Managing Non-Homogeneous Information and Experts’ Psychological Behavior in Group Emergency Decision Making

After an emergency event (EE) happens, emergency decision making (EDM) is a common and effective way to deal with the emergency situation, which plays an important role in mitigating its level of harm. In the real world, it is a big challenge for an individual emergency manager (EM) to make a proper and comprehensive decision for coping with an EE. Consequently, many practical EDM problems drive group emergency decision making (GEDM) problems whose main limitations are related to the lack of flexibility in knowledge elicitation, disagreements in the group and the consideration of experts’ psychological behavior in the decision process. Hence, this paper proposes a novel GEDM approach that allows more flexibility for preference elicitation under uncertainty, provides a consensus process to avoid disagreements and considers experts’ psychological behavior by using the fuzzy TODIM method based on prospect theory. Eventually, a group decision support system (GDSS) is developed to support the whole GEDM process defined in the proposed method demonstrating its novelty, validity and feasibility.


Introduction
Emergencies are defined as events that suddenly take place, causing or having the possibility of provoking intense death and injury, property loss, ecological damage and social hazards.In recent years, various emergency events, such as earthquakes, floods, hurricanes, terrorist attacks, etc., have exerted severely negative impacts on human life and socio-economic development.When an emergency event (EE) occurs, Emergency Decision Making (EDM) is typically characterized by at least uncertainty, time pressure, and lack of information, resulting in potentially serious consequences [1].Since EDM plays a crucial role in alleviating the losses of properties and lives caused by EEs, it has received increasing attention from both government and academia because of the frequent occurrence of EEs, becoming a very active and important research field in recent years [1][2][3][4][5].
When an EE occurs, it is hard to collect the information related to the event and predict its evolution particularly in the early stage because of the inadequate and uncertain information.Consequently, it is too complex for just one emergency manager (EM) to make comprehensive judgments under emergency situations.Therefore, EDM requires multiple experts from diverse professional backgrounds (such as hydrological, geological, meteorological, sociological, demographic, etc.) to help the EM make a decision.This leads to Group EDM (GEDM) problems.Figure 1 shows a graphical general scheme for GEDM problems, in which experts play a role of think tank in supporting the EM who is in charge of the EE.
Symmetry 2017, 9, 234 2 of 25 Figure 1 shows a graphical general scheme for GEDM problems, in which experts play a role of think tank in supporting the EM who is in charge of the EE.In the real world, it is common that experts with different background and knowledge might have different attitudes or opinions over different alternatives concerning different criteria.Moreover, criteria defined in a GEDM problem might have different nature, qualitative or quantitative.Therefore, experts might hesitate and express their opinions or assessments by using different types of information according to their knowledge and criteria nature.The complexity of GEDM problems could imply not only the use of a non-homogeneous context in which multiple information types can be utilized by experts to elicit their knowledge and expertise, but also the modeling of uncertain assessments including hesitancy.However, current EDM approaches deal with the information using only one expression domain: numerical values [4], interval values [3] or linguistic information [6].
Traditionally, group decision making (GDM) approaches have shown that a solution can be obtained under disagreement among experts [7,8], however several experts may not accept the decision made because they might consider that their individual opinions have not been taken into account sufficiently [9,10].Such a situation could be very serious in GEDM driving either to deadlock in the decision or in a harmful decision.Hence, it seems necessary and reasonable to achieve a consensus among all experts involved in the GEDM problem before making the decision.The Consensus Reaching Process (CRP) is a way to integrate group wisdom into one and then reach an agreement among all experts in the GEDM problem.There are already different approaches [1,4,11] focused on how to reach as much agreement as possible among all experts participating in the problem.However, they have strict expression domains [1,11]; or time cost [4,5].However, time is extremely valuable, because it means lives and chances, thus emergency responses cannot afford a time-consuming consensus model.
Different behavioral experiments [12][13][14] show that human beings are usually bounded rationally in decision-making processes under risk and uncertainty.Therefore, psychological behavior plays a crucial role in the decision processes.Nevertheless, as far as we know, experts' psychological behavior is neglected in current GEDM [1,4,5,11,15] approaches.
According to the previous limitations presented in current GEDM methods, the aim of this paper is to propose a new GEDM method that overcomes them.Such a method is able: 1.To allow more flexibility for eliciting information by dealing with non-homogeneous information including hesitancy.2. To include a consensus model with low time cost to achieve an agreement among experts involved in the GEDM problem.3. To take into account experts' psychological behavior by means of the fuzzy TODIM method [16][17][18] based on prospect theory [14].In the real world, it is common that experts with different background and knowledge might have different attitudes or opinions over different alternatives concerning different criteria.Moreover, criteria defined in a GEDM problem might have different nature, qualitative or quantitative.Therefore, experts might hesitate and express their opinions or assessments by using different types of information according to their knowledge and criteria nature.The complexity of GEDM problems could imply not only the use of a non-homogeneous context in which multiple information types can be utilized by experts to elicit their knowledge and expertise, but also the modeling of uncertain assessments including hesitancy.However, current EDM approaches deal with the information using only one expression domain: numerical values [4], interval values [3] or linguistic information [6].
Traditionally, group decision making (GDM) approaches have shown that a solution can be obtained under disagreement among experts [7,8], however several experts may not accept the decision made because they might consider that their individual opinions have not been taken into account sufficiently [9,10].Such a situation could be very serious in GEDM driving either to deadlock in the decision or in a harmful decision.Hence, it seems necessary and reasonable to achieve a consensus among all experts involved in the GEDM problem before making the decision.The Consensus Reaching Process (CRP) is a way to integrate group wisdom into one and then reach an agreement among all experts in the GEDM problem.There are already different approaches [1,4,11] focused on how to reach as much agreement as possible among all experts participating in the problem.However, they have strict expression domains [1,11]; or time cost [4,5].However, time is extremely valuable, because it means lives and chances, thus emergency responses cannot afford a time-consuming consensus model.
Different behavioral experiments [12][13][14] show that human beings are usually bounded rationally in decision-making processes under risk and uncertainty.Therefore, psychological behavior plays a crucial role in the decision processes.Nevertheless, as far as we know, experts' psychological behavior is neglected in current GEDM [1,4,5,11,15] approaches.
According to the previous limitations presented in current GEDM methods, the aim of this paper is to propose a new GEDM method that overcomes them.Such a method is able: 1.
To allow more flexibility for eliciting information by dealing with non-homogeneous information including hesitancy.

