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Electric vehicles' impacts on residential electric local profiles - A stochastic modelling approach considering socio-economic, behavioural and spatial factors

机译:电动汽车对住宅用电局部特征的影响-考虑社会经济,行为和空间因素的随机建模方法

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摘要

This paper presents a stochastic bottom-up model to assess electric vehicles’ (EV) impact on load profiles at different parking locations as well as their potential for load management strategies. The central innovation lies in the consideration of socio-economic, technical and spatial factors, all of which influence charging electricity demand and behaviour at different locations. Based on a detailed statistical analysis of a large dataset on German mobility, the most statistically significant influencing factors on residential charging behaviour could be identified. Whilst household type and economic status are the most important factors for the number of cars per household, the driver’s occupation has the strongest influence on the first departure time and parking time whilst at work. EV use is modelled using an inhomogeneous Markov-chain to sample a sequence of destinations of each car trip, depending (amongst other factors) on the occupation of the driver, the weekday and the time of the day. Probability distributions for the driven kilometres, driving durations and parking durations are used to model presence at a charger and calculate electricity demand. The probability distributions are retrieved from a national mobility dataset of 70,000 car trips and filtered for a set of socio-economic and demographic factors. Individual charging behaviour is included in the model using a logistic function accounting for the sensitivity of the driver towards (low) battery SOC. The model output is compared to the mobility dataset to test its validity and shown to have a deviation in key household mobility characteristics of just a few percentage points. The model is then employed to analyse the impact of uncontrolled charging of EV on the residential load profile. It is found that the absolute load peaks will increase by up to a factor of 8.5 depending on the loading infrastructure, the load in high load hours will increase by approx. a factor of three and annual electricity demand will approximately double.
机译:本文提出了一种随机的自下而上模型,用于评估电动汽车(EV)对不同停车位置的负荷曲线的影响以及其在负荷管理策略中的潜力。中心创新在于考虑社会经济,技术和空间因素,所有这些因素都会影响不同位置的充电电力需求和行为。根据对德国流动性的大型数据集的详细统计分析,可以确定对居民充电行为影响最大的统计因素。虽然家庭类型和经济状况是每户汽车数量的最重要因素,但驾驶员的职业对工作时的首次出发时间和停车时间影响最大​​。使用不均匀的马尔可夫链对电动汽车的使用进行建模,以对每次驾车的一系列目的地进行采样,这取决于(除其他因素之外)驾驶员的职业,工作日和一天中的时间。行驶公里数,行驶持续时间和停车持续时间的概率分布用于对充电器处的存在进行建模并计算电力需求。概率分布是从70,000次汽车出行的国家移动性数据集中检索的,并针对一组社会经济和人口统计学因素进行过滤。使用逻辑函数考虑模型中驾驶员对(低)电池SOC的敏感度,模型中包含了各个充电行为。将模型输出与流动性数据集进行比较以测试其有效性,并显示出关键的家庭流动性特征仅有几个百分点的偏差。然后,使用该模型来分析电动汽车不受控制的充电对住宅负载曲线的影响。发现根据负载基础设施,绝对负载峰值将增加高达8.5倍,在高负载小时内的负载将增加大约8.5倍。是三分之一,每年的电力需求将大约翻一番。

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