DOI QR코드

DOI QR Code

A Study on the Application of Measurement Data Using Machine Learning Regression Models

  • Yun-Seok Seo (Department of Computer Engineering, Tech University) ;
  • Young-Gon Kim (Department of Computer Engineering, Tech University)
  • Received : 2023.03.19
  • Accepted : 2023.03.25
  • Published : 2023.06.30

Abstract

The automotive industry is undergoing a paradigm shift due to the convergence of IT and rapid digital transformation. Various components, including embedded structures and systems with complex architectures that incorporate IC semiconductors, are being integrated and modularized. As a result, there has been a significant increase in vehicle defects, raising expectations for the quality of automotive parts. As more and more data is being accumulated, there is an active effort to go beyond traditional reliability analysis methods and apply machine learning models based on the accumulated big data. However, there are still not many cases where machine learning is used in product development to identify factors of defects in performance and durability of products and incorporate feedback into the design to improve product quality. In this paper, we applied a prediction algorithm to the defects of automotive door devices equipped with automatic responsive sensors, which are commonly installed in recent electric and hydrogen vehicles. To do so, we selected test items, built a measurement emulation system for data acquisition, and conducted comparative evaluations by applying different machine learning algorithms to the measured data. The results in terms of R2 score were as follows: Ordinary multiple regression 0.96, Ridge regression 0.95, Lasso regression 0.89, Elastic regression 0.91.

Keywords

References

  1. Song, M., Kim, K., & Ahn, S., "Changes in the Domestic Automotive Industry Structure: A Text Analysis Approach", Research Report(KIET, Korea Institute for Industrial Economics and Trade), Vol. 2021-10, pp.1-94 2021, DOI:https://doi.org/10.38094/jastt1457
  2. D. Maulud and A. M. Abdulazeez, "A Review on Linear Regression Comprehensive in Machine Learning", JASTT, Vol. 1, No. 4, pp. 140-147, Dec. 2020. DOI:https://doi.org/10.38094/jastt1457
  3. Yong-hee, Han, "Prediction Model of CNC Processing Defects Using Machine Learing", Journal of The Korea Convergence Society, Vol. 13. No. 2, pp. 249-255, 2022, DOI : https://doi.org/10.15207/JKCS.2022.13.02.249
  4. S.-J., Lee, Y.-T., Kim, S.-y., Kim, "Comparison of Customer Satisfaction Indices Using Different Methods of Weight Calculation", The Journal of Digital Policy & Management, Vol. 11, No.12, pp. 201-211, Dec, 2013, DOI:http://dx.doi.org/10.14400/JDPM.2013.11.12.201
  5. Kim, Y.-I., Lee, K.-H., Park, S.-H. (2023) Application and Evaluation of Machine Learning Techniques for Realtime Short-term Prediction of Air Pollutants, Journal of Korean Society for Atmospheric Environment, Vol.39, No.1, 107-127 , DOI:https://doi.org/10.5572/KOSAE.2023.39.1.107
  6. Joong-Soo Lim, "A Design of Small Size Sensor Data Acquisition and Transmission System",Journal of Convergence for Information Technology, Vol. 9. No. 1, pp. 136-141, 2019, DOI:https://doi.org/10.22156/CS4SMB.2019.9.1.136
  7. H. Jie and G. Zheng, "Calibration of Torque Error of Permanent Magnet Synchronous Motor Base on Polynomial Linear Regression Model," in IECON 2019-45th Annual Conference of the IEEE Industrial Electronics Society, , pp. 318-323. 2019, DOI: 10.1109/IECON.2019.8927537