Condition Monitoring and Fault Detection in Small Induction Motors Using Machine Learning Algorithms

Inf. Comput. Pub Date : 2023-06-12 DOI:10.3390/info14060329
S. Sobhi, M. Reshadi, Nick Zarft, Albert Terheide, Scott Dick
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引用次数: 3

Abstract

Electric induction motors are one of the most important and widely used classes of machines in modern industry. Large motors, which are commonly process-critical, will usually have built-in condition-monitoring systems to facilitate preventive maintenance and fault detection. Such capabilities are usually not cost-effective for small (under ten horsepower) motors, as they are inexpensive to replace. However, large industrial sites may use hundreds of these small motors, often to drive cooling fans or lubrication pumps for larger machines. Multiple small motors may further be assigned to a single electrical circuit, meaning a failure in one could damage other motors on that circuit. There is thus a need for condition monitoring of aggregations of small motors. We report on an ongoing project to develop a machine-learning-based solution for fault detection in multiple small electric motors. Shallow and deep learning approaches to this problem are investigated and compared, with a hybrid deep/shallow system ultimately being the most effective.
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基于机器学习算法的小型感应电机状态监测与故障检测
感应电动机是现代工业中最重要和应用最广泛的一类机器。大型电机通常是关键过程,通常会有内置的状态监测系统,以方便预防性维护和故障检测。这样的能力通常是不符合成本效益的小(十马力以下)电机,因为他们是廉价的更换。然而,大型工业场所可能会使用数百台这样的小型电机,通常用于驱动大型机器的冷却风扇或润滑泵。多个小型电机可以进一步分配到一个电路中,这意味着一个电机的故障可能会损坏该电路中的其他电机。因此,有必要对小型电动机的集合体进行状态监测。我们报告了一个正在进行的项目,该项目旨在开发一种基于机器学习的解决方案,用于多个小型电动机的故障检测。研究和比较了解决这个问题的浅学习和深度学习方法,最终发现深/浅混合系统是最有效的。
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