M. Rahmani-Andebili, M. Bonamente, James A. Miller
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引用次数: 3
摘要
本文通过对美国旧金山市100辆插电式电动汽车的真实行驶路线的调查,对插电式电动汽车的荷电状态(SOC)的不确定性进行了实证研究。本研究采用蒙特卡罗马尔可夫链(Monte Carlo Markov Chain, MCMC)确定典型日pev SOC的小时概率分布函数。本研究中使用的主要数据集包括旧金山100辆汽车行驶路线的真实经纬度,每四分钟记录一次。将4分钟位置数据集转换为每辆PEV行驶的4分钟距离,然后根据每辆PEV的技术规格确定PEV的4分钟SOC。然后,计算pev每小时的荷电状态,并输入到MCMC中,确定pev每小时荷电状态的概率分布函数。在本研究中,还研究和分析了MCMC参数对输出的影响。
Mobility Analysis of Plug-in Electric Vehicles in San Francisco Applying Monte Carlo Markov Chain
The paper realistically studies the uncertainty of state of charge (SOC) of plug-in electric vehicles (PEV) by investigation of real driving routes of 100 vehicles in San Francisco, CA, US. In this study, Monte Carlo Markov Chain (MCMC) is applied to determine the hourly probability distribution function of SOC of PEVs in the typical day. The primary dataset used in this study includes the real longitude and latitude of driving routes of 100 vehicles in San Francisco, recorded in every four-minute period of the day. The four-minute position dataset is converted to the four-minute distance travelled by each PEV, and then the four-minute SOC of PEVs is determined considering the technical specifications of each PEV. Next, the hourly SOC of PEVs are calculated and entered to MCMC to determine the hourly probability distribution function of SOC of PEVs. In this study, the effects of MCMC parameters on its outputs are also investigated and analyzed.