Abstract
Product obsolescence occurs in the manufacturing industry as new products with better performance or improved cost-effectiveness are developed. A proactive strategy for predicting component obsolescence can reduce manufacturing losses and lead to customer satisfaction. In this study, we propose a machine learning algorithm for a proactive strategy based on an adaptive data selection method to forecast the obsolescence of electronic diodes. Typical machine learning algorithms construct a single model for a dataset. By contrast, the proposed algorithm first determines a mathematical cover of the dataset via unsupervised clustering and subsequently constructs multiple models, each of which is trained with the data in one cover. For each data point in the test dataset, an optimal model is selected for regression. Results of empirical experiments show that the proposed method improves the obsolescence prediction accuracy and accelerates the training procedure. A novelty of this study is that it demonstrates the effectiveness of unsupervised clustering methods for improving supervised regression algorithms.
Funder
National Research Foundation of Korea
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference20 articles.
1. Bartels, B., Ermel, U., Sandborn, P., and Pecht, M.G. (2012). Strategies to the Prediction, Mitigation and Management of Product Obsolescence, John Wiley & Sons.
2. Prediction of obsolescence degree as a function of time: A mathematical formulation;Trabelsi;Comput. Ind.,2021
3. Forecasting obsolescence risk and product life cycle with machine learning;Jennings;IEEE Trans. Compon. Packag. Manuf. Technol.,2016
4. Electronic part life cycle concepts and obsolescence forecasting;Solomon;IEEE Trans. Compon. Packag. Technol.,2000
5. A data mining based approach to electronic part obsolescence forecasting;Sandborn;IEEE Trans. Compon. Packag. Technol.,2007
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