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Bond Graph Model Based and Fuzzy Logic For Robust FDI of Mechatronic Systems

机译:基于粘合图模型和模糊逻辑,用于机电系统强大的FDI

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Fault diagnosis is crucial for ensuring the safe operation of complex engineering systems and avoiding to execute an unsafe behaviour. This paper deals with robust decision making (RDM) for fault detection of an electromechanical system by combining the advantages of Bond Graph (BG) modelling and Fuzzy logic reasoning. The proposed fault diagnosis method is implemented in two stages. In the first stage, the residuals are deduced from the BG model allowing to build a Fault Signature Matrix (FSM) according to the sensitivity of residuals to different parameters. In the second stage, the result of FSM and the robust residual thresholds are used by the fuzzy reasoning mechanism in order to evaluate a degree of detectability for each set of components. Finally, in order to make robust decision according to the detected fault component, an analysis is done between the output variables of the fuzzy system and components having the same signature in the FSM. The performance of the proposed fault diagnosis methodology is demonstrated through experimental data of an omnidirectional robot.
机译:故障诊断对于确保复杂工程系统的安全操作并避免执行不安全行为至关重要。本文通过结合粘合图(BG)建模和模糊逻辑推理的优点,对机电系统进行强大决策(RDM)的鲁棒决策(RDM)。所提出的故障诊断方法是以两个阶段实现的。在第一阶段,从BG模型推导出残差,允许根据残差对不同参数的敏感性构建故障签名矩阵(FSM)。在第二阶段,模糊推理机制使用FSM和鲁棒剩余阈值的结果,以便为每组组件评估一定程度的可检测性。最后,为了根据检测到的故障组件进行稳健的决定,在模糊系统的输出变量和在FSM中具有相同签名的组件之间进行分析。通过全向机器人的实验数据证明了所提出的故障诊断方法的性能。

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