Predictive Sparepart Maintenance Menggunakan Algoritma Machine Learning Extreme Gradiant Boosting Regressor

Syahrul Usman
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引用次数: 0

Abstract

Spare parts are components that make up a single object that has a specific function. In car vehicles, spare parts have the function of maintaining the performance and function of the vehicle. Predictive Spare Part Maintenance is an effort to improve operational efficiency, customer service, and reduce vehicle downtime through the application of analysis and machine learning algorithms to predict spare part replacement times. A machine learning approach can be used to predict maintenance times for car spare parts, where one of the algorithms that can be used is XGBoost Regressor. Through this approach, this research aims to improve service planning by predicting spare part replacement times based on certain indicators, With the implementation of this research, it is hoped that it can increase operational efficiency in automotive after-sales services, increase customer satisfaction, reduce vehicle downtime, and improve overall service planning and most importantly can provide preventive maintenance information to customers. This research provides prediction results with R2-Score values ​​as follows: train data: 93%, Valid: 90%, Test: 90%
预测性备件维护采用机器学习极端渐进式提升调节器算法
备件是构成具有特定功能的单个物体的组件。在汽车中,备件具有维持车辆性能和功能的功能。预测性备件维护是通过应用分析和机器学习算法来预测备件更换时间,从而提高运营效率,改善客户服务,减少车辆停机时间。机器学习方法可用于预测汽车备件的维护时间,其中可使用的算法之一是 XGBoost 回归器。通过这种方法,本研究旨在根据某些指标预测备件更换时间,从而改进服务规划。随着本研究的实施,希望能提高汽车售后服务的运营效率,提高客户满意度,减少车辆停机时间,改进整体服务规划,最重要的是能为客户提供预防性维护信息。本研究提供了预测结果,R2-Score 值如下:训练数据:93%,有效90%,测试:90
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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