit; i.e. PI = LL−PL. Soils of probably high volume change have PI values of 30 or more [37, 70].
Unfortunately, there are no studies to sufficiently assess the CBR of problematic soils stabilized by a combination of nano natural pozzolan and nano lime. Akbari et al. [2] have studied the effect of adding nanozeolite on stabilized soft soil. However, they added lime at micro not nano scale. In addition, Onyelowe [59] has investigated the effect of adding nanostructured clay to a problematic soil. However, they added a fixed percentage of 2% of OPC to the untreated and treated soil. Further, Abbasi and Mahdieh [1], Harichane et al. [42], Cheng et al. [29], Calik and Sadoglu [27], Shah et al. [66] and Rabab’ah et al. [62] have studied the addition of both of NP and lime for stabilization of expansive soils. However, these additions were at micro not nano level.
Multiple Linear Regression (MLR) is the simplest method that has been used for predicting the geotechnical properties of soil [51, 57]. As MLR does not yield reliable predictions (due to its low flexibility), different machine learning methods have been widely utilized to estimate the geotechnical properties of soils in a more accurate way. ANN is the most commonly used in predicting geotechnical properties of soils [8, 15, 16, 24, 63, 74, 79]. The popularity of ANN in civil engineering is attributed to its high adaptability in finding the complicated relationships between the inputs and the output variables, which results in higher accuracy of predictions [10, 22, 30, 51, 65, 77].
Although many studies have been focusing on laboratory testing of problematic soils [1, 11, 43, 62], no work has specifically concentrated on applying the machine learning for predicting the CBR & PI properties of clayey soils stabilized with a combination of NNP & NL. Moreover, according to the authors’ knowledge, no predictive models were reported in the literature on investigating the capability of FL and ANN for prediction of such properties when the stabilizers are used at nano levels. To fill this gap, three machine-learning methods, MLR, ANN and FL, were employed to predict CBR & PI properties. In addition, sensitivity analysis was carried out to measure the importance of each input variable on predicting the studied geotechnical properties.
This approach is considered very beneficial as it takes into account the key parameters such as NNP content, NL content, NNP fineness, SiO2active content of NNP, ILL & IPL. In addition, the predicted properties may contribute to proposals that may assist the pavement designers. Further, regions of similar geology such as Jordan and KSA may get benefits from the current analytical study. Furthermore, the rebuilding stage in Syria will inevitably need such economic approaches.
Experimental dataset and the studied variables
Unfortunately, the authors could not find further data relating to the use of combinations of NNP & NL as soil stabilizers in the literature. Therefore, the analyzed dataset was constructed on experimental results carried out by the authors on NNP-NL-based clayey soils. One hundred and twenty soil mixtures were experimentally prepared with five NNP contents, namely: 0%, 0.5%, 1%, 1.5% and 2%, five NL contents, namely: 0%, 0.3%, 0.6%, 0.9% and 1.2% with three NNP sizes; i.e. 50, 100 and 500 nm and five SiO2active contents of NNP. Figure 2 shows some details on the NNP & NL used in the experimental part, and Fig. 3b shows the particles size distribution for both NNP & NL used in the experiments. It is worth mentioning that the nanoparticles tend to agglomerate when using at high levels (i.e. more 3%) [13, 41]. Such agglomeration may hinder the nanoparticles to perform well in the soil mixtures. Consequently, the expected enhancement offered by the nano-additives when used at high dosages will be extremely affected. Therefore, there is a need to disperse the nanoparticles before its use in the mixtures [61]. For this purpose, nano-additives are mixed with water using ultra-sonic mixer for 3 min. This may effectively help in limiting the nano particles to agglomerate.
The investigated natural pozzolan was quarried from southeast of Syria, from a quarry located at the northeast of Harrat al-Shaam volcanic field which is a basaltic province of about 50,000 km2 covering parts from Syria, Jordan and KSA, Fig. 2a [10]. The main oxides of the investigated natural pozzolana are SiO2 (45%), Al2O3 (16%), Fe2O3 (10%), CaO (9%), MgO (8%) and alkali oxides (Na2O and K2O) (4%). Its mineralogical composition, as shown in Fig. 2e consists of two phases; i.e. crystalline and glassy. The main occurring minerals are Fujasite, Anorthite, Forstrite, Diopside and Calcite. It is lighter than water; its bulk density is less than 0.7 which is due to its vesicular nature, as clearly seen in Fig. 2d. Natural pozzolan was ground to the studied sizes; namely 500 nm, 100 nm and 50 nm using a laboratory centrifugal ball mill (Retsch, S100, Germany) for 275 min, 360 min and 425 min, respectively. The adopted NP dispatch/steel ball ratio was 1/5 at a revolution number of 300.
The investigated lime was quarried from Hama city, one of the mid-provinces in Syria. It is a quick lime obtained after the calcination of raw lime up to 950 °C in order to become more active. It was ground to a nano scale in similar way to that of NP. Its grading is illustrated in Fig. 3b.
The nanoadditives were scanned using: (i) a nanoscope easyScan II Atomic Force Microscope (AFM) [11], (ii) a VEGA II TESCAN Scanning Electron Microscope (SEM) fitted with EDAX AMETEK Energy Dispersive X-ray Spectroscopy (EDS). The results of scanning nano-natural additives can be clearly seen in Fig. 2d, g–l.
The studied problematic clayey soils were quarried from three sites located in the southern province of Syria. Their characterestics are tabluated in Table 1 and Fig. 4. Their gradings are plotted in Fig. 3a The main minerals existing in the studied soils, according to the XRD analysis shown in Fig. 5 are: kaolinite, illite and montmorillonite as clay minerals and calcite, quartz and feldspar as non-clay ones. The XRD analysis was carried out using SATOE STADI X-Ray Diffractometer at the following inputs: CuKa radiation, 40 keV and 30 mA, scan mode: 5°–70°, spead: 2°/min.
