基于切比雪夫神经网络的轻型全电动汽车非线性控制器

Vikas Sharma, S. Purwar
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引用次数: 22

摘要

针对轻型纯电动汽车,提出了两种非线性控制器:基于切比雪夫神经网络的反步控制器和基于切比雪夫神经网络的最优自适应控制器。电动汽车是由直流电机驱动的。两种控制器都使用切比雪夫神经网络(CNN)来估计未知的非线性。由于不可能精确地模拟EV的动力学,因此产生了未知的非线性。假设乘客质量、直流电动机电枢绕组阻力、气动阻力系数和滚动阻力系数随时间变化。学习算法由李雅普诺夫稳定性分析推导而来,保证了闭环系统的系统跟踪稳定性和误差收敛性。开发了电动汽车系统的控制算法,并进行了行驶循环试验,以测试其控制性能。仿真结果表明了所提控制器的有效性。
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Nonlinear Controllers for a Light-Weighted All-Electric Vehicle Using Chebyshev Neural Network
Two nonlinear controllers are proposed for a light-weighted all-electric vehicle: Chebyshev neural network based backstepping controller and Chebyshev neural network based optimal adaptive controller. The electric vehicle (EV) is driven by DC motor. Both the controllers use Chebyshev neural network (CNN) to estimate the unknown nonlinearities. The unknown nonlinearities arise as it is not possible to precisely model the dynamics of an EV. Mass of passengers, resistance in the armature winding of the DC motor, aerodynamic drag coefficient and rolling resistance coefficient are assumed to be varying with time. The learning algorithms are derived from Lyapunov stability analysis, so that system-tracking stability and error convergence can be assured in the closed-loop system. The control algorithms for the EV system are developed and a driving cycle test is performed to test the control performance. The effectiveness of the proposed controllers is shown through simulation results.
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