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A Computationally Efficient and Adaptive Approach for Online Embedded Machinery Diagnosis in Harsh Environments

机译:一种在恶劣环境下在线嵌入式机械诊断的高效计算和自适应方法

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摘要

Condition-based monitoring (CBM) has advanced to the stage where industry is now demanding machinery that possesses self-diagnosis ability. This need has spurred the CBM research to be applicable in more expanded areas over the past decades. There are two critical issues in implementing CBM in harsh environments using embedded systems: computational efficiency and adaptability. In this paper, a computationally efficient and adaptive approach including simple principal component analysis (SPCA) for feature dimensionality reduction and K-means clustering for classification is proposed for online embedded machinery diagnosis. Compared with the standard principal component analysis (PCA) and kernel principal component analysis (KPCA), SPCA is adaptive in nature and has lower algorithm complexity when dealing with a large amount of data. The effectiveness of the proposed approach is firstly validated using a standard rolling element bearing test dataset on a personal computer. It is then deployed on an embedded real-time controller and used to monitor a rotating shaft. It was found that the proposed approach scaled well, whereas the standard PCA-based approach broke down when data quantity increased to a certain level. Furthermore, the proposed approach achieved 90% accuracy when diagnosing an induced fault compared to 59% accuracy obtained using the standard PCA-based approach.
机译:基于状态的监视(CBM)已经发展到现在行业要求具有自我诊断能力的机械的阶段。在过去的几十年中,这种需求促使煤层气研究适用于更多的领域。在使用嵌入式系统的恶劣环境中实施CBM时,存在两个关键问题:计算效率和适应性。本文提出了一种用于在线嵌入式机械诊断的计算有效且自适应的方法,该方法包括用于特征维数减少的简单主成分分析(SPCA)和用于分类的K-means聚类。与标准主成分分析(PCA)和内核主成分分析(KPCA)相比,SPCA本质上是自适应的,并且在处理大量数据时具有较低的算法复杂度。首先,使用个人计算机上的标准滚动轴承测试数据集验证了所提出方法的有效性。然后将其部署在嵌入式实时控制器上,并用于监视旋转轴。结果发现,提出的方法扩展性很好,而当数据量增加到一定水平时,基于PCA的标准方法就失效了。此外,与基于标准PCA的方法获得的59%的准确度相比,该方法在诊断诱发故障时可达到90%的准确度。

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