Background

The knowledge of increasing water pollution suggests a lot of work has been done on water treatment. Removal of heavy metal ions in waste water from chemical industries is of growing concern. In the past, natural waste materials such as groundnut shell were explored for heavy metal removal. Lately, efforts have been made to optimize this material for a higher work efficiency. Natural plant materials such as groundnut shell and used tea bag are waste materials that when recycled have the potential to source low-cost adsorbent and activated charcoal precursors since they are cheap unused resources and are widely accessible.

The use of economical natural absorbent such as activated charcoal, agricultural produce and waste by-products for the removal of heavy metals was reported in the past by numerous researchers (Abdel-Shafy and Mansour 2018). Most of these studies recognized the use of natural adsorbent as possible alternative to the standard methods like ion exchange, precipitation and liquid membrane for exclusion of heavy metals ions found in industrial waste water since these techniques have some economical constraints (Nguyen and Do 2001).

Groundnut shell primarily consists of carbonaceous fibrous material commonly regarded as waste and can be used for so many application, and normally utilized for its value as a fuel source (Abdel‐Shafy et al. 1998). It is also used as an adsorbent to take away of heavy metal present usually in their ionic states. Some of these metals reported in the literature include chromium (III), nickel (Ni), lead (Pb). Groundnut shell is environmentally friendly and trustworthy adsorbent source, which is one of the renewable agricultural waste products (Parker 1999). And also green tea is one of the most popular beverage in the world, and also the agricultural product that is very useful, which is about 3.5 million tones of a green tea was reported to be used per annum in the world (Parasad et al. 2008).

Amarasinghe et al. (2007) used tea bag waste as economical adsorbent for the exclusion of Pb and Cu from waste water. The percentage removal of Cu was 87%, Pb was 90%. Cay et al. (2004) were investigated the exclusion of Cu (II) and Cd (II) single (non-competitive) and binary (competitive) in aqueous system, the exclusion of Cu (II) 95% and Cd (II) 75%. Malkoc et al. (2005) were investigated for the deletion of nickel from waste water by maximum removal of the Ni was 95%. Henderson et al. (1997) have investigated the effectiveness of a number of diverse organic waste resources as adsorbent for heavy-metal removal. These includes coconut shell, rice husk and peanut shell, and so confirms the common knowledge that agricultural product are very good adsorbent (Abdel-Shafy 2015; Abdel-Shafy and Mansour 2018).

Taguchi method is a statistical method developed by Taguchi and Konichi (G Taguchi and Konishi 1987). In this paper, the Taguchi design was used in optimizing the adsorption parameters. It is an essential device used in designing this experiment and employed to attain a percentage of heavy metal removed without increasing cost. In recent times, the Taguchi method has been generally engaged in a number of industrial fields and research works (Genichi Taguchi 1995; Genichi Taguchi and Jugulum 2002).

This research aims to analysed some metals which is Pb, Cr, and Ni in sample of groundnut shell and tea bag, where research of these type are very rare or yet to be conducted. With these, the problem reported in the previous research will be compared with this present research and to see whether these metals are present in groundnut shell and tea bag.

Methods

Preparation of adsorbent

The groundnut shell and tea bag were collected from the samaru market. The groundnut shell was washed with distilled water and dried it in hot oven at 1050C for 12 h. After drying, the sample was pulverized and separated into fine particle sizes using a mesh sieving machine. The sample tea bag containing a litre of distilled water was warmed with a hot plate at 85 °C until the colour removed. After colour removal, the tea bag was dried in the oven at 105 °C for a period of 12 h. The dried sample was pulverized into powder and stored in sealed polythene bags. The two pulverized samples were directly for the experiment without any physical chemical treatment as an adsorbent.

Preparation of adsorbates

The chemical used here is of analytical grade, they were purchased from Sigma-Aldrich and their percentage purity is given as Nickel(II) sulphate hexahydrate.

NiSO4.6H20 (98%), lead (II) sulphate PbSO4.8H2O (98%), while CrSO4.7H2O (98%) was obtained from a chemical store in Zaria and used without subjecting to any further purification techniques. 100 cm3 stock solution was prepared for each metal.

  1. 1

    Nickel solution: 4.467 g of NiSO4.7H2O was added in the 100 cm3 of distilled water in 1000 cm3 volumetric flask. It was dissolved by agitation after which the volume was filled to the mark with deionized water.

  2. 2

    Lead solution: 4.251 g of PbSO4.8H2O was added in the 100 cm3 of distilled water in 1000cm3of volumetric flask. It was dissolved by agitation after which the volume was filled to the mark with deionized water.

