串联混合动力军用卡车组合电池设计优化与能量管理

Zifan Liu, Abdullah Al Mamun, Denise M. Rizzo, S. Onori
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引用次数: 12

摘要

本文研究了采用同步电池组设计和动力系统监控优化算法的串联混合动力军用卡车的节油潜力。设计优化是指混合动力配置中锂离子电池组的尺寸。动力系统监控优化决定了在电池组和发动机之间分配动力需求的最有效方式。尽管现有的设计和控制优化技术,但在文献中仍然缺乏设计和控制组合优化的广义数学公式和求解方法。本文旨在通过提出一个统一的框架来同时优化电池组尺寸和功率分割控制序列来填补这一空白。这是通过遗传算法(GA)和庞特里亚金最小原理(PMP)的结合来实现的,其中设计参数集成到哈密顿函数中。由于遗传算法和PMP算法都是在适当条件下的全局优化方法,其解可以作为所研究应用的基准。使用五个军用驱动循环来评估所提出的方法。仿真结果显示,与基线非优化情况相比,根据驾驶周期的不同,油耗降低了5%-19%。2018年12月16日星期日,Simona Onori从SAE International下载
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Combined Battery Design Optimization and Energy Management of a Series Hybrid Military Truck
This article investigates the fuel savings potential of a series hybrid military truck using a simultaneous battery pack design and powertrain supervisory control optimization algorithm. The design optimization refers to the sizing of the lithium-ion battery pack in the hybrid configuration. The powertrain supervisory control optimization determines the most efficient way to split the power demand between the battery pack and the engine. Despite the available design and control optimization techniques, a generalized mathematical formulation and solution approach for combined design and control optimization is still missing in the literature. This article intends to fill that void by proposing a unified framework to simultaneously optimize both the battery pack size and power split control sequence. This is achieved through a combination of genetic algorithm (GA) and Pontryagin’s minimum principle (PMP) where the design parameters are integrated into the Hamiltonian function. As GA and PMP are global optimization methodologies under suitable conditions, the solution can be considered as a benchmark for the application under study. Five military drive cycles are used to evaluate the proposed approach. The simulation results show 5%-19% reduction in fuel consumption depending on the drive cycle compared to a baseline non-optimized case. Downloaded from SAE International by Simona Onori, Sunday, December 16, 2018
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来源期刊
SAE International Journal of Alternative Powertrains
SAE International Journal of Alternative Powertrains TRANSPORTATION SCIENCE & TECHNOLOGY-
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期刊介绍: The SAE International Journal of Alternative Powertrains provides a forum for peer-reviewed scholarly publication of original research and review papers that address challenges and present opportunities in alternative and electric powertrains and propulsion technology. The Journal strives to facilitate discussion between researchers, engineers, academic faculty and students, and industry practitioners working with systems as well as components, and the technological aspects and functions of powertrains and propulsion systems alternative to the traditional combination of internal combustion engine and mechanical transmission. The editorial scope of the Journal includes all technical aspects of alternative propulsion technologies, including, but not limited to, electric drives and electromobility systems, hybrid technology, battery and super-capacitor technology, power electronics, hydraulic drives, energy storage systems for automotive applications, fuel cell technology, and charging and smart grid infrastructures.
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