Application of Signal Flow Network on Calibration Capacitive Rotary Encoder

Bo Hou, Zhenyi Gao, Cao Li, Qi Wei, Bin Zhou, Rong Zhang
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引用次数: 1

Abstract

The paper proposes an offline self-calibration scheme about establishing a signal flow network(SNF) to calibrate capacitive rotary encoder. This scheme proposes to simulate the flow of signals and store model parameter information in each node of the network. Unlike traditional optimization algorithms, the intermediate variables in the proposed solution are considered in the optimization pipeline, with the ability to converge fast and accurately. The proposed scheme no longer uses the traditional model linearization method. Instead, the method uses a nonlinear model to establish the network structure, ensures the independence of parameters, and uses an in-depth learning algorithm for improving the convergence speed as well as ability to a global optimal solution. According to the simulation results, the method proposed here is able to get good accuracy of identification, with a relative error of identification below 0.01‰. The validity of the method have also been verified in experiments and the error after the compensation is reduced to 13.02%. The reasons for the inconsistency between simulation and experiment were analyzed. Although the compensation effect is limited, it provides a new method to calibrate capacitive rotary encoder.
信号流网络在电容式旋转编码器标定中的应用
提出了一种建立信号流网络(SNF)对电容式旋转编码器进行离线自校正的方案。该方案提出在网络的每个节点中模拟信号的流动并存储模型参数信息。与传统的优化算法不同,该算法在优化管道中考虑了中间变量,具有快速准确收敛的能力。该方案不再使用传统的模型线性化方法。该方法采用非线性模型建立网络结构,保证了参数的独立性,并采用深度学习算法提高了收敛速度和求全局最优解的能力。仿真结果表明,该方法能够获得较好的识别精度,识别的相对误差在0.01‰以下。实验验证了该方法的有效性,补偿后的误差降至13.02%。分析了仿真与实验结果不一致的原因。虽然补偿效果有限,但为电容式旋转编码器的标定提供了一种新的方法。
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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