面向未来的受控电动汽车充电费率:比较不同排放系数信号的多年影响

IF 9.3 2区 经济学 Q1 ECONOMICS
Siobhan Powell , Sonia Martin , Ram Rajagopal , Inês M.L. Azevedo , Jacques de Chalendar
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引用次数: 0

摘要

电力定价可用于改变电力需求的时间,但价格信号的选择受到很大限制。消费者费率每隔几年更新一次,仅限于简单的每日概况,但必须捕捉到不断变化的电力系统的复杂动态。排放因子 (EF) 是作为一种评估工具开发的,但越来越多地被用作需求响应 (DR) 信号。考虑到这些限制因素,排放因子是否有效?我们评估了在有供应方排放定价和没有供应方排放定价的情况下,基于 EF 的电价对排放的影响。通过将电力系统调度模型与数据驱动的电动汽车充电模型相结合,我们研究了美国西部直到 2037 年的受控电动汽车 (EV) 充电情况。我们比较了平均边际排放系数和短期边际排放系数,以及与电价更新时间更匹配的新的中期边际排放系数。我们发现,稳定的供应方信号使 DR 更有价值:在供应方碳定价的情况下,DR 可减少高达 6% 的排放量,而在没有供应方碳定价的情况下,DR 仅能减少 2%。中期边际排放系数产生了最稳定的减排效果,但充电灵活性的限制限制了其影响。我们建议政策制定者根据中期边际排放系数来确定可再生能源的费率,并实施供应方碳定价,以促进更大的减排量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Future-proof rates for controlled electric vehicle charging: Comparing multi-year impacts of different emission factor signals

Electricity pricing can be used to shift the timing of electricity demand, but the choice of price signals is highly constrained. Consumer rates are updated every few years and limited to simple daily profiles, yet must capture the complex dynamics of a changing electricity system. Emission factors (EFs) were developed as an evaluation tool, but are increasingly used as demand response (DR) signals. Given these constraints, can they be effective? We evaluate the emissions impact of EF-based electricity rates with and without supply-side emissions pricing. We study controlled electric vehicle (EV) charging in the Western U.S. up to 2037 by coupling an electricity system dispatch model and a data-driven EV charging model. We compare average and short-run marginal EFs with a new medium-run marginal EF that better matches the timeline of electricity rate updates. We find that a stable supply-side signal makes DR more valuable: DR reduces emissions by up to 6% with supply-side carbon pricing or just 2% without it. Medium-run marginal EFs yield the most consistent emission reductions, but constraints on charging flexibility limit their impact. We recommend policymakers base rates for DR on medium-run marginal emission factors and implement supply-side carbon pricing to facilitate greater emission reductions.

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来源期刊
Energy Policy
Energy Policy 管理科学-环境科学
CiteScore
17.30
自引率
5.60%
发文量
540
审稿时长
7.9 months
期刊介绍: Energy policy is the manner in which a given entity (often governmental) has decided to address issues of energy development including energy conversion, distribution and use as well as reduction of greenhouse gas emissions in order to contribute to climate change mitigation. The attributes of energy policy may include legislation, international treaties, incentives to investment, guidelines for energy conservation, taxation and other public policy techniques. Energy policy is closely related to climate change policy because totalled worldwide the energy sector emits more greenhouse gas than other sectors.
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