用于识别输电网瓶颈以实现交通电气化目标的数据辅助稳健方法:纽约州案例研究

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2024-04-16 DOI:10.1016/j.adapen.2024.100173
Qianzhi Zhang , Yuechen Sopia Liu , H.Oliver Gao , Fengqi You
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引用次数: 0

摘要

随着人们对电动汽车的热情通过了续航里程焦虑和其他测试,大规模交通电气化成为研究和政策讨论中的一个突出话题。因此,公众的注意力也从上游和整体上转向了大规模交通电气化与电力系统的整合。本文提出了一种识别输电系统瓶颈的方法,以适应大规模随机电动汽车充电需求。首先,建立了一个分布稳健的机会约束直流最优电力流模型,以量化随机电动汽车充电需求的影响。随后,应用基于代理的模型和行程链方法,得出轻型电动汽车和中重型电动汽车的电动汽车充电需求时空分布。提取这些分布的前两个矩,建立电动汽车充电需求的模糊集。最后,利用纽约州电力系统的 121 路公交车合成输电网络来验证纽约州 2025 年至 2035 年的未来交通电气化。结果显示,到 2035 年,纽约州大规模交通电气化将占总负荷需求的约 13.33% 至 16.79%。输电能力是支持纽约州实现交通电气化的主要瓶颈。为解决瓶颈问题,我们探讨了一些可能的解决方案,如扩大输电容量和投资分布式能源资源。由于风力发电与电动汽车充电需求的峰值更匹配,因此在总运营成本方面,风力发电比太阳能发电更具优势。
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A data-aided robust approach for bottleneck identification in power transmission grids for achieving transportation electrification ambition: a case study in New York state

As the enthusiasm for electric vehicles passes the range anxiety and other tests, large-scale transportation electrification becomes a prominent topic in research and policy discussions. In consequence, the public attention has shifted upstream and holistically towards the integration of large-scale transportation electrification to power systems. This paper proposes a method to identify bottlenecks in power transmission systems to accommodate large-scale and stochastic electric vehicles charging demands. First, a distributionally robust chance-constrained direct current optimal power flow model is developed to quantify the impacts of stochastic electric vehicles charging demands. Subsequently, an agent-based model with the trip-chain method is applied to obtain the spatiotemporal distributions of electric vehicles charging demands for both light-duty electric vehicles and medium and heavy-duty electric vehicles. The first two moments of those distributions are extracted to build an ambiguity set of electric vehicles charging demands. Finally, a 121-bus synthetic transmission network for New York State power systems is used to validate the future transportation electrification in New York State from 2025 to 2035. Results show that the large-scale transportation electrification in New York State will account for approximately 13.33 % to 16.79 % of the total load demand by 2035. The transmission capacity is the major bottleneck in supporting New York State to achieve its transportation electrification. To resolve the bottlenecks, we explore some possible solutions, such as transmission capacity expansion and distributed energy resources investment. Wind power shows an advantage over solar energy in terms of total operational costs due to better peak alignment between wind power and electric vehicles charging demand.

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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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