Atterberg limits (LL, PL) and CBR tests were carried out in accordance with ASTM D 4318 [19] and ASTM D1883 [21], respectively. Both LL & PL tests were conducted at room temperature. PI values were determined following the Atterberg limits test. In CBR test, three soil specimens form each untreated or treated soil mixture were tested after being soaked in water for 96 h. The specimens were compacted to a maximum dry density at the optimum moisture content determined by standard Proctor tests [20]. The soaked condition was adopted in the experimental part, as it simulates the behavior of pavement sub layers under heavy rain. Some photographs of the conducted experiments appear in Fig. 6.
The six analyzed input variables are: (i) NNP content (0%, 0.5%, 1%, 1.5% and 2%); (ii) NL content (0%, 0.3%, 0.6%, 0.9% and 1.2%); (iii) Median particle size (MPS) of nano natural pozzolana (50nm, 100 nm, 500 nm); (iv) SiO2active (It ranges from 37.6 to 43.2); (v) ILL (It ranges from 58.5 to 74.2); (vi) IPL (It ranges from 29.7 to 36.8). The characteristics of the input and output variables are tabulated in Table 2.
Prediction models
Multiple linear regression (MLR)
MLR is a statistical method. The general purpose of such a technique is to generate a correlation between variables, i.e. independent and dependent ones [50]. Prediction of CBR or PI with six independent variables can be expressed as follows:
Where Yd is the dependent variable, i.e. either CBR or PI, bi values are the regression weights, which are computed in a way that minimizes the sum of squared deviations and Xi are the independent variables.
Artificial neural network
The behavior of soil is very complicated [67, 77]. Therefore, to build more precise predictive models, it is preferable to employ more influential variables in such predictive models. The nonlinear relations between the input and output variables can be successfully modeled by artificial neural networks (ANNs) technique [10, 40, 45]. Its flexibility and adaptability in generalizing the data, were behind the wide application in many field including civil and geotechnical engineering [10, 15, 17, 22, 24, 26, 30, 49, 60]. In the current study, for prediction of CBR and PI of the soil mixtures stabilized with combinations of NNP and NL, the dataset used to develop the ANN models was divided into subsets (i.e., 70 and 30% for training and testing sets, respectively).
Figure 7 shows the architecture of the ANN models developed for prediction of CBR & PI. Five and six neurons in the hidden layer were selected for predicting CBR & PI, respectively. It was selected a single hidden layer which could be sufficient to learn and solve the problems [25, 39]. The learning rate (lr) was 0.7 while the momentum (m) was 0.3 & 0.2 for each of CBR & PI networks, respectively. This selection was made after experimenting all possibilities of changing (lr) from 0.1 to 0.9 as well as changing (m) from 0.1 to 0.9.
The feed-forward neural networks trained with the back-propagation learning algorithm were adopted in the current study [28, 72]. In the forward process, the input layers receive the inputs and then propagate through networks layer by layer to the output layer and produce the corresponding output values. However, reaching a lower error between predicted and experimental results necessitates the optimization of the process. [78]. The calculation of the error and the adjustment of the weights are made through the backward process which compares the predicted and experimental outputs of the network.
In the present study, the logistic sigmoid activation function with a scaling range between 0 and 1.0 was employed in the constructed models [40]:
where α is a constant used to control the slope of the semi-linear region [65].
The data was normalized between 0 and 1 before submitting to the ANN. The final output can be obtained by repeating the procedure until no marked improvement is noted [56]. The predicted PI or CBR values have been plotted versus the experimental PI and CBR results. The ANN models were developed using MATLAB software, NN Tool.
Fuzzy logic
Fuzzy logic was first built from the theory of fuzzy sets by Zadeh [82]. It is considered a technique for formalizing approximate and non-exact situations. Due to its ease of implementation and the non-necessity of the mathematical modeling of the process, this logic has become more and more common in several fields such as civil and geotechnical engineering [14, 23, 38, 58, 68, 75]. In the theory of fuzzy sets, the modeling of uncertain notions of natural language is done by athematic formulas. The variables in the fuzzy set theory are no longer of binary nature (i.e. 0 or 1) but can take an infinite number of possible values between zero and one.
The membership functions, which can theoretically take any form, characterize the fuzzy subsets. In general, the most used membership functions are defined by geometric shapes. Triangular and trapezoidal shapes are most often used. The fuzzy rules are expressed in the form: IF (premise) THEN (conclusion). The premise may depend on several variables linked to each other or not. The conclusion is obtained by implication of fuzzy propositions. The architecture of Mamdani-based FL model consists of four essential parts, namely: (i) the fuzzifier, (ii) the knowledge base, (iii) the interface mechanism or rule evaluation and (iv) the defuzzifier. The fuzzifier turns real inputs into fuzzy linguistic variables, while the defuzzifier does the opposite.
120 datasets with six input variables obtained from the experimental part carried out by the authors were employed to develop FL model for the prediction of CBR & PI values. Constructing FL models was made using the FL toolbox in MATLAB. 88 and 72 Mamdani-based rules [55] expressed in the IF–Then form were written for prediction of CBR & PI, respectively. These possible rules relate the input variables to the output ones. The rules were written by verbal statements in such a way that is similar to the human thought. The “min” interface operator was used for finding the output sets, while the “centroid” method was employed for defuzzication [3]. The triangular membership functions were constructed based on the experience gained, as shown in Fig. 8 [75]. The main idea in the theory of FL is that any element belongs to different subsets of universal set. For instance, CBR value of 70 belongs to both high and very high subsets, with membership degrees of 0.80 and 0.20, respectively, Fig. 9a.
Validation of the developed models
The validation of the constructed models was assessed using the following ten different criteria:
-
i.
Root mean squared error (RMSE). This criterion can be computed by the following formula:
$$\mathrm{RMSE}=\sqrt{\frac{1}{n}{\sum }_{i=1}^{n}{(Error)}^{2}}$$(3)The constructed model will be better when the RMSE value is smaller.
-
ii.
