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A novel variable-length sliding window blockwise least-squares algorithm for on-line estimation of time-varying parameters

机译:在线估计时变参数的变长滑动窗口块最小二乘算法

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Motivated by the advances in computer technology and the fact that the batch/block least-squares (LS) produces more accurate parameter estimates than its recursive counterparts, several important issues associated with the block LS have been re-examined in the framework of on-line identification of systems with abrupt/gradual change parameters in this paper. It is no surprise that the standard block LS performs unsatisfactorily in such a situation. To overcome this deficiency, a novel variable-length sliding window-based LS algorithm, known as variable-length sliding window blockwise least squares, is developed. The algorithm consists of a change detection scheme and a data window with adjustable length. The window length adjustment is triggered by the change detection scheme. Whenever a change in system parameters is detected, the window is shortened to discount 'old' data and place more weight on the latest measurements. Several strategies for window length adjustment have been considered. The performance of the proposed algorithm has been evaluated through numerical studies. In comparison with the recursive least squares (RLS) with forgetting factors, superior results have been obtained consistently for the proposed algorithm. Robustness analysis of the algorithm to measurement noise have also been carried out. The significance of the work reported herein is that this algorithm offers a viable alternative to traditional RLS for on-line parameter estimation by trading off the computational complexity of block LS for improved performance over RLS, because the computational complexity becomes less and less an issue with the rapid advance in computer technologies.
机译:由于计算机技术的进步以及批次/块最小二乘(LS)产生比其递归对应项更准确的参数估计这一事实,与块LS相关的几个重要问题已在在线框架中重新进行了研究。本文对具有突变/逐步变化参数的系统进行在线辨识。在这种情况下标准块LS的性能不令人满意也就不足为奇了。为了克服这一缺陷,开发了一种新颖的基于变长滑动窗口的LS算法,称为变长滑动窗口逐块最小二乘。该算法由变化检测方案和长度可调的数据窗口组成。窗口长度调整由变化检测方案触发。每当检测到系统参数发生变化时,该窗口就会缩短以打折“旧”数据,并在最新测量结果上施加更大的权重。已经考虑了几种用于窗长调节的策略。通过数值研究评估了所提出算法的性能。与具有遗忘因素的递归最小二乘(RLS)相比,所提出的算法始终获得了优异的结果。还对算法进行了鲁棒性分析以测量噪声。本文报道的工作的意义在于,该算法通过权衡块LS的计算复杂度以实现优于RLS的性能,从而为在线参数估计提供了一种传统RLS的可行替代方案,因为计算复杂度越来越小计算机技术的飞速发展。

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