Group decision-making with Fermatean fuzzy soft expert knowledge

With the rapid growth of population, the global impact of solar technology is increasing by the day due to its advantages over other power production technologies. Demand for solar panel systems is soaring, thus provoking the arrival of many new manufacturers. Sale dealers or suppliers face an uncertain problem to choose the most adequate technological solution. To effectively address such kind of issues, in this paper we propose the Fermatean fuzzy soft expert set model by combining Fermatean fuzzy sets and soft expert sets. We describe this hybrid model with numerical examples. From a theoretical standpoint, we demonstrate some essential properties and define operations for this setting. They comprise the definitions of complement, union and intersection, the OR operation and the AND operation. Concerning practice in this new environment, we provide an algorithm for multi-criteria group decision making whose productiveness and authenticity is dutifully tested. We explore a practical application of this approach (that is, the selection of a suitable brand of solar panel system). Lastly, we give a comparison of our model with certain related mathematical tools, including fuzzy and intuitionistic fuzzy soft expert set models.


Introduction
Till date, action-oriented research has produced many competing models for the representation of imprecisely defined situations, which mean uncertain situations such as those associated with a shortage of compact and accurate knowledge. These models include probability theory, fuzzy sets (Zadeh 1965), rough sets (Pawlak 1982) or soft sets (Molodtsov 1999). Here we focus on the track of thought initiated by fuzzy set theory which has proven its influence in many areas (Alcantud and Calle 2017;Alcantud et al. 2018;Kahraman and Kaya 2010). A fuzzy set only embodies a membership part, thus it was soon realized that this could make the applied studies overlook important facts regarding the non-membership scores of the alternatives under consideration. Bearing in mind this setback, Atanassov (1986) proposed the intuitionistic fuzzy model. It is a fairly natural generalization of fuzzy set (FS) theory: in an intuitionistic fuzzy set (IFS), all the objects of the universe are characterized by both their membership and non-membership degrees, and their sum is always bounded by 1. However if the experts submit estimates whose sum is greater than one in at least one case, then decision-making based on IFSs will no longer be of use. Therefore to remove this deficiency, a yet more general concept was developed by Yager (2013), namely, the Pythagorean fuzzy set (PFS). The PFS model has soon gained much attention from many experts and researchers. For instance, Yager and Abbasov (2013) discussed about connections between the Pythagorean membership grades (PMGs) and complex numbers. Concerning applications, Peng et al. (2020) designed a Pythagorean fuzzy multi-criteria decision method for fifth generation (5G) wireless industry evaluation. Peng and Selvachandran (2019) is a good survey of the state of the art of the research about PFSs. But also from a theoretical standpoint, this model raised a debate as to how far one can go to represent data within a similar framework. In this direction, Senapati and Yager (2020) put forward the notion of Fermatean fuzzy sets (FFSs) as a further extension of the IFSs and PFSs. In a FFS, the cubic sum of membership and non-membership values of an object are bounded by 1. Numerous investigations have originated with FFSs. For instance, Liu et al. (2019a) developed the notion of Fermatean fuzzy linguistic term set. Senapati and Yager (2019) discussed some new operations over Fermatean fuzzy numbers. Decision-making analysis based on Fermatean fuzzy Yager aggregation operators (with an application in coronavirus disease 2019  testing facilities) was studied by Garg et al. (2020). Yang et al. (2020) discussed the differential calculus of Fermatean fuzzy functions. Shahzadi and Akram (2021) developed a novel decision-making concept to select an antivirus mask under Fermatean fuzzy soft information. Additionally, Akram et al. (2020) proposed a novel decision-making framework for the selection of an effective sanitizer to reduce COVID-19 under a Fermatean fuzzy environment. Liu et al. (2019b) proposed the concept of distance measure for Fermatean fuzzy linguistic term sets based on linguistic scale function. This is illustrated by their use in the development of TODIM (TOmada de Decisão Interativa e Multicritério/ Interactive Multicriteria Decision-Making) and TOPSIS (Technique for Order of Preference by Similarity to Ideal Solution) methods. Other more general models like spherical or T-spherical fuzzy sets extend the scope of applicability of the TOPSIS method even further (Munir et al. 2021).
