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Supervised fault learning using rule-generated samples for machine condition monitoring

机译:使用规则生成的样本对机器状态进行监督的故障学习

摘要

A machine fault diagnosis system is provided. The system combines a rule-based predictive maintenance strategy with a machine learning system. A simple set of rules defined manually by human experts is used to generate artificial training feature vectors to portray machine fault conditions for which only a few real data points are available. Those artificial training feature vectors are combined with real training feature vectors and the combined set is used to train a supervised pattern recognition algorithm such as support vector machines. The resulting decision boundary closely approximates the underlying real separation boundary between the fault and normal conditions.
机译:提供了一种机器故障诊断系统。该系统将基于规则的预测性维护策略与机器学习系统结合在一起。使用由人类专家手动定义的一组简单规则来生成人工训练特征向量,以描绘机器故障条件,对于这些条件,只有几个实际数据点可用。将那些人工训练特征向量与实际训练特征向量组合,并使用组合的集合来训练监督模式识别算法,例如支持向量机。最终的决策边界非常接近故障和正常情况之间的潜在实际分离边界。

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