Modeling switched behavior to monitor energy-based dynamical systems

Dhaou Garai, R. Harabi, F. Bacha
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引用次数: 1

Abstract

Nowadays, a wide number of manufacturing systems are usually coupled discrete and continuous dynamic behaviors. This paper deals with the design of a novel framework related to the fault diagnosis issue merging quantitative and qualitative reasoning so as to accurately monitor several fault kinds affecting such hybrid systems. Two different structural fault diagnosis approaches are compared. Firstly, the Hybrid Bond Graph (HBG) representation (quantitative way) is used to obtain the Global Analytical Redundancy Relations (GARRs) dedicated to Fault Detection and Isolation (FDI) tasks. Secondly, the qualitative approach utilizes the possible conflicts which are deduced from the Directed Behavioral Hypergraph (DBH) description and able to study the temporal and qualitative impacts related to sensor and actuator faults. Afterwards qualitative and quantitative methods are compared and discussed so as to analysis the ability to diagnose the dynamical hybrid systems.
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建模切换行为以监测基于能量的动力系统
目前,大量的制造系统通常具有离散和连续的耦合动态行为。本文设计了一种将定量推理与定性推理相结合的故障诊断框架,以准确监测影响混合系统的几种故障类型。比较了两种不同的构造故障诊断方法。首先,采用混合键图(HBG)表示(定量方法),得到用于故障检测与隔离(FDI)任务的全局解析冗余关系(garr);其次,定性方法利用从有向行为超图(DBH)描述中推导出的可能冲突,能够研究与传感器和执行器故障相关的时间和定性影响。然后对定性和定量方法进行了比较和讨论,以分析动态混合系统的诊断能力。
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