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SIMULTANEOUS FAULT DIAGNOSIS AND ROBUST MODEL SELECTION IN MULTIPLE LINEAR MODELS FRAMEWORK

机译:多个线性模型框架中的同时故障诊断和鲁棒模型选择

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In this paper, the main goal is to design an approach that performs fault detection and isolation in non linear system. Fault diagnosis is established by regarding system as an interpolation of multiple linear time invariant stochastic models and not as a single global model. In multiple model framework, the purpose of the paper consist of generate a robust model selection of the "best" representative linear model. Fault diagnosis method presented here is based on a bank of decoupled Kalman filters. The proposed method allows detection, isolation and estimation of multiple faults which appear simultaneously or in a sequential way. Robust model selection is obtained by regarding the residual vector insensitive to faults. Performances of the method are tested on a simulation example.
机译:在本文中,主要目标是设计一种在非线性系统中执行故障检测和隔离的方法。通过关于系统作为多个线性时间不变随机模型的插值来建立故障诊断,而不是单一的全局模型。在多种模型框架中,纸张的目的包括生成稳健的模型选择“最佳”代表性的线性模型。这里提出的故障诊断方法是基于一组分离的卡尔曼滤波器。所提出的方法允许检测,隔离和估计同时出现的多个故障或以顺序方式出现。通过关于故障不敏感的残余载体获得鲁棒模型选择。在仿真示例上测试该方法的性能。

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