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Reducing auxiliary energy consumption of heavy trucks by onboard prediction and real-time optimization

机译:通过车载预测和实时优化来减少重型卡车的辅助能源消耗

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摘要

The electric engine cooling system, where the coolant pump and the radiator fan are driven by electric motors, admits advanced control methods to decrease auxiliary energy consumption. Recent publications show the fuel saving potential of optimal control strategies for the electric cooling system through offline simulations. These strategies often assume full knowledge of the drive cycle and compute the optimal control sequence by expensive global optimization methods. In reality, the full drive cycle is unknown during driving and global optimization not directly applicable on resource-constrained truck electronic control units. This paper reports state-of-the-art engineering achievements of exploiting vehicular onboard prediction for a limited time horizon and minimizing the auxiliary energy consumption of the electric cooling system through real-time optimization. The prediction and optimization are integrated into a model predictive controller (MPC), which is implemented on a dSPACE MicroAutoBox and tested on a truck on a public road. Systematic simulations show that the new method reduces fuel consumption of a 40-tonne truck by 0.36% and a 60-tonne truck by 0.69% in a real drive cycle compared to a base-line controller. The reductions on auxiliary fuel consumption for the 40-tonne and 60-tonne trucks are about 26% and 38%, respectively. Truck experiments validate the consistency between simulations and experiments and confirm the real-time feasibility of the MPC controller. (C) 2016 Elsevier Ltd. All rights reserved.
机译:电动发动机冷却系统(冷却液泵和散热器风扇由电动机驱动)采用先进的控制方法以减少辅助能源消耗。最近的出版物通过离线模拟显示了电冷却系统最佳控制策略的节油潜力。这些策略通常假定您对驾驶周期有充分的了解,并通过昂贵的全局优化方法来计算最佳控制顺序。实际上,整个行驶周期在行驶和全局优化过程中是未知的,不能直接应用于资源受限的卡车电子控制单元。本文报告了在有限的时间范围内利用车载预测并通过实时优化将电子冷却系统的辅助能耗降至最低的最新工程成就。预测和优化已集成到模型预测控制器(MPC)中,该模型在dSPACE MicroAutoBox上实现并在公共道路上的卡车上进行了测试。系统仿真显示,与基线控制器相比,在实际驾驶周期中,该新方法可将40吨卡车的油耗降低0.36%,将60吨卡车的油耗降低0.69%。 40吨和60吨卡车的辅助燃料消耗分别减少了约26%和38%。卡车实验验证了仿真和实验之间的一致性,并确认了MPC控制器的实时可行性。 (C)2016 Elsevier Ltd.保留所有权利。

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