Combined gradient and Iterative Learning Control method for magnetostatic inverse problem

Alireza Dehghani-Pilehvarani, P. Karimaghaee, A. Khayatian
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引用次数: 1

Abstract

In this paper, a new approach to solve the magnetostatic inverse problem is proposed. The goal of the paper is to place magnetic sources and to specify their locations and intensities from the measurements of a desired magnetic field in the air. In this work, it is assumed that the magnetic sources are coils which their locations and ampere turns must be determined. By using gradient method, coils locations are specified by finding extremum of the desired measured magnetic field and with the Iterative Learning Control, coils ampere turns are determined. Selection of correction term in Iterative Learning Control is the most important part of the controller design which dramatically affects the convergence of the method. The most important merit of the proposed method is its simplicity for implementation. The simulation results of the method show the accuracy and effectiveness of the proposed technique.
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静磁逆问题的梯度与迭代学习联合控制方法
本文提出了一种求解静磁逆问题的新方法。本文的目标是放置磁源,并根据空气中所需磁场的测量指定其位置和强度。在这项工作中,假设磁源是线圈,它们的位置和安培匝数必须确定。采用梯度法,通过求所需测量磁场的极值来确定线圈的位置;采用迭代学习控制,确定线圈的安培匝数。在迭代学习控制中,校正项的选取是控制器设计中最重要的部分,它对方法的收敛性有很大的影响。该方法最重要的优点是易于实现。仿真结果表明了该方法的准确性和有效性。
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