首页> 外文会议>IEEE Vehicle Power and Propulsion Conference >Characterizing naturalistic driving patterns for Plug-in Hybrid Electric Vehicle analysis
【24h】

Characterizing naturalistic driving patterns for Plug-in Hybrid Electric Vehicle analysis

机译:表征用于插入式混合动力电动车辆分析的自然驾驶模式

获取原文

摘要

While much of the previous research relies on Federal Driving Schedules originally developed for emission certification tests of conventional vehicles, consumer acceptance and market penetration will depend on PHEV performance under realistic driving conditions. Therefore, characterizing the actual driving is essential for PHEV design and control studies, and for establishing realistic forecasts pertaining to vehicle energy consumption and charging requirements. To achieve this goal, we analyze naturalistic driving data generated in Field Operational Tests (FOT) of passenger vehicles in Southeast Michigan. The FOT were originally conceived for evaluating driver interaction with advanced safety systems, but the databases are rich with information pertaining to vehicle energy. After the initial statistical analysis of the vehicle speed histories, the naturalistic driving schedules are used as input to the PHEV computer simulation to predict energy usage as a function of trip length. The highest specific energy, i.e. energy per mile, is critical for battery and motor sizing. As an illustration of the impact of actual driving, the low-energy and high-energy driving patterns would require PHEV20 battery sizes of 6.12 kWh and 13.6 kWh, respectively. This is determined assuming that the minimum state of charge (SOC) is 40%. In addition, the naturalistic driving databases are mined for information about vehicle resting time, i.e. time spent at typical locations during the 24-hour period. The locations include “home”, “work”, “large-business” such as a large retail store, and “small business”, such as a gas station, and finally “residential” other than home. The characterization of vehicle daily missions supports analysis of charging schedules, as it indicates times spent at given locations as well as the likely battery SOC at the time of arrival.
机译:虽然以前的大部分研究依赖于最初为传统车辆排放认证测试开发的联邦驾驶时间表,消费者接受和市场渗透率取决于实际驾驶条件下的PHEV性能。因此,表征实际驾驶对于PHEV设计和控制研究至关重要,以及建立与车辆能耗和充电要求有关的现实预测。为了实现这一目标,我们分析了密歇根州东南部乘用车的现场操作试验(FOT)中产生的自然主义驾驶数据。本费最初是构思的,用于评估与先进安全系统的驾驶员互动,但数据库丰富了与车辆能量有关的信息。在车速历史的初始统计分析之后,自然驾驶计划用作PHEV计算机模拟的输入,以预测作为跳闸长度的功能的能量使用。最高的特定能量,即每英里的能量,对于电池和电机尺寸至关重要。作为实际驾驶的影响的说明,低能量和高能驾驶模式将分别需要PHEV20电池尺寸为6.12千瓦时和13.6千瓦时。假设最小充电状态(SOC)为40%,确定这一点。此外,采用自然主义驾驶数据库以获取有关车辆休息时间的信息,即在24小时期间在典型位置花费时间。这些地点包括“家”,“工作”,“大型企业”,如大型零售店,以及“小型企业”,如加油站,最后的“住宅”除了家。车辆每日任务的表征支持分析充电时间表,因为它表示在给定位置以及抵达时的电池SOC所花费的时间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号