Another source of inspiration for our approach is soft set theory (Molodtsov 1999), that originally addresses situations without a numerical component. Objects are fully portrayed by a compound of attributes and each of them gives an approximate partial description. With this feature, it is drastically different from fuzzy (or intuitionistic, Pythagorean, Fermatean, ...) specifications. After the production of soft sets, many researchers and experts were actively engaged in developing the abilities of this theory. For example, Ali et al. (2009) soon presented additional properties of soft sets. In addition, Maji et al. (2002) were the first who discussed decision-making algorithm based on soft sets. Then other authors proved its significance in different areas, (v., Feng et al. 2010;Feng and Li 2013;Santos-Buitrago et al. 2019). Although soft and fuzzy theories are different, a hybrid tool can be generated by their combination as shown by Maji et al. (2001) who proposed the applicable concept of fuzzy soft set. In fact hybridization techniques are commonly used to acquire increasingly general knowledge and solve new real-world situations Garg and Arora 2021;Xiao et al. 2009;Ali and Ansari 2021;Zhu et al. 2012;Zhu and Xu 2014). In relation with the subject of our study, Salsabeela and John (2021) presented a TOPSIS method for the hybrid model called Fermatean fuzzy soft set.
A different line of improvement came from Alkhazaleh and Salleh (2011) who introduced the concept of soft expert sets (SESs). They have an edge on the previous models, namely, their inbuilt ability to incorporate multi-expert opinions. These authors studied a decision-making application of SESs. Afterwards, Alkhazaleh and Salleh (2014) developed a hybrid structure called fuzzy SESs. With the production of SESs, several researchers have presented many new hybrid models (Adam and Hassan 2016;Al-Qudah and Hassan 2017;Qayyum et al. 2016;Mishra et al. 2021;Keshavarz-Ghorabaee et al. 2020;Aydemir and Gunduz 2020). For a quick overview of the merits and disadvantages of major existing decision-making methods that have an important role in this study, the readers are referred to Table 1. Motivated by these facts, in this article we develop a novel hybrid structure, namely, the Fermatean fuzzy SES model that combines FFSs and SESs. We describe it with the help of numerical examples. Furthermore, we demonstrate some of its essential properties and we set forth set-theoretical operations comprising complement, union and intersection, plus the OR and AND logical operations. With this background we explore a practical application of the suggested approach in MCGDM (that is, the selection of the brand of a solar panel system for purchase). An algorithm stated in the context of the proposed model guarantees its proficiency and authenticity. In this paper, we also provide a comparison of our model with related mathematical tools.
To summarize, some factors motivating this article are as follows: 1. The FFS model has become a useful and remarkable generalized version of intuitionistic and Pythagorean fuzzy sets, because these existing models rule out situations where the cubic sum of membership and non-membership parts exceeds 1 at some instance. 2. The selection of a best object from a set alternatives in a MCGDM environment is hampered when vague data are forced to adopt the limited form of intuitionistic fuzzy and Pythagorean fuzzy numbers. The aforementioned situations would produce a mutilation of data. A more generalized hybrid model is required in order to ensure telling solutions in such critical situations. 3. FFSESs yield more accurate and precise results when used to cope practical MCGDM problems involving Fermatean fuzzy information as they are an efficient extension of Fermatean fuzzy soft sets regarding experts. 4. The major limitations of the existing intuitionistic and Pythagorean fuzzy hybrid models are two: the restriction of data evaluations to only one expert, and the fact that they cannot deal with data containing Fermatean fuzzy numbers.