2.
To include a consensus model with low time cost to achieve an agreement among experts involved in the GEDM problem.
Furthermore, the proposed method is implemented into a Group Decision Support System (GDSS) named GENESIS (Group EmergeNcy dEcision SupportIng System) based on FLINTSTONES (Fuzzy LINguisTic DeciSion Tools eNhacemEnt Suite) [19,20] that supports the whole GEDM process effectively and in a timely way, as shown in an illustrative example.
The remainder of this paper is organized as follows: Section 2 revises briefly different concepts about non-homogeneous information, CRPs and the fuzzy TODIM, which will be used in our proposal together with some related works.Section 3 presents the new GEDM method that integrates the novelties pointed out previously.Section 4 introduces the structure and components of the GDSS, GENESIS, and shows an example to illustrate the feasibility and validity of the proposed method.A sensitive analysis is also presented to study the robustness of the proposal.Section 5 presents some conclusions and future works.

Preliminaries
In this section, some basic concepts about non-homogeneous information and CRPs are revised in short in order that readers can understand easily the proposed GEDM model.It also reviews the fuzzy TODIM method that is used in the selection process of the proposal to obtain the ranking of alternatives considering experts' psychological behavior.Eventually, some related works to illustrate the importance of this research are reviewed.

Non-Homogeneous Information in Decision Making
Nowadays, real-world decision-making problems are more diversified and complex because of rapid socio-economic development, such as EDM problems [2,3], GEDM problems [1,15], and Intelligent GEDM problems [11].Those problems are usually defined under uncertainty because of inadequate and uncertain information.The complexity of these problems implies multiple experts with different backgrounds and knowledge participating in the decision process.
To model the uncertainty and non-homogeneous information, such as numerical values, interval values and linguistic terms elicited by experts, several approaches have been discussed in current GDM approaches.Some of them [21][22][23][24][25] make the computations using directly the non-homogeneous information [26] and others unify the information into one domain [24,27], being the most common one the linguistic information.Recently, the inclusion of hesitancy is becoming more important [28,29].
The concept of hesitant fuzzy linguistic term sets (HFLTS) [30] has been introduced to model experts' hesitation in qualitative settings and it has been applied in decision making problems obtaining successful results.It is defined as follows.
Definition 1 [30].Let S = s 0 , s 1 , . . ., s g be a linguistic term set, a HFLTS H S , is defined as an ordered finite subset of consecutive linguistic terms of S: Nevertheless, when experts provide their opinions and they feel hesitation among several linguistic terms, they do not use multiple linguistic terms, but linguistic expressions close to the natural language used by human beings.Hence, Rodríguez et al. [30] proposed the use of context-free grammars G H to build complex linguistic expressions more flexible and richer than single linguistic terms [29,30].The expressions produced by the context-free grammar G H , may be either a single linguistic term s i ∈ S, or comparative linguistic expressions S ll (see [29,30] for further detail).
In our proposal, the non-homogeneous information including experts' hesitancy will be transformed into a unified fuzzy domain to facilitate the computations (see Section 3.3).

