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Analysis of Machine Learning based Condition Monitoring Schemes Applied to Complex Electromechanical Systems

机译:基于机器学习的状态监测方案在复杂机电系统中的应用分析

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In the modern industry framework, the application of condition monitoring schemes over electromechanical systems is being subjected to demanding requirements. Currently, the massive digitalization of industrial assets allows the investigation towards multiple monitoring strategies capable of emphasize deviations over the nominal system operation. However, the most prominent techniques, such as Machine Learning, present great challenges in complex systems. In this regard, the proposed study presents the analysis of the diagnostic capabilities resulting from the classical approaches based on machine learning facing to complex electromechanical systems that implies a working environment subject to different operation condition, configurations with multiple components and the presence of faults of different nature (mechanical, electrical, electromagnetic), under isolated or combined scenarios. Discriminative feature extraction capabilities and classification accuracy will be analyzed as performance measures.
机译:在现代工业框架中,状态监视方案在机电系统上的应用正受到苛刻的要求。当前,工业资产的大规模数字化允许研究多种监测策略,这些策略能够强调标称系统运行的偏差。但是,最著名的技术,例如机器学习,在复杂的系统中提出了巨大的挑战。在这方面,拟议的研究提出了基于经典方法的诊断能力的分析,这些方法基于面向复杂机电系统的机器学习,这意味着工作环境要经受不同的操作条件,具有多个组件的配置以及存在不同的故障自然(机械,电气,电磁),在孤立或组合的场景下。区分性特征提取能力和分类准确性将作为性能指标进行分析。

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