基于机器学习技术的永磁同步电机转矩估计

Wannadear Nawae, K. Thongpull
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引用次数: 6

摘要

永磁同步电机(PMSM)通常用于机械臂轻负荷应用,如工业医疗和家庭服务。由于这些机器人很可能在靠近人类的地方操作,因此出于安全原因,这些机器人应用需要能够意识到它们的操作条件。检查情况的主要参数之一是转子转矩,该转矩通常由转矩传感器获得。然而,使用这种设备需要额外的成本、庞大的机械安装和数据采集电子设备。由于这种权衡,我们提出了一种基于机器学习的转子转矩估计方法。在估计过程中使用的信息完全是电机本身产生的电信号,而不需要任何实际的传感器。在本文中,我们对所提出的无传感器转矩估计进行了调查和可行性研究。开发了电机试验台,用于观察电机特性并收集信息以建立转矩预测模型。许多基于统计的机器学习方法已经应用于这项工作,包括神经网络回归,线性回归和逐步回归。该系统已用于根据占位回归方法建立预测模型。通过将估计结果与实际扭矩传感器的真实情况进行比较,考虑了估计性能。基于神经网络回归的估计模型在RMSE为0.11,R值为0.996时获得了最高的精度。结果表明,将所提出的无意义力矩估计应用于具有可接受性能的机器人应用具有潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PMSM Torque Estimation Based on Machine Learning Techniques
Permanent Magnet Synchronous Motors (PMSM) are commonly used in robotic arms for light load applications such as industrial medical, and home service. These robotic applications are required an ability to aware their operating conditions due to safety reasons as they are likely to be operated close to humans. One of the major parameters to examine the situations is rotor torque which conventionally acquired by a torque transducer. However, using such device requires extra cost, bulky mechanical installation, and data acquisition electronics. Due to this trade-off, we propose a machine learning based method for rotor torque estimation. The information used in the estimation process are solely electrical signals generated by the motor itself without any actual sensor required. In this paper we present an investigation and feasibility study of the proposed sensorless torque estimation. A motor test bench has been developed for observing motor characteristics also for collecting information to create torque prediction models. Numerous statistical based machine learning methods have been applied in this work including Neural Networks regression, Linear regression, and Stepwise regression. The proposed system has been used to created prediction models according to the occupied regression methods. The estimation performance has been considered by comparing the estimated results with ground truths from an actual torque sensor. The estimation model based on Neural network regression has achieved highest accuracy at 0.11 of RMSE and 0.996 of R value. The results shown the potential of applying the proposed senseless torque estimation for robot application with acceptable performance.
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