Continuous-Time Extremum Seeking with Function Measurements Disturbed by Stochastic Noise: A Synchronous Detection Approach

Cesar U. Solis, J. Clempner, A. Poznyak
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引用次数: 4

Abstract

This paper suggests a novel algorithm for extremum seeking based on a stochastic continuous-time optimization approach employing a gradient descent method based on the synchronous detection technique. The problem consists on finding the minimum of a strongly convex function which is unknown but may be measured in any testing point subject to a stochastic noise perturbation. The suggested extremum seeking procedure is based on the estimated gradient obtained by the modified stochastic version of the Synchronous Detection Method. We have added a first order low-pass filter to the gradient estimator to attenuate the noise in the estimations. We prove the mean-squared convergence of the suggested extremum seeking algorithm to a zone around the minimizer. To validate the contributions of the paper we present a numerical example.
函数测量受随机噪声干扰的连续时间极值搜索:一种同步检测方法
本文提出了一种基于同步检测技术的梯度下降法的随机连续优化极值搜索算法。问题在于找到一个强凸函数的最小值,该函数是未知的,但可以在受随机噪声扰动的任何测试点上测量。建议的极值搜索程序是基于由同步检测方法的改进随机版本得到的估计梯度。我们在梯度估计器中加入了一个一阶低通滤波器来衰减估计中的噪声。我们证明了所提出的求极值算法的均方收敛性。为了验证本文的贡献,我们给出了一个数值例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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