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Robust sensitive fault detection and estimation for single-rate and multirate nonlinear sampled-data systems

机译:单速和多速率非线性采样数据系统的强大敏感故障检测和估计

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This paper investigates the problem of fault detection and estimation for nonlinear sampled-data systems in the presence of unknown exogenous inputs. Both cases of single-rate and multirate sampling are treated and general observer-based frameworks are provided using discrete-time approximation to estimate fault signals of any sources. We show that these frameworks are input-to-error stable with respect to the estimation error and can simultaneously enhance robustness against unknown inputs and sensitivity to faults in a mixed H-/H-infinity sense for the unknown exact discrete-time model of the plant. Our results are then applied to a class of Lipschitz nonlinear systems with a refined Euler approximate model to derive sampled-data fault estimation techniques where stability and H-/H-infinity optimization are ensured using linear matrix inequalities (LMIs). Simulation results of a flexible joint robot illustrate the effectiveness of the proposed methodologies. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文研究了在存在未知外源投入的情况下非线性采样数据系统的故障检测和估计问题。处理的这两种单速率和多速率采样的情况都是处理的,并且使用基于观察者的框架,使用离散时间近似来提供以估计任何源的故障信号。我们表明这些框架是关于估计误差的输入到误差稳定,并且可以同时增强对未知的H-/ H-Infinity Sense中的未知输入和对故障的敏感性的鲁棒性,以获得未知的精确离散时间模型植物。然后,我们的结果应用于一类具有精细欧拉近似模型的Lipschitz非线性系统,以推导出采样数据故障估计技术,其中使用线性矩阵不等式(LMI)确保稳定性和H-/ H-Infinity优化。柔性联合机器人的仿真结果说明了所提出的方法的有效性。 (c)2018 Elsevier B.v.保留所有权利。

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