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Virtual Sensors for Fault Diagnosis: A Case of Induction Motor Broken Rotor Bar

机译:用于故障诊断的虚拟传感器:一种感应电动机破碎转子杆的情况

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摘要

This article presents an industrial implementation of a virtual sensor in the process of fault detection of an induction motor. An ensemble-learning soft-sensor is developed to detect broken rotor bar that is essential to prevent irreparable damage. Most of the existing diagnostic methods assume that the data distribution is static and that all data is available during the training, while in real applications, the data become available as data streams. The proposed method is inspired by the ensemble learning algorithm, which is combined with a new drift detection mechanism. The advantages of the proposed approach are three-fold. First, a fair comparison with other algorithms show the effectiveness of the soft sensor scheme. Second, the presented concept change detection algorithm is capable of detecting a new class in the data stream as well as data distribution change, and last but not least, the efficacy of the proposed algorithm is demonstrated using benchmark concept drift data streams.
机译:本文介绍了在感应电机的故障检测过程中的虚拟传感器的工业实施。开发了一个合奏学习的软传感器,以检测破损的转子杆,以防止无法弥补的损坏。大多数现有的诊断方法假设数据分发是静态的,并且在培训期间,所有数据都可以使用,而在实际应用中,数据可作为数据流可用。所提出的方法是由集合学习算法的启发,该算法与新的漂移检测机制相结合。所提出的方法的优点是三倍。首先,与其他算法的公平比较显示了软传感器方案的有效性。其次,所提出的概念改变检测算法能够检测数据流中的新类以及数据分布改变,并且最后但尤其是使用基准概念漂移数据流来说明所提出的算法的功效。

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