共同优化智能电网和电动公交巴士系统

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Mertcan Yetkin, Brandon Augustino, Alberto J. Lamadrid, Lawrence V. Snyder
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引用次数: 0

摘要

由于气候变化推动了对智能城市和电气化公共交通系统的投资,我们考虑了城市地区的电动公共交通巴士,这些巴士除了服务公共交通需求的典型功能外,还在电力系统运营中发挥作用。我们的模型考虑了一个社会规划者,即公交当局和电力系统运营商共同优化电力系统,使电网的总运营成本最小化,同时满足公交车的额外运输约束。我们为共同优化系统提供了确定性公式和随机公式。每种随机方案都提供了一套不同的求助措施,以管理可再生能源的不确定性:传统发电机的升压/降压,或公交车队的充电/放电。我们展示了该模型的能力以及通过协调策略获得的收益。我们比较了这些追索行动的效率,以提供更多管理见解。我们分析了不同定价策略对共同优化的影响。我们注意到电池容量越来越大的电气化车队最终会给电力网络带来压力,因此我们从理论上深入分析了为减少温室气体(GH)排放而进行扩展规划的耦合投资策略。鉴于近期建设智能城市和公交系统电气化的势头,我们的研究结果为实现可持续发展的未来提供了政策方向。我们使用修改后的 MATPOWER 案例文件测试了我们的模型,并通过不同规模的电力网络验证了我们的结果。这项研究是由加利福尼亚州一个大型交通局的项目促成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Co-optimizing the smart grid and electric public transit bus system

Co-optimizing the smart grid and electric public transit bus system

As climate change provides impetus for investing in smart cities, with electrified public transit systems, we consider electric public transportation buses in an urban area, which play a role in the power system operations in addition to their typical function of serving public transit demand. Our model considers a social planner, such that the transit authority and the operator of the electricity system co-optimize the power system to minimize the total operational cost of the grid, while satisfying additional transportation constraints on buses. We provide deterministic and stochastic formulations to co-optimize the system. Each stochastic formulation provides a different set of recourse actions to manage the variable renewable energy uncertainty: ramping up/down of the conventional generators, or charging/discharging of the transit fleet. We demonstrate the capabilities of the model and the benefit obtained via a coordinated strategy. We compare the efficacies of these recourse actions to provide additional managerial insights. We analyze the effect of different pricing strategies on the co-optimization. Noting the stress growing electrified fleets with greater battery capacities will eventually impose on a power network, we provide theoretical insights on coupled investment strategies for expansion planning in order to reduce greenhouse gas (GH) emissions. Given the recent momentum towards building smarter cities and electrifying transit systems, our results provide policy directions towards a sustainable future. We test our models using modified MATPOWER case files and verify our results with different sized power networks. This study is motivated by a project with a large transit authority in California.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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