Virtual speed sensor for DC motor using back-propagation artificial neural networks

J. V. Montesdeoca-Contreras, J. Zambrano-Abad, J. A. Morales-Garcia, R. S. Avila-Campoverde
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引用次数: 5

Abstract

The use of artificial neural networks has enabled applications that would be impossible to achieve with conventional electronics, through to versatility that them have, they can be configured as needed and use as required such as classifiers, adaptive filters, controllers and predictors. This paper describes a experimental implementation of virtual speed sensor for DC motor using back-propagation artificial neural networks through voltage and current acquisition. In implementation process a comparative between both logsig and tansig activation function in hidden layer is made. The training of the neural network is performed by acquiring signals of voltage, current and speed sensor, later the response efficiency of the network is analyzed by comparing the result produced by physical sensor and virtual sensor implemented using neural networks. In this experiment training pattern values has a large range, a several process training with both small and large section range is made. Results show a good performance and a minimum error with both logsig and tansig activation function in hidden layer when pattern signal is full training.
基于反向传播人工神经网络的直流电机虚拟速度传感器
人工神经网络的使用使得传统电子设备无法实现的应用成为可能,通过它们的多功能性,它们可以根据需要进行配置,并根据需要使用,如分类器、自适应滤波器、控制器和预测器。本文介绍了利用反向传播人工神经网络通过电压和电流采集实现直流电机虚拟速度传感器的实验实现。在实现过程中,对隐藏层的日志激活函数和tansig激活函数进行了比较。通过获取电压、电流和速度传感器的信号对神经网络进行训练,并通过对比物理传感器和虚拟传感器的响应结果,分析了神经网络的响应效率。在本实验中,训练模式值具有较大的范围,进行了小截面范围和大截面范围的多工序训练。结果表明,在模式信号充分训练的情况下,隐藏层的log - sig和tansig激活函数都具有良好的性能和最小的误差。
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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