动力传动系统
解算器
数学优化
过程(计算)
随机规划
行驶循环
电动汽车
计算机科学
随机优化
最优化问题
概念设计
电池(电)
遗传算法
控制工程
工程类
数学
物理
功率(物理)
量子力学
操作系统
扭矩
热力学
人机交互
作者
Philipp Leise,Arved Eßer,Tobias Eichenlaub,J.-E. Schleiffer,Lena C. Altherr,Stephan Rinderknecht,Peter F. Pelz
标识
DOI:10.1080/0305215x.2021.1928660
摘要
The transition within transportation towards battery electric vehicles can lead to a more sustainable future. To account for the development goal ‘climate action’ stated by the United Nations, it is mandatory, within the conceptual design phase, to derive energy-efficient system designs. One barrier is the uncertainty of the driving behaviour within the usage phase. This uncertainty is often addressed by using a stochastic synthesis process to derive representative driving cycles and by using cycle-based optimization. To deal with this uncertainty, a new approach based on a stochastic optimization program is presented. This leads to an optimization model that is solved with an exact solver. It is compared to a system design approach based on driving cycles and a genetic algorithm solver. Both approaches are applied to find efficient electric powertrains with fixed-speed and multi-speed transmissions. Hence, the similarities, differences and respective advantages of each optimization procedure are discussed.
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