Optimization of Hybrid Energy Storage Systems for Vehicles with Dynamic On-off Power Loads Using a Nested Formulation

IF 0.5 Q4 ENERGY & FUELS
Jiajun Liu, Huachao Dong, Tianxu Jin, Li Liu, Babak Manouchehrinia, Zuo-ying Dong
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引用次数: 10

Abstract

In this paper, identification of an appropriate hybrid energy storage system (HESS) architecture, introduction of a comprehensive and accurate HESS model, as well as HESS design optimization using a nested, dual-level optimization formulation and suitable optimization algorithms for both levels of searches have been presented. At the bottom level, design optimization focuses on the minimization of power loss in batteries, converter, and ultracapacitors (UCs), as well as the impact of battery depth of discharge (DOD) to its operation life, using a dynamic programming (DP)-based optimal energy management strategy (EMS). At the top level, HESS optimization of component size and battery DOD is carried out to achieve the minimum life-cycle cost (LCC) of the HESS for given power profiles and performance requirements as an outer loop. The complex and challenging optimization problem is solved using an advanced Multi-Start Space Reduction (MSSR) search method developed for computation-intensive, black-box global optimization problems. An example of load-haul-dump (LHD) vehicles is employed to verify the proposed HESS design optimization method and MSSR leads to superior optimization results and dramatically reduces computation time. This research forms the foundation for the design optimization of HESS, hybridization of vehicles with dynamic on-off power loads, and applications of the advanced global optimization method.
基于嵌套公式的车辆动态开关电源混合储能系统优化
本文提出了合适的混合储能系统(HESS)体系结构的确定、全面准确的混合储能系统模型的引入,以及采用嵌套双级优化公式和适合两级搜索的优化算法对混合储能系统进行优化设计。在底层,设计优化的重点是最小化电池、转换器和超级电容器(UCs)的功率损耗,以及电池放电深度(DOD)对其使用寿命的影响,使用基于动态规划(DP)的最优能量管理策略(EMS)。在顶层,对组件尺寸和电池DOD进行HESS优化,以实现给定功率分布和性能要求的HESS的最小生命周期成本(LCC)。采用先进的多起点空间约简(MSSR)搜索方法解决了复杂而具有挑战性的优化问题,该方法是为计算密集型黑盒全局优化问题而开发的。以整车为例验证了所提出的HESS设计优化方法,结果表明,MSSR优化效果较好,大大缩短了计算时间。该研究为HESS的设计优化、动态开关功率负载车辆的混合动力以及先进的全局优化方法的应用奠定了基础。
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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来源期刊
Advances in Energy Research
Advances in Energy Research ENERGY & FUELS-
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