An Application of the Fuzzy Delphi Method and Fuzzy AHP on the Discussion of Training Indicators for the Regional Competition, Taiwan National Skills Competition, in the Trade of Joinery
Abstract
:1. Introduction
1.1. Background
1.2. Skills Competition
Joinery
1.3. Motivation
1.4. Research Questions
- (a)
- Are the six major indicators and the 27 sub-indicators suitable to be the assessing standard?
- (b)
- Among the six major indicators, which one of them is the most important? Additionally, among the 27 sub-indicators, which one of them is the most important?
2. Materials and Methods
2.1. Fuzzy Delphi Method
2.1.1. Development and Delivery of FDM Survey
2.1.2. The Steps for Performing FDM
- Collecting opinions from decision-making groups, including (1) forming the preliminary hierarchical structure by comparing the Joinery Technical Description of the 45th WorldSkills Competition with the Joinery Standards Specification of the 44th WorldSkills Competition, and (2) preparing the content of the survey.
- Selecting a suitable preference scale: Obtaining the level of suitability for each training indicator from the participants.
- Setting up the triangular fuzzy number: Converting the linguistic variable to a triangular fuzzy number to integrate the opinions of participating experts. The algorithms for the triangular fuzzy number, including fuzzy addition (Formula (1)), fuzzy subtraction (Formula (2)), fuzzy multiplication (Formula (3)), and fuzzy division (Formula (4)). The triangular fuzzy number remained a triangular fuzzy number after applying the algorithm [29]. In brief, the level of suitability for each level of structure in this research was calculated based on the mean of the triangular fuzzy number (Formula (5)).
- Defuzzification: (1) Applying the center of gravity method to perform defuzzification of the fuzzy weight for each assessing subject (Formula (6)) and (2) converting it into a specific figure to sequence the fuzzy number.
- Retaining the representative training indicators: (1) Studying the total value of triangular fuzzy numbers for each indicator, which represents the consensus of the participating experts towards the assessment scale for the indicators; and (2) using this research’s threshold set to decide whether to retain the indicator. If the weight value of a training indicator is greater than or equal to the threshold value, this indicator is retained as the training indicator of the Regional Skills Competition in Joinery; if the weight value of a training indicator is less than the threshold value, this indicator is removed.
2.2. Fuzzy AHP
2.2.1. Development and Delivery of Fuzzy AHP Survey
2.2.2. The Steps for Performing Fuzzy AHP
- Setting up a hierarchical structure for each criterion based on the training indicators retained through the FDM;
- Designing the content of the fuzzy AHP survey: The structure of the survey was based on the pairwise comparison method using five linguistic variables—Extremely More Important, Very Strong More Important, Strongly More Important, Moderately More Important, and Equally Important. The participating experts decided the scale of the related criteria through their opinions. The relative level of importance among criteria was based on the subjective judgments of the participating experts, and the fuzziness introduced by these judgments was addressed by converting the linguistic variables into triangular fuzzy numbers, as shown in Table 2.
- Establishing triangular fuzzy numbers for the training indicators of each level: (1) performing a statistical analysis on the survey conducted by all participating experts; (2) then, applying an algorithm by converting the linguistic variables. The formula is shown below as Formula (7).
- Setting up a fuzzy pairwise comparison matrix [30]: This involves placing the triangular fuzzy number into pairwise comparison matrix to form a fuzzy pairwise comparison matrix , which addresses the fuzziness created during the assessment process. In the pairwise comparison matrix A, the value at the bottom left corner indicates the reciprocal of the value at the upper right corner (Formula (8)).
- Calculating the relative fuzzy weight value through normalization of the row average [28] to obtain the fuzzy weight value from the fuzzy pairwise comparison matrix. The formula is shown below as Formula (9).
- Defuzzification: This research adopted the simple center of gravity method to calculate the geometric gravity of each fuzzy member’s function. The calculated gravity was based on a specific figure of the fuzzy number. Assuming that , the formula for defuzzification can be obtained as Formula (10) below.
- Normalizing the triangular fuzzy number of each training indicator (Formula (11)): To make the result more rigorous, before defuzzification (to seek the final relative weight value), the triangular fuzzy number was normalized [32].