Relative root mean squared error (RRMSE). It can be computed using the following function:
$$RRMSE=\frac{RMSE}{\left|\overline{Exper }\right|}$$(4) -
iii.
Mean Absolute Error (MAE). It can be calculated by the following formula:
$$MAE=\frac{1}{n}{\sum }_{i=1}^{n}\left|Error\right|$$(5) -
iv.
Mean absolute percentage error (MAPE). It can be given by the following formula:
$$\mathrm{MAPE}=\left(\frac{1}{n}\sum_{i=1}^{n}\left|\frac{Error}{Exper}\right|\right)\times 100\%$$(6) -
v.
Coefficient of determination (R2). It can be calculated by the following formula:
$${\mathrm{R}}^{2}= 1- \frac{{\sum }_{i=1}^{n}{Error}^{2}}{{\sum }_{i=1}^{n}{(Exper- \overline{Exper })}^{2}}$$(7)When R2 is closer to one, there will be a closer relationship between the experimental and predicted values.
-
vi.
Se/Sy; Se is the standard error of the predicted values and Sy is the standard deviation of the experimental values. Lower Se/Sy values indicate more accurate models. Models of (Se/Sy ≤ 0.35) values are graded excellent [30]
$$\frac{{S}_{e}}{{S}_{y}}=\sqrt{\frac{n*\left[{\sum }_{i=1}^{n}{Error}^{2}\right]}{\left(n-p\right)*\left[{{\sum }_{i=1}^{n}\left(Exper-\overline{Exper }\right)}^{2}\right]}}$$(8) -
vii.
Correlation coefficient (r). It can be calculated by the following equation [83]:
$$r=\frac{\sum_{i=1}^{n}(Pred-\overline{Pred })(Exper-\overline{Exper })}{\sqrt{\sum_{i=1}^{n}{(Pred-\overline{Pred })}^{2}}\sqrt{\sum_{i=1}^{n}{(Exper-\overline{Exper })}^{2}}}$$(9) -
viii.
Performance index (Pi) can be expressed as follows [83]:
$${P}_{i}=\frac{RRMSE}{1+r}$$(10)Higher correlation coefficient values and lower relative root mean squared error (RRMSE) values results in lower performance index values. Values of Pi closer to zero (e.g. Pi < 0.2) indicate a more accurate model [34, 48].
-
ix.
Adjusted Coefficient of efficiency (CE) [52]
$$\mathrm{CE }= 1-\frac{{\sum }_{i=1}^{n}\left|Error\right|}{{\sum }_{i=1}^{n}\left|Exper-\overline{Exper }\right|}$$(11)Such a criterion can supplement the assessment of the predictive models. It reports the differences between the experimental and predicted values relative to the inherent variability of the experimental values. CE values closer to one indicate a more precise developed model.
Where n is the total number of the analyzed data, Exper & Pred are the experimental and predicted values, respectively, \(\overline{Exper }\) is \(\overline{Pred }\) are the mean experimental and predicted values, respectively and p is the model parameters.
-
x.
Durbin–Watson statistic (DW). It is an important static criterion used to verify the existence of multicollinearity. DW values vary between zero and four. The developed models will be unaffected by multicollinearity when DW values fall in the acceptable range of 1.5 to 2.5.
Results and discussion
Plasticity indices of the treated soils
Figure 10 plots the results of PI for all clayey soil mixtures (S1, S2, S3) stabilized with combinations of NNP & NL. The results of the control clayey soil, i.e. with zero NNP & NL, were also plotted for comparison. It is clearly seen that all clayey soils, in terms of PI, have the highest values of PI; i.e. 30 or even more. However, when the nano-natural additives were incorporated, a significant decrease in the PI values was observed in all studied soils. The soil workability is improved with the decrease in PI values. The more pronounced decrease in PI can be noted when NL content was increased, and the best performance, in terms of PI, was achieved when 2% NNP and 1.2% NL were added together. PI values of less than 3 can be noted in all stabilized soils, irrespective of NNP fineness. This result can be explained as follows: (i) adding NNP may reduce the plasticity of the soil; (ii) adding NL to plastic soil causes a colloidal reaction. Such a reaction includes a replacement of naturally carried cations on the clay surface by Ca2+, an increase in pH value, and a reduction in double layer. This helps in flocculation and aggregation of colloidal clay particles, making them less plastic [13, 64]; (iii) the pozzolanic reactions occurring between the hydrated lime and the active silica and alumina will move the soil from this status, to become less plastic [13].
Further grinding NP to about 100 nm or 50 nm median particle size may effectively contribute to the acceleration of such pozzolanic reactions. This can be obviously seen in Fig. 11, where much lower values of PI can be obtained when NNP of 100 nm or 50 nm size was added to the treated soils, as compared with NNP of 500 nm size. In addition, it can be noted from Fig. 11, that grinding NNP from 100 to 50 nm did not produce significant improvement in terms of PI reduction. Understanding such a behavior needs further investigation. However, from the authors’ point of view, occurring some agglomeration due to the Van der Waals forces evolved particularly when the nano particles are ground to finer sizes, may explain this behavior at the present time.
