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Robust Model-Based Sensor Fault Monitoring System for Nonlinear Systems in Sensor Networks

机译:传感器网络中基于非线性模型的鲁棒传感器故障监测系统

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摘要

A new model-based sensor fault diagnosis (FD) scheme, using an equivalent model, is developed for a kind of Multiple Inputs Multiple Outputs (MIMO) nonlinear system which fulfills the Lipschitz condition. The equivalent model, which is a bank of one-dimensional linear state equations with the bounded model uncertainty, can take the place of a plant's exact nonlinear model in the case of sensor FD. This scheme shows a new perspective whereby, by using the equivalent model, it doesn't have to study the nonlinear internal structure character or get the exact model. The influence of the model uncertainty on the residuals is explained in this paper. A method, called pretreatment, is utilized to minimize the model uncertainty. The eigenstructure assignment method with assistant state is employed to solve the problem of perfect decoupling against the model uncertainty, disturbance, system faults, the relevant actuator faults, or even the case of no input from the relevant actuator. The realization of the proposed scheme is given by an algorithm according to a single sensor FD, and verified by a simulation example. Depending on the above, a sensor fault monitoring system is established by the sensor network and diagnosis logic, then the effectiveness is testified by a simulation.
机译:针对满足Lipschitz条件的一种多输入多输出(MIMO)非线性系统,开发了一种基于等效模型的基于模型的传感器故障诊断(FD)新方案。在传感器FD的情况下,等效模型是一排具有有限模型不确定性的一维线性状态方程,可以代替工厂的精确非线性模型。该方案显示了一个新的视角,通过使用等效模型,它不必研究非线性内部结构特征或获得精确模型。本文解释了模型不确定性对残差的影响。利用一种称为预处理的方法来最小化模型不确定性。采用具有辅助状态的本征结构分配方法来解决与模型不确定性,扰动,系统故障,相关执行器故障,甚至相关执行器无输入的情况之间的完美解耦问题。提出的方案的实现是通过算法根据单个传感器FD给出的,并通过仿真实例进行了验证。根据以上所述,通过传感器网络和诊断逻辑建立传感器故障监控系统,然后通过仿真验证其有效性。

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