During the last few decades, several new types of MCDM have been developed and the maturity of the existing ones has improved, thus increasing their application to real-world problems. The main differences between these methods are related to the complexity of the problems that can be formulated and solved, the weighting methods of the criteria, the representation of thresholds, the possibility of uncertain data, and finally, the type of data aggregation [
31,
32]. MCDM shares a number of fundamental principles, which include outlining a set of actions aimed at addressing the problem at hand, establishing at least two different criteria to evaluate each action, the use of thresholds, and having a decision maker responsible for making the final decision [
33]. Decisions made through MCDM are justifiable and clear because they are documented and traceable due to them being one of the widely used techniques to support sustainability assessment in the context of energy systems. The ability to consider multiple criteria and objectives at once make MCDM methods well accepted in the domain of energy retrofitting decision processes [
34,
35,
36]. The ideal solution is a trade-off between a variety of energy and non-energy factors such as economic, environmental, technical, social, and regulatory factors, among others. The social factors of a sustainable building are the most overlooked, though they are occasionally investigated. However, some studies mentioned building characteristics that promote social sustainability [
37,
38]. It is not expected of a building to exhibit the best environmental, economic, and social performance at the same time, as these are often contradictory. As a result, balancing the impacts on these dimensions over its entire life cycle is a critical factor in achieving sustainable buildings. Sustainability assessments are designed to collect and disseminate information to help with decision-making [
39].
The application of the MCDM approach to energy building renovation has advantages in comparison to the traditional single criterion analysis method because it can give the comprehensive score/ranking of the alternatives under the effect of various multiple criteria, whereas the single criterion analysis is deemed insufficient [
40,
41]. The stakeholders are likely to turn to intuition in the event of a lack of well-defined practices in the use of decision-making tools [
42]. MCDM methods decompose the problem of decision making into steps, compare the relative importance of the criteria, and select the optimal alternative from a set of alternatives in a fuzzy, uncertain, and risky environment [
43]. The following steps can be used to describe decision-making [
44]: problem identification, goal and objective outlining, criteria establishment, alternative identification, decision-making method selection, criterion assessment of alternatives, review, and outcome validation.
2.1. Aggregation Methods
In the aggregation method, the view of the decision-maker is disaggregated in the sense that the decision-maker is assumed to have a complete preference system. This preference system allows them to express their preferences on all aspects of the decision problem and it can be derived by asking the decision-maker relevant questions.
The aggregation methods use a functional approach that base their methods on the use of value or usability. These approaches typically ignore the possibility of data inaccuracies or uncertainty, as well as decision-maker preferences. This set of methods is closely related to an operational approach that employs a single criterion for synthesis. The primary methods include the Multi-Attribute Value/Utility Theory (MAUT), Analytic Hierarchy Process (AHP), Analytic Network Process (ANP), Simple Multi-Attribute Rating Technique (SMART), Utility Additive (UTA), Measuring Attractiveness by a Categorical Based Evaluation Technique (MACBETH), and Technique for Order Preferences by Similarity to Ideal (TOPSIS) [
47].
The MAUT method is based on the fundamental assumption that a single usability function, which takes into account all relevant criteria, can effectively capture the decision-maker’s preferences. The MAUT aggregation method was used to evaluate five different energy production alternatives [
48]. The method of the AHP is considered the most well-known and widely used functional method within the aggregation methods. The AHP enables decision-makers to prioritize their decision-making problems, whereas the ANP is a more complex variation that allows for the construction of a network model with links between criteria, variants, and feedback. The AHP is a compensatory method in which a high score on one criterion can compensate for a low score on another criterion. In the energy sector, the method of AHP is widely used. The AHP was used to propose an energy efficiency rating system based on criteria for existing buildings in Egypt [
49]. The AHP was also used to show how experts prioritize various factors and contexts in their decisions to implement energy efficiency retrofits in the United States [
50]. Additionally, the AHP technique was used to select the most suited scenario for electricity generation from four scenarios [
51]. The AHP was also used to rank assessment themes and identify the stakeholders’ priorities in Malaysia’s refurbishment building assessment scheme [
52]. In the SMART, the decision-maker uses a value function to mathematically convert criteria values to a common internal scale. The SMART was used to determine decision-makers preferences for subjective criteria related to the design of sustainable and resilient buildings [
53]. The UTA method extracts the decision-makers’ preferences from a reference set of variants. The MACBETH compares individual variants in a pairwise comparison matrix and aggregates criterion preferences as a weighted average using qualitative evaluations. The fuzzy MACBETH model was used to explore the inefficiencies and uncertainties related with South European solid waste management systems [
54]. The TOPSIS method is constructed on the assumption that the positive ideal alternatives have the best level for all the criteria values and the negative ideal alternatives have the worst level for the criteria values. In a geometrical sense, the optimal alternative should have the shortest distance from the positive ideal solution while having the longest distance from the negative ideal solution. Each criterion is expected to have an increasing or decreasing monotonically utility, making it relatively easy to determine the positive ideal and negative ideal solutions [
55]. The TOPSIS was used to propose a novel approach for benchmarking building energy performance using a number of criteria including energy consumption, indoor comfort, and environmental impact [
56]. A combination of the TOPSIS and pairwise comparison method was used to rank and select the best renovation option for a given building [
57]. The TOPSIS and AHP were used to determine the optimum energy recovery technologies based on financial, environmental, and technical criteria [
58].
