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Optimal identification of regression-type processes under adaptively controlled observations

机译:自适应控制观测下回归型过程的最优识别

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The paper presents a new approach for the design and analysis of adaptive systems for the optimal identification of physical processes and signals described by linear regression-type equations. Contrary to the traditional methods, a compound model of the observed process is proposed. This model describes an unobservable process that is subject to identification and the observing device (sensor) separately. The introduced adaptive model of the sensor with bounded linear range of its characteristic is more general and adequate than the commonly used ones. It is shown that optimal adaptive control of the sensor parameters and its fit to the statistics of the identified process significantly improve the accuracy of the parameter estimates and increase their convergence rate. Results of the theoretical part of the paper are illustrated by a simple analytic example and confirmed via simulation.
机译:本文提出了一种用于自适应系统的设计和分析的新方法,用于通过线性回归类型方程式对物理过程和信号进行最佳识别。与传统方法相反,提出了观测过程的复合模型。该模型描述了一个不可观察的过程,该过程要分别进行识别和观察设备(传感器)的识别。引入的传感器的自适应模型具有有限的线性特征范围,它比常用的模型更为通用和充分。结果表明,传感器参数的最佳自适应控制及其对所识别过程的统计的适应性显着提高了参数估计的准确性,并提高了其收敛速度。本文的理论部分结果通过一个简单的分析示例进行了说明,并通过仿真进行了确认。

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