Consensus Reaching Processes
GDM problems are usually solved by a selection process that obtains the best alternative as a solution to the problem.However, sometimes the goal of the problem is not to obtain the best solution, but an accepted one for all involved experts in the problem.In such a situation, it seems necessary to apply a CRP.Consensus can be defined as [9] "a state of mutual agreement among members of a group in which the decision made satisfies all of them".Therefore, a consensus process requires that experts modify their opinions making them closer to each other and this way to obtain a collective opinion that is satisfactory for all of them [10,[31][32][33][34].
In GEDM process, experts play a role of think tank in supporting EM to make a decision, recently several proposals [1,4,5,11,15,34] integrate CRP into GEDM to deal with experts' opinions in order to achieve an agreement among all experts involved and make a right decision.However, these approaches deal just with numerical values [1,5,25] and are not suitable for other types of information, additionally, they have a high time cost [4,5] because of the supervised feedback mechanism that should be avoided in GEDM problems.
Due to these reasons and the type of information used in our proposal, a fuzzy linear programming-based consensus model [34] with low time cost will be utilized to achieve consensus in our proposal.Before introducing the fuzzy linear programming model, it is necessary to revise the definition of the distance between fuzzy numbers, which will be used.
Definition 2 [34].Let A = (a 1 , a 2 , a 3 , a 4 ) and B = (b 1 , b 2 , b 3 , b 4 ) be two trapezoidal fuzzy numbers.The distance between A and B can be obtained as follows, the measure of d p can also be called as l p metric: where p is an integer ≥ 1.Let U be the universe of discourse and u = max(U) − min(U).The similarity between A and B can be defined as [34,35]: The dissimilarity is defined as c − S p (A, B), where c is a constant >1.The selection of c will influence in the final result of the aggregation.
Let A h = (a h1 , a h2 , a h3 , a h4 ) be the h-th expert's individual opinion and O be the overall opinion obtained by aggregating experts' individual opinions.
The fuzzy linear programming model is [34]: where α is an integer ≥ 1, w h denotes the h-th experts' importance.ε h denotes a threshold that means the maximum change that the h-th expert can make.d p ( A h , O) denotes the distance between A h and O, which can be obtained according to Equation (1).

Fuzzy TODIM Method
Some studies [12][13][14] have shown that human beings are bounded rationally especially in risk and uncertain decision processes and their psychological behavior is very important in the decision process.Therefore, it seems necessary to consider experts' psychological behavior in GEDM problem.
Symmetry 2017, 9, 234 5 of 23 TODIM method was proposed by Gomes and Lima [36,37]; it is a popular multi-criteria decision making (MCDM) method based on prospect theory [13] considering humans psychological behavior.It has been widely applied to solve different decision problems [38,39].To cope with complex problems and uncertain information in the real world, the TODIM method has been extended to deal with fuzzy MCDM problems [16,17].
In our proposal, we will use fuzzy TODIM method [16][17][18] based on prospect theory [14] because of its advantage and capability of capturing the experts' psychological behavior under fuzzy environment.
The fuzzy TODIM was introduced in [18] and briefly summarized below: Let P = {p 1 , p 2 , . . . ,p m } be a set of alternatives, C = {c 1 , c 2 , . . . ,c n } be a set of criteria and w c = (w c 1 , w c 2 , . . ., w c n ) be a weighting vector for criteria, where w c j denotes the weight of criterion c j .Let A = (a ij ) m×n be a fuzzy decision matrix, where denotes the rating of the alternative p i with respect to criterion c j .
Step 1: To normalize the fuzzy decision matrix A = (a ij ) m×n into the correspondent normalized fuzzy decision matrix G = (g ij ) m×n , according to the cost and benefit criteria.
Step 2: To determine the reference criterion c r and calculate the relative weight w jr of criterion c j (j = 1, 2, . . ., n), i.e., where w r = max w c j j = 1, 2, . . ., n .
Step 3: To calculate the dominance degree, Φ j (p i , p k ), of alternative p i , (i = 1, 2, . . ., m) over the remaining alternatives where θ is the attenuation factor of the losses, θ > 0. d(g ij , g kj ) denotes the distance between two fuzzy numbers g ij and g kj and F( * ) is a defuzzification function [18].

Related Works
In order to show the importance of GEDM in the real world, this subsection reviews several important studies in the literature that are related to our research [1,[4][5][6]40].
These studies have approached GEDM problems from different aspects.For example, Wang et al. [40] proposed a group emergency decision method based on prospect theory by using interval values.Xu et al. [4] proposed a consensus model for multi-criteria large group emergency decision making considering non-cooperative behaviors and minority opinions, wherein numerical Symmetry 2017, 9, 234 6 of 23 value is employed to represent experts' assessments.Ju et al. [6] presented a model to evaluate emergency response capacity by using 2-tuple fuzzy linguistic information.Xu et al. [5] proposed a conflict-eliminating approach for GEDM problem.Levy and Taji [1] utilized a group analytic network process to construct a group decision support system to support hazard planning and emergency management under incomplete information.
So far, there is not any proposal in previous GEDM approaches [1,4,5,11,40] that considers the non-homogeneous information together with the experts' hesitation due to uncertain information.In addition, those GEDM approaches [1,4,5,11] dealing with the consensus process; just make use of it with strict expression domains or high time cost.However, time is extremely valuable in EDM process, which means life and opportunity.Furthermore, experts' psychological behavior is neglected in current GEDM approaches [1,4,5] that plays an important role in the GEDM process under risk and uncertainty.
As pointed out in Introduction, our proposed method aims to overcome such limitations and shows the relevance of this research.

