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Simulation Research on Neural Network Sliding Mode Control of Energy-Regenerative Braking of Electric Vehicle

机译:电动汽车能量再生制动的神经网络滑动模式控制模拟研究

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To improve the energy-regenerative efficiency and robustness of electric vehicle (EV), a novel energy-regenerative controller was designed and applied to the charge current loop of the EV. The controller that combines neural network (NN) with traditional sliding mode controller (SMC) comprises a radial basis function NN (RBFNN) and a SMC. The RBFNN is used to adaptively adjust the switching gain of the SMC. The simulation model of the energy-regenerative system is built with MATLAB/SIMULINK, and the simulation results show that comparing with traditional SMC, the NNSMC has better performance at response speed, steady-state tracking error and resisting disturbance in energy-regenerative process. Additionally, it can recover more energy.
机译:为了提高电动车辆(EV)的能量再生效率和稳健性,设计了一种新的能量再生控制器并施加到EV的充电电流环上。 将神经网络(NN)与传统滑模控制器(SMC)组合的控制器包括径向基函数NN(RBFNN)和SMC。 RBFNN用于自适应调整SMC的切换增益。 通过Matlab / Simulink建立了能量 - 再生系统的仿真模型,仿真结果表明,与传统SMC相比,NNSMC在响应速度,稳态跟踪误差和抵抗能量再生过程中的抗干扰方面具有更好的性能。 另外,它可以恢复更多的能量。

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