- Applying a hierarchical series and a sequence of training indicators: (1) Seek the weight value of dimension I in Level 1, the weight value of criterion j in Level 2 under the i dimension in Level 1, and the weight value of sub-criterion k in Level 3 under dimension j of Level 2; (2) seek the weight value (Formula (12)) of sub-criterion k in Level 3 under the target level. This research performed a level series; (3) after performing a hierarchical series, the absolute weight value of each sub-criterion against the overall assessment level was obtained; (4) lastly, sequence each sub-criterion to obtain the level of importance:
3. Results
3.1. Establishing a Hierarchical Structure for the Training Indicators for Joinery at the Regional Skills Competition
3.2. Analysis of the Fuzzy Weight Value for The Training Indicators of Joinery in the Regional Competition
3.3. Hierarchical Series and Sequences of Importance for Each Training Indicator
4. Suggestions and Discussion
4.1. Drawings
4.2. Internal and External Joint
4.3. Assembly
4.4. Measurement
4.5. Finishing and Appearance
4.6. Application of Materials
5. Conclusions
- Generally speaking, every training indicator is important and inter-connected with every other indicator. Thus, to improve the efficiency of competitors’ skills and their professional techniques, competitors must pursue precision and perfection in every detail and reduce any unnecessary mistakes.
- The assessment criteria developed in this research could be provided to trainers and instructors who participate in the training of Joinery competitors to improve their training models and strategies. It is hoped that the results of this research will allow such trainers to quickly understand the trends in the development of Joinery competitions.
- Vocational training and education are key elements in the Skills Competition. We hope that the assessment criteria developed in this research will attract more teachers and instructors in vocational high school to join the training of competitors to participate in the Skills Competition. With more young people in the Skills Competition, the higher competitiveness would encourage all competitors to improve their skill levels and knowledge in the field.
- Limitation of the ResearchSince studies on Joinery in the Skills Competition are limited, especially those using fuzzy theory to discuss assessment criteria, these assessment criteria must be more deeply studied and verified. We hope that the assessment criteria derived in this research serve as a foundation for future studies.
- Future Research Directions
Author Contributions
Funding
Conflicts of Interest
References
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Linguistic Variable | Fuzzy Number | ||
---|---|---|---|
Maximum Degree of Satisfaction | Tolerance Range | ||
Very Suitable | 0.9 | 0.8 | 1 |
Suitable | 0.7 | 0.6 | 0.8 |
Acceptable | 0.5 | 0.4 | 0.6 |
Unsuitable | 0.3 | 0.2 | 0.4 |
Very Unsuitable | 0.1 | 0 | 0.2 |
Scale | Linguistic Variables | Triangular Fuzzy Number | Triangular Fuzzy Number Reciprocal |
---|---|---|---|
1 | Equally Important | (1,1,1) | (1,1,1) |
3 | Moderately More Important | (2,3,4) | (1/4,1/3,1/2) |
5 | Strongly More Important | (4,5,6) | (1/6,1/5,1/4) |
7 | Very Strong More Important | (7,8,9) | (1/8,1/7,1/6) |
9 | Extremely More Important | (8,9,10) | (1/10,1/9,1/8) |
Level 2 Training Indicators | Indicator Weight (Center of Gravity Method) | Sequence |
---|---|---|
Drawings | 0.81 | 4 |
Internal and External Joints | 0.84 | 2 |
Assembly | 0.83 | 3 |
Measurements | 0.86 | 1 |
Finishing and Appearance | 0.79 | 5 |
Application of Materials | 0.71 | 6 |
Level 2 Training Indicators | Level 3 Training Indicators | Indicator Weight (Center of Gravity Method) | Sequence |
---|---|---|---|
Drawings | Thickness of Linework | 0.73 | 5 |
Line Types | 0.77 | 4 | |
Primary Measurements | 0.87 | 1 | |
Secondary Measurements | 0.84 | 2 | |
Neatness of Drawings | 0.77 | 4 | |
Joint Details | 0.81 | 3 | |
