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Generic framework for hybrid fault diagnosis and health monitoring of the Tennessee Eastman Process

机译:田纳西州伊士曼过程的混合故障诊断和健康监控的通用框架

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Fault Diagnosis and Health Monitoring (FD-HM) based on hybrid approaches have been an active field of research and a key challenge over the last few years. In many applications, generic and unified approaches are usually required for designing a complete robust FD-HM system. The main contribution of this article is to develop a hybrid approach properly tailored for such challenge, by bridging the Bond-Graph (BG), the Signed Bond-Graph (SBG) and the Bayesian Network (BN) methods, through a probabilistic common framework for decision-making. This new hybrid methodology benefits from different types of information emanating from the quantitative model, the qualitative reasoning and the available data, in order to increase the overall confidence in the diagnosis performances. The effectiveness of the proposed hybrid approach is validated by the well-known Tennessee Eastman Process.
机译:基于混合方法的故障诊断和健康监控(FD-HM)一直是活跃的研究领域,并且在过去几年中是一个关键的挑战。在许多应用中,设计完整的鲁棒FD-HM系统通常需要通用和统一的方法。本文的主要贡献是,通过概率通用框架,通过衔接键图(BG),带符号键图(SBG)和贝叶斯网络(BN)的方法,开发了适合于此类挑战的混合方法。用于决策。这种新的混合方法论得益于定量模型,定性推理和可用数据所产生的不同类型的信息,从而提高了对诊断性能的总体信心。所提出的混合方法的有效性已通过著名的田纳西·伊士曼过程进行了验证。

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