Robust Fault Diagnosis of Hybrid Systems with Interval-Valued Uncertainties using Hybrid Bond Graph

Y. Lounici, Y. Touati, B. O. Bouamama, S. Adjerid, Billal Nazim Chebouba
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引用次数: 3

Abstract

In this paper, a new robust fault diagnosis procedure for an uncertain hybrid system based on the hybrid bond graph model is proposed. The main objective is to enhance the robustness in the presence of uncertainties in order to minimize the non-detection and false alarm. The scientific interest of the present work remains in integrating the benefits of Hybrid bond graph and Interval analysis properties for effective diagnosis of uncertain hybrid systems. For this task, first, the Interval-valued Analytical redundancy relations which may undergo discrete mode changes are derived from diagnosis hybrid bond graph with controlled junctions. Secondly, the uncertainties are modelled directly in the hybrid bond graph as interval models for interval-valued thresholds generation. The limitations of the existing methods are alleviated by the proposed method. The effectiveness of the proposed method is demonstrated through simulation on a controlled two-tank hybrid system.
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基于混合键图的区间不确定性混合系统鲁棒故障诊断
提出了一种基于混合键图模型的不确定混合系统鲁棒故障诊断方法。主要目标是在存在不确定性的情况下增强鲁棒性,以最小化未检测和虚警。当前工作的科学兴趣仍然是将混合键图和区间分析特性的优点集成到不确定混合系统的有效诊断中。为此,首先从具有控制结点的诊断混合键图中导出可能经历离散模态变化的区间值解析冗余关系;其次,将不确定性直接建模为区间值阈值生成的区间模型。该方法克服了现有方法的局限性。通过对一个受控双罐混合系统的仿真验证了该方法的有效性。
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