Managing Non-Homogeneous Information and Experts' Psychological Behavior in GEDM
This section introduces a new GEDM method to overcome the limitations pointed out in the Introduction regarding the current GEDM methods.This proposal is able: (i) to manage non-homogeneous information, including hesitant information (ii) to achieve consensus with low time cost, (iii) to take into account the experts' psychological behavior in the GEDM process.
Our proposal extends the general scheme of a GEDM process shown in Figure 1 by adding two new phases to deal with non-homogeneous information and calculate the criteria weights, and modifying another two phases (CRP and selection process), they are highlighted in Figure 2 by using dashed lines.
Symmetry 2017, 9, 234 7 of 25 6.Selection process-fuzzy TODIM method.Fuzzy TODIM method is applied to manage experts' psychological behavior in GEDM processes and obtain the ranking of alternatives.
According to the ranking of alternatives, the EM can select the best or more suitable alternative to cope with the EE.These phases are further detailed in the following subsections.

Definition Framework
The framework for GEDM problem is established by defining its main features and terminology.
{ , , , }  It consists of six main phases: 1. Definition framework.The main features, terminology and expression domains utilized in the proposed GEDM problem are defined.2.
Information gathering process.Opinions or assessments over different alternatives concerning different criteria and importance of criteria provided by experts using multiple types of information are gathered.

3.
Managing non-homogeneous information.The non-homogeneous information gathered is unified into a fuzzy domain to deal with the decision computations.4.
Consensus reaching process.A fuzzy linear programming-based consensus model [34] is utilized to deal with fuzzy information and achieve an agreement among all the experts involved in the GEDM problem. 5.
Calculation of criteria weights.Criteria weights are calculated by using experts' opinions.6.
Selection process-fuzzy TODIM method.Fuzzy TODIM method is applied to manage experts' psychological behavior in GEDM processes and obtain the ranking of alternatives.
According to the ranking of alternatives, the EM can select the best or more suitable alternative to cope with the EE.These phases are further detailed in the following subsections.

Definition Framework
The framework for GEDM problem is established by defining its main features and terminology.

•
w c = (w c 1 , w c 2 . . ., w c n ): the weighting vector for the criteria, where w c j denotes the criterion weight of the j-th criterion/attribute, satisfying • E = e 1 , . . ., e K : the set of experts, where e h denotes the h-th expert, h = 1, 2, . . ., K.
• w h = (w h 1 , w h 2 . . ., w h n ): the assessment vector of criteria importance provided by the expert e h , where w h j represents the importance provided by the h-th expert on the importance of criterion c j , h = 1, 2, . . ., K, j = 1, 2, . . ., n (see Remark 2).

Remark 1.
In our method, experts can provide their opinions/assessments by utilizing multiple expression domains (numerical values (N), interval values (I), linguistic terms (S) and comparative linguistic expressions (S ll )) according to their background, degree of knowledge, hesitancy and criteria nature.
Remark 2. In GEDM problems, the criteria need to be weighted.However, due to the complexity of EEs, it is not easy to collect the related information about the criteria, especially at the early stage of EE.In such situation, a possible way is to calculate the criteria weights from experts' knowledge and experience.In this proposal, experts can express their opinions about the criteria importance by utilizing either S ll or S, because S ll and S are more flexible and similar to the natural language utilized by human beings in real-world EE situations, and they are suitable for GEDM problems defined in uncertain contexts.

Information Gathering Process
Once the framework of GEDM problem is defined, experts can provide their judgments over the emergency alternatives p i concerning each criterion c j and the importance over different criteria (see Tables 1 and 2) by using the expression domains defined previously.For example, the information on alternatives with respect to criteria provided by expert e 1 can be expressed as: The information on the importance of criterion c j provided by expert e 1 can be expressed as: where w 1 j ∈ S = s 0 , s 1 , . . ., s g S ll , j = 1, 2, . . ., n.

Managing Non-Homogeneous Information
As it was stated in Section 2.1, our proposal deals with non-homogeneous information including hesitant information.Therefore, the expression domains used by experts to provide their assessments in this proposal are the following ones:

•
Numerical value.Assessments represented as numerical values N belonging to a specific numerical scale R, i.e., N ∈ R.  [29,30].
In order to make computations with non-homogeneous information elicited by experts, it is necessary to conduct the different types of information into a unique expression domain.Most approaches unify the non-homogeneous information into linguistic information [23,24].Nevertheless, in order to keep the uncertainty provided by experts involved in a GEDM problem, we unify the information into a fuzzy domain r h ij , by introducing some transformation functions (see Figure 3).( , , , ) ( , , , ) The following transformation functions are defined to unify the information into a fuzzy domain.The following transformation functions are defined to unify the information into a fuzzy domain.

