1. Introduction
Remanufacturing is an industrial process that restores used products to a “new” or “better” than “new” functional state, focusing on material, energy, and cost savings [
1,
2,
3]. The design for remanufacturing (DfRem) is an important part of the remanufacturing system, which can improve product remanufacturability and facilitate the smooth implementation of product remanufacturing [
4,
5].
However, the DfRem process can generate multiple design solutions, so designers need to make decisions about the best solution. Unlike traditional designs, DfRem is not only focused on product remanufacturability, but also on the reliability. This makes the design scheme decision very complex. To address this problem, it is necessary to make a comprehensive system of DfRem scheme evaluation indicators. Currently, many scholars have conducted studies on DfRem evaluation indicator system construction. Jiang et al. [
6] developed a data-driven ecological performance evaluation method for the remanufacturing process which constructed the evaluation indicator containing the energy-saving rate, remanufacturing process cost, and rate of remanufacturing. Ding et al. [
7] proposed an integrated multi-criteria decision-making (MCDM) approach which established the remanufacturability evaluation indicator system for the machine tool guideway. Harivardhini et al. [
8] proposed an integrated framework for supporting decision making during early design stages of end-of-life, which can help designers compare and select alternative designs of a product that have better disassembly potential. Peng et al. [
9] developed an effective and comprehensive multi-criteria decision-making approach which considered the environmental impact, economic cost, and technical property for the remanufacturing process. Wang et al. [
10] proposed a demand-matching multi-criteria decision-making method for reverse logistics, which focuses on four types of evaluation indicators including quality condition, sustainability, economy, and risk. There is no doubt that these studies solved the evaluation indicator system for DfRem, including the remanufacturing process design, design for disassembly, and reverse logistics, and these pieces of research promote the smooth implementation for the DfRem scheme’s evaluation.
Unfortunately, this literature only considers remanufacturing in terms of the remanufacturing process, disassembly, or reverse logistics, et al., but seldom considers remanufacturing in terms of the product design phase, and has not constructed a design scheme evaluation indicator system with remanufacturability, which makes it impossible to select a beneficial product design scheme for remanufacturability. Gong et al. [
11] established the evaluation criteria for the DfRem scheme, which considered the technical, economic, and environmental factors. Although this method contains the remanufacturing cost and environmentality of the remanufacturing process, the research does not provide an accurate quantitative description of the remanufacturability indicator as a technical indicator. Remanufacturability is an individual characteristic of a product, which is an inherent attribute and should be considered as a technical indicator to guide product design. Moreover, DfRem considers the remanufacturability of the product at the design stage, so the remanufacturability of the product should be evaluated in the design scheme. Most importantly, a design scheme evaluation indicator system for remanufacturability needs to be constructed while mainly including the disassemblability, recyclability, detectability, and reliability of product performance, etc.
Furthermore, designers need to develop evaluation indicator weights in order to make accurate design solution decisions. However, experts determine the importance of indicators by scoring the design scheme evaluation indicators. This is mainly an indicator evaluation based on their personal experience and subjective judgment, which cannot objectively reflect the importance of the indicator. The entropy weighting method is a comprehensive evaluation method that can be used for multiple objects and indicators; moreover, the entropy weighting method is based on the information of each indicator for weight calculation, which is easy to calculate and enable objective weighting based on actual information, thus reducing the interference of subjective factors [
12], and many fields have already used the entropy weight method to calculate weights, for example, the weights calculation of nanoparticle evaluation indicators [
13], the risk assessment of the tunnel [
14], the Groundwater quality assessment [
15], and so on. Owing to the advantages of the entropy weight, it can be used to calculate the weights of the DfRem scheme evaluation indicators in order to avoid subjective weighting.
Decision making on DfRem schemes requires the quantification of each evaluation indicator, which is generally scored according to designers or experts. However, experts have hesitation in the face of design scheme evaluation indicators and are unable to give a precise evaluation value, but rather an evaluation interval, which makes the evaluation process ambiguous and uncertain. Hesitant fuzzy set, an effective means to cope with the uncertainty and complexity of decision making [
16], and many fields have applied this method for uncertainty decision making, for example, the assessment of a sustainable supplier [
17], sustainable city logistics [
18], risk decision making [
19], etc. Obviously, from the research results of hesitant fuzzy sets in various fields, hesitant fuzzy sets can effectively process fuzzy evaluation information and improve the accuracy of evaluation results.
