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Clonal optimization-based negative selection algorithm with applications in motor fault detection

机译:基于克隆优化的负选择算法及其在电机故障检测中的应用

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摘要

The Negative Selection Algorithm (NSA) and clonal selection method are two typical kinds of artificial immune systems. In this paper, we first introduce their underlying inspirations and working principles. It is well known that the regular NSA detectors are not guaranteed to always occupy the maximal coverage of the nonself space. Therefore, we next employ the clonal optimization method to optimize these detectors so that the best anomaly detection performance can be achieved. A new motor fault detection scheme using the proposed NSA is also presented and discussed. We demonstrate the efficiency of our approach with an interesting example of motor bearings fault detection, in which the detection rates of three bearings faults are significantly improved.
机译:负选择算法(NSA)和克隆选择方法是两种典型的人工免疫系统。在本文中,我们首先介绍它们的潜在灵感和工作原理。众所周知,不能保证常规的NSA检测器总是占据非自身空间的最大覆盖范围。因此,我们接下来将使用克隆优化方法来优化这些检测器,以便可以实现最佳的异常检测性能。还提出并讨论了使用提出的NSA的新的电动机故障检测方案。我们通过一个有趣的电机轴承故障检测示例演示了我们的方法的效率,其中三个轴承故障的检测率得到了显着提高。

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