The main contributions of this research article are as follows: 1. Soft expert set theory is extended to FFSESs. A detailed discussion analyzes the important properties and preeminent features of the FFSES model. 2. We think out two more efficient algorithms that act in a Fermatean fuzzy environment to deal with practical MCGDM problems. To check its validity, it is applied to a daily life application, namely, the selection of an appropriate solar panel. 3. The accuracy and efficiency of this model is verified with the aid of a comparative analysis with some existing models. The rest of this article is structured as follows. Section 2 reviews some basic notions, including Fermatean fuzzy sets. Section 3 proposes a new hybrid model called FFSESs, a Fermatean fuzzy extension of SES model, and studies some fundamental properties and operations which are: Fermatean fuzzy soft expert subset, agree-FFSES, disagree-FFSES, equal FFSES, null FFSES, absolute FFSES, AND operation and OR operation. Section 4

Preliminaries
In this section, we first review some basic notions, including Fermatean fuzzy sets (FFSs), score function and accuracy function of FFSs, and soft expert sets (SESs). For other terminologies not discussed in our article, the readers can consult related references (Ali et al. 2019;Bashir and Salleh 2012;Broumi and Smarandache 2015;Ali and Akram 2020;Feng et al. 2020;Zhu and Xu 2018;Feng et al. 2021).
Definition 1 (Senapati and Yager 2020) Let P be a universal set. Then a Fermatean fuzzy set is defined by where the functions l; m : P ! ½0; 1 define respectively the degrees of membership and non-membership of the object p 2 P to the set A, subject to the following condition for all p 2 P: 0 ðlðpÞÞ 3 þ ðmðpÞÞ 3 1: We denote the collection of all FFSs over P by FFS(P). The next two definitions allow us to compare FFNs: Definition 2 (Senapati and Yager 2020) Let F ¼ ðlðpÞ; mðpÞÞ be a FFN over a universe P. The score function of F is defined as for all p 2 P.
Definition 3 (Senapati and Yager 2020) Let F ¼ ðlðpÞ; mðpÞÞ be a FFN over a universe P. The accuracy function of F is defined as for all p 2 P. Clearly, sðFÞ; hðFÞ 2 ½0; 1: Definition 4 (Senapati and Yager 2020) Let F 1 ¼ ðl 1 ðpÞ; m 1 ðpÞÞ and F 2 ¼ ðl 2 ðpÞ; m 2 ðpÞÞ be any two FFNs over a universe P, sðF 1 Þ and sðF 2 Þ be their score functions, and hðF 1 Þ and hðF 2 Þ be their accuracy functions, then Definition 5 (Alkhazaleh and Salleh 2011) Let P be a universal set, E a universe of parameters, and Q a set of experts. Let O ¼ f0 ¼ disagree; 1 ¼ agreeg be the set of their opinions. For any A X, a pair (F, A) is said to be a soft expert set over P, where X ¼ E Â Q Â O and F is a function given by where 2 P denotes the collection of all subsets of P.

Fermatean fuzzy soft expert sets
In this section, we present the main concept of this study, that is, the FFSES model, along with a few of its useful properties.
Definition 6 Let P be a universal set, E a universe of parameters, and Q a set of experts. with the following condition: 0 ðlðpÞÞ 3 þ ðmðpÞÞ 3 1: Another compact and precise way to represent a FFSES ðk; AÞ is its tabular representation.
To describe it, assume that P ¼ fp 1 ; p 2 ; . . .; p n g is a universal set, and E ¼ fe 1 ; e 2 ; . . .; e m g is a universe of parameters about the elements of P. Let Q ¼ fq 1 ; q 2 ; . . .; q t g be a set of experts and O ¼ f0 ¼ disagree; 1 ¼ agreeg be their opinions. Then, a FFSES ðk; AÞ can be presented by an alternative tabular arrangement as shown in Table 2 below: This novel notion is explained by an example provided below: Example 1 Suppose a largest hotel company XYZ wants to buy a hotel from the five options p 1 ; p 2 ; p 3 ; p 4 and p 5 . To choose an appropriate option according to the need of company, they decide to take opinions and judgments of three experts having expertise in the field. Let P ¼ fp 1 ; p 2 ; . . .; p 5 g be a set of hotels and Q ¼ fq 1 ; q 2 ; q 3 g be the set of three experts, E ¼ fe 1 ¼ location; e 2 ¼ design; e 3 ¼ technology; e 4 ¼ entranceg a set of parameters which have important role in the selection of hotel, and Then all the information of experts opinions about the alternatives is given in the form of a FFSES ðk; AÞ, A Y as the collection of approximations provided below: Note that according to the expert 'q 1 ' hotel p 1 is suitable with membership score 0.5 and non-membership score 0.7 regarding parameter location e 1 . Similarly, the expert 'q 1 ' agrees that the hotel p 2 is suitable with membership score 0.8 and non-membership score 0.4 regarding parameter location e 1 and so on. The tabular representation of FFSES is given in Table 3.