To improve the accuracy and reliability of a DfRem scheme decision, this paper proposes a fuzzy decision-making method to select the optimal design scheme. The novelties of this paper are listed in the following: (1) The DfRem scheme evaluation system was constructed to comprehensively consider the remanufacturability indicators at the product design stage, thus ensuring product remanufacturability and improving the remanufacturing efficiency of end-of-life products. (2) A DfRem scheme decision-making method was proposed to fully take into account the hesitancy of decision makers in scoring evaluation indicators, thereby reducing the ambiguity of DfRem scheme decision making. (3) DfRem decision-making software 2024 was developed to visualize the design solution decision-making process and to improve the operability of the DfRem decision-making method, thus improving the decision-making efficiency. The remainder of this paper is structured as follows.
Section 2 proposes the framework for decision making on DfRem schemes, which contains DfRem scheme evaluation indicator extraction, evaluation indicator system construction, and the DfRem scheme decision.
Section 3 constructs a DfRem scheme evaluation indicator system, including reliability, remanufacturability, cost, and environmental indicators.
Section 4 proposes a DfRem scheme decision method based on entropy weight and hesitation fuzzy sets.
Section 5 validates the method with a DfRem case for the injection mold, and
Section 6 draws conclusions for this study.
2. Decision-Making Framework for DfRem
A green design for remanufacturability contains a large amount of design information and constraint information, so it is necessary to extract key evaluation indicators from the above information, and establish an evaluation indicator system for green design schemes, finally adopt a suitable decision-making method to select the optimal design solution. The specific process is shown in
Figure 1.
The decision-making framework for DfRem includes three main components.
- (1)
Evaluation Indicator Extraction
The design for remanufacturing needs to take into account remanufacturability requirements, system constraints, and design guidelines. Remanufacturability requirements include connection methods, performance levels, and construction types. System constraints include dimensional constraints, performance constraints, and appearance constraints, etc. System constraints can also be functionally mapped to form functional features of the product. The design guidelines include ease of disassembly, ease of cleaning, and reliability. The green design evaluation indicators need to be extracted from the remanufacturability demand information, and different types of information are described in different ways and quantified in different ways, which can be described by the object element method and transformed into design scheme evaluation indicators. The description is shown in Equation (1).
where
M denotes the element information of the product,
denotes the
r-th target (e.g., product and component),
Cri denotes the
i-th feature and the corresponding
r-th object quantity, respectively,
denotes the
i-th feature and the corresponding
r-th object weight, and
denotes the design requirement for the
i-th feature of the
r-th target.
- (2)
Quantification of evaluation indicators
Qualitative descriptions are fuzzy evaluations by experts, designers, or clients which are generally described by ambiguous concepts such as degree words and are subjective in nature. Meanwhile, quantitative descriptions are assessed in terms of specific numerical values with objectivity. Since different types of indicators have different levels of measurement, both qualitative and quantitative indicators need to be normalized to ensure the accuracy of the evaluation process.
- (3)
Design scheme decision making
The evaluation indicator system for green designs containing technical, economic, and environmental factors is constructed from the perspectives of customer demand, enterprise production, and environmental regulations. Meanwhile, the entropy weight method and hesitant fuzzy set (EWM-HFS) are used for the multi-attribute decision making of green design schemes.
3. Evaluation Indicator System Construction
In order to extract and calculate the evaluation indicator values more accurately, the evaluation indicators for green designs for remanufacturability are divided into two levels, the first level indicators include technical, economic, and environmental indicators, the second level indicators are refined based on the first level indicators, for example, technical indicators include easy recyclability, easy disassembly, and reliability, etc. The overall evaluation indicator system is shown in
Figure 2.
3.1. Technical Indicators
The technical indicators are evaluated in terms of reliability, disassembly, recyclability, and easy detection, and the process of quantifying each indicator is as follows.
