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Failure diagnosis using deep belief learning based health state classification

机译:使用基于深度信念学习的健康状态分类进行故障诊断

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Effective health diagnosis provides multifarious benefits such as improved safety, improved reliability and reduced costs for operation and maintenance of complex engineered systems. This paper presents a novel multi-sensor health diagnosis method using deep belief network (DBN). DBN has recently become a popular approach in machine learning for its promised advantages such as fast inference and the ability to encode richer and higher order network structures. The DBN employs a hierarchical structure with multiple stacked restricted Boltzmann machines and works through a layer by layer successive learning process. The proposed multi-sensor health diagnosis methodology using DBN based state classification can be structured in three consecutive stages: first, defining health states and preprocessing sensory data for DBN training and testing; second, developing DBN based classification models for diagnosis of predefined health states; third, validating DBN classification models with testing sensory dataset. Health diagnosis using DBN based health state classification technique is compared with four existing diagnosis techniques. Benchmark classification problems and two engineering health diagnosis applications: aircraft engine health diagnosis and electric power transformer health diagnosis are employed to demonstrate the efficacy of the proposed approach.
机译:有效的健康诊断可带来多种好处,例如,提高安全性,提高可靠性并降低复杂工程系统的运行和维护成本。本文提出了一种使用深度信念网络(DBN)的新型多传感器健康诊断方法。 DBN近来已成为机器学习中的一种流行方法,因为它具有诸如快速推理和编码更丰富和更高阶的网络结构的能力之类的承诺优势。 DBN采用具有多个堆叠的受限Boltzmann机器的层次结构,并逐层连续地学习过程。所提出的使用基于DBN的状态分类的多传感器健康诊断方法可以分为三个连续阶段:首先,定义健康状态并预处理用于DBN训练和测试的感觉数据;其次,开发用于诊断预定义健康状态的基于DBN的分类模型;第三,通过测试感官数据集验证DBN分类模型。使用基于DBN的健康状态分类技术进行的健康诊断与四种现有的诊断技术进行了比较。基准分类问题和两个工程健康诊断应用程序:飞机发动机健康诊断和电力变压器健康诊断被用来证明该方法的有效性。

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