CBR
The CBR test is commonly used to assess the soil strength. It is widely considered as a reliable method when the design of pavement is concerned [18, 33]. Figures 12 & 13 plots the results of CBR test for the soil mixtures stabilized with combinations of NNP & NL. From Fig. 12, it can be noted that CBR values increases as NNP & NL contents increase. The highest CBR values, which exceed 70% in almost all treated soil mixtures, irrespective of NNP size, were obtained when NNP & NL were added together at 2% and 1.2%, respectively. Subgrade having a soaked CBR value of more than 20% can be rated very good for pavement construction. However, when this value reaches up to 50% or more, the layer would act as a very good sub-base. Therefore, as seen in Fig. 12, all soil mixtures stabilized with combinations of NNP ≥ 0.5% “ground to 100 nm size or less” & NL ≥ 0.3% can be recommended for sub-base construction. The improvement in the CBR values can be attributed to the gradual formation of cementitious compounds such as C–S–H and C–A–S–H, when such combinations were used. The formation of cementitious compounds, when NP & L were added together to the problematic clayey soils were frequently reported in literature [6, 11, 46, 53]. Such a formation can be attributed to the reactions occurring between CaO present in lime and glassy phase, such as active silica (SiO2) and active alumina (Al2O3) in NP and the treated soil. These reactions are frequently referred to as “pozzolanic reactions”. Further, the prolonged grinding of NP may form a highly reactive material on the surface of the mineral particles. Therefore, nano-particles interact effectively with other compounds in the treated soil [11, 36]. Meanwhile, such cementitious compounds formation and the change in the soil morphology were also confirmed by a microstructural analysis carried out on two clayey specimens; namely untreated soil and soil treated with a combination of NNP = 1.5% and NL = 0.9% and cured for 7 days, as shown in Fig. 14. Furthermore, formation of more cementitious compounds can be enhanced through the 4-day-soaking procedure as specified in the CBR test, which is regarded as treated soil’ curing time.
Further, as obviously seen in Fig. 13, the treated soils containing NNP of 100 nm or 50 nm size have higher values of CBR when compared with those containing NNP of 500 nm size. However, it is worth noting that grinding NNP from 100 to 50 nm did not produce significant improvement in terms of CBR improvement. Understanding such a behavior needs further investigation. Meanwhile, from the authors’ point of view, occurring some agglomeration due to the Van der Waals forces evolved particularly when the nano particles are ground to a finer size, may explain this behavior at the current time.
Relationships between the investigated properties
A relationship between PI and CBR of the studied soil mixtures is plotted in Fig. 15. This relationship was calculated either for all obtained results. As shown in Fig. 15, it is obvious to note that the correlation between PI and CBR can be labelled excellent (R2 ≥ 0.913) irrespective of the median particle size of NNP and the soil type. Therefore, CBR value can be predicted by the knowledge of PI value, and thus saving time & money can be achieved. Such a strong correlation between CBR & PI can be ascribed to the improvement of the expansive clay soils, offered by the nano natural additives. The trend in the expansive soil improvement was moving towards lower PI values & higher CBR values when the dosage of nano-additives is increased and the MPS of NNP is decreased.
It is worth mentioning that further considerable improvements in the treated soil properties, such as significant reductions in free swell and swelling pressure, an important increase in unified compressive strength (UCS) and shear strength and a considerable reduction in linear shrinkage, can be also obtained when nano-additives are used as soil stabilizers [13]. In addition, because of the lower affinity of nanonatural pozzolana to water when compared with the expansive original soil, no further water retention will be expected, as the water molecules are adsorbed to the surface of the clay minerals [11].
Prediction of CBR & PI
For prediction of CBR and PI of soil mixtures stabilized with combinations of NNP and NL, several models were constructed based on the dataset obtained through an experimental work conducted by the authors. Six input variables were adopted; i.e. NNP content, NL content, MPS, SiO2active, ILL and IPL. The models were developed using three different tools; regression, ANN & FL. Validation of these developed models was evaluated using different criteria as displayed in equations nr. (3, 4, 5, 6, 7, 8, 9, 10, 11) as well as the calculation of DW indicator.
Performance of CBR models
The performance criteria for the models constructed to predict CBR of stabilized soil mixtures are tabulated in Table 3. The results shown in Table 3 demonstrate that the CBR models constructed using ANN or FL have performed best when compared with the MLR model. They showed very low RMSE, low MAPE, very low Se/Sy and very high R2 values. RMSE values of less than 3.4, MAPE values of less than 11.4, Se/Sy values of less than 0.16 and R2 values of higher than 0.975 were recorded in the ANN & FL models. In contrast to the ANN & FL models, RMSE of 7.9, MAPE of more than 35, Se/Sy of 0.37 and R2 of 0.87 were recorded in the MLR model. In addition, the performance index (Pi) and the coefficient of efficiency (CE) values recorded in the MLR model went far from those recorded in ANN & FL models. The higher Pi (0.073) and the lower CE (0.63) values recorded in MLR model indicate a less accurate model. Further, from the results tabulated in Table 3, it is to be noted that ANN technique perform slightly better than FL as far as prediction of CBR is concerned. Furthermore, the obtained DW for ANN, FL & MLR models were in the ideal range (i.e. between 1.5 and 2.5). In spite of the lower performance of MLR; however, CBR can be predicted with a reasonable level of certainty using this method. Figure 16a clearly shows that the goodness-of-fit of the ANN & FL models is superior when compared to the MLR model.
Performance of PI models
The performance criteria for the models constructed to predict PI are tabulated in Table 3. A trend similar to that of CBR prediction can be noted when PI prediction is concerned. The results shown in Table 3 demonstrate that the PI models constructed using ANN or FL have performed best when compared to the MLR model. They provided very low RMSE, very low Se/Sy and very high R2 values. RMSE values of less than 1.75, MAPE values of less than 23.1, Se/Sy values of less than 0.22 and R2 values of higher than 0.954 were recorded in the ANN & FL models. In contrast to the ANN & FL models, RMSE of 4.38, MAPE of more than 54.88, Se/Sy of 0.55 and R2 of 0.71 were recorded in the MLR model. In addition, the higher performance index (Pi = 0.25) and the lower coefficient of efficiency (CE = 0.5) values recorded in the MLR model make it less accurate when compared to the ANN & FL models. Therefore, the prediction of PI using MLR technique would not be reliable.
The predicted versus experimental values are depicted in Fig. 16b. It is worth noting that the trend line is very well fitted to the results of both FL & ANN models, while the results of MLR are far distant from such a line. This indicates that desirable results can be obtained using both ANN & FL approaches. However, PI cannot be predicted with a reasonable level of certainty using MLR method. As no investigation on the prediction of CBR or PI of soils stabilized with combinations of NNP and NL was found in the literature, further studies taking into account more variables are highly recommended. Nevertheless, similar results can be traced in the literature, particularly when the CBR value of micro NP was predicted using ANN [8, 73, 74, 79].
