辅助载荷对电动汽车能耗的影响——以电动汽车为例

K. Unni, S. Thale
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引用次数: 0

摘要

里程焦虑和更高的成本是电动汽车行业面临的两个重要障碍。里程焦虑取决于拓扑因素、驾驶风格、气候条件、交通状况和辅助动力需求。尽管许多研究人员对影响距离焦虑的各种因素进行了大量的研究,但尚未找到一种准确的残差距离估计算法。基于机器学习和深度学习的模型也被用来评估电动汽车的残差范围。辅助载荷是为乘客提供驾驶舒适性的主要因素之一。研究发现,车灯、喇叭、动力转向和介质组件对储能损失的影响较大。本文基于仿真分析了辅助负荷对电动汽车能耗和续航里程的影响。在ADVISOR软件上进行了仿真,并对仿真结果进行了解释。车辆规格对应于市售电动汽车和两种不同的驾驶循环,即城市测力计驾驶计划(UDDS)驾驶循环和NREL到VAIL驾驶循环。进行了加速和爬坡性测试,以了解车辆的性能,并将观察结果制成表格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of Auxiliary Loads on the Energy Consumption of Electric Vehicle – A Case Study
Range anxiety and higher cost are the two important hurdles for electric vehicles (EV) in the automobile industry. Range anxiety depends on topological factors, driving styles, climatic conditions, traffic conditions and auxiliary power requirements. Though many researchers have extensively worked on various factors of Range Anxiety, an accurate residual range estimation algorithm has not yet been figured out. Machine Learning and Deep Learning based models have also come up to evaluate the residual range of EVs. Auxiliary loads are one of the prime factors for offering driving comfort to passengers. It is found that the lights, horns, power steering and media components contribute significantly to the energy storage loss. This paper presents a simulation-based analysis on the influence of auxiliary loads on the energy consumption and hence the range of an EV. The simulations are done on Advanced Vehicle Simulator (ADVISOR) software and the results are interpreted. The vehicle specifications correspond to a commercially available EV and two different drive cycles, namely the Urban Dynamometer Driving Schedule (UDDS) drive cycle and the NREL to VAIL drive cycle. Acceleration and gradeability tests were performed to understand the vehicle performance and the observations are tabulated.
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