  3. 3

    Chromium solution: 4.527 g of CrSO4.7H2O was added in the 100 cm3 of distilled water in 1000 cm3 volumetric flask. It was dissolved by agitation after which the volume was filled to the mark with deionized water

Analysis of the adsorbent

The broad method was employed for this study and is given as follows: The two sample adsorbent was weighed for 2.5 g each and was equilibrated with 100cm3 of each metal (Cr, Pb, and Ni) solution concentration of 50 ppm and 100 ppm in a stoppered borosil glass flask at a fixed temperature for 300C in an orbital shaker for a period of time which is (30–60 min). After the equilibration, each sample of 10cm3 was collected from each flask. In a time interval of 30 and 60 min, the suspension of the adsorbent was separated from the solution by filtration using a filter paper 10 cm of each sample was collected for atomic absorption spectrophotometer (AAS) determinations.

Results

The result of the analysis is presented in tables, containing a full description of the analysis of variance done on the models and a 3-dimensional pictorial representation of the percentage of heavy metals removed and the factors responsible for the change.

Percentage Removal of Lead (Pb) using tea bag residues as adsorbent ANOVA for selected factorial model

$${\text{Removal}} \left( E \right) TB = 91.654 + 0.186\left( E \right) + 0.053 \left( {{\text{Conc}}} \right)$$

Discussion

The Model F value of 108.24 shows that there is a 6.78% probability that a "Model F value" this large could be a result of interference, impurity or noise. If the probability value is greater than the fishers test "Prob > F", that is, less than 0.0500 level, this indicates that the terms of the model are significant. It was noted that statistically when the value of the terms or factors appearing in the model is greater than 0.1000, it signifies the model terms are not significant. While optimizing the model, there were some model terms that appear insignificant, and so they were removed in order to improve our model.

SD

0.20

R2

0.9954

Mean

96.45

Adj R2

0.9862

C.V. %

0.21

Pred R2

0.9264

Press

0.64

Adeq precision

22.748

The plot in Fig. 1 gives a clear picture of the effect of interactions of the factors on the response; the plot shows that percentage removal of lead decreases at constant pH of 1, when the concentration of the solution containing the metal ions increases. The plot reflects the response behaviour to improve at high concentration, when the pH is alkaline. The validation plot of the model is shown in Fig. 2, the plot supports the ANOVA statistics that gives a close correlation between the response predicted by the model and the actual values of the experimental response.

Fig. 1
figure 1

A 3-dimensional plot of concentration and pH against the percentage removal of lead when tea bag residues are used as adsorbent

Fig. 2
figure 2

A cross-validation plot predicted response against actual values of response from selected factorial model on the removal of lead when tea bag residues are used as adsorbent

Fig. 3
figure 3

A cross-validation plot of predicted response against actual values of response from selected factorial model on the removal of lead when groundnut shell residues are used as adsorbent

Fig. 4
figure 4

A 3-dimensional plot of concentration and pH against the percentage removal of lead when groundnut shell residues are used as adsorbent

Fig. 5
figure 5

A cross-validation plot predicted response against actual values of response from selected factorial model on the removal of chromium when tea bag residues are used as adsorbent

Fig. 6
figure 6

A 3-dimensional plot of concentration and pH against the percentage removal of chromium when tea bag residues are used as adsorbent

Fig. 7
figure 7

A cross-validation plot predicted response against actual values of response from selected factorial model on the removal of chromium when groundnut shell residues are used as adsorbent

Fig. 8
figure 8

A 3-dimensional plot of concentration and pH against the percentage removal of chromium when groundnut shell residues are used as adsorbent

Fig. 9
figure 9

A cross-validation plot predicted response against actual values of response from selected factorial model on the removal of Nickel when tea bag residues are used as adsorbent

Fig. 10
figure 10

A 3-dimensional plot of concentration and pH against the percentage removal of Nickel when tea bag residues are used as adsorbent

Fig. 11
figure 11

A cross-validation plot predicted response against actual values of response from selected factorial model on the removal of Nickel when groundnut shell residues are used as adsorbent

Fig. 12
figure 12

A 3-dimensional plot of concentration and pH against the percentage removal of Nickel when groundnut shell residues are used as adsorbent

Percentage removal of lead (Pb) using groundnut shell (GS) as adsorbent ANOVA for selected factorial model

$${\text{Removal}} \left( {{\text{Pb}}} \right) GS = 93.497 + 0.053 \left( {{\text{Conc}}} \right) - 0.029 \left( {{\text{Time}}} \right)$$

The "Model F value" of 26.07 implies the model is not significant relative to the noise. There is a 13.72% probability that a "Model F value" this large could be a result of interference, impurity or noise. If the probability value is greater than the fishers test "Prob > F", that is, less than 0.0500 level, this indicates that the terms of the model are significant (Figs. 3, 4, 5, 6, 7, 8, 9, 10, 11, 12).

