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The impact of electric vehicle penetration and charging patterns on the management of energy hub - A multi-agent system simulation

机译:电动汽车渗透率和充电方式对能源枢纽管理的影响-多主体系统仿真

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摘要

In this paper, a multi-agent system (MAS) was developed to simulate the operation of an energy hub (EH) with different penetration rates (PRs) and various charging patterns of electric vehicle (EV). Three charging patterns, namely uncontrolled charging pattern (UCP), rapid charging pattern (RCP) and smart charging pattern (SCP), together with vehicle to grid (V2G), were simulated in the MAS. The EV penetration rates (EV-PRs), from 10% to 90% with a step of 20%, are considered in this study. Under the UCP, the peak load increases by 3.4-17.1% compared to the case without EVs, which is the reference case in this study. A main part of the increased electricity demand can be supplied by the gas turbine (GT) when the PR is lower, i.e. 71.7% under 10% PR and 37.4% under 50% PR. Under the SCP, the charging load of EVs is shifted to the valley period and thus the energy dispatch of the EH at 07:00-23:00 remain the same as that in the reference case. When V2G is considered, the electricity demand from the grid becomes the largest in all of the cases, e.g. the demand with 50% PR doubles the electricity demand in the reference case. However, the GT output decreases by 2.9-15.7% at 07:00-23:00 due to the effect of V2G. The variations in the EH's operation further raise the changes in energy cost, i.e. the electricity and cooling prices are lowered by 18.3% and 33.8% due to the availability of V2G and the heating and cooling prices increase by 3.5% and 4.3% under the UCP with the PR of 50%. Regarding the V2G capacity, near 39% of the EVs' battery capacity can be discharged via V2G. In addition, the paper also produced a V2G potential line, which is an effective tool to provide the maximum potential of the EVs for peak shaving at any specific time.
机译:在本文中,开发了一种多智能体系统(MAS)以模拟具有不同渗透率(PR)和电动汽车(EV)的各种充电方式的能源枢纽(EH)的运行。在MAS中模拟了三种充电模式,即不受控制的充电模式(UCP),快速充电模式(RCP)和智能充电模式(SCP),以及车辆到电网(V2G)。这项研究考虑了EV渗透率(EV-PRs),从10%提高到90%,并以20%为步长。在UCP下,与没有电动汽车的情况相比,峰值负载增加了3.4-17.1%,这是本研究的参考案例。当PR较低时,即在10%PR下为71.7%,在50%PR下为37.4%,燃气轮机(GT)可以满足电力需求的增长。在SCP下,电动汽车的充电负荷转移到了谷底期,因此EH在07:00-23:00的能量分配与参考案例中的相同。当考虑V2G时,在所有情况下,例如,在所有情况下,电网的电力需求都将最大。在参考案例中,PR为50%的电力需求将使电力需求增加一倍。但是,由于V2G的影响,GT输出在07:00-23:00下降了2.9-15.7%。 EH运营的变化进一步提高了能源成本的变化,即由于V2G的可用性,电力和制冷价格分别降低了18.3%和33.8%,在UCP下,供暖和制冷价格分别提高了3.5%和4.3% PR为50%。关于V2G容量,大约39%的电动汽车电池容量可以通过V2G放电。此外,本文还制作了V2G电位线,这是一种有效工具,可在任何特定时间提供电动汽车的最大潜力以实现削峰。

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