Electric Motor by using Machine Learning.

Mahadev L. Naik, Arsh Aslam Boat, Rahul Sanjay Gurav, Madhura Mukund Kale, Parvez Makbul Kapade
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Abstract

This research paper addresses the crucial issue of early bearing failure within electric motors, a common problem impacting industrial operations. It begins with a thorough problem identification and historical study of asset failures to pinpoint strategic sensor placement on the motor casing, specifically targeting the bearing area. Time series data acquisition captures the dynamic motor behavior, with LabVIEW software facilitating visualization through frequency plots and spectral graphs. Subsequent preprocessing involves modifying data structure and computing vibration metrics like RRMS and IRRMS to quantify vibration levels. The processing stage consists of condition monitoring using structured supervised datasets transformed into the frequency domain in MATLAB. Interpretation of results enables bearing health assessment and identification of dominant frequency components. Additionally, the remaining useful life of the bearing is estimated using the Support Vector Classifier algorithm, supplemented by RRMS and IRRMS to enhance prediction accuracy. A machine learning model, developed in Python and trained on bearing datasets, predicts the remaining useful life based on sensor-collected data. This comprehensive methodology aims to provide insights into bearing health, facilitating proactive maintenance and optimizing industrial operations
利用机器学习的电动马达
本研究论文探讨了电机轴承早期故障这一影响工业运行的常见问题。论文首先对问题进行了全面识别,并对资产故障进行了历史研究,以确定传感器在电机外壳上的战略位置,特别是轴承区域。时间序列数据采集可捕捉电机的动态行为,LabVIEW 软件可通过频率图和频谱图实现可视化。随后的预处理包括修改数据结构和计算振动指标(如 RRMS 和 IRRMS),以量化振动水平。处理阶段包括使用在 MATLAB 中转换为频域的结构化监督数据集进行状态监测。通过对结果的解释,可以对轴承健康状况进行评估,并识别主要频率成分。此外,还可使用支持向量分类器算法估算轴承的剩余使用寿命,并辅以 RRMS 和 IRRMS 提高预测精度。使用 Python 开发并在轴承数据集上进行训练的机器学习模型可根据传感器收集的数据预测剩余使用寿命。这种综合方法旨在深入了解轴承的健康状况,促进主动维护和优化工业运营。
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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