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Energy Management of Fuel Cell Hybrid Vehicle Based on Partially Observable Markov Decision Process

机译:基于部分可观察的马尔可夫决策过程的燃料电池混合动力车辆的能量管理

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摘要

This paper presents a nonmyopic energy management strategy (EMS) for controlling multiple energy flow in fuel cell hybrid vehicles. The control problem is solved by convex programing under a partially observable Markov decision process-based framework. We propose an average-reward approximator to estimate a long-term average cost instead of using a model to predict future power demand. Thus, the dependence between the system closed-loop performance and the model accuracy for predicting the future power demand is decoupled in the energy management design for fuel cell hybrid vehicles. The energy management scheme consists of a real-time self-learning system, an average-reward filter based on the Markov chain Monte Carlo sampling, and an action selector system through the rollout algorithm with a convex programing-based policy. The performance evaluation of the EMS is conducted via simulation studies using the data obtained from real-world driving experiments and its performance is compared with three benchmark schemes.
机译:本文提出了一种用于控制燃料电池混合动力汽车中多种能量流动的非植物能量管理策略(EMS)。根据基于部分可观察的马尔可夫决策过程的框架,通过凸面编程来解决控制问题。我们提出了平均奖励近似剂来估计长期平均成本,而不是使用模型来预测未来的电力需求。因此,系统闭环性能与用于预测未来电力需求的模型精度之间的依赖性在燃料电池混合动力车辆的能量管理设计中解耦。能源管理方案包括一个实时自学习系统,基于Markov链蒙特卡罗采样的平均奖励过滤器,以及通过具有基于凸编程的策略的推出算法的动作选择器系统。 EMS对EMS的性能评估通过使用从真实驾驶实验获得的数据进行仿真研究进行,其性能与三个基准方案进行了比较。

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