(1) Easy recyclability: Product recycling takes into account factors such as the ease of packaging and transportation and the encapsulation of hazardous materials. The ease of recycling is mainly measured by the recycling time, and the specific indicators are quantified as follows.
where
denotes the quantified value of the normalized recycling time,
denotes the time taken to recycle the product part,
denotes the minimum recycling time, and
denotes the maximum recycling time. All are measured in minutes.
(2) Ease of disassembly: The difficulty of disassembly depends on the number of components, the degree of precision, and the type of connection, etc. The disassembly process minimizes damage to components. The ease of disassembly can be measured by the disassembly time, which is as follows.
where
denotes the quantified value of the normalized product disassembly indicator,
denotes the product disassembly time,
denotes the maximum product disassembly time, and
denotes the minimum product disassembly time; the time unit is minutes.
(3) Ease of detection: Since the product is used in different environments and ways, these will affect the quality condition of the product, as well as affecting the difficulty of the parts’ quality detection. To simplify the quantification process, the detection time is used to indicate the ease of product detection. Assuming that the product is retired from normal service, the process of quantifying the ease of detection indicator is as follows.
where
is the normalized quantitative value of the product component detectability indicator,
is the time required to detect the product component,
is the maximum detection time for the product component, and
is the minimum detection time for the product component; the time unit is minutes.
(4) Reliability: Reliability determines the degree of parts failure during normal service, and also greatly affects the normal operation of products. Generally, the lower the failure degree, the higher the reliability. The reliability of parts can be measured by the normal service time, and then the reliability evaluation indicator is calculated as follows.
where
denotes the normal service time of the component,
denotes the normalized reliability indicator value,
denotes the maximum service time, and
denotes the minimum service time; the time unit is minutes.
3.2. Economic Indicators
Cost is an important factor to consider in the product design process and determines whether the finished product will be able to circulate in the marketplace, mainly including the processing and auxiliary costs of manufacturing and remanufacturing, and the specific calculation process is as follows.
- (1)
Processing costs
The green design scheme needs to take into account the manufacturing and remanufacturing costs of the company in order to obtain the maximum economic benefit from the product, which is given by the following formula.
where
denotes the total processing cost,
denotes the manufacturing cost,
denotes the remanufacturing cost,
denotes the normalized processing cost,
denotes the maximum processing cost, and
denotes the minimum processing cost. The unit of cost used is USD.
- (2)
Ancillary costs
To achieve the proper implementation of manufacturing and remanufacturing, it is necessary to add auxiliary equipment and materials, etc., which are calculated as follows.
where
denotes ancillary costs,
denotes ancillary equipment costs,
denotes ancillary material costs,
denotes normalized ancillary costs,
denotes maximum ancillary costs, and
denotes minimum ancillary costs. Here, the cost unit is USD.
3.3. Environmental Indicators
To reduce environmental pollution during the product life cycle, the green design scheme needs to consider the environmental pollution of the manufacturing and remanufacturing process. Product development will produce pollutants during production, and remanufacturing can reduce pollutant emissions by reducing component manufacturing, but the remanufacturing process consumes water, electricity, cutting fluid, and metal materials, which also produce pollutants. The main pollutants in the manufacturing and remanufacturing process are noise pollution, water pollution, dust pollution, and solid pollution. Based on historical manufacturing and remanufacturing data, environmental experts score environmental indicators to determine pollution levels, and the environmental indicators are mainly rated as {very good, good, average, poor, very poor} with a corresponding score value of .
4. Fuzzy Decision-Making Methods for Design Schemes
The decision making of green design schemes for remanufacturability mainly consists of three parts. Firstly, the entropy weight method is used to quantify and weigh the design scheme indicators, then the hesitation fuzzy set is used to construct the evaluation value set of each indicator, finally the evaluation value of each solution is calculated according to the comprehensive evaluation function and each solution is ranked in order to select the optimal design scheme [
20]. The specific evaluation process is described below.
