The tendency in the search for problems of transportation and urban mobility solutions, as well as in urban planning and geographic information systems (GIS), has increased worldwide, especially when talking about public passenger transportation, because there is an area of opportunity to implement public politics in cities with high population density. In other words, it is necessary to make objective and impartial decisions, that is, with a technical approach that helps to cover all the relevant aspects that affect quality.
As an example, we have several studies about sustainable mobility where we can see that mobility was reduced everywhere during the COVID-19 pandemic; bike-sharing also has a high impact during this pandemic in Thessaloniki, Greece, where cite evaluated the perception of the people about this transport mode using questionnaires; the results concluded that most people still feel vulnerable, however, i.e. most people travel by private car (50.5%), they do not usually use protection if it is not necessary and still travel by private car, but the people that use the bike-sharing system think that it is a good transport mode after COVID-19 [
1]. Furthermore, in [
2], a case study based in Poland was developed, where the bike-sharing system is an element of analysis in four different points, with data based on the operator to analyze the functioning of the system in Warsaw, which were georeferenced with a GIS’ software, then questionnaires were used to analyze the level of satisfaction with the Liker scale with a 4.5 of average rating. The analysis has been set up to 0.743 of Cronbach’s alpha coefficient.
Other case studies presented by [
3] focused on the park and ride parking type, which is a good model to have a public transportation integration and sustainable service; this case study developed in Poland included the data base of the users and how used the service is, to motivate the citizen to use public transport. In a similar way, Politis et al. [
4] with the bike-sharing systems were the principals factors by the users to use this services—the cost and the time travel. Furthermore, Ibrahim et al. [
5] developed research to explain the intentions of the users to use the bus-based park-and-ride facilities in Putrajaya, Malaysia, and with the objective of increase, the number of service users through integration with public transport modes.
In multicriteria decision methods (MCDM), there are some applications in real life; in [
6], some methods were used to assess the road freight transport companies based on the opinions of eight experts to weight the criteria keys (key drivers and financial drivers) in the order of importance. The conclusions of the case of study were that the MCDM does not need historical data to develop the numerical case; Rank 4 was attained by X4 company using complex proportional assessment (COPRAS), technique for order of preference by similarity to ideal solution (TOPSIS), evaluation based on distance from average solution (EDAS), and preference ranking organization method for enrichment of evaluations (PROMETHEE); with this application, we can see that MCDM helps to detect the most important drivers in the company. On the other hand, in [
7], AHP method allows assessing passenger demand of the Amman urban transport system in Jordan, where service quality and price elements were considered, as well as the service offered to users, including the environmental aspects and tractability; that is, a total of 143 criteria decision were evaluated by 100 evaluators from different ages and social layers between April and May 2018. The results show that transport quality was first in level 1, safety of travel in level 2 and frequency of lines in level 3. The view of the users helps to making decisions about urban transportation.
However, the greatest obstacle that has arisen is the integration of qualitative information within the projects, with a large number of criteria to assess the quality of the service provided by a public transportation system usually obtained through opinions and interpretations of the users and experts—this is why the contribution of multicriteria decision methods to reduce the bias and improve information analysis is highlighted. One of the most important sets is the Pythagorean Fuzzy set (PFS), which better models uncertainty and is considered a new generation of Fuzzy sets (FS), as well as intuitionistic Fuzzy sets (IFS) [
8], as part of the MCDM. Similarly, these fuzzy sets have generated hybridizations with some MCDM, as is the example of the MOORA method with IFS [
9], which for the transportation area and urban mobility allows hierarching the route alternatives and detecting the route with the best characteristics for given criteria [
10]. Thus, the assumptions of rating criteria according to the opinion in linguistic terms of experts in the subject were followed by a mathematical analysis in some matrixes represented by fuzzy numbers to evaluate the alternatives and establish and hierarchical order [
11]. In the past decade, new methods for assessing MCDM problems have emerged as a response to include some characteristics which the actual methods have not considered [
12] as the combinative distance-based assessment (CODAS) method developed by [
13], that has the goal of determining which is the best alternative based on the Euclidean distance as the primary measure and the Taxicab distance (or Manhattan) that is the secondary measure when the Euclidean distances are incomparable.
