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An open set recognition methodology utilising discrepancy analysis for gear diagnostics under varying operating conditions

机译:一种采用差异分析的开放集识别方法,用于在各种工况下进行齿轮诊断

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Historical fault data are often difficult and expensive to acquire, which can prohibit the application of supervised learning techniques in the condition-based maintenance field. Hence, novelty detection techniques such as discrepancy analysis are useful because only healthy historical data are required. However, even if discrepancy analysis is implemented on a machine, some historical fault data will become available during the operational lifetime of the machine and could be utilised to improve the efficiency of the condition inference process. An open set recognition methodology relying on discrepancy analysis is proposed that is capable of detecting novelties when only healthy historical data are available. It is also capable of inferring the condition of the machine if historical fault data are available and it is further able to detect novelties in regions not well supported by the historical fault data. In the condition recognition procedure, Gaussian mixture models are used with Bayes' rule and a decision rule to infer the condition of the machine in an open set recognition framework, where it is emphasised that it is beneficial to use the complete datasets (i.e. data acquired throughout the life of the component) for optimising the models. The benefit of the open set recognition model is that it is easy to incorporate new historical data in the framework as the data become available. In this work, practical aspects of the condition inference process such as the importance of good decision boundaries are highlighted and discussed as well. The methodology is validated on a synthetic dataset and experimental datasets acquired under varying operating conditions and it is also compared to a conventional classification process where discrepancy analysis is not used. The results indicate the potential of using the proposed methodology for rotating machine diagnostics under varying operating conditions. (C) 2018 Elsevier Ltd. All rights reserved.
机译:历史故障数据通常很难获取且价格昂贵,这可能会阻止监督学习技术在基于状态的维护领域中的应用。因此,新颖性检测技术(例如差异分析)非常有用,因为仅需要健康的历史数据即可。但是,即使在机器上实施了差异分析,在机器的使用寿命期间,某些历史故障数据仍将可用,并可用于提高条件推断过程的效率。提出了一种基于差异分析的开放集识别方法,该方法能够在只有健康历史数据可用时才能检测出新颖性。如果历史故障数据可用,它也能够推断出机器的状态,并且还能够检测出历史故障数据不能很好地支持的区域中的新颖性。在条件识别过程中,将高斯混合模型与贝叶斯规则和决策规则一起使用,以在开放集识别框架中推断机器的条件,其中强调使用完整的数据集(即,获取的数据)是有益的。在组件的整个生命周期中)以优化模型。开放集识别模型的好处是,随着数据的获得,很容易在框架中合并新的历史数据。在这项工作中,还着重讨论了条件推断过程的实际方面,例如良好决策边界的重要性。该方法在合成数据集和在不同操作条件下获得的实验数据集上得到了验证,并且还与不使用差异分析的常规分类过程进行了比较。结果表明,在变化的运行条件下使用所提出的方法进行旋转机械诊断的潜力。 (C)2018 Elsevier Ltd.保留所有权利。

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