1.
For numerical values N, they are first normalized into the interval [0, 1] and then a transformation function T N is utilized to transform them into trapezoidal fuzzy numbers.Let R be the domain of the numerical values, N h ij be the numerical value provided by the h-th expert over the i-th alternative concerning the j-th criterion, N h ij is normalized into the interval [0, 1], as follows: The transformation function T I is defined as follows.
Definition 4.An interval value is transformed into a trapezoidal fuzzy number by utilizing a transformation function T I : where β, β ∈ [0, 1] and β ≤ β.

3.
The linguistic terms s k ∈ S = s 0 , s 1 , . . ., s g , are represented by trapezoidal fuzzy numbers.Therefore, the expert e h provides his/her opinions over the i-th alternative concerning the j-th criterion as a linguistic term s k that is represented by a trapezoidal fuzzy number r h ij = (r h1 ij , r h2 ij , r h3 ij , r h4 ij ).

4.
The comparative linguistic expressions, x h ij ∈ S ll , are transformed into HFLTS by E G H (•) and its fuzzy envelop env F (•) obtained by [41], E G H is a function that transforms the linguistic expressions obtained by using G H , into HFLTS [30].
T h ij (a, b, c, d) is a trapezoidal fuzzy membership function corresponding to the trapezoidal fuzzy number r h ij = (r h1 ij , r h2 ij , r h3 ij , r h4 ij ).

Consensus Reaching Process
As stated in Section 2.2, a fuzzy linear programming-based consensus model [34] is used in our proposal to achieve an agreement among all the experts involved in the problem.This model is able to deal with fuzzy information and update experts' opinions automatically without a supervised feedback mechanism [33], which is adequate for GEDM problems defined in fuzzy environment (see Figure 4).
As stated in Section 2.2, a fuzzy linear programming-based consensus model [34] is used in our proposal to achieve an agreement among all the experts involved in the problem.This model is able to deal with fuzzy information and update experts' opinions automatically without a supervised feedback mechanism [33], which is adequate for GEDM problems defined in fuzzy environment (see Figure 4). . . .( , ) , 1, 2,..., ; 1, 2,..., , 1, 2,..., .

K h h p i j i j h h h p i j i j j w c S O r s t d O r h K j n i m
According to Figure 4, the input information is represented in a fuzzy domain, which is obtained from the previous phase.It consists of three steps that are further detailed as follows: 1. Computing overall opinion.As introduced in Section 2.2, before applying fuzzy linear The fuzzy linear programming-based consensus model is given by, According to Figure 4, the input information is represented in a fuzzy domain, which is obtained from the previous phase.It consists of three steps that are further detailed as follows: 1.

2.
Computing agreement level.In this step, there are two processes: (i) Computing the distance and similarity.The distance, d p (O ij , r h ij ), between the overall opinion, O ij , and the individual opinion, r h ij , and its similarity, S p (O ij , r h ij ), can be computed according to Equations ( 1) and (2) respectively.(ii) Determining the threshold values.The threshold value, ε h j , is an important factor in the fuzzy linear programming model, which means the maximum change that the expert e h can make concerning the j-th criterion.There are different ways to determine the threshold value ε h j [34,35].In this paper, ε h j will be calculated by the h-th experts' familiarity degree concerning the j-th criterion using a linguistic term set S = s 0 , s 1 , . . ., s g , because the linguistic terms are flexible and able to deal with uncertain and vague information.The more familiar the expert is with the criterion, the less change he/she will make.Therefore, a negative operator is applied to the familiarity degree to obtain the threshold, which is defined as follows: Definition 5. Let S = s 0 , s 1 , . . ., s g be a linguistic term set, a negative operator: Neg(s k ) = s q , such that q = g − k, k = {0, . . . ,g}. (16) where g + 1 is the cardinality of S.

3.
Control consensus.When all constraints meet the conditions in Equation ( 14), it means that the consensus has been reached, and the final overall opinion, O ij , is the aggregated collective opinion denoted as CO = (CO ij ) m×n Which will be used as input in the selection process.

Calculation of Criteria Weights
In this phase, the weights of criteria, w c j , are calculated by utilizing the experts' assessments provided over the criteria importance which were unified into a fuzzy domain.Figure 5 shows the process of computing criteria weights.Three steps are comprised: 1. Global fuzzy weights.The fuzzy weights obtained for the criterion j c are aggregated by using a max-min composition [43,44]: where Three steps are comprised: 1.
Global fuzzy weights.The fuzzy weights obtained for the criterion c j are aggregated by using a max-min composition [43,44]: where T h j is the fuzzy membership function of w h j , j = 1, 2, . . ., n, and Γ is the universe of discourse.
Suppose that three experts provide their opinions w 1 1 , w 2 1 and w 3 1 concerning the criterion c 1 , the corresponding fuzzy membership functions are T 1 1 , T 2 1 and T 3 1 respectively.According to Equation ( 17), µ T h j (σ) is the area under the bold black line shown in Figure 5a.

