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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Approximate H_∞ loop shaping in PID parameter adaptation
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Approximate H_∞ loop shaping in PID parameter adaptation

机译:PID参数自适应中的近似H_∞环路整形

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This paper discusses the use of H-infinity approximation for the online adaptation of PID controller parameters. For a frequency loop-shaping control objective, it is possible to adapt the PID parameters directly with linear model estimation algorithms. Standard least squares algorithms are common solutions for this problem, but their estimates exhibit a well-known strong dependence on the properties of the excitation. This drawback becomes more pronounced for systems where the modeling mismatch is large, as is frequently the case in PID control. In an alternative formulation of the estimation problem, we use a filter-bank to decompose the error signal to different components and minimize approximately the H-infinity norm of the sensitivity-weighted error operator. This approach results in a more consistent estimate of the optimal PID parameters, at the expense of higher excitation requirements. It also allows for the computation of a 'health indicator' to describe the confidence in the estimated parameters. The practical implication of this observation is that PIDs can be tuned more reliably, even in cases of large mismatch between the target and the feasible loop shapes. It also suggests a general theme where a min-max optimization of an operator error provides an advantage over signal error optimization. The key aspects of the algorithm are illustrated by numerical examples.
机译:本文讨论了使用H无限逼近来在线调整PID控制器参数。对于频率环路整形控制目标,可以使用线性模型估计算法直接调整PID参数。标准最小二乘算法是解决该问题的常用方法,但是它们的估计值表现出对激励特性的众所周知的强烈依赖性。对于建模失配较大的系统(如PID控制中的常见情况),此缺点变得更加明显。在估计问题的另一种表示形式中,我们使用滤波器组将误差信号分解为不同的分量,并使灵敏度加权误差算子的H无穷大范数最小。这种方法以最佳的励磁要求为代价,导致对最佳PID参数的估计更加一致。它还允许计算“健康指标”以描述对估计参数的置信度。该观察结果的实际含义是,即使在目标和可行回路形状之间存在较大失配的情况下,也可以更可靠地调整PID。它还提出了一个通用主题,其中操作员错误的最小-最大优化提供了优于信号错误优化的优势。数值示例说明了该算法的关键方面。

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