1. Introduction
With the increasing awareness of environmental protection, more and more enterprises have integrated green thinking into their daily production and operation management [
1,
2]. In such a context, the sustainable supply chain management (SSCM) concept emerged, which aims to improve the economic, environmental, and social performance while reducing environmental pollution and eliminating the waste of resources in procurement, manufacturing, distribution, and sales [
3,
4]. Many enterprises have recognized the necessity of adopting sustainable development measures and started to change their practices to achieve sustainable development [
5,
6,
7]. Selecting qualified sustainable suppliers and determining optimal order quantities play a pivotal role in improving the performance of a sustainable supply chain, as companies are held responsible not only for their own actions, but for the adverse environmental impacts of their partners [
8,
9]. Recently, many researchers have tried to integrate sustainable supplier selection with order allocation to help enterprises enhance their sustainable performance [
10,
11,
12,
13].
For a sustainable supplier selection problem, the green performance of alternative suppliers is often evaluated based on multiple criteria. To handle ambiguity information in the sustainable supplier selection, many uncertainty theories have been utilized in the literature, such as fuzzy sets [
14], hesitant fuzzy sets [
6], intuitionistic fuzzy sets [
15], cloud mode [
16], and interval type-2 fuzzy sets [
17]. However, these methods are insufficient to describe complex evaluation information in detail. Besides, decision makers’ evaluation information may be lost in the information transform process. To address these issues, Gou et al. [
18] proposed the double hierarchy hesitant linguistic term sets (DHHLTSs), which are composed of two hierarchy linguistic term sets. In a DHHLTS, the first hierarchy is a classical feature linguistic labels and the second hierarchy is the characteristic or detailed supplementary for the first hierarchy. Using the DHHLTSs, the complicated evaluation information from decision makers can be described more detail. In addition, decision makers can utilize DHHLTSs to express their opinions comprehensively. Given these advantages, many researchers have adopted the DHHLTSs to handle complex uncertain linguistic information in various decision-making problems [
19,
20,
21,
22,
23].
Generally, sustainable supplier selection is regarded as a multi-criteria decision making (MCDM) problem. Therefore, a number of MCDM methods have been suggested to solve the sustainable supplier selection problems [
24,
25,
26,
27]. Decision field theory (DFT), proposed by Busemeyer et al. [
28], is a dynamic MCDM approach that can better simulate decision making process under uncertain environment. Besides, the DFT method can formulate the change of decision makers’ preference intensity over time [
29]. Recently, the DFT has been utilized for decision making in different fields. For example, Lee and Son [
30] proposed an extended DFT with social learning for modeling and analyzing human behaviors in social networks. Song et al. [
31] proposed a hesitant fuzzy DFT for the route selection of the arctic northwest passage. Hao et al. [
32] developed an intuitionistic fuzzy decision-making framework based on DFT and applied it to address investment decision making problems. In addition, Abad et al. [
33] estimated expected human attention weights based on the DFT and Qin et al. [
34] analyzed park-and-ride decision behavior by using the DFT.
According to the above discussions, this paper first proposes a novel sustainable supplier selection model by combining DHHLTSs and DFT to select qualified sustainable suppliers to work with. Further, a multi-objective linear programming (MOLP) model is constructed for obtaining suitable order quantities for the selected sustainable suppliers. More specifically, the DHHLTSs are applied for evaluating the green performance of suppliers with respect to each evaluation criterion. An extended weighting method is developed to compute the weights of evaluation criteria according to comparative importance evaluations of decision makers. Then, the DFT is used to choose the best portfolio of sustainable suppliers among alternatives. Finally, a MOLP model based on quantity discount is constructed to obtain suitable order sizes for the appropriate sustainable suppliers. The remainder of this article is structured as below.
Section 2 reviews the existing researches on sustainable supplier selection and order allocation (SSS&OA).
Section 3 presents the basic concepts of DHHLTSs. The developed SSS&OA model is described in
Section 4. In
Section 5, an illustrative case application in the electronic industry is utilized to demonstrate the proposed model.
Section 6 provides conclusions of this study and suggestions for future research.
4. The Developed SSS&OA Model
This section proposes a new integrated SSS&OA model for selecting qualified sustainable suppliers and optimally allocating reasonable order sizes to meet different procurement criteria. To sum up, three stages are included in the proposed model, which include computing the weights of selection criteria based on the PIPRECIA (pivot pairwise relative criteria importance assessment) method [
45], determining the ranking of candidate sustainable suppliers by an extended DFT, and allocating reasonable order sizes to the selected suppliers using a MOLP model.
