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ROBUST FAULT DETECTION BASED ON NONLINEAR ANALYTIC REDUNDANCY TECHNIQUES WITH APPLICATIONS TO ROBOTICS

机译:基于非线性分析冗余技术的鲁棒故障检测及其在机器人中的应用

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摘要

A new approach to sensor and actuator fault detection in the presence of model uncertainty and disturbances, and its application to a wheeled mobile robot (WMR) are presented in this paper. Robust fault detection is important because of the universal existence of model uncertainties and process disturbances in most systems. This paper proposes a new approach, called robust nonlinear analytic redundancy (RNLAR) technique, to sensor and actuator fault detection for input-affine nonlinear multivariable dynamic systems in the presence of model-plant-mismatch and process disturbance. The proposed RNLAR can be used to design primary residual vectors (PRV) for nonlinear systems to detect sensor fault that are completely insensitive to both the model-plant-mismatch and process disturbance. It is shown that the PRV for actuator fault cannot be made completely insensitive to these factors. In order to overcome this problem, a nonlinear PRV design method to detect actuator faults is proposed where the PRVs are highly sensitive to the actuator faults and less sensitive to model-plant-mismatch and process disturbance. The proposed robust fault detection methodology is applied to a WMR and the simulation results are presented to demonstrate the effectiveness of this new approach.
机译:本文提出了一种在存在模型不确定性和干扰的情况下进行传感器和执行器故障检测的新方法,并将其应用于轮式移动机器人(WMR)。由于在大多数系统中普遍存在模型不确定性和过程干扰,因此可靠的故障检测非常重要。本文提出了一种新的方法,称为鲁棒非线性分析冗余(RNLAR)技术,用于在存在模型工厂不匹配和过程干扰的情况下,对仿射非线性多变量动态系统进行传感器和执行器故障检测。所提出的RNLAR可用于为非线性系统设计主要残差矢量(PRV),以检测对模型工厂不匹配和过程干扰完全不敏感的传感器故障。结果表明,致动器故障的PRV不能完全不受这些因素的影响。为了克服这个问题,提出了一种非线性的PRV设计方法来检测执行器故障,其中PRV对执行器故障高度敏感,而对模型-工厂不匹配和过程干扰则较不敏感。提出的鲁棒故障检测方法应用于WMR,并通过仿真结果证明了该新方法的有效性。

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