扭矩
病媒控制
控制理论(社会学)
电压
控制器(灌溉)
直接转矩控制
计算机科学
测功机
工程类
感应电动机
物理
人工智能
电气工程
控制(管理)
汽车工程
农学
热力学
生物
作者
Fang Xie,Chenming Qiu,Zhe Qian
标识
DOI:10.1109/tpel.2021.3097906
摘要
In this article, model predictive (MP) and deep belief net (DBN) are introduced to optimize and predict the dq -axis stator voltage of asynchronous motors for electric cars in the field-weakening region to achieve the optimal “speed–torque” (represents the optimization of speed and torque performance) control. First, the analytical model of the maximum torque output is established, and the effect of dq -axis voltage on the torque output is analyzed. Second, to reduce the influence of proportional–integral parameter tuning, optimize the dq -axis voltage, and achieve the accurate torque control, MP is introduced to establish an analytical model of MP controller tracking current loop for generating the dq -axis voltage. Third, the maximum torque vector control system based on the MP controller is built, and the influence of system parameters on control effect is analyzed. Fourth, the simulation data are collected, and the DBN voltage prediction model is established. The model is embedded in the field-oriented control to achieve optimal “speed–torque” control. Finally, the dynamometer experimental platform is established to collect the experimental data and establish the DBN voltage prediction model. The validity of the method is verified through the voltage data calibration, “speed–torque” characteristic calibration, motor efficiency calibration, “speed–torque” response, and ripple test.
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