Figure 1 displays a flow chart of the proposed SSS&OA model.
For a SSS&OA problem, suppose that there are m candidate suppliers , n considered criteria and g decision makers . Assume that is the double hierarchy hesitant linguistic (DHHL) evaluation matrix of DMg, where is a DHHLE denoting the evaluation for supplier with respect to based on the linguistic term sets and . The decision makers’ weights are assumed as with and . Next, the detailed procedure of the developed SSS&OA model is described.
Stage 1. Determine criteria weights by the PIPRCIA method.
The PIPRCIA method, developed by Stanujkic et al. [
45], is a new subjective weighting method to determine criteria weights according to the judgements of decision makers. This method allows decision makers to evaluate criteria when the expected criteria importance ranking is difficult or impossible to reach a consensus [
46]. It enables decision makers to easily involve in the evaluation process and can improve reliability of the collected data. Hence, the PIPRCIA method is adopted to obtain the subjective weights for the
n evaluation criteria. The detailed steps are given as follows:
Step 1.1. Rank the selection criteria in descending order.
This step is to determine the order of the n evaluation criteria in descending order based on their importance. Since the consensus on the expected importance of criteria is not easy to reach in the actual group supplier selection problem, decision makers are allowed to evaluate the criteria comparative importance without regard to their preliminary ordering.
Step 1.2. Determine the comparative importance of criteria.
Suppose
is the DHHL comparative importance between criteria
and
provided by decision maker
using the linguistic term sets
and
, for
j = 1,2,…,
n−1;
g = 1,2,…,
q. Then, the aggregated comparative importance of criteria can be determined by
Step 1.3. Compute the relative weights of selection criteria.
The relative weight of each criterion
wj (
j = 1,2,…,
n) is calculated through the following formula:
where
is the membership degree of
determined by Equation (4).
Step 1.4. Calculate the normalized weights of selection criteria.
The normalized weights of the
n selection criteria
are determined by
Stage 2. Select qualified sustainable suppliers by the DFT.
The DFT, developed by Busemeyer et al. [
28], is a dynamic decision-making approach. It describes how decision makers’ preferences evolve over time until a decision is reached. In this section, we extended the DFT with DHHLTSs to determine the ranking of green suppliers.
Step 2.1. Aggregate the decision makers’ evaluations.
In this step, the individual DHHL matrixes of decision makers
are aggregated to construct a collective DHHL evaluation matrix
, where
Step 2.2. Calculated the distance matrix between sustainable suppliers.
The distance matrix
between the
m sustainable suppliers can be obtained by
Step 2.3. Determine the feedback matrix .
The feedback matrix
describes the memorizing effect of the competitive relationship between different sustainable suppliers, in which diagonal elements represent the self-impact of a supplier, while non-diagonal elements express the competitive effects between suppliers. The feedback matrix
is determined by
where
I is an identity matrix. The parameter
describes the discriminable capability and it lies in the interval [0.01, 1000] [
32], and parameter
represents the competitive impact between suppliers and belongs to [0, 1] [
47].
Step 2.4. Determine the contract matrix .
The contract matrix
is determined as follows:
Step 2.5. Obtain the ranking of sustainable suppliers.
Suppose
is a preference vector of sustainable suppliers at the time
t, where
represents the preference value of
Ai at the time
t and can be calculated by
Then, the preference vector
at the time
t +
h is calculated by
where
h represents an arbitrary short time step and
will approximate the diffusion process when
h approaches zero.
is the DHHL valence vector and it can be computed by
where
,
is the considered criteria weights at time
t +
h, and
is randomly generated in the interval [
− 0.05,
+ 0.05].
The final decision results are concluded when the decision time
t reaches the threshold criteria [
32]. The ranking of the
m sustainable suppliers are determined according to the decreasing order of the
values and the largest
corresponds to the best supplier.
Stage 3. Allocate order sizes to the qualified sustainable suppliers.
In this stage, we establish an MOLP model with quantity discount to determine the order size for each selected sustainable supplier. The objectives of the developed model include minimizing the total cost of purchasing, minimizing the total defect quantity of product, minimizing the total delay delivery quantity of product, and maximizing the total sustainable value of purchasing simultaneously. The developed MOLP model is given below.