2.
Defuzzification.The COG method [42] is utilized to calculate the weighting value of the global fuzzy weights: where Γ is the universe of discourse.
For criterion c 1 , Equation ( 18) means that the center of gravity for each small trapezoid (see Figure 5b) is computed and the COG 1 can be obtained by the arithmetic mean of the sum of center of gravity of all small trapezoids.

3.
Normalization.When COG j of all criteria are obtained, the criteria weights w c j are calculated by using the following equation: where

Selection Process-Fuzzy TODIM Method
As it was pointed out in Introduction, the experts' psychological behavior are neglected in current GEDM approaches.However, our proposal takes into account experts' psychological behavior by means of fuzzy TODIM based on prospect theory dealing with the problem defined in a fuzzy environment.
Once the criteria weights w c j and the aggregated collective opinions CO = (CO ij ) m×n are obtained, the fuzzy TODIM method is applied to obtain a ranking of alternatives and select the best one.To do so, the fuzzy TODIM method introduced in Section 2.3 is used.The step 1 is not necessary to do it, because the collective opinion matrix CO = (CO ij ) m×n , is already normalized and the step 3 has been modified to adapted it to GEDM problem as it is shown below: Step 3: To calculate the dominance degree, Φ j (p i , p k ), of alternative p i (i = 1, 2, . . ., m) over the remaining alternatives p k (k = 1, 2, . . ., m) concerning criterion c j (j = 1, 2, . . ., n), i.e., CO ij denotes the trapezoidal fuzzy number ij ) that represents the information about the i-th alternative concerning the j-th criterion.m(CO ij ) and m(CO kj ) denotes the defuzzified value of the fuzzy number CO ij and CO kj , respectively, where [42].d(CO ij , CO kj ) denotes the gains or losses of the alternative p i over p k concerning the criterion c j , where For benefit criteria, d(CO ij , CO kj ) denotes the gains with m(CO ij ) − m(CO kj ) ≥ 0 or losses with m(CO ij ) − m(CO kj ) < 0, respectively.Φ j (p i , p k ) can be expressed as: Symmetry 2017, 9, 234 14 of 23 For cost criteria, d(CO ij , CO kj ) denotes the gains with m(CO ij ) − m(CO kj ) ≤ 0 or losses with m(CO ij ) − m(CO kj ) > 0, respectively, Φ j (p i , p k ) can be expressed as: Finally, the ranking of alternatives can be determined according to their overall dominance degree.

Group Decision Support System for GEDM Based on GENESIS: Case Study
EEs are always characterized by complexity, risk and uncertainty, and a delayed or wrong decision may result in extremely serious consequences.Thus, it is necessary to make a decision in short time, taking into account the opinions of multiple experts involved in the problem.
In order to deal properly with real-world GEDM problems and make timely and effective decisions, we have implemented a GDSS named GENESIS to support the proposed GEDM method.This section introduces the structure and components of GENESIS (see Figure 6); and shows a case study to illustrate the applicability and robustness of the proposed method by using GENESIS.
Symmetry 2017, 9, 234 Finally, the ranking of alternatives can be determined according to their overall dominance degree.

Group Decision Support System for GEDM Based on GENESIS: Case Study
EEs are always characterized by complexity, risk and uncertainty, and a delayed or wrong decision may result in extremely serious consequences.Thus, it is necessary to make a decision in short time, taking into account the opinions of multiple experts involved in the problem.
In order to deal properly with real-world GEDM problems and make timely and effective decisions, we have implemented a GDSS named GENESIS to support the proposed GEDM method.This section introduces the structure and components of GENESIS (see Figure 6); and shows a case study to illustrate the applicability and robustness of the proposed method by using GENESIS.

GENESIS: (Group EmergeNcy dEcision SupportIng System)
Since our proposal deals with non-homogeneous and fuzzy information, in order to facilitate the transformation of non-homogeneous information and the decision process of the proposed method in a simple and fast manner, GENESIS has been implemented to use different components and specific functions based on FLINTSTONES [19,20] developed by using Eclipse Rich Client Platform (Eclipse RCP), which is a component-based application [46], a platform that builds and deploys rich client applications.
GENESIS consists of six components (see Figure 6): (1) Two components taken from FLINTSTONES are adapted to define different transformation functions to unify non-homogeneous information into a fuzzy domain and show its user interface respectively.(2) Two new components are defined for the resolution processes and show their interface to compute the criteria weights and obtain the consensus opinion based on fuzzy linear programming-based consensus model.(3) Two new components are introduced to carry out the steps defined in the fuzzy TODIM method such as the computation of the relative weights, dominance degree etc., and show its user interface.