Internal and External Joints | Neatness of Internal Joints | 0.7 | 4 |
Cleanliness of Internal Joints | 0.74 | 2 | |
Correctness of Joint Structure | 0.73 | 3 | |
Fitness of Internal Joints | 0.81 | 1 | |
Gap of External Joints | 0.81 | 1 | |
Assembly | Correctness of Appearance and Shape | 0.84 | 1 |
Completeness of Components | 0.77 | 3 | |
No Repairs or Defects | 0.7 | 4 | |
Finished Work in Conformity with the drawings | 0.8 | 2 | |
Fitness of Door, Frame, Hardware Accessories, and Other Components | 0.8 | 2 | |
Measurements | Primary measurement | 0.89 | 1 |
Secondary measurement | 0.8 | 2 | |
Finishing and Appearance | Flatness of Appearance (Front and Back) | 0.79 | 1 |
Flatness of all Edges | 0.79 | 1 | |
Twist of Components | 0.76 | 3 | |
Squareness of Components | 0.77 | 2 | |
Flatness of Chamfers and Rebates | 0.71 | 4 | |
Flatness of Groove | 0.7 | 5 | |
Application of Materials | Correctness of Material Application | 0.87 | 1 |
Understanding of Material Characteristics | 0.7 | 3 | |
Material Preparation and Calculation | 0.8 | 2 |
Assessment for Training Indicators | |||||
---|---|---|---|---|---|
Level 2 Training Indicators | Weight Value | Sequence | Level 3 Training Indicators | Weight Value | Sequence |
Drawings | 17.6% | 4 | Thickness of Linework | 2.2% | 5 |
Line Types | 2.03% | 6 | |||
Primary Measurement | 4.8% | 1 | |||
Secondary Measurement | 3.13% | 2 | |||
Neatness of Dawings | 2.5% | 4 | |||
Joint Details | 3.03% | 3 | |||
Internal and External Joints | 15.2% | 5 | Neatness of Internal Joints | 1.58% | 4 |
Cleanliness of Internal Joints | 1.29% | 5 | |||
Correctness of Joint Structures | 4.23% | 2 | |||
Fitness of Internal Joints | 3.64% | 3 | |||
Gap of External Joints | 4.46% | 1 | |||
Assembly | 18.4% | 3 | Correctness of Appearance and Shape | 3.64% | 3 |
Completeness of Components | 3.42% | 4 | |||
No Repairs or Defects | 3.26% | 5 | |||
Finished Work in Conformity with drawings | 3.97% | 2 | |||
Fitness of Door, Frame, Hardware Accessories, and Other Components | 4.12% | 1 | |||
Measurements | 19.6% | 1 | Primary measurement | 15.1% | 1 |
Secondary measurement | 4.52% | 2 | |||
Finishing and Appearance | 18.9% | 2 | Flatness of Appearance (Front and Back) | 3.57% | 4 |
Flatness of all Edges | 2.28% | 5 | |||
Twist of Component | 3.76% | 2 | |||
Squareness of Component | 4.06% | 1 | |||
Flatness of Chamfers and Rebates | 3.39% | 3 | |||
Flatness of Grooves | 1.91% | 6 | |||
Application of Materials | 10.1% | 6 | Correctness of Material Application | 3.26% | 2 |
Understanding of Material Characteristics | 3.15% | 3 | |||
Material Preparation and Calculations | 3.76% | 1 | |||
Total | 100% | Total | 100% |
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Tsai, H.-C.; Lee, A.-S.; Lee, H.-N.; Chen, C.-N.; Liu, Y.-C. An Application of the Fuzzy Delphi Method and Fuzzy AHP on the Discussion of Training Indicators for the Regional Competition, Taiwan National Skills Competition, in the Trade of Joinery. Sustainability 2020, 12, 4290. https://doi.org/10.3390/su12104290
Tsai H-C, Lee A-S, Lee H-N, Chen C-N, Liu Y-C. An Application of the Fuzzy Delphi Method and Fuzzy AHP on the Discussion of Training Indicators for the Regional Competition, Taiwan National Skills Competition, in the Trade of Joinery. Sustainability. 2020; 12(10):4290. https://doi.org/10.3390/su12104290
Chicago/Turabian StyleTsai, Hao-Chang, An-Sheng Lee, Huang-Ning Lee, Chien-Nan Chen, and Yu-Chun Liu. 2020. "An Application of the Fuzzy Delphi Method and Fuzzy AHP on the Discussion of Training Indicators for the Regional Competition, Taiwan National Skills Competition, in the Trade of Joinery" Sustainability 12, no. 10: 4290. https://doi.org/10.3390/su12104290
APA StyleTsai, H. -C., Lee, A. -S., Lee, H. -N., Chen, C. -N., & Liu, Y. -C. (2020). An Application of the Fuzzy Delphi Method and Fuzzy AHP on the Discussion of Training Indicators for the Regional Competition, Taiwan National Skills Competition, in the Trade of Joinery. Sustainability, 12(10), 4290. https://doi.org/10.3390/su12104290