Hardware-in-the-Loop Experimental Validation of a Learning based Neuro-Fuzzy Energy Management Strategy for Plug-in Hybrid Electric Buses

J. A. López-Ibarra, H. Gaztañaga, Andoni Saez de Ibarra, H. Camblong
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Abstract

Learning based energy management strategies are promising methods, due to the design complexity minimization and learning capability from historical data. This paper aims to experimentally validate a learning based neuro-fuzzy energy management strategy for plug-in hybrid electric buses. With the aim to minimize computation cost and further improve the energy management strategy, this energy management strategy is designed based on the dynamic programming optimal operation of different auxiliary consumption levels, designed based on the neuro-fuzzy learning technique. The developed learning based neuro-fuzzy energy management strategy has been implemented into a physical control hardware and validated in real-time, managing the energetic operation of an emulated plug-in hybrid electric bus. Fuel consumption decrease of 10.32% has been achieved compared to a charge-depleting charge-sustaining energy management strategy.
插电式混合动力客车基于学习的神经模糊能量管理策略的硬件在环实验验证
基于学习的能量管理策略具有设计复杂性最小化和从历史数据中学习的能力,是一种很有前途的方法。本文旨在实验验证一种基于学习的神经模糊插电式混合动力客车能量管理策略。基于神经模糊学习技术,设计了基于不同辅助能耗水平的动态规划优化运行的能量管理策略,以最小化计算成本和进一步改进能量管理策略。所开发的基于学习的神经模糊能量管理策略已在物理控制硬件中实现,并进行了实时验证,用于管理仿真插电式混合动力客车的能量运行。与消耗电量维持电量的能源管理策略相比,燃料消耗降低了10.32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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