电动汽车无刷直流电机的节能非线性模型预测控制

P. Ubare, Deepak D. Ingole, D. Sonawane
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引用次数: 4

摘要

一次行驶的最大距离是当今电动汽车(EV)的主要限制。这是由于需要最大的电流,扭矩,以及总的机载能量存储等。通过有效地利用可用的电力资源,可以增加距离。提出了一种用于电动汽车无刷直流电机控制的非线性模型预测控制(NMPC)方案。考虑了含EV负载的无刷直流电机面向控制的非线性模型,并将其应用于NMPC方案中。NMPC的目标是通过最小化能量来控制电机的所需转矩和速度,同时限制供电电流和最大速度。给出了电动汽车和固定机械负载下无刷直流电机控制的仿真结果。此外,将NMPC与传统的直接转矩控制(DTC)方案的性能进行了比较。结果表明,在给定转速参考条件下,NMPC在固定负荷下比DTC节能19%,在EV负荷下比DTC节能13%。
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Energy-efficient Nonlinear Model Predictive Control of BLDC Motor in Electric Vehicles
The maximum distance that can be traveled at a stretch is the major limitation of today’s electric vehicle (EV). This is due to the need for maximum current, torque, and, the total onboard energy storage, etc. The distance can be increased by efficiently using the available power resources. In this paper, we present a nonlinear model predictive control (NMPC) scheme for the control of brushless direct current (BLDC) motor in EV. A control-oriented nonlinear model of the BLDC motor with EV load is considered and used in the proposed NMPC scheme. The objective of the NMPC is to control the desired torque and speed of the motor by minimizing the energy with constraints on supplied current and maximum speed. The simulation results of BLDC motor control with EV and fixed mechanical load are presented. Further, the performance of NMPC is compared with the conventional direct torque control (DTC) scheme. Presented results show that NMPC improves energy savings by 19% in fixed-load and 13% with EV load as compared to DTC under provided conditions of speed reference.
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