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An NN-Based SRD Decomposition Algorithm and Its Application in Nonlinear Compensation

机译:基于NN的SRD分解算法及其在非线性补偿中的应用

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摘要

In this study, a neural network-based square root of descending (SRD) order decomposition algorithm for compensating for nonlinear data generated by sensors is presented. The study aims at exploring the optimized decomposition of data 1.00,0.00,0.00 and minimizing the computational complexity and memory space of the training process. A linear decomposition algorithm, which automatically finds the optimal decomposition of N subparts and reduces the training time to 1N and memory cost to 1N, has been implemented on nonlinear data obtained from an encoder. Particular focus is given to the theoretical access of estimating the numbers of hidden nodes and the precision of varying the decomposition method. Numerical experiments are designed to evaluate the effect of this algorithm. Moreover, a designed device for angular sensor calibration is presented. We conduct an experiment that samples the data of an encoder and compensates for the nonlinearity of the encoder to testify this novel algorithm.
机译:在这项研究中,提出了一种基于神经网络的降序(SRD)分解的平方根算法,用于补偿传感器生成的非线性数据。该研究旨在探索数据1.00、0.00、0.00的最佳分解,并最大程度地减少训练过程的计算复杂性和存储空间。线性分解算法,可自动找到N个子部分的最佳分解并将训练时间减少至 1 N 和内存成本 1 N 已在从编码器获得的非线性数据上实现。特别关注估计隐藏节点数的理论途径以及改变分解方法的精度。数值实验旨在评估该算法的效果。此外,提出了一种用于角度传感器校准的设计装置。我们进行了一个对编码器数据进行采样并补偿编码器非线性的实验,以证明这一新颖算法。

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