(1) Entropy weighting method: The entropy weighting method is based on the information of each indicator to set the weight, which is easy to calculate and can be objectively assigned based on the actual information to reduce the interference of subjective factors. The entropy weighting method is calculated as follows.
Firstly, the entropy value of each evaluation indicator is calculated using the following.
where
denotes the entropy value of the evaluation indicator of the
i-th design scheme, and
denotes the value weight of the
i-th indicator in the
j-th design scheme.
where
denotes the weight of the
i-th indicator value for all design schemes and
m denotes the
m evaluation indicators.
Then the weight of the
i-th evaluation indicator can be calculated as follows,
where
indicates the degree of information deviation. Then the weight value of each indicator is
.
(2) Hesitant fuzzy sets: In the design scheme decision-making process, decision makers usually hesitate to reach a unified opinion on the decision scheme, which will affect the accuracy of the design schemes’ evaluation. In order to obtain reasonable decision results, the hesitant fuzzy set can form a collection of fuzzy evaluation opinions of decision makers and obtain the evaluation level of design schemes through fuzzy operations. The specific process is as follows.
- (1)
Suppose
S is a non-empty set, then the hesitant set
S is a function whose every element in the set maps to [0, 1], then the functional expression of the hesitant fuzzy set is as follows:
where
denotes the affiliation of element
x with respect to the set
A and is also the hesitant fuzzy element of the set.
- (2)
Given that hi is a hesitant fuzzy element, the evaluation score of hij is , where a is a certain evaluation value in h and denotes the number of evaluation indicators in h.
- (3)
To calculate the evaluation value of each indicator of the design scheme, the evaluation value can be obtained according to the evaluation value of the indicator. Then the set of evaluation values of each design scheme is described as follows.
- (4)
The evaluation value of each design scheme is calculated as each indicator value has a corresponding weight, which can be obtained through the entropy weighting method. Moreover, the comprehensive evaluation method is used to calculate the evaluation value of each design scheme, mainly by calculating the multiplication of the weights of each design indicator and the scoring value. The process of calculating the comprehensive evaluation value of each design scheme is as follows.
where
denotes the weight value of each indicator and
represents the assessed value of each design indicator for option
i. The evaluation value of all design schemes can be calculated and formed into the set
. The best evaluation scheme can be selected by comparing the evaluation value of each design scheme.
6. Conclusions and Future Work
This paper proposes a fuzzy decision-making method for green design for remanufacturability, it has constructed a green design evaluation indicator system that includes economic, technical, and environmental aspects of the products, and it fully considers the characteristics of products such as easy disassembly, easy recycling, and reliability. Moreover, entropy weighting and hesitation fuzzy sets are applied to evaluate and decide on alternative design solutions in order to obtain the optimal design solution. Meanwhile, a design scheme decision-making system was developed to improve the user-friendliness of the methodology. Finally, the feasibility of the above-mentioned method is verified by taking the injection molding design as an example.
The results show that experts normally score the design scheme evaluation indicators by giving a point interval rather than an exact value, resulting in ambiguity in the values of the evaluation indicators, which makes it difficult to ensure the accuracy of the decision. In this method, the entropy weighing method can objectively set the weights of design indicators and the hesitation fuzzy set makes it possible to set the scoring intervals, which solves the hesitation and uncertainty of the expert evaluation results, and these contribute to improving the reliability of the design scheme evaluation results.
Future work requires efforts in the following aspects: (1) The proposed decision-making method only utilizes the existing small amount of data for indicator weight calculation, indicator evaluation, and decision making, and in the future, intelligent technologies such as big data, deep learning, and knowledge reuse can be used to make decisions on design solutions for improving the efficiency of DfRem decision making. (2) The decision-making method proposed in this paper is suitable for decision making with a small number of design schemes. When faced with a large number of design schemes, decision-making efficiency is low and the efficiency analysis technique can be considered for large-scale decision making, such as data envelope analysis. (3) Due to different service environments and usage habits, the remanufacturability of electromechanical products is dynamic and the evaluation of remanufactured electromechanical product design solutions only takes into account the current solid remanufacturability, which needs to be taken into account in future research in order to develop a more accurate and comprehensive design solution evaluation indicator system.