Another useful concept, namely, Fermatean fuzzy soft expert subset is discussed as follows: Definition 7 Let ðk; AÞ and ðf; BÞ be two FFSESs on the universe P. Then ðk; AÞ is said to be a Fermatean fuzzy soft expert subset of ðf; BÞ if It is denoted by ðk; AÞðf; BÞ. Note that ðf; BÞ is said to be a Fermatean fuzzy soft expert superset of ðk; AÞ.
The following example explains this novel concept:   Definition 8 Let ðk; AÞ be a FFSESs on the universe P. Then its agree-FFSESs ðk; AÞ 1 on P is a Fermatean fuzzy soft expert subset of ðk; AÞ which is given by Example 3 Reconsider FFSES as given in Example 1. Then, its agree-FFSES ðk; AÞ 1 can be viewed in Table 6.
Definition 9 Let ðk; AÞ be a FFSES on the universe P. Then its disagree-FFSES ðk; AÞ 0 on P is a Fermatean fuzzy soft expert subset of ðk; AÞ which is given by Example 4 Reconsider FFSES as given in Example 1. Then, its disagree-FFSES ðk; AÞ 0 can be seen in Table 7.   Definition 11 A FFSES ðk; AÞ is said to be a null FFSES, denoted by ð/; AÞ and is defined as below: for all a 2 A.
Definition 12 A FFSES ðk; AÞ is said to be an absolute FFSES, denoted by ðX; AÞ and is defined by    Definition 13 Let ðk; AÞ be a FFSES on the universe P. Then its complement is represented by ðk; AÞ c and is given as ðk; AÞ c ¼ ðk c ; $ AÞ where k c : $ A ! FFSðPÞ is a function given by k c ð:Þ ¼ ðm ðpÞ; l ðpÞÞ such as ðl ðpÞ; m ðpÞÞ 2 kðÞ for all 2 A; p 2 P: Example 5 Consider FFSES ðk; AÞ in Example 1. Then, its complement ðk; AÞ c is given by Table 8.

A case study: selection of most suitable solar panel system
Photovoltaics collect energy from sun in the form of sun light and convert into electricity that can be used in building electricity, power homes, remote traffic control, boat, power at remote locations and telecommunication. In early days, solar energy used primarily for production of system to drive machinery. Module efficiency is measure how much energy the solar panel produces from the sunlight. The selection of the best solar panel system from different solar brands is always a difficult task. Every merchandiser has different needs to obtain solar panel system. Apart from the financial benefits, there are other pertinent reasons from which some are as below: 1. Solar power uses under-utilized land Using solar power, one can basically make the best use of under-utilized land and consequently produce solar energy that is a good source of electricity for everyone. Like other renewable resources, solar technology produces more reason to utilize land that has been underutilized. In several areas there are many pieces of land away from the urban areas that land can create great value if solar panel system are planted on those areas. The important fact about that land is its low price which might be option for solar energy as compared to other sources of electricity. No doubt, solar panels are used to produce solar energy in wide range. For example, recently, a 45 acre solar form has been constructed in the UK (United Kingdom), and it has ability to provide electricity for 2500 homes. 2. Solar power is free source of energy Solar energy from the sun is a very vast, inexhaustible and clean resource of power. It can be directly used for lighting homes and heating purpose. Nowadays, one of the cheapest source of power in the world is solar energy. More than 2 million solar farms have been constructed in the United States. Several manufacturers offer a solar panel.
