Assessing the potential of prediction in energy management for ancillaries in heavy-duty trucks

M. Nilsson, Lars Johannesson Mårdh, M. Askerdal
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引用次数: 7

Abstract

The degree of importance of prediction in the control of ancillary systems for conventional heavy-duty trucks is investigated, with focus on fuel economy. An optimal control law that utilizes prediction is compared with a suboptimal causal control law. The incentive for this investigation is that the suboptimal control law is less complex to develop and implement for the considered system. The results are not general since only a limited amount of ancillary systems have been modeled, only two different drive cycles have been evaluated and simplified mathematical component models for a specific test truck have been used in the optimization problem. Nevertheless, preliminary results from this investigation indicate that simple suboptimal control laws can yield close to the same improvements in fuel efficiency as a predictive controller, when compared to a baseline control law. Tuning complexity is expected to rise when more ancillaries are included in the energy management problem. This can be a valid argument to incorporate prediction in future work.
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评估预测在重型卡车辅助设备能源管理中的潜力
以燃油经济性为重点,研究了预测在常规重型卡车辅助系统控制中的重要程度。利用预测的最优控制律与次优因果控制律进行了比较。这项研究的动机是次优控制律对于所考虑的系统的开发和实施不那么复杂。由于仅对有限数量的辅助系统进行了建模,仅对两种不同的驱动循环进行了评估,并且在优化问题中使用了针对特定测试卡车的简化数学组件模型,因此结果并不普遍。然而,本研究的初步结果表明,与基线控制律相比,简单的次优控制律可以产生与预测控制器相同的燃油效率改进。当能源管理问题中包含更多的辅助设备时,调优复杂性预计会增加。这可能是在未来的工作中纳入预测的有效论据。
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