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Energy-Optimal Adaptive Cruise Control for Electric Vehicles Based on Linear and Nonlinear Model Predictive Control

机译:基于线性和非线性模型预测控制的电动汽车能量最优自适应巡航控制

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This paper presents a novel function of energy-optimal adaptive cruise control (EACC) for electric vehicles based on model predictive control (MPC), which plans the host car's speed trajectory in real time for higher energy efficiency by taking look-ahead traffic information and road conditions into consideration. After linear MPC (LMPC) is formulated in time domain, a nonlinear MPC (NMPC) formulation in space domain is proposed in this paper to overcome the drawbacks of LMPC in time domain. To cope with computational complexity of NMPC in space domain, the nonlinear equality constraints are relaxed to inequality constraints to yield a convex optimization problem. Moreover, it is proven that the relaxed optimization problem can be recast as a second-order cone programming (SOCP) problem, for which the efficient numerical optimizers exist. The performance of NMPC is evaluated in simulation, which is compared with the time domain LMPC and a theoretically optimal receding horizon dynamic programming (RH-DP) solution. Results indicate that the proposed space domain NMPC outperforms LMPC in time domain and the optimal solution of NMPC is very close to the result of RH-DP.
机译:本文介绍了基于模型预测控制(MPC)的电动汽车的能量最优自适应巡航控制(EACC)的新功能,该电动车辆通过拍摄远程交通信息和较高的流量信息考虑道路状况。在时域中配制线性MPC(LMPC)之后,在本文中提出了在空间域中的非线性MPC(NMPC)制剂,以克服LMPC在时域中的缺点。为了应对空间域中NMPC的计算复杂性,非线性平等约束被松弛到不等式约束,以产生凸优化问题。此外,证明了放宽的优化问题可以作为二阶锥编程(SOCP)问题重新循环,其中存在有效的数值优化器。在模拟中评估了NMPC的性能,与时域LMPC和理论上最佳后退地平线动态编程(RH-DP)解决方案进行了比较。结果表明,所提出的空间域NMPC在时域中优于LMPC,NMPC的最佳解决方案非常接近RH-DP的结果。

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