It is to be noted in Fig. 17a that a lower MPS of NNP leads to higher CBR values, particularly when a higher content of NL is added. In addition, the combinations of 2% NNP and 1.2% NL have given the highest values of CBR, particularly with lowering MPS of NNP, as shown in Fig. 17b. Therefore, finer NNP is recommended to add along with NL to get the best results.
The relationships between the output (CBR or PI) and the input variables obtained using MLR could be written as follows:
-For the CBR predicted value,
-For the PI predicted value,
It is interestingly to note from Eqs. (12 and 13) that CBR & PI variables have a statistical significance. In addition, the input variables related to the contents of NL & NNP and its extremely small size have also statistical significance. Thus, CBR & PI can be predicted based on these input variables with a confidence level of 95% or more. Therefore, the addition of NP nanoparticles of extremely small size would offer a promising approach to the pavement engineers.
Sensitivity analysis of ANN models
The equation proposed by Garson [35] was employed to assess the relative importance of the input variables. It can be expressed as follows:
where Ij is the relative importance of the jth input variable on the output; Ni and Nh are the numbers of input and hidden neurons, respectively; W is connection weights; the superscripts i, h, and o refer to input, hidden, and output layers, respectively; and subscripts k, m, and n refer to input, hidden, and output neurons, respectively.
The results of the sensitivity analysis conducted basing on the Garson equation [35] are shown in Fig. 16. The relative importance of the input variables (NNP content, NL content, MPS of NNP, SiO2active, ILL and IPL) for prediction of either CBR or PI are clearly seen in Fig. 18. Figure 18a shows that all variables have an effect on CBR. However, NL content was found to be the most influential variable with a relative importance of more than 50%. The higher relative importance of NL content can be attributed to the significant effect of this variable on the CBR, in terms of the enhanced strength of clayey soils stabilized with combinations of NNP and NL. Other variables such as NNP and MPS also have significant effects on CBR with relative importance values of 21 and 10%, respectively.
Similar trend was also noted when the sensitivity analysis of PI model is concerned. It can be seen in Fig. 18b, that the most influential variable, in terms of PI, is also NL. A relative importance of about 40%, was recorded for this variable alone, while, other variables such as NNP, MPS and IPL have relative importance values of about 27%, 11%, and 13%, respectively. This result confirms the critical role of NL and NNP in improving the soil properties, particularly those related to the plasticity and strength. Formation of more cementitious compounds such as C–S–H and C–A–S–H can be expected when using such nano-additives. These cementitious compounds may modify the soil morphology and thus a clayey soil mixture of higher workability and strength can be achieved.
Another sensitivity analysis process has confirmed the results obtained by the equation proposed by Garson [35]. This process is based on the evaluation of possible combinations of input variables [31, 80]. The performance of each possible group in terms of MSE & R was evaluated using the developed ANN model. Six groups of one variable, fifteen groups of two variables, twenty groups of three variables, ten groups of four variables, four groups of five variables and one group of six variables were tested by the constructed ANN models. The results obtained for the different possible groups were tabulated in Table 4. As observed in Table 4 the NL variable was the most influential variable. NL had the least value of MSE among other variables (144.54) and the best correlation factor (R) of 0.845. When NNP was used together with NL, the MSE decreased significantly down to 37.11 and R increased up to 0.965. This group of two variables was the best group among other possible groups of two variables. In addition, the best group of three variables were noted when the variable ILL was added to the former combination of NNL & NP. MSE of 21.24 & R of 0.973 were recorded for this group. Further, the group of four variables consisting of NNL, NNP, MPS and ILL achieved the best performance among the other four variables-consisting groups. MSE recorded a value of 18.08 while R recorded a value of 0.991. Similar performance was also obtained when SiO2 variable was incorporated in the former group of four variables. Furthermore, it is to be concluded that for each NL-containing group of 1, 2, 3, 4, 5 and 6 variables, the performance criteria were the best among all other possible groups.
Conclusion
The present study, which is the first of its kind in Syria, is an attempt to investigate the applicability of some ML techniques for prediction of two important properties (i.e. CBR & PI) of expansive clay soils stabilized by nano natural additives. Nano-natural pozzolan (NNP) and nano-lime (NL) quarried from Syrian sites were added at different levels to achieve such a soil stabilization. The predictive models were developed using MLR, ANN & FL techniques. The dataset was obtained from locally conducted experiments. Six input variables were employed in the current study. These variables are NNP content (%), NL content (%), MPS of NNP (nm), SiO2active of NNP, ILL and IPL.
Based on the results obtained, the following conclusions can be drawn:
-
1.
Based on the experimental results, the combination of 2% NNP & 1.2%NL content appears to be the best dosage, CBR values are the highest, and PI values are the lowest. Further investigations using more combinations of nano-natural additives are recommended to reach the ideal dosage.
-
2.
The values predicted by ANN & FL models are not far from the experimental results. Performance criteria, such as RMSE, MAPE, R2, Pi, CE and DW have demonstrated that ANN & FL models can accurately predict CBR & PI. However, MLR models are far less accurate than the ANN & FL ones. The correlation coefficient (r) is very close to one and the error of prediction in both ANN & FL models is lower when compared with that obtained by MLR analysis.
-
3.
Sensitivity analysis showed that all studied variables (i.e. NNP content, NL content, MPS, SiO2active, ILL and IPL) have considerable effects on the investigated properties. However, NL was found to be the most influential variable with relative importance of more than 50% and about 40% in terms of CBR and PI, respectively. In addition, NNP content and to some lower degree MPS have also significant effects on the prediction of CBR & PI with relative importance values of about 25 and 10%, respectively. On the other hand, SiO2active & ILL were found to be the least influential variables in both cases, with relative importance values not exceeding 7%.
-
4.
