스마트 제조에서 스핀들 전력 데이터를 활용한 기계 학습 기반 공구 수명 예측Machine Learning-Based Tool Life Prediction Using Spindle Power Data in Smart Manufacturing
- Other Titles
- Machine Learning-Based Tool Life Prediction Using Spindle Power Data in Smart Manufacturing
- Authors
- 신수아; 이인호; 배성문
- Issue Date
- Dec-2024
- Publisher
- 한국산업경영시스템학회
- Keywords
- Machine Learning; Tool Wear Prediction; Spindle Power Monitoring; Smart Factory Applications
- Citation
- 한국산업경영시스템학회지, v.47, no.4, pp 154 - 160
- Pages
- 7
- Indexed
- KCI
- Journal Title
- 한국산업경영시스템학회지
- Volume
- 47
- Number
- 4
- Start Page
- 154
- End Page
- 160
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/75506
- DOI
- 10.11627/jksie.2024.47.4.154
- ISSN
- 2005-0461
2287-7975
- Abstract
- This study develops a machine learning-based tool life prediction model using spindle power data collected from real manufactur- ing environments. The primary objective is to monitor tool wear and predict optimal replacement times, thereby enhancing manu- facturing efficiency and product quality in smart factory settings. Accurate tool life prediction is critical for reducing downtime, minimizing costs, and maintaining consistent product standards. Six machine learning models, including Random Forest, Decision Tree, Support Vector Regressor, Linear Regression, XGBoost, and LightGBM, were evaluated for their predictive performance. Among these, the Random Forest Regressor demonstrated the highest accuracy with R2 value of 0.92, making it the most suitable for tool wear prediction. Linear Regression also provided detailed insights into the relationship between tool usage and spindle power, offering a practical alternative for precise predictions in scenarios with consistent data patterns. The results highlight the potential for real-time monitoring and predictive maintenance, significantly reducing downtime, optimizing tool usage, and improving operational efficiency. Challenges such as data variability, real-world noise, and model generalizability across diverse processes remain areas for future exploration. This work contributes to advancing smart manufacturing by integrating data-driven approaches into operational workflows and enabling sustainable, cost-effective production environments.
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- Appears in
Collections - 공과대학 > Department of Industrial and Systems Engineering > Journal Articles
- 공학계열 > 산업시스템공학과 > Journal Articles

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