2.2. Outranking Methods
In the outranking method, the solution is closer to the human way of thinking. The basic assumption is that the decision-maker explores the assertion that “alternative is at least as good as alternative ”, and the only pre-existing preferences they have is an idea of the relative importance of the criteria.
The outranking methods employ a relational model that makes use of the outranking relation. This relationship involves comparing pairs of decision options and determining whether one option significantly outperforms the other. The Preference Ranking Organization Method for Enrichment Evaluations (PROMETHEE) and ELimination et Choix Traduisant la REalité (ELECTRE) methods are two prominent techniques [
47].
The PROMETHEE method was first introduced by Brans as an outranking method to rank and choose from a limited set of alternatives. Brans and Vincke further expanded the original method. A finite set of predetermined alternatives is evaluated using multiple criteria, with each criterion assigned a weight and a suitable preference function selected. The preference function expresses the degree of preference for different evaluations [
59]. Six methods, each with a specific purpose, have been developed within the PROMETHEE family to solve MCDM problems. PROMETHEE I is intended for partial ranking of alternatives, whereas PROMETHEE II is intended for full ranking. PROMETHEE III improves indifferences by allowing them to rank alternatives based on overlapping intervals computed from interval flows. PROMETHEE IV is used to rank alternatives completely or partially when the set of viable solutions is continuous [
60,
61]. PROMETHEE V maximizes the total outranking flow of alternatives for a continuous problem by using constraints [
62]. PROMETHEE VI incorporates the decision maker preferences, resulting in variations in criteria weights [
63]. The PROMETHEE method was used to evaluate the thermal performance of different building renovation alternatives based on multiple criteria, including cost, energy efficiency, environmental impact, and social acceptance using a case study of a masonry building in Algeria. The outcomes were used to rank the alternatives and determine the best renovation option [
64]. The PROMETHEE method was used to select energy retrofit measures for buildings and districts in a district of Milan, Italy, involving a comprehensive evaluation of the retrofit measures based on multiple criteria, such as energy performance, cost, environmental impact, and social factors. The proposed method is used to evaluate and rank different retrofit measures for buildings and the district as a whole. The findings of the study indicate that the proposed method can effectively identify the most appropriate retrofit measures for both individual buildings and the district, taking into account various criteria and stakeholder preferences [
65].
ELECTRE is a family of MCDM that was developed in the 1960s by Bernard Roy and his colleagues at the European consultancy company SEMA [
66]. The ELECTRE method, which was originally designed to select the best alternative from a given set, has evolved to address three key types of decision problems: choosing, ranking, and sorting [
67]. Although there are several versions of the ELECTRE method, they are all based on the same fundamental concepts but differ in their procedures and purpose. For instance, ELECTRE I was developed to solve choice problems [
68], whereas ELECTRE IS and ELECTRE IV were developed by introducing indifference and veto thresholds, respectively [
66]. ELECTRE II, an updated version of ELECTRE I, addresses ranking problems by defining two outranking relations. The primary distinction between ELECTRE I and ELECTRE II is how the outranking relation is defined. ELECTRE II introduces two outranking relations: weak outranking and strong outranking, whereas ELECTRE I considers only one type of outranking. ELECTRE III, which can be thought of as a fuzzy outranking relation, was developed to address the ranking problem [
69]. ELECTRE IV, a variant of ELECTRE III, was developed to deal with situations where criteria weights are difficult to define or are intentionally omitted [
70]. The ELECTRE III and ELECTRE IV methods construct outranking relations using different preference domains. The primary difference between the two techniques, however, is found in their distillation procedures. ELECTRE IV uses the number of criteria in each preference domain, whereas ELECTRE III uses a membership function value. A methodology was proposed to assist municipalities in Portugal for improving their energy sustainability through the development of an Energy Action Plan (EAP) using ELECTRE III to evaluate 16 actions in the framework [
71].