The pavement designers may tend to the FL predictive model despite the slightly lower performance when compared with the ANN models. This preference can be ascribed to the FL rules, which can be written in such a way that is similar to the human thought, while the ANN predictive model is not visible to the user.
-
5.
Determining the CBR & PI values by laboratory tests is time-consuming, money and labor-intensive. Moreover, human errors and various laboratory conditions introduce another element of uncertainty in laboratory results. Thus, a reliable estimation of such properties is extremely helpful in designing soil mixtures for pavement construction. Such a reliable estimation can be done using more accurate techniques such as ANN & FL techniques rather than conventional regression techniques, which have a lower reliability in predicting the investigated properties.
-
6.
Further investigation with a larger dataset and incorporation of further variables is highly recommended to confirm the results obtained by the developed predictive models. Variables such as the chemical composition of NNP, more geotechnical properties such as OMC & MDD, different fineness levels of NNP, NL…etc., can be further investigated.
Data availability
Experimental data appear in the submitted paper.
References
Abbasi N, Mahdieh M (2018) (2018) Improvement of geotechnical properties of silty sand soils using natural pozzolan and lime. Geo-Engineering 9:4. https://doi.org/10.1186/s40703-018-0072-4
Akbari HR, Sharafi H, Goodarzi AR (2021) Effect of polypropylene fiber and nano-zeolite on stabilized soft soil under wet-dry cycles. Geotext Geomembr. https://doi.org/10.1016/j.geotexmem.2021.06.001
Akkurt S, Tayfur G, Can S (2004) Fuzzy logic model for the prediction of cement compressive strength. Cem Concr Res 34:1429–1433
Akpan O (2005) Relationship between road pavement failures, engineering indices and underlying geology in a tropical environment. Glob J Geol Sci 3(2):99–108
Akpokodje EG (1986) The geotechnical properties of lateritic and non-lateritic soils of southeastern Nigeria and their evaluation for road construction. Bull Eng Geol Environ 33(1):115–121
Alabi AB, Olutaiwo AO, Adeboje AO (2015) Evaluation of rice husk ash stabilized lateritic soil as sub-base in road construction. Br J Appl Sci Technol 9(4):374–382
Alawi MH, Rajab MI (2013) Prediction of California bearing ratio of subbase layer using multiple regression models. Road Mater Pavement Design 14(1):211–219
Al-Busultan S, Aswed GK, Almuhanna RRA, Rasheed SE (2020) Application of ANN in predicting subbase CBR values using soil indices data. In: 3rd International Conference on Engineering Sciences, IOP Conf. Series: Materials Science and Engineering, vol. 671, p. 012106
Al-Refeai T, Al-Suhaibani A (1997) Prediction of CBR using dynamic cone penetrometer, King Saud University. J Eng Sci 9(2):191–204
Al-Swaidani A, Khweis W (2018) Applicability of Artificial Neural Networks to predict mechanical and permeability properties of volcanic scoria-based concrete. Adv Civil Eng. https://doi.org/10.1155/2018/5207962
Al-Swaidani A, Meziab A (2021) Restriction of volume change and improvement of strength properties of problematic soils using nano-natural additives. Indian Geotech J. https://doi.org/10.1007/s40098-021-00499-7
Al-Swaidani A, Hammoud I, Meziab A (2016) Effect of adding natural pozzolana on geotechnical properties of lime-stabilized clayey soil. J Rock Mech Geotech Eng 8(5):714–725
Al-Swaidani AM, Hammoud I, Al-Ghuraibi I, Mezyab AA (2019) Nanocalcined clay and nanolime as stabilizing agents for expansive clayey soil: some geotechnical properties. Adv Civil Eng Mater 8(3):327–345
Al-Swaidani A, Khweis W, Al-Bali M, Lala T (2022) Development of multiple linear regression, artificial neural networks and fuzzy logic models to predict the efficiency factor and durability indicator of nano natural pozzolana as cement additive. J Build Eng 52:104475
Amri S, Bennabi A, Hamzaoui R, Akchiche M, Serraye M (2022) Plasticity prediction of expansive soil treated with sand by artificial neural network. Res Sq. https://doi.org/10.21203/rs.3.rs-1582312/v1
Amri S, Akchiche M, Bennabi A, Hamzaoui R (2019) Geotechnical and mineralogical properties of treated clay soil with dune sand. J Afr Earth Sc 152:140–150. https://doi.org/10.1016/j.jafrearsci.2019.01.010
Arama ZA, Yucel M, Akin MS, Dalyan I (2021) A comparative study on the application of artificial intelligence networks versus regression analysis for the prediction of clay plasticity. Arab J Geosci 14:534. https://doi.org/10.1007/s12517-021-06894-x
Ashworth GB, Overgaard RT (1996) Highway planning methods. In: Thagesan B (ed) Highway and Traffic engineering in developing countries. Chapman and Hall, London, p 593
ASTM D 4318 (2000) Standard test methods for liquid limit, plastic limit and plasticity index of soils. ASTM International, West Conshohocken, PA, USA
ASTM D 698 (2000) Standard test method for laboratory compaction characteristics of soil using standard effort. ASTM International, West Conshohocken, PA, USA
ASTM D1883-16 (2016) Standard test method for California Bearing Ratio (CBR) of laboratory-compacted soils. ASTM International, West Conshohocken
Atici U (2011) Prediction of the strength of mineral admixture concrete using multivariable regression analysis and an artificial neural network. Expert Syst Appl 38(8):9609–9618
Baghabani A, Chouhury T, Costa S, Reiner J (2022) Application of artificial intelligence in geotechnical engineering: a state-of-the-art review. Earth Sci Rev 228:103991. https://doi.org/10.1016/j.earscirev.2022.103991