The sun provide us more power than our daily use but we are not utilizing it properly.

Solar power is good for environment
The most common advantage of the solar power is that its a clean, green source of energy, that is, solar energy production process does not release any waste which causes global warming. Thus, it is environment friendly and safe source of solar power. The installation of solar panels systems on the roof of the house is an easy procedure. From one of the renewable resources solar energy is great for environment. Based on the analysis of the United States department of energy, the amount of sunlight received by earth in one hour is larger than the total energy utilized by the world for a whole year. The environmental advantages are the main reasons in promoting solar power projects. Suppose P ¼ fp 1 ¼ Jinkosolar; p 2 ¼ LG; p 3 ¼ Solarland; p 4 ¼ Missionsolarenergy; p 5 ¼ Panasonic; p 6 ¼ Peimar; p 7 ¼ RECgroup; p 8 ¼ Sunpowerg be the set of well known brands of solar panel system. In order to get best solar panel system consider a set of parameters E ¼ fe 1 ¼ Uniqueperformance; e 2 ¼ Chargecontroller; e 3 ¼ Efficiency; e 4 ¼ Frame; e 5 ¼ Storage; e 6 ¼ Thickness; e 7 ¼ Clarity; e 8 ¼ Celltemperature; e 9 ¼ Chemicalreaction; e 10 ¼ Cost; e 11 ¼ Voltage; e 12 ¼ Maximumpowerg. By viewing the alternatives regarding above parameters, merchandiser wants to select the best solar panel system with the help of some experts of the domain. Let Q ¼ fq 1 ; q 2 ; q 3 g be a set of experts (electrical engineers) to determine best quality of solar panel systems from different brands and O ¼ f0; 1g be a set of opinion where 1 ¼ agree and On the basis of results obtained from experts, the merchandiser constructs the following FFSES ðk; AÞ where the agree FFSES ðk; AÞ 1 and dis-agree FFSES ðk; AÞ 0 are given in Tables 19 and 20, respectively, where p ij are the entries in the tables.
Now the agree-and disagree-score tables are given by Tables 21 and 22, respectively. In the following, we develop an algorithm (see Algorithm 1) which is used in the selection of most suitable solar panel system. We establish it in the language of our running example but it can be naturally adapted to the exact formulations of other MCGDM problems: Now by applying Algorithm 1, we find the best alternative for vendor of solar panel system. Table 23 can be readily obtained from Tables 21 and 22. From the above Table 23, one can easily see that max z j ¼ z 3 , so the alternative p 3 will be selected as best brand to purchase solar panel system for the vendor.
There may be situations for which different weights are assigned by the experts to different parameters. This improvement should make the selection process more effective. Now we revise Algorithm 1 accordingly. This enhancement is based on the needs of the experts in the selection procedure of the most suitable solar panel system.
Let us now apply Algorithm 2 on the above Application. To this purpose we consider the weights proposed by the experts which are displayed in Table 24.
Then the weighted agree score table is provided by Table 25.  The weighted disagree score table is displayed by Table 26. Using Algorithm 2, we find the best alternative for vendor of solar panel system. Table 27 can be readily obtained from Tables 25 and 26.  From the above Table 27, one can easily see that max z j ¼ z 3 , so the alternative p 3 will be selected as best brand to purchase solar panel system for the vendor.

Sensitivity analysis
In this section, we compare the proposed model with certain existing models to highlight its advantages and limitations.