Step 3.1. Define related indexes and parameters.
Indexes
p: Index of products p, .
i: Index of supplier i, .
r: Index of discount intervals, .
Parameters:
: Ordering cost of product p offered by green supplier.
: Purchase price of product p offered by green supplier i in discount interval r
: Lower quantity bound of the discount interval r in product p provided by supplier i.
: Unit transportation cost of product p offered by green supplier i.
: Unit holding cost of product p.
: Demand of product p.
: Capacity of pth product for ith green supplier.
: Defective rate of product p offered by green supplier i.
: Maximum defective rate of product p can be accepted.
: Delay rate of supplier p in product i.
: Maximum acceptable delay rate of product p.
: Priority value of sustainable supplier i obtained by the DFT.
Decision variables:
: Order size of product p purchased from sustainable supplier i at discount interval r.
: Binary variable (=1) if product p is offered by sustainable supplier i at discount interval r, 0 otherwise.
Step 3.2. Construct an MOLP model considering multiple objectives.
To allocate order for each selected sustainable supplier, the following MOLP model can be established:
The objective function Equation (21) is established for minimizing the entire cost of purchasing. Equations (22) and (23) are the measure of defective quantity and delayed delivery quantity of product, respectively. The objective function of Equation (24) maximizes the total sustainable value of purchasing. Constraint sets in Equation (25) state that the total purchase number of each product must satisfy the demand quantity of the product. The capacity constraint sets described in Equation (26) show that the total quantity of product p purchased from the ith supplier should not exceed its capacity. Equations (27) and (28) are the constraints of discount interval, where the product is allowed to purchase at a certain price value. The constraint sets in Equation (29) represent that the total defective amount of product p must be lower than the maximum acceptable defective amount. The total delayed delivery number of product p cannot exceed the maximum acceptable delayed amount as given in Equation (30).
Step 3.3: Determine optimum order quantities of the selected suppliers.
In the MOLP model, all goals may not be realized under system constraints simultaneously. Thus, the priority and importance of objectives need to be considered. In this paper, the LP-metrics method [
40] is utilized to solve the established MOLP model.
Suppose
are the optimal solutions of four objective functions subject to Equations (25)–(31), respectively. Let
be the relative importance of four objective functions given by decision makers, satisfying
and
. The MOLP model constructed in the last step can be transformed into a single objective programming by
Through solving this single objective programming model, the order quantity of each selected sustainable supplier can be determined.
5. Case Study
In this section, we first present an example to illustrate the performance of our SSS&OA model, and then conduct further analysis to compare the proposed model with other methods.
5.1. Illustration of the Proposed Model
This section applies the developed SSS&OA model to an electronics manufacturing firm located in Shanghai, China. The company’s products include semiconductors, sensors, electronic components, and industrial control products. Under great competitive pressure from the global electronics market, the company decided to manufacture sustainable and environment friendly products to improve its performance of sustainable supply chain management. Selecting qualified sustainable suppliers and allocating optimal orders are two significant activities to solve this problem.
In this case, five potential suppliers
are selected for the further evaluation. These sustainable suppliers are evaluated according to 10 criteria
from three different dimensions (see
Table 1). Then, five decision makers
are involved in the evaluation process based on the linguistic term sets
S and
O as defined below. The relative importance of criteria is evaluated by utilizing the linguistic term sets
and
. Due to their different backgrounds and expertise, the weight vector of the five decision makers is given as
.
The DHHL comparative importance information of the 10 criteria assessed by the decision makers is displayed in
Table 2. Moreover, we can obtain the DHHL evaluation matrixes of the five decision makers
. For example, the evaluation information of the first decision maker DM
1 is shown in
Table 3.
In what follows, the developed SSS&OA model is adopted to choose qualified sustainable suppliers and allocate suitable order sizes for the case study.
Stage 1. Determine criteria weights by the PIPRCIA method.
Step 1.1. Based on their estimated importance to supplier sustainable performance, the 10 criteria are ranked in descending order as: .
Step 1.2. Through Equation (11), the comparative importance evaluation information of criteria is aggregated and the result is given in
Table 2.
Step 1.3. Using Equation (12), the relative weights of criteria
are computed as shown in
Table 4.
