Non-linear Grey-Box Models Applied to DC Motor Identification

David Fernando Zambrano Romero, Alejandro Salazar Vélez, J. Gómez-Mendoza
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引用次数: 1

Abstract

Grey-box modeling integrates both qualitative (expert-based) and quantitative (measurement data) knowledge. A grey-box model combines a formal structure of the phenomenon with a data-driven, generic model. The model is fitted to data until a complete and precise representation is achieved. In this paper, a grey-model based plant identification is carried out to estimate the parameters of a Pittman GM9413-3 DC motor, about which little of information is available. It is the main source of locomotion of the SCORBOT-ER V plus robot manipulator. With the parametric identification of the DC motor, it is possible to approximate the dynamics of the manipulator. The mathematical model is partially obtained by fitting the values of the internal resistance and inductance of the stator, using a linear regression of the data obtained from the DC test and rotor blocked test, respectively, and assuming that no losses are present due to electromagnetic conversion. The data were acquired using an FPGA-based data acquisition system tailored for the application. Results show that the model is precise, with a fitness higher than 84% and a final prediction error of less than 1%.
非线性灰盒模型在直流电机辨识中的应用
灰盒建模集成了定性(基于专家的)和定量(测量数据)知识。灰盒模型将现象的正式结构与数据驱动的通用模型相结合。该模型拟合数据,直到获得完整和精确的表示。针对现有资料较少的Pittman GM9413-3直流电动机的参数估计问题,提出了一种基于灰色模型的对象辨识方法。它是SCORBOT-ER V +机器人机械手的主要运动源。通过对直流电动机的参数辨识,可以逼近机械手的动力学特性。数学模型的一部分是通过拟合定子的内阻和电感值,分别使用直流试验和转子阻塞试验的数据进行线性回归,并假设不存在由于电磁转换而产生的损耗。数据采集使用基于fpga的数据采集系统定制的应用程序。结果表明,该模型精度较高,拟合度高于84%,最终预测误差小于1%。
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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