Case Study
In order to demonstrate the applicability of the proposed GEDM method, this section presents an example adapted from a big explosion of Tianjin Port that occurred in the north of China (Background Information Source.http://www.safehoo.com/Case/Case/Blow/201602/428723.shtml).
The blasts took place at a warehouse at the port that contained hazardous and flammable chemicals, including calcium carbide, sodium cyanide, potassium nitrate, ammonium nitrate and sodium nitrate, etc.
In this problem, we assume that six experts are invited to participate in the EDM process to support the EM to make the final decision.In order to solve this GEDM problem, we have used the proposed method by means of GENESIS.

Framework Definition
When the explosion occurred, the local government organized people located within two kilometers of the explosion area, evacuated them to safety areas and sent short messages to inform people in potentially dangerous areas to prepare for evacuation and keep distances from the dangerous area.Five emergency alternatives {p 1 , p 2 , . . . ,p 5 } were put forward taking into account five criteria {c 1 , c 2 , . . . ,c 5 }, which are described in Tables 3 and 4, respectively.

Managing Non-Homogeneous Information
All experts' assessments are transformed into trapezoidal fuzzy numbers by utilizing the transformation functions defined in Section 3.2.Therefore, GENESIS makes all the necessary computations to unify the non-homogeneous information into a fuzzy domain in a simple and fast way. Figure 9 shows the interface of such a process.At least hi hi hi mi li Note: "bt" means between in Tables 5 and 6.All experts' assessments are transformed into trapezoidal fuzzy numbers by utilizing the transformation functions defined in Section 3.2.Therefore, GENESIS makes all the necessary computations to unify the non-homogeneous information into a fuzzy domain in a simple and fast way. Figure 9 shows the interface of such a process.

Consensus Reaching Process
The fuzzy linear programming-based consensus model is utilized to achieve the consensus among all experts involved in the GEDM problem and obtain the collective opinion that will be used in the selection process.Before applying the CRP, the threshold values in Equation ( 14) should be determined.
Let S 4 = {s 0 : none (n), s 1 : very unsure (vu), s 2 : unsure (u), s 3 : medium (m), s 4 : sure (s), s 5 : very sure (vs), s 6 : absolutely sure (as)} be the linguistic term set (see Figure 10) used by experts to express their familiarity degree for each criterion.The fuzzy linear programming-based consensus model is utilized to achieve the consensus among all experts involved in the GEDM problem and obtain the collective opinion that will be used in the selection process.Before applying the CRP, the threshold values in Equation ( 14) should be determined.
Let 4  S = { 0 s : none (n), 1 s : very unsure (vu), 2 s : unsure (u), 3 s : medium (m), 4 s : sure (s), 5 s : very sure (vs), 6  s : absolutely sure (as)} be the linguistic term set (see Figure 10) used by experts to express their familiarity degree for each criterion.Expert h e provides his/her familiarity degree for the criterion j c by using a linguistic term 4 k s S ∈ .According to Equation ( 16), 6 q k s s − =  , then, the COG of q s  is regarded as the threshold value for the expert h e about the criterion j c , shown in Table 8.Table 7 is the familiarity degree provided by all experts for each criterion.When all constraints meet the conditions in Equation ( 14), the aggregated collective opinion,  Expert e h provides his/her familiarity degree for the criterion c j by using a linguistic term s ∈ S 4 .According to Equation ( 16), s q = s 6−k , then, the COG of s q is regarded as the threshold value for the expert e h about the criterion c j , shown in Table 8.Table 7 is the familiarity degree provided by all experts for each criterion.For example, expert e 1 provides his/her familiarity degree for the criterion c 1 , s 5 = vs, then according to Equation ( 16), s 1 = vu, and, the COG of s 1 is 0.17, i.e., ε 1 1 = COG(vu) = 0.17, it means that the maximum change that expert e 1 can make is 0.17 for the criterion c 1 .
In this GEDM problem, experts' weights w h have the same importance.The parameters p, α and c used in Equation ( 13) are set, p = 2, α = 2 and c = 1.5 respectively [36].
When all constraints meet the conditions in Equation ( 14), the aggregated collective opinion, CO = (CO ij ) 5×5 , is obtained.

Calculation of Criteria Weights
Using Table 6, the criteria weights are calculated by GENESIS (see Figure 11).6, the criteria weights are calculated by GENESIS (see Figure 11).CO CO × = are obtained, fuzzy TODIM method is applied to calculate the overall dominance degree for each alternative and then the ranking of the alternative is obtained.Figure 12 shows the results obtained for each step of the fuzzy TODIM method.

Selection Process-Fuzzy TODIM Method
Once the criteria weights w c j and the aggregated collective opinion CO = (CO ij ) m×n are obtained, fuzzy TODIM method is applied to calculate the overall dominance degree for each alternative and then the ranking of the alternative is obtained.Figure 12 shows the results obtained for each step of the fuzzy TODIM method.The ranking of alternatives is obtained according to the overall dominance degree for each alternative:  The ranking of alternatives is obtained according to the overall dominance degree for each alternative: p 4 p 2 p 3 p 1 p 5 Finally, the EM can select p 4 , "joint rescue" as the best alternative for the emergency response.

