Importance Degree Evaluation of Spare Parts Based on Clustering Algorithm and Back-Propagation Neural Network

The quantitative evaluation of the importance degree of spare parts is essential as spare parts’ maintenance is critical for inventory management. Most of the methods used in previous research are subjective. For this reason, an accurate method for the evaluation of the importance degree combining a...

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Veröffentlicht in:Mathematical problems in engineering 2020, Vol.2020 (2020), p.1-13
Hauptverfasser: Dong, Bochao, Zhang, Qing, Hu, Sheng, Qin, Xiaofan, Zhang, Shoujing, Zhao, Jiang-bin
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container_end_page 13
container_issue 2020
container_start_page 1
container_title Mathematical problems in engineering
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creator Dong, Bochao
Zhang, Qing
Hu, Sheng
Qin, Xiaofan
Zhang, Shoujing
Zhao, Jiang-bin
description The quantitative evaluation of the importance degree of spare parts is essential as spare parts’ maintenance is critical for inventory management. Most of the methods used in previous research are subjective. For this reason, an accurate method for the evaluation of the importance degree combining an improved clustering algorithm with a back-propagation neural network (BPNN) is proposed in the present paper. First, we classified the spare parts by analyzing their historical maintenance and inventory data. Second, we evaluated the effectiveness of classification using the Davies–Bouldin index and the Calinski–Harabasz indicator and verified it using the training data. Finally, we used BPNN to determine the training data necessary for an accurate assessment of the importance degree of spare parts. The previous importance evaluation methods were susceptible to subjective factors during the evaluation process. The model established in this paper used the actual data of the company for machine learning and used the improved clustering algorithm to implement training and classification of spare parts data. The importance value of each spare part was output, which additionally reduced the impact of subjective factors on the importance evaluation. At the same time, the use of less data to evaluate the importance of spare parts was achieved, which improved the evaluation efficiency.
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Most of the methods used in previous research are subjective. For this reason, an accurate method for the evaluation of the importance degree combining an improved clustering algorithm with a back-propagation neural network (BPNN) is proposed in the present paper. First, we classified the spare parts by analyzing their historical maintenance and inventory data. Second, we evaluated the effectiveness of classification using the Davies–Bouldin index and the Calinski–Harabasz indicator and verified it using the training data. Finally, we used BPNN to determine the training data necessary for an accurate assessment of the importance degree of spare parts. The previous importance evaluation methods were susceptible to subjective factors during the evaluation process. The model established in this paper used the actual data of the company for machine learning and used the improved clustering algorithm to implement training and classification of spare parts data. The importance value of each spare part was output, which additionally reduced the impact of subjective factors on the importance evaluation. 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subjects Accuracy
Algorithms
Artificial neural networks
Classification
Clustering
Corporate learning
Inventory
Inventory management
Machine learning
Maintenance
Mathematical problems
Methods
Neural networks
Research methodology
Researchers
Spare parts
Subjectivity
Training
title Importance Degree Evaluation of Spare Parts Based on Clustering Algorithm and Back-Propagation Neural Network
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