Advantages of the model initiated in this work
Several domains of real-life, including science and technology, contain uncertainty due to imperfect or unknown information in different epistemic situations. Until less than a century ago, probability theory-which is originally based on principles of Aristotle's bivalued logic-used to be the unique tool available to the experts for the modelization of uncertainty. However, different real phenomena in nature are an evidence of the existence of multiple kinds of uncertainties which cannot be dealt properly with classical mathematical tools. To put a simple example, the term 'frosty' means a certain range of cold temperatures, which may vary in different circumstances; certainly, the term lacks a sharp, definite boundary. The representation of a system with these types of terms contains a class of uncertainty that is called fuzziness. To address these issues, a number of researchers had proposed different approaches earlier, like multi-valued logic that had been studied in the 1920's by Polish logicians Łukasiewicz, Tarski and others. But fuzzy set theory (Zadeh 1965) gave origin to fuzzy logic and allowed to approach uncertainly defined situations competently. The theory of fuzzy sets opened the door to the construction of mathematical solutions of problems stated in a natural language, in cases where traditional tools fail to apply. Zadeh's remarkable idea has found many applications in several fields, inclusive of decision-making. As is well known, fuzzy sets give the degree of membership of an element in a given set (and it is implicitly assumed that its nonmembership degree equals one minus its degree of membership). In some situations however, there are separate evaluations of membership and nonmembership degrees. When the sum of both degrees is strictly smaller than 1, then the practitioner must allocate some hesitation; and this circumstance cannot be explained by means of fuzzy set theory. For this reason IFSs were initiated by Atanassov. Later on, both PFSs and FFSs were introduced for the purpose of including additional uncertain problems into a common theoretical setting. The development of new forms of vague and uncertain informational models for group decision-making is soaring. Along the past few decades, a number of hybrid models have been reported towards this worthy topic, including different hybrid structures of fuzzy, intuitionistic fuzzy and Pythagorean fuzzy theories. There are various phenomena, which cannot be well explained via the above-mentioned existing models. In practical decisionmaking problems, the decision makers (or experts) may indicate their selections regarding the degree of an alternative about a criterion fulfilling the condition that the sum of the belongingness degree and non-belongingness degree or their sum of squares may be greater Table 27 Final weighted score table a j ¼ P than 1. For example, let us suppose that some motivational scholars are enduing their opinions about modern vs. traditional societies in order to point out differences between them, or to mention the merits of one over the other. Consider the next situation: half of them give their opinion (degree) in favor of modern society which is 0.83, and the remaining half provide their opinion in favor of traditional society with a degree of 0.65. Clearly, 0:83 2 þ 0:65 2 ¼ 1:11¥1 but 0:83 3 þ 0:65 3 ¼ 0:85\1. Notice that the experts' selections in such cases cannot be suitably described by the recourse to IFSs or PFSs. It is in these situations that the FFS model acts more effectively, as it widens the space of uncertain data and relaxes the condition of IFSs and PFSs on the belongingness and nonbelongingness degrees.
With the invention of the FFS model which is a direct generalization of fuzzy, intuitionistic fuzzy and Pythagorean fuzzy models, a lot of researchers were attracted towards this worthy model and its hybridizations in order to deal with different daily-life scenarios more adequately. The soft expert set model and its fuzzy version have been produced for group decision-making purposes. Our developed FFSES model is a mixture of FFSs and SESs which has the ability to deal with Fermatean fuzzy information comprising all the objects evaluations regarding each parameter in view of available experts independently. In other words, one can easily observe that the initiated model shares the merits of FFSs, FFSSs, SESs, FSESs, IFSESs and Pythagorean fuzzy SESs to address the two-dimensional obscure information from different experts. Moreover, the MCGDM method developed here is more reliable as compared to some existing multicriteria decision-making methods like TOPSIS and TODIM techniques, because these existing approaches fail to tackle a situation where the provided information contain separate opinions of different experts about alternatives with respect to available parameters in Fermatean fuzzy environment. These competencies of the proposed model make it unique and cogent for the representation and analysis of group decision-making situations.