To address the sorting issue, the most recent members of the ELECTRE family, ELECTRE Tri [
72], ELECTRE Tri-C [
73], and ELECTRE Tri-nC [
74], were developed. ELECTRE Tri was developed to sort and categorize alternatives based on their ability to satisfy specific conditions. It assigns alternatives to different categories based on their similarity between the alternatives and the reference profiles which must be defined properly to ensure a robust categorization process [
72,
75]. The ELECTRE Tri method was used to classify 16 distinct sustainable energy technologies for electricity generation based on their compliance with the Clean Development Mechanism (CDM) using six different economic, environmental, and social criteria to sort the sixteen alternatives into three priority categories [
76]. A comparative evaluation was conducted by using ELECTRE Tri and the Data Envelopment Analysis (DEA) to evaluate 41 biogas industries in Austria. The industries were classified into four categories based on economic, environmental, and social criteria [
77]. In Portugal, the ELECTRE Tri method was used to assess the energy efficiency of school buildings [
78]. The ELECTRE Tri-nC technique was used to aid decision-making by categorizing alternative energy retrofit measures into three distinct categories for public buildings in the Apulia region of Italy [
23].
A multi-criteria analysis is a suitable approach for comparing and defining a retrofit program in order to select alternatives for the renovation of social housing. In this context, the ELECTRE Tri method is regarded as the most appropriate approach due to the following reasons. It is well-suited for complex problems with multiple criteria and alternatives, and makes use of a variety of qualitative and quantitative evaluation scales. It categorizes alternatives based on performance, rather than ranking them from best to worst, which enables the decision-makers to rank them subjectivity. The use of boundary reference profiles and categorization provides information on overall performance, allowing for an absolute classification of each alternative. This characteristic is especially important when choosing an energy renovation alternative which should have a high overall performance rather than just relative performance. Finally, the ELECTRE Tri method incorporates various thresholds as well as a user-defined cutting level, which take into account uncertainties in calculations and performance evaluations while avoiding compensation.
Previous research typically used crisp values to represent alternative performance and assumed that evaluation data for decision-making remains constant. However, this assumption does not reflect reality as external factors often cause data to vary. A comprehensive criteria system may include both qualitative and quantitative data in the decision matrix, making it challenging to use crisp numbers to carry out subjective evaluations. Due to the inherent uncertainty of human cognitive capabilities, limited knowledge, data estimations, and the complex nature of environments, decision-makers may find it difficult to express their opinions using exact and definite values. For instance, economic uncertainties may arise due to the fluctuation of raw material prices while environmental uncertainties may be caused by the imprecise measuring of environmental impacts. Often, uncertainty is ignored for avoiding complications in decision-making, resulting in solutions which are far away from reality. In order to address these shortcomings, it is necessary to incorporate uncertainty into decision-making [
79]. In practice, decision-making problems are often complex and uncertain, making it impossible to comprehensively understand and consider all aspects of the problem thoroughly. As a result, decision-makers may be presented with incomplete or imprecise information about alternative evaluations or the relative importance of each criterion for an in-depth analysis [
80]. Given these complexities, imprecision, and uncertainties, there is a need for the MCDM method that can effectively address these issues in the context of energy systems, which are acceptable to all the stakeholders.
ELECTRE Tri deals with fuzziness by assigning alternatives to categories. A fuzzy value represents a value with a degree of membership or truth assigned to it. It reflects the level of certainty or ambiguity associated with the value. Fuzzy values are commonly used in fuzzy logic, which allows for the modeling of vagueness or uncertainty. For instance, in fuzzy sets, a value can be partially true or partially belong to a particular set based on its degree of membership. However, these values are crisp, not imprecise. An imprecise value is characterized by a lack of precision or specificity. It refers to a value that has limited detail or lacks exactness. Imprecise values can arise due to various reasons, such as evaluation errors, approximations, or incomplete information. Unlike fuzzy values, imprecise values do not inherently involve assigning degrees of membership or truth. They are more about expressing a range or uncertainty in the value itself. The precision can be expressed using a probability distribution function (PDF) or a probability density function which provides information about the likelihood of different values occurring within a given range.
Therefore, the main aim of this paper is to introduce imprecision in the expression of values by using probabilistic distributions.