Bahmed IT, Harichane K, Ghrici M, Boukhatem B, Rebouh R, Gadouri H (2017) Prediction of geotechnical properties of clayey soils stabilised with lime using artificial neural networks (ANNs). Int J Geotech Eng 13(2):191–203. https://doi.org/10.1080/19386362.2017.1329966
Bandyopadhyay G, Chattopadhyay S (2007) Single hidden layer artificial neural network models versus multiple linear regression model in forecasting the time series of total ozone. Int J Environ Technol 4(1):141–149
Boukhatem B, Ghrici M, Kenai S, Tagnit-Hamou A (2011) Prediction of efficiency factor of ground-granulated blast furnace slag of concrete using artificial neural network. ACI Mater J 108(1):55–64
Calik U, Sadoglu E (2014) Engineering properties of expansive clayey soil stabilized with lime and perlite. Geomech Eng 6(4):403–418. https://doi.org/10.12989/gae.2014.6.4.403
Che Z-G, Chiang T-A, Che Z-H (2011) Feed-forward neural networks training: a comparison between genetic algorithm and back-propagation learning algorithm. Int J Innov Comput Inf Control 7(10):5839–5850
Cheng Y, Wang S, Li J, Huang X, Li C, Wu J (2018) Engineering and mineralogical properties of stabilized expansive soil compositing lime and natural pozzolans. Constr Build Mater 187(2018):1031–1038. https://doi.org/10.1016/j.conbuildmat.2018.08.061
Debbarma S, Ransinchung GD (2020) Using artificial neural networks to predict the 28-day compressive strength of roller-compacted concrete pavements containing RAP aggregates. Road Mater Pavement Design. https://doi.org/10.1080/14680629.2020.1822202
Elmolla ES, Chaudhuri M, Eltoukhy MM (2010) The use of artificial neural network (ANN) for modeling of COD removal from antibiotic aqueous solution by the Fenton process. J Hazard Mater 179:127–134
Farias IG, Araujo W, Ruiz G (2018) Prediction of California bearing ratio from index properties of soils using parametric and non-parametric models. Geotech Geol Eng 36(6):3485–3498
Federal Ministry of Works and Housing (FMWH) (2010) General specification of roads and bridges 2:137–275.
Gandomi AH, Roke DA (2015) Assessment of artificial neural network and genetic programming as predictive tools. Adv Eng Softw 88:63–72
Garson GD (1991) Interpreting neural-network connection weights. AI Expert 6:47–51
Ghasabkolaei N, Choobbasti AJ, Roshan N, Ghasemi SE (2017) Geotechnical properties of the soils modified with nanomaterials: a comprehensive review. Arch Civ Mech Eng 17(3):639–650
Gibbs HJ, Holtz VG (1957) Research on determining the density of sands by spoon penetration testing. In: Proceedings 4th international conference on soil mechanics and engineering. London. vol. 1. p. 35
Gökceoğlu C, Zorlu K (2004) A fuzzy model to predict the uniaxial compressive strength and the modulus of elasticity of a problematic rock. Eng Appl Artif Intell 17(1):61–72. https://doi.org/10.1016/j.engappai.2003.11.006
Gracia J, Mazon AJ, Zamora I (2005) Best ANN structures for fault location in single-and double-circuit transmission lines. IEEE Trans Power Deliv 20(4):2389–2395
Graupe D (2007) Principles of artificial neural networks, 2nd edn. World Scientific, Singapore
Hakamy A, Shaikh FUA, Low IM (2015) Characteristics of nanoclay and calcinednanoclay-cement nanocomposites. Compos Part B Eng 78:174–184
Harichane K, Ghrici M, Gadouri H (2019) Natural pozzolana used as a source of silica for improving the behaviour of lime–stabilised clayey soil. Arab J Geosci 12:447. https://doi.org/10.1007/s12517-019-4635-2
Harichane K, Ghrici M, Missoum H (2011) Influence of natural pozzolana and lime additives on the temporal variation of soil compaction and shear strength. Front Earth Sci 5(2):162–169
Harini SN (2014) Prediction CBR of fine grained soils by artificial neural network and multiple linear regression. Int J Civil Eng Technol 5(2):119–126
Haykin S (1994) Neural networks: a comprehensive foundation. MacMillan College Publishing Co., New York
Hossain KMA, Lachemi M, Easa S (2007) Stabilized soils for construction applications incorporating natural resources of Papua New Guinea. Resour Conserv Recycl 51(4):711e31
Iqbal F, Kumar A, Murtaza A (2018) Co-relationship between California bearing ratio and index properties of Jamshoro soil. Mehran Univ Res J Eng Technol 37(1):177–190
Jalal FE, Xu Y, Iqbal M, Jamhiri B, Javed MF (2021) Predicting the compaction characteristics of expansive soils using two genetic programming-based algorithms. Transp Geotech 30:100608
Jasim MM, Al-Khaddar RM, Al-Rumaithi A (2019) Prediction of bearing capacity, angle of internal friction, cohesion, and plasticity index using ANN (Case Study of Baghdad, Iraq). Int J Civil Eng Technol 10(1):2670–2679
Johnson JW (2000) A heuristic method for estimating the relative weight of predictor variables in multiple regression. Multivar Behav Res 35(1):1–19
Khademi F, Akbari M, Jamal SM, Nikoo M (2017) Multiple linear regression, artificial neural network, and fuzzy logic prediction of 28 days compressive strength of concrete. Front Struct Civ Eng 11(1):90–99
Kisi O, Shiri J, Tombul M (2013) Modeling rainfall-run off process using soft computing techniques. Comput Geosci 51:108–117
Luo HL, Hsiao DH, Lin DF, Lin CK (2012) Cohesive soil stabilized using sewage sludge ash/cement and nano aluminum oxide. Int J Transp Sci Technol 1(1):83–100
Mallela J, Harold Von Quintus P, Smith KL (2004) Consideration of lime-stabilized layers in mechanistic-empirical pavement design. The National Lime Association, Arlington
Mamdani EH, Assilian S (1975) An experiment in linguistic synthesis with a fuzzy logic controller. Int J Man-Mach Stud 7:1–13
