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Trip distance adaptive power prediction control strategy optimization for a Plug-in Fuel Cell Electric Vehicle

机译:推迟距离自适应功率预测控制策略优化插入式燃料电池电动车

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摘要

The driving energy of a plug-in fuel cell electric vehicle (PFCEV) is provided by the fuel cell and battery. The hydrogen consumption (HC) is minimized through the optimization of the ratio of energy provided by the fuel cell and battery, respectively. Such a ratio may vary with the control of the state of charge (SOC) and the expected energy consumption dominated by the forthcoming trip distance. This research develops a trip distance SOC adaptive (TDSA) power prediction control strategy for a PFCEV based equivalent consumption minimization strategy (ECMS). The required power is estimated using Markov Chain Monte Carlo (MCMC). An off-line global optimization model is developed to derive the correction coefficient of equivalent factor. The advantage of the proposed strategy is numerically verified. The validation results confirm that the implementation of the proposed method could significantly decrease the HC for variable trip distances.. The HC, validated by using the TDSA is improved by 45.76%, 37.75% and 37.19% compared with Rule-based strategy at a trip distance of 100 km, 300 km and 500 km, respectively. The combination of the MCMC with ECMS makes it possible to develop the TDSA strategy capable of significantly decreasing the HC of the PFCEV.(c) 2021 Elsevier Ltd. All rights reserved.
机译:插入式燃料电池电动车(PFCEV)的驱动能量由燃料电池和电池提供。通过优化由燃料电池和电池提供的能量的比率来最小化氢消耗(HC)。这种比率可以随着电荷状态(SoC)的控制和由即将到来的跳闸距离所支配的预期能量消耗而变化。该研究开发了基于PFCEV的等效消耗最小化策略(ECMS)的跳闸距离SOC自适应(TDSA)功率预测控制策略。使用马尔可夫链蒙特卡罗(MCMC)估计所需的电力。开发了离线全局优化模型以导出等效因子的校正系数。拟议策略的优势在数值上验证。验证结果证实,该方法的实施可以显着降低可变行程距离的HC。使用TDSA验证的HC增长了45.76%,37.75%和37.19%,与旅行规则的战略相比距离100公里,300公里和500公里。 MCMC与ECM的组合使得可以开发能够显着降低PFCEV的HC的TDSA策略。(c)2021 Elsevier Ltd.保留所有权利。

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