Comparison with existing models
To check the validity and performance of our developed hybrid model, here we use the same data of given application according to the hybrid model by which we have to compare our proposed model. The computed results by applying existing FSESs (Alkhazaleh and Salleh 2014) are summarized in Table 28. It is clear from Table 28 and Fig. 1 that the most suitable options, when computed by either the FSES model (Alkhazaleh and Salleh 2014) or the proposed FFSESs, are similar. Thus our hybrid model is more reliable to solve several decision-making problems because it ranks all the alternatives of the Application (Sect. 4), but the FSES model (Alkhazaleh and Salleh 2014) fails to establish a ranking of objects p 1 and p 3 (see Table 29). The main reason behind the construction of our presented model is that the existing IFSES model (Broumi and Smarandache 2015) is able to handle situations where the sum of both membership and non-membership degrees is less than one, however it fails to cope with cases where this sum is greater than 1 at some instance. For example, if membership score 0.9 and non-membership score 0.6 are assigned, then the IFSES model is not applicable. To observe the comparison between IFSESs and the FFSES model, we have applied the methodology proposed here on the Application given in (Broumi and Smarandache 2015). From Table 30 and Fig. 2, it is clear that the optimal decision object is the same under both IFSESs (Broumi and Smarandache 2015) and the proposed FFSES model. This is why we  propose the theory of FFSESs, which is more valuable than IFSESs and FSESs because its scope of application is larger than that of the existing SES models.

Limitations of the model initiated in this paper
Some limitations of the proposed model which we have observed during its analysis are: • The competency of the proposed model is limited to address the two-dimensional obscure information, that is, it fails if in a situation, we consider membership value 0.7 and non-membership value 0.9, since 0:7 3 þ 0:9 3 ¼ 1:072¥1. • Another limitation of the proposed hybrid model is the occurrence of large sets of alternatives, parameters and experts in several MCGDM problems, because the computational speed may be handicapped by the increase in available information. Like proposed model there are several existing mathematical tools involving this deficiency which can be easily control with a suitable code of developed method via different mathematical software such as MATLAB, MAPLE, etc. • Moreover, there may be observed a variation in the ranking order of optimal or suboptimal objects when any existing parameters (or objects) are removed or new parameters (or objects) are added in a MCGDM problem. It happens due to the autonomous behavior of objects and parameters.  fundamental properties concerning operations like complement, union, intersection, the OR operation and the AND operation. We have also explored a practical application of the corresponding MCGDM methodology (that concerns the selection of a better brand of solar panel system). In fact, we have provided two algorithms that ensure the productiveness and authenticity of the model that we have introduced. Lastly, we have performed a comparison with two existing mathematical tools, that is, the FSES model (Alkhazaleh and Salleh 2014), and the IFSES model (Broumi and Smarandache 2015).

Conclusions and future directions
The results presented in this article have important implications for the operations strategy and supply chain management research. The analysis and results presented above have demonstrated that the proposed methodology is a useful and practical method for carrying out supplier ratings for solar panel systems.
In the future, the group decision-making approach that we have introduced in this article can be generalized to deal with other MCGDM problems more precisely. Such problems include supplier selection, employee selection or promotion, as well as several other domains of science and technology. Thus we shall work towards the extension of this research work in the following settings: 1. The ELECTRE I and TOPSIS methods can be combined with Fermatean fuzzy soft expert sets to handle Fermatean fuzzy information in case of multiple experts, like the TOPSIS method for Fermatean fuzzy soft sets (Salsabeela and John 2021). 2. The interval-valued Fermatean fuzzy sets (Jeevaraj 2021) can be combined with soft expert sets (Alkhazaleh and Salleh 2011) to construct a new model called intervalvalued Fermatean fuzzy soft expert sets which is a natural interval-valued extension of Fermatean fuzzy soft expert sets. 3. To deal with more generalized Fermatean fuzzy information based on multinary graded evaluations, another extension of fuzzy N-soft expert sets (Ali and Akram 2020) or the proposed Fermatean fuzzy soft expert set model called Fermatean fuzzy N-soft expert sets can be constructed, This arises from the combination of Fermatean fuzzy sets with N-soft expert sets (Ali and Akram 2020).
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Declarations
Conflict of interest The authors declare that they have no conflict of interest.
Ethical approval This article does not contain any studies with human participants or animals performed by any of the authors.
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