1.1. Multicriteria Decision Making
In the last three decades, multicriteria decision making (MCDM) has been taking on vital importance in mathematics problems and computational sciences. Their principal characteristic is their valuation as applied science, which has the objective of determining the value of something such as a product or service, using elements of comparison where a professional evaluates all the criteria for every alternative that is usually subjective and quantitative information [
14]. Zavadskas et al. [
15] presents two categories, see, with the classification of the methods of multicriteria decision: first, the multi-attribute decision making (MADM) used to resolve discrete problems, where the alternatives are predetermined and the professional evaluates (a priori) every criteria, and the multi-objective decision making (MODM) that is used to resolve continual problems where the alternatives are not predetermined and will have some continued solutions with respect to two or more criteria named Paretoś border, where the professionals participate a posteriori [
16]. MCDM is usually used to obtain the best alternative to fully satisfy a range of indicators of performance [
17] and are based on the criteria with best preferred aspects according to the objectives of every problem or project; these criteria are also considered in a process of evaluation. In general, the MCDM consists of assigning choice weights, analyzing via pair-wise ranking of the alternatives’ respect of a criterion and establishing the importance and preference criteria or alternatives in an evaluation’s matrix to homogenize, because in the multicriteria decision making, the information can be qualitative data too, therefore suggesting that the evaluation can be with an objective vision where the intuition of every decision maker
represents their experience in individual evaluation [
10]. Moreover, it is described as the process of the evaluation and selection of the best alternative of the universe [
18] because we can classify as necessary to reduce bias and expose the problem with precision.
Furthermore, there were different methods of multicriteria to solve problems of transport and urban mobility, also applied in urban planification and geographic information system (GIS) for selecting the best alternative in a project and to implement politics publics, because this is necessary to design indicators for monitoring it [
19]. The principal MCDM is the analytic hierarchy process (AHP) [
20], technique for order of preference by similarity to ideal solution (TOPSIS) [
21], analytic network process (ANP), [
22]; multicriteria optimization and compromise solution (VIKOR, ViseKriterijumsa Optimizacija i Kompromisno Resenje) [
23]; preference ranking organization method for enrichment of evaluations (PROMETHEE) [
24]; elimination and choice expressing reality (ELECTRE) [
25]; and multi-objective optimization on the basis of the ratio analysis (MOORA) introduced by [
11], among other relevant methods.
Thus, Keshavarz-Ghorabaee et al. [
13] was the first to develop the combinative distance-based assessment (CODAS) method based on crisp sets, or ordinal information to the assessment some alternatives. This method is based on the combination of the Euclidean distance as the primary unit and the Taxicab (or Hamming) distance as the secondary unit to compared between them respect to the negative-ideal point; Ghorabaee applied CODAS method to select a industrial robot using criteria of its operation. Furthermore, Ghorabaee et al. [
26] used linguistic variables and trapezoidal fuzzy numbers to extend the CODAS to evaluate market segmentation; the results were compared with the ranking of Fuzzy EDAS and Fuzzy TOPSIS methods for the same problem. Panchal et al. [
27] proposed an integration of the multi-criteria decision making to solve problems about maintenances for the industrial process; therefore, to calculate the weights of criteria and subcriteria, the geometric mean (GM) method is used, then the weights calculated are include in the proposed method to rank the alternatives of the strategy maintenance.
Thereby, Badi and Abdulshahed [
28] applied CODAS methods using crisp sets in a case study of supplier selection for a steelmaking company in Libya. They used sensibility analysis to measure the validity and stability of this method. Some time after, Boltürk [
29] developed an integration of the CODAS method using Pythagorean Fuzzy sets and applied the proposal to select a supplier in a manufacturing firm. Peng and Garg [
30] introduced an application with WDBA to select the optimum alternative with CODAS method; the principal characteristic that provided WDBA is to compare the shortest distance with the negative-ideal solution. Badi et al. [
31] developed a problem to select the best location to install a desalination plant using the geographic information of Libya as criteria. Dahooei et al. [
32] evaluated model of business intelligence for enterprise system; the model consists of Fuzzy numbers to calculate criteria weights and to evaluate alternatives with intuitionistic Fuzzy logic with interval values.
