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An Iterative Markov Chain Approach for Generating Vehicle Driving Cycles

机译:车辆行驶周期的迭代马尔可夫链方法

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For simulation and analysis of vehicles there is a need to have a means of generating drive cycles which have properties similar to real world driving. A method is presented which uses measured vehicle speed from a number of vehicles to generate a Markov chain model. This Markov chain model is capable of generating drive cycles which match the statistics of the original data set. This Markov model is then used in an iterative fashion to generate drive cycles which match constraints imposed by the user. These constraints could include factors such number of stops, total distance, average speed, or maximum speed. In this paper, systematic analysis was done for a PHEV fleet which consists of 9 PHEVs that were instrumented using data loggers for a period of approximately two years. Statistical analysis using principal component analysis and a clustering approach was carried out for the real world velocity profiles. After dividing the real velocity profiles into segments, they were clustered into several different clusters based on statistical data. This data set is also used to generate the Markov chain model technique described above which is the central development of this work. The work of this paper is a part of a larger project in which a mass simulation of a neighborhood of PHEVs will be conducted based on statistical representations of key factors such as vehicle usage patterns, vehicle characteristics, and market penetration of PHEVs. This approach can be used as critical input of the large scale simulation model to generate random velocity profiles of various driving patterns.
机译:为了对车辆进行仿真和分析,需要一种产生具有类似于现实驾驶的特性的驾驶循环的装置。提出了一种方法,该方法使用来自许多车辆的测量的车辆速度来生成马尔可夫链模型。该马尔可夫链模型能够生成与原始数据集的统计信息相匹配的行驶周期。然后,以迭代方式使用此Markov模型来生成与用户施加的约束相匹配的行驶周期。这些限制条件可能包括停止次数,总距离,平均速度或最大速度等因素。在本文中,对PHEV车队进行了系统分析,该车队由9辆PHEV组成,并使用数据记录仪进行了大约两年的测试。使用主成分分析和聚类方法对现实世界的速度剖面进行了统计分析。将实际速度曲线划分为多个部分后,它们根据统计数据被聚集成几个不同的聚类。此数据集还用于生成上述的马尔可夫链模型技术,这是这项工作的主要进展。本文的工作是一个较大项目的一部分,在该项目中,将基于关键因素(如车辆使用模式,车辆特性和PHEV的市场渗透率)的统计表示,对PHEV邻域进行大规模模拟。该方法可以用作大规模仿真模型的关键输入,以生成各种驾驶模式的随机速度曲线。

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