Masters T (1993) Practical neural network recipes C++. Academic Press, Cambridge, MA, USA
Mata J (2011) Interpretation of concrete dam behaviour with artificial neural network and multiple linear regression models. Eng Struct 33(3):903–910
Monjezi M, Rezaei M (2011) Developing a new fuzzy model to predict burden from rock geomechanical properties. Expert Syst Appl 38(2011):9266–9273. https://doi.org/10.1016/j.eswa.2011.01.029
Onyelowe KC (2018) Kaolin soil and its stabilization potentials as nanostructured cementitious admixture for geotechnics purposes. Int Pavement Res Technol 11:717–724. https://doi.org/10.1016/j.ijprt.2018.03.001
Ozcan C, Atis D, Karahan D, Uncuoglue E, Tanyildizi H (2009) Comparison of artificial neural network and fuzzy logic models for prediction of long-termcompressive strength of silica fume concrete. Adv Eng Softw 40(9):856–863
Pham H, Nguyen QP (2014) Effect of silica nanoparticles on clay swelling and aqueous stability of nanoparticle dispersions. J Nanopart Res 16(1):2137
Rabab’ah SR, Taamneh MM, Abdallah HM, Nusier OK, Ibdah L (2021) Effect of adding zeolitic tuff on geotechnical properties of lime-stabilized expansive soil. KSCE J Civil Eng. https://doi.org/10.1007/s12205-021-1603-7
Sabat AK (2015) Prediction of CBR of a stabilized expansive soil using ANN and SVM. Electron J Geotech Eng 20(3):981–991
Samantasinghar S (2014) Geo-engineering properties of lime treated plastic soils, MS thesis, Orissa: National Institute of Technology
Saridemir M, Topcu IB, Ozcan F et al (2009) Prediction of long term effects of GGBFS on compressive strength of concrete by artificial neural networks and fuzzy logic. Constr Build Mater 23(3):1279–1286
Shah SHA, Arif M, Sabir MA, ur REHMAN, Q. (2020) Impact of igneous rock admixtures on geotechnical properties of lime stabilized clay. Civil Environ Eng 16(2):329–339. https://doi.org/10.2478/cee-2020-0033
Shahin MA, Jaksa MB, Maier HR (2008) State of the art of artificial neural networks in geotechnical Engineering. EJGE paper
Sharma LK, Vishal V, Singh TN (2017) Developing novel models using neural networks and fuzzy systems for the prediction of strength of rocks from key geomechanical properties. Measurement 102:158–169. https://doi.org/10.1016/j.measurement.2017.01.043
Sorsa A, Senadheera S, Birru Y (2020) Engineering characterization of subgrade soils of Jimma town, Ethiopia, for roadway design. Geosciences 10:94. https://doi.org/10.3390/geosciences10030094
Sowers GB, Sowers GF (1970) Introductory soil mechanics and foundations: geotechnical engineering, 3rd edn. Macmillan, New York
Sreelekshmypillai G, Vinod P (2017) Prediction of CBR value of fine grained soils at any rational compactive effort. Int J Geotech Eng. https://doi.org/10.1080/19386362.2017.1374495
Svozil D, Kvasnicka V, Pospichal J (1997) Introduction to multi-layer feed-forward neural networks. Chemom Intell Lab Syst 39(1):43–62
Taha S, Gabr A, El-Badawy S (2019) Regression and neural network models for California bearing ratio prediction of typical granular materials in Egypt. Arab J Sci Eng. https://doi.org/10.1007/s13369-019-03803-z
Taskiran T (2010) Prediction of CBR of fine grained soils by AI methods. Adv Eng Softw 41(6):886–892
Tayfur G, Erdem TK, Kirca O (2014) Strength prediction of high-strength concrete by fuzzy logic and artificial neural networks. J Mater Civil Eng ASCE, paper No. 04014079
Topcu IB, Saridemir M (2008) Prediction of compressive strength of concrete containing fly ash using artificial neural networks and fuzzy logic. Comput Mater Sci 41(3):305–311
Varghese VK, Babu SS, Bijukumar R, Cyrus S, Abraham BM (2013) Artificial neural networks: a solution to the ambiguity in prediction of engineering properties of fine-grained soils. Geotech Geol Eng 31:1187–1205
Werbos PJ (1994) The roots of back-propagation: from ordered derivatives to neural networks and political forecasting, vol 1. John Wiley & Sons, Hoboken
Yildirim B, Gunaydin O (2011) Estimation of CBR by using soft computing systems. Expert Syst Appl 38(5):6381–6391
Yetilmezsoy K, Demirel S (2008) Artificial neural network (ANN) approach for modeling of Pb(II) adsorption from aqueous solution by Antep pistachio (Pistacia vera L.) shells. J Hazard Mater 153:1288–1300
Yoder EJ, Witczak MW (1975) Principle of pavement design, 2nd edn. John Wiley & Sons, Hoboken, p 711
Zadeh LA (1965) Fuzzy set. Inf Control 8:338–353
Zhang W, Goh ATC, Zhang Y (2015) Multivariate adaptive regression splines application for multivariate geotechnical problems with big data. Geotech Geol Eng. https://doi.org/10.1007/s10706-015-9938-9
Acknowledgements
The authors gratefully acknowledge Prof. Tamer al-Hajeh, President of AIU for his appreciated support.
Funding
No funding was received.
Author information
Authors and Affiliations
Contributions
All authors have contributed to the preparation of the paper, each according to his specialization and research experience.
Corresponding author
Ethics declarations
Ethics approval and consent to participate
Not applicable.
Consent for publication
Not applicable.
Competing interests
The authors declare that they have no competing interests.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Al-Swaidani, A.M., Meziab, A., Khwies, W.T. et al. Building MLR, ANN and FL models to predict the strength of problematic clayey soil stabilized with a combination of nano lime and nano pozzolan of natural sources for pavement construction. Geo-Engineering 15, 2 (2024). https://doi.org/10.1186/s40703-023-00201-1
Received:
Accepted:
Published:
DOI: https://doi.org/10.1186/s40703-023-00201-1