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Nonlinear Recurrent Neural Network Predictive Control for Energy Distribution of a Fuel Cell Powered Robot

机译:燃料电池动力机器人能量分布的非线性复发性神经网络预测控制

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This paper presents a neural network predictive control strategy to optimize power distribution for a fuel cell/ultracapacitor hybrid power system of a robot. We model the nonlinear power system by employing time variant auto-regressive moving average with exogenous (ARMAX), and using recurrent neural network to represent the complicated coefficients of the ARMAX model. Because the dynamic of the system is viewed as operating- state- dependent time varying local linear behavior in this frame, a linear constrained model predictive control algorithm is developed to optimize the power splitting between the fuel cell and ultracapacitor. The proposed algorithm significantly simplifies implementation of the controller and can handle multiple constraints, such as limiting substantial fluctuation of fuel cell current. Experiment and simulation results demonstrate that the control strategy can optimally split power between the fuel cell and ultracapacitor, limit the change rate of the fuel cell current, and so as to extend the lifetime of the fuel cell.
机译:本文介绍了神经网络预测控制策略,以优化机器人燃料电池/超容器混合动力系统的功率分布。我们通过采用与外源(ARMAX)的时间变体自回归移动平均线来模拟非线性电力系统,并使用复制神经网络来表示ARMAX模型的复杂系数。因为系统的动态被视为在该帧中的局部线性行为上的操作 - 状态依赖的时间,所以开发了一种线性约束模型预测控制算法以优化燃料电池和超容器之间的功率分裂。所提出的算法显着简化了控制器的实现,并且可以处理多个约束,例如限制燃料电池电流的大量波动。实验和仿真结果表明,控制策略可以在燃料电池和超容器之间最佳地分裂功率,限制燃料电池电流的变化率,从而延长燃料电池的寿命。

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