The "Pred R2" of 0.6989 is not as close to the "Adj R2" of 0.9435 as one might normally expect. This may indicate a large block effect or a possible problem with your model and/or data. Things to consider are model reduction, response transformation, outliers, etc. “Adeq Precision" measures the signal-to-noise ratio. A ratio greater than 4 is desirable. Your ratio of 10.497 indicates an adequate signal. This model can be used to navigate the design space.

Percentage removal of chromium (Cr) using tea bag residues as adsorbent ANOVA for selected factorial model

$${\text{Removal}} \left( {{\text{Cr}}} \right)TB = 97.154 - 0.274\left( {{\text{pH}}} \right) + 0.052\left( {{\text{Time}}} \right)$$

The Model F value of 156.12 implies there is a 5.65% chance that a "Model F value" this large could occur due to noise.

The "Pred R2" of 0.9489 is in reasonable agreement with the "Adj R2" of 0.9904. "Adeq Precision" measures the signal-to-noise ratio. A ratio greater than 4 is desirable. Your ratio of 28.703 indicates an adequate signal. This model can be used to navigate the design space.

SD

0.14

R2

0.9968

Mean

98.26

Adj R2

0.9904

C.V. %

0.14

Pred R2

0.9489

PRESS

0.31

Adeq precision

28.703

Percentage removal of chromium (Cr) using groundnut shell (GS) ANOVA for selected factorial model

$${\text{Removal}} \left( E \right) {\text{GS}} = 94.407 + 0.013\left( {{\text{Conc}}} \right) + 0.066\left( {{\text{Time}}} \right)$$

The "Model F value" of 2.00 implies the model is not significant relative to the noise. There is a 44.75% chance that a "Model F value" this large could occur due to noise.

SD

1.03

R2

0.7997

Mean

98.32

Adj R2

0.3991

C.V. %

1.05

Pred R2

2.2046

Press

17.14

Adeq precision

2.912

A negative "Pred R2" implies that the overall mean is a better predictor of your response than the current model. "Adeq Precision" measures the signal-to-noise ratio. A ratio of 2.91 indicates an inadequate signal, and we should not use this model to navigate the design space.

Percentage removal of nickel (Ni) using tea bag residues as adsorbent ANOVA for selected factorial model

$${\text{Removal }}\left( {{\text{Ni}}} \right){\text{ TB}} = 83.315 + 0.141\left( {{\text{Conc}}} \right) - 0.0686\left( {{\text{Time}}} \right)$$

The "Model F value" of 17.35 implies the model is not significant relative to the noise. There is a 16.74% chance that a "Model F value" this large could occur due to noise.

SD

1.25

R2

0.9720

Mean

90.83

Adj R2

0.9160

C.V.%

1.38

Pred R2

0.5519

Press

25.00

Adeq precision

8.434

The "Pred R2" of 0.5519 is not as close to the "Adj R2" of 0.9160 as one might normally expect. This may indicate a large block effect or a possible problem with your model and/or data. Things to consider are model reduction, response transformation, outliers, etc. "Adeq Precision" measures the signal-to-noise ratio. A ratio greater than 4 is desirable. Your ratio of 8.434 indicates an adequate signal. This model can be used to navigate the design space.

Percentage removal of nickel (Ni) using groundnut shell (GS) ANOVA for selected factorial model

$${\text{Removal }}\left( {{\text{Ni}}} \right){\text{ GS}} = 99.570 - 0.189{ }\left( {{\text{Time}}} \right)$$

The Model F value of 11.82 implies there is a 7.52% chance that a "Model F value" this large could occur due to noise.

SD

1.65

R2

0.8553

Mean

91.06

Adj R2

0.7830

C.V.%

1.81

Pred R2

0.4212

PRESS

21.76

Adeq precision

4.863

The "Pred R2" of 0.4212 is not as close to the "Adj R2" of 0.7830 as one might normally expect. This may indicate a large block effect or a possible problem with your model and/or data. Things to consider are model reduction, response transformation, outliers, etc. "Adeq Precision" measures the signal-to-noise ratio. A ratio greater than 4 is desirable. Your ratio of 4.863 indicates an adequate signal. This model can be used to navigate the design space.

Conclusion

The present research shows that groundnut shell and tea bag can effectively be used as excellent adsorbent for the removal of Ni, Pb, and Cr from aqueous solution. This study also highlights the effect of different parameters such as, contact time, pH, initial concentration, and adsorbent dose in removal of metal ions.

Availability of data and material

All data and material are available upon request (Tables 1, 2, 3, 4, 5, 6, 7).

Table 1 Taguchi design of the experiment
Table 2 Analysis of variance [partial sum of squares—Type III]
Table 3 Analysis of variance table [partial sum of squares—type III]
Table 4 Analysis of variance table [partial sum of squares—Type III]
Table 5 Analysis of variance table [partial sum of squares—Type III]
Table 6 Analysis of variance table [partial sum of squares—Type III]
Table 7 Analysis of variance table [Partial sum of squares—Type III]