Step 1.4. According to Equation (13), the normalized weights of criteria
are calculated and displayed in
Table 4.
Stage 2. Select qualified sustainable suppliers by the DFT.
Step 2.1. By Equation (14), the collective DHHL evaluation matrix
is established as shown in
Table 5.
Step 2.2. Via Equation (15), the distance matrix of the five sustainable suppliers
is computed as follows:
Step 2.3. Let
and
, and by Equation (16), the feedback matrix
is determined as:
Step 2.4. Based on Equation (17), the contract matrix
is obtained as follows:
Step 2.5. Using Equation (19) and let t = 1000, the final preference vector of five sustainable suppliers is obtained as: . As a result, the five sustainable suppliers are ranked as: .
Stage 3. Allocate order sizes to the qualified sustainable suppliers.
Steps 3.1–3.2. Based on the ranking of sustainable suppliers, the suppliers
A4 and
A1 are selected to participate in the following order allocation process. The supplier data used in the MOLP model are given in
Table 6. The product demand, maximum defective rate, and maximum delay rate are given as:
, respectively. In order to maintain a friendly relationship with the suppliers, it is assumed that the two suppliers can obtain an order quantity of at least 10% of the total demand.
Step 3.3. According to decision makers’ opinions, the relative importance of the four objective functions are given as:
and
. By solving the following single objective programming model, the order allocation results of the two selected sustainable suppliers are presented in
Table 7.
As shown in
Table 7, the order quantity assigned to
A1 is 5000 units with a unit price of 26.5. At the same time,
A4 received the order of 7500 units at a unit price of 26. For the first objective function, the minimum purchase cost is 327,500.
5.2. Comparison and Discussion
In this section, to further illustrate the usefulness and advantages of the proposed SSS&OA model, a comparison analysis with the hesitant fuzzy DFT [
31], the intuitionistic fuzzy VIKOR [
48] and the fuzzy GRA [
49], is performed based on the above case study. Through the four methods, the ranking results of the five sustainable suppliers are obtained as presented in
Figure 2.
As visualized in
Figure 2, the ranking orders of the sustainable suppliers obtained by the developed model and the intuitionistic fuzzy VIKOR are consistent. The last sustainable supplier determined by the four methods is exactly the same (i.e.,
A5). Moreover, the orders for three of the five sustainable suppliers by the hesitant fuzzy DFT (i.e.,
A2,
A3, and
A5) and the fuzzy GRA (i.e.,
A1,
A4, and
A5) are consistent with those obtained by the developed model. Therefore, the effectiveness of the proposed SSS&OA approach is validated.
In addition, we can see that there are still some differences between the ranking by the proposed model and those by the hesitant fuzzy DFT and the fuzzy GRA methods. For example, according to the hesitant fuzzy DFT method, A1 has a higher priority in comparison with A4, and is the best option for the considered sustainable supplier selection problem. However, A4 is assumed to be the best choice, which is more important than A1 according to our proposed model. For the two sustainable suppliers, giving a higher priority to A4 is also verified by the other two methods. Similarly, the result of the fuzzy GRA method suggests that A4 has a higher priority compared with A3. But, A3 is better than A2, as indicted by our proposed model, the hesitant fuzzy DFT and the intuitionistic fuzzy VIKOR methods. Actually, A4 is the best sustainable supplier since it is given high evaluation values on C3, C4, C8, and C9 while A1 obtains low evaluation on these criteria. A3 is better than A2 because it is evaluated with higher values than A2 on important criteria (e.g., C1, C6 and C8).
Based on the above analyses, it can be concluded that a more reasonable and credible ranking result of sustainable suppliers can be obtained by employed the proposed SSS&OA framework. Compared with the listed methods, the advantages of our developed model are summarized as follows:
- (1)
By applying the DHHLTSs, the hesitant evaluation information from each decision maker can be expressed more accurately and comprehensively. Thus, the propped model can reduce information distortion and improve the accuracy of evaluation in the sustainable supplier selection process.
- (2)
Using the DFT, the decision behaviors of decision makers can be depicted preferably. Further, the preference values of the proposed model are obtained with a dynamic process, which overcomes the disadvantages of the previous methods that just rely on the information processing at a certain time.
- (3)
After determining the ranking of sustainable suppliers, the order sizes for the selected suppliers can be determined according to their preference values based on the constructed MOLP model considering quantity discount.