Pamučar et al. [
33] used the pairwise to determine the importance level of the criteria and then the method integrate CODAS crisp to select wave energy technology as a case of study. IVIF-CODAS method was used by [
34] to select sustainable material in construction projects with incomplete weight information; Roy developed a sensibility analysis to validate IVIF-CODAS changing weights of criteria, reaching a high degree of stability. Yalcin and Yapıcı Pehlivan [
35] developed a case study for personnel selection with linguistic terms of uncertainty (hesitant Fuzzy linguistic term sets, HFLTS); in a similar case of application using this information type, [
36] appraised organizational and technological into Industry 4.0.
In a different view of application, Ijadi Maghsoodi et al. [
37] used SWARA as a tool to calculate criteria weights and CODAS under crisp sets to select material for dam construction based on the technical specifications (chemical and physics) of each alternative. Buyukozkan and Göçer [
38] is highly recognized to developed and worked with multi-criteria decision making; they developed a model of decision making based on CODAS under intuitionistic Fuzzy to determine and prioritize strategies of SCL (smart city logistic). Laha and Biswas [
39] assess the performance of bank institutions using entropy method to calculate weights criteria and CODAS to assess the stability and level of performance. Moreover, Ouhibi and Moalla proposed multiple classification and categories under incremental positions for central profiles and limits used to compared the distances of the CODAS method. Karaşan et al. [
40] work with a method to select the best alternative to install wind generation plants.
Using the best and worst (BWM) method, Ijadi Maghsoodi et al. [
41] evaluated the weights of the criteria and the linguistic variables with 2-tuple interval values. To select computer system to work in the cloud according to the criteria of availability, reliability, security, maintenance, among others [
42] developed a special application using interval-valued intuitionistic Fuzzy CODAS for multi-attribute decision-making method in Tehran. In another order of ideas, Flores-Ruvalcaba et al. [
12] performed a comparison of MOORA with CODAS methods under Pythagorean Fuzzy sets to show the benefits and disadvantages between this methods. Flores Ruvalcaba found that the weight of the criteria in CODAS method just considers necessary one expert to apply the method through linguistic terms does not have a step for calculate the contribution of the stakeholders, these stakeholders are named decision makers (DM) in MCDM. Zhou et al. [
43] developed an interesting model of aggregation with Pythagorean Fuzzy sets with CODAS and pure linguistic information, with application to financial strategies of multi-national companies.
1.2. Weights of the Criteria and Decision Makers
The contributions of criteria in multi-criteria decision making is expressed through the integration of the DM’s opinions. Perez et al. [
9] use the intuitionistic Fuzzy weighted average (IFWA) for rating the kth DM, then [
44] change the information type using Pythagorean Fuzzy set (PFS) instead of intuitionics Fuzzy set (IFS), therefore they used the same configuration, named as Fuzzy weighted arithmetic Pythagorean, that is based on the geometry like Pythagorean Fuzzy weighted arithmetic averaging (PFWAA) operator, this operator can be used with PFS, because it is an extension of IFS [
45] and can provide better certainty to reduce uncertainty.
Entropy is another method that works on a predefined decision matrix of criteria. The concept of entropy has two sides; first, when the concept refers to a measure of a certain property of a system like a temperature; second, when the concept is subjective and can be used as a tool to build models [
46]. This method can be combined with MCDM to evaluate alternatives through the weight of the criteria because all criteria do not have the same degree of importance in decision-making in real life. The entropy method of the set of normalized outcomes of the jth criterion is given by the degree of diversity of the information.
The Criteria for Public Transportation
The criteria for public transportation are based in their contribution of the operation’s performance and the quality of the service. Moreover, the COVID-19 pandemic that first appeared in Wuhan, China in December 2019 [
47], then covered Mexico in March 2020, influences service and operation due to the interaction of different masses of people inside buses throughout the day, because COVID-19 is highly deadly and and contagious through contact with body fluids [
48]. Thus, the risk conditions are increasing due to the lack of sanitation protocols, the use of face masks, and healthy distance between users as a minimum of 6 foot, as recommended by the World Health Organization (WHO) [
49].
Finally, the proposal in this study is related to deal with the transport service assessment (TSA) via the MCDM method. Thus, the situation is to lead this transport assessment service (TSA) in order to do improvement focused on users. In this sense, we design an algorithm to do this appraisal step by step. In this mode, the authorities responsible for managing the transport service can be guided during analysis about TSA.