Integrated System Design and Control Optimization of Hybrid Electric Propulsion System Using a Bi-Level, Nested Approach

L. Chen, Huachao Dong, Z. Dong
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引用次数: 3

Abstract

Hybrid electric powertrain systems present as effective alternatives to traditional vehicle and marine propulsion means with improved fuel efficiency, as well as reduced greenhouse gas (GHG) emissions and air pollutants. In this study, a new integrated, model-based design and optimization method for hybrid electric propulsion system of a marine vessel (harbor tugboat) has been introduced. The sizes of key hybrid powertrain components, especially the Li-ion battery energy storage system (ESS), which can greatly affect the ship’s life-cycle cost (LCC), have been optimized using the fuel efficiency, emission and lifecycle cost model of the hybrid powertrain system. Moreover, the control strategies for the hybrid system, which is essential for achieving the minimum fuel consumption and extending battery life, are optimized. For a given powertrain architecture, the optimal design of a hybrid marine propulsion system involves two critical aspects: the optimal sizing of key powertrain components, and the optimal power control and energy management. In this work, a bi-level, nested optimization framework was proposed to address these two intricate problems jointly. The upper level optimization aims at component size optimization, while the lower level optimization carries out optimal operation control through dynamic programming (DP) to achieve the globally minimum fuel consumption and battery degradation for a given vessel load profile. The optimized Latin hypercube sampling (OLHS), Kriging and the widely used Expected Improvement (EI) online sampling criterion are used to carry out “small data” driven global optimization to solve this nested optimization problem. The obtained results showed significant reduction of the vessel LCC with the optimized hybrid electric powertrain system design and controls. Reduced engine size and operation time, as well as improved operation efficiency of the hybrid system also greatly decreased the GHG emissions compared to traditional mechanical propulsion.
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基于双层嵌套方法的混合动力推进系统集成系统设计与控制优化
混合动力系统是传统汽车和船舶推进方式的有效替代方案,可以提高燃油效率,减少温室气体(GHG)排放和空气污染物。本文介绍了一种基于模型的船舶(港口拖船)混合动力推进系统集成设计与优化方法。利用混合动力系统的燃油效率、排放和生命周期成本模型,对影响船舶生命周期成本的关键部件,特别是锂离子电池储能系统(ESS)的尺寸进行了优化。此外,还对混合动力系统的控制策略进行了优化,这对实现最小油耗和延长电池寿命至关重要。对于给定的动力总成结构,船舶混合动力推进系统的优化设计涉及两个关键方面:动力总成关键部件的优化尺寸,以及动力控制和能量管理的优化。在这项工作中,提出了一个双层嵌套优化框架来共同解决这两个复杂的问题。上层优化的目标是部件尺寸优化,下层优化通过动态规划(DP)进行最优运行控制,以在给定船舶负载剖面下实现全局最小的燃料消耗和电池退化。采用优化拉丁超立方体抽样(OLHS)、克里格抽样(Kriging)和广泛应用的期望改进(EI)在线抽样准则,进行“小数据”驱动的全局优化,解决该嵌套优化问题。结果表明,优化后的混合动力系统设计和控制显著降低了船舶LCC。与传统的机械推进系统相比,混合动力系统在减小发动机体积、缩短运行时间、提高运行效率的同时,也大大减少了温室气体排放。
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