Sensitivity Analysis
To illustrate the feasibility and validity of the proposed method, sensitivity analysis is carried out in a similar way to other TODIM-based proposals in literature [38].
In this case, two aspects of sensitivity analysis are conducted: (i) the analysis about the weight evolution of the most important criterion and (ii) the evolution of attenuation factor θ.
For the weight evolution of the most important criterion, in this case study, it is C 1 .First, let the weight of criterion C 1 be equal to the second most important criterion, i.e., C 1 = 0.236, then changing the weight of C 1 from 0.236 to 1.The reason for doing this is that the most important criterion is always the same and never changes, hence the relative weights are always calculated according to the same criterion.Applying these changes, the ranking of alternatives does not change.
The attenuation factor θ evolution, is changed from 1 to 15.When these alterations are carried out, there is no any change in the ranking of alternatives.
From the sensitivity analysis, it is easy to see that the ranking of alternatives is consistent with each other.It shows the feasibility, validity and the robustness of the proposed method.

Conclusions and Future Works
The non-homogeneous information including experts' hesitancy is not available in current GEDM approaches.To fill such a gap, this paper has taken into account the non-homogeneous information including experts' hesitancy, which extends the scope of non-homogeneous information defined in previous approaches.In order to make computations with non-homogeneous information defined in our proposal, different transformation functions have been presented to unify it into fuzzy numbers.A fuzzy linear programming-based consensus model with a new way for determining the threshold values has been applied to obtain the collective opinion, which is suitable for dealing with the fuzzy information.Experts' psychological behavior is very important in decision processes under risk and uncertainty; however, it is neglected in current GEDM approaches.To address such an important issue, fuzzy TODIM method has been utilized in our proposal due to its advantage of capturing human beings psychological behavior.Furthermore, a case study has been provided to illustrate the feasibility and validity of the proposed method by using GENESIS supporting the whole decision process.
Future research could be the use of computer science and Internet technology for supporting the EDM based on big data, which will lead to more reliable decisions.Furthermore, game theory [47,48] can be applied to deal with the emergency problems under uncertainty.

Figure 1 .
Figure 1.The general scheme of GEDM process.

Figure 1 .
Figure 1.The general scheme of GEDM process.
m P p p p : the set of emergency alternatives, where i p is the i-th emergency alternative, =  1, 2, , i m. c : the set of criteria/attributes, where j c denotes the j-th criterion/attribute, weighting vector for the criteria, where j c w denotes the criterion weight of the j-th criterion/attribute, satisfying

10 )
2, . . ., m, j = 1, 2, . . ., n. Definition 3. A numerical value is transformed into a trapezoidal fuzzy number by utilizing a transformation function T N : T N : [0, 1] → r h ij (Symmetry 2017, 9, 234 10 of 23 T N (ϑ) = r h ij = (ϑ, ϑ, ϑ, ϑ) 2. The interval values I are first normalized into [0, 1] and then a transformation function T I is utilized to transform them into trapezoidal fuzzy numbers.Let [ξ L , ξ U ] be the domain of the interval values, let [d L , d U ] h ij be the interval values provided by the h-th expert over the i-th alternative concerning the j-th criterion, where [d L , d U ]

=Figure 4 .
Figure 4.The process of fuzzy linear programming-based consensus model.

Figure 4 .
Figure 4.The process of fuzzy linear programming-based consensus model.

Figure 9 .
Figure 9. Unification results of non-homogeneous information.

Figure 9 .
Figure 9. Unification results of non-homogeneous information.

For example, expert 1 e 1 c
provides his/her familiarity degree for the criterion 1 In this GEDM problem, experts' weights h w have the same importance.The parameters p , α and c used in Equation (13) are set, 2

Figure 11 .
Figure 11.Criteria weights w c j obtained by GENESIS.

Symmetry 2017, 9 , 234 22 of 25 Figure 12 .
Figure 12.The results of different steps based on fuzzy TODIM by using GENESIS.

Finally, the EM can select 4 p
, "joint rescue" as the best alternative for the emergency response.4.2.7.Sensitivity Analysis

Figure 12 .
Figure 12.The results of different steps based on fuzzy TODIM by using GENESIS.

Table 1 .
Assessments over alternative p i concerning criterion c j .

Table 2 .
Importance over criteria c j .

Table 5 .
Assessments provided by all experts on different alternatives concerning each criterion.

Table 6 .
The importance of each criterion provided by each expert.

Table 7 .
The familiarity degree provided by all experts for each criterion.

Table 5 .
Assessments provided by all experts on different alternatives concerning each criterion.

Table 6 .
The importance of each criterion provided by each expert.

Table 7 .
The familiarity degree provided by all experts for each criterion.

Table 8 .
Threshold values for s q transformed by negative operator.