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Adaptive Model Predictive Control-Based Energy Management for Semi-Active Hybrid Energy Storage Systems on Electric Vehicles

机译:电动汽车半主动混合储能系统基于自适应模型预测控制的能量管理

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This paper deals with the energy management strategy (EMS) for an on-board semi-active hybrid energy storage system (HESS) composed of a Li-ion battery (LiB) and ultracapacitor (UC). Considering both the nonlinearity of the semi-active structure and driving condition uncertainty, while ensuring HESS operation within constraints, an adaptive model predictive control (AMPC) method is adopted to design the EMS. Within AMPC, LiB Ah-throughput is minimized online to extend its life. The proposed AMPC determines the optimal control action by solving a quadratic programming (QP) problem at each control interval, in which the QP solver receives control-oriented model matrices and current states for calculation. The control-oriented model is constructed by linearizing HESS online to approximate the original nonlinear model. Besides, a time-varying Kalman filter (TVKF) is introduced as the estimator to improve the state estimation accuracy. At the same time, sampling time, prediction horizon and scaling factors of AMPC are determined through simulation. Compared with standard MPC, TVKF reduces the estimation error by 1~3 orders of magnitude, and AMPC reduces LiB Ah-throughput by 4.3% under Urban Dynamometer Driving Schedule (UDDS) driving cycle condition, indicating superior model adaptivity. Furthermore, LiB Ah-throughput of AMPC under various classical driving cycles differs from that of dynamic programming by an average of 6.5% and reduces by an average of 10.6% compared to rule-based strategy of LiB Ah-throughput, showing excellent adaptation to driving condition uncertainty.
机译:本文针对由锂离子电池(LiB)和超级电容器(UC)组成的车载半主动混合式储能系统(HESS)的能源管理策略(EMS)。考虑到半主动结构的非线性和驾驶条件的不确定性,在确保HESS在约束范围内运行的同时,采用自适应模型预测控制(AMPC)方法设计EMS。在AMPC中,LiB Ah吞吐量在线最小化以延长其寿命。提出的AMPC通过在每个控制间隔内求解二次规划(QP)问题来确定最佳控制动作,其中QP求解器接收面向控制的模型矩阵和当前状态进行计算。通过在线线性化HESS以近似原始非线性模型来构建面向控制的模型。另外,引入时变卡尔曼滤波器(TVKF)作为估计量,以提高状态估计的准确性。同时,通过仿真确定了AMPC的采样时间,预测范围和比例因子。与标准MPC相比,TVKF在城市测功机驾驶时间表(UDDS)驾驶循环条件下将估计误差降低了1〜3个数量级,而AMPC将LiB Ah吞吐量降低了4.3%,表明该模型具有出色的适应性。此外,与基于规则的LiB Ah吞吐量策略相比,在各种经典驾驶周期下AMPC的LiB Ah吞吐量与动态编程的差异平均为6.5%,平均降低了10.6%,这表明对驾驶的出色适应性条件不确定性。

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