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Matching a system behavior with a known set of models: A quadratic optimization-based adaptive solution

机译:使系统行为与一组已知模型匹配:基于二次优化的自适应解决方案

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摘要

The matching process between a time-domain external behavior of a lumped single-input single-output dynamical system and a known set of linear continuous time-invariant models is tackled in this paper. The proposed online solution is based on an adaptive structure detector, which in finite time locates in the known set of models the one corresponding to the observed external behavior; the detector results from the solution of a constrained quadratic optimization problem. The problem is expressed in terms of the time-domain activity of a family of discriminating filters and is solved via a normalized gradient algorithm, which avoids mismatching due to the presence of structural zeros in the filters and can take into account band-limited high-frequency measurement noise. A failure detection problem concerning a simulated servomechanism is included in order to illustrate the proposed solution.
机译:本文研究了集总单输入单输出动力系统的时域外部行为与一组已知的线性连续时不变模型之间的匹配过程。所提出的在线解决方案基于自适应结构检测器,该检测器在有限时间内位于已知模型集中,一个对应于所观察到的外部行为。检测器来自约束二次优化问题的解。该问题以一类区分滤波器的时域活动来表示,并通过归一化梯度算法解决,该算法避免了由于滤波器中存在结构零而导致的不匹配,并可以考虑带宽受限的高频率测量噪声。为了说明所提出的解决方案,包括了与模拟伺服机构有关的故障检测问题。

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