点对点电力交易的灵活主动概率优化(FAPO)竞价

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ioanna Kalospyrou, Timothy Hutty, Robert Milton, Solomon Brown
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引用次数: 0

摘要

最大限度地利用可再生能源发电对全球有志于实现净零排放的国家至关重要。本地能源市场促进了分布式可再生能源与电网的无缝结合,成为住宅社区产消者之间本地可再生能源交易的平台。然而,地方能源市场在分布式能源整合中的重要作用不足以鼓励参与。如果提供财政激励,产消者更有可能加入当地的能源市场。为了解决这个问题,我们提出了灵活进取概率优化(FAPO)投标策略,用于当地能源市场内的电力交易,旨在最大化参与激励。这是一个针对生产消费者个人效用最大化的优化问题。将FAPO方法应用于简化的本地能源市场模拟环境中,并将其结果与另外两种成熟的竞标策略(零智能约束和自适应进取)进行了比较。结果表明,与自适应进取和零智力约束相比,FAPO实现了更大范围的清算价格,激励了更大的产消参与。具体来说,FAPO实现了1.48兆瓦时的电力交易,而自适应攻击和零智能约束分别为1.34兆瓦时和1.37兆瓦时。此外,FAPO清除了100%的询价和98%的投标,而其他两种策略清除了大约90%的提交订单。因此,FAPO被证明是一种有吸引力的投标方法,可能会吸引更多的生产消费者到当地能源市场。这对于这种金融市场类型的成功接受、吸收和广泛应用至关重要,这是分布式能源顺利整合到网络中的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Flexible aggressiveness probabilistic optimisation (FAPO) bidding for peer-to-peer electricity trading

Flexible aggressiveness probabilistic optimisation (FAPO) bidding for peer-to-peer electricity trading
The maximisation of renewable energy generation is critical for net-zero aspiring countries around the globe. Local energy markets facilitate the seamless incorporation of energy from distributed renewable energy resources into the electricity network, serving as platforms for trading locally-generated renewable energy between prosumers in residential communities. However, local energy markets’ essential role in distributed energy resource integration is not enough to encourage participation. Prosumers are more likely to join a local energy market if financial incentives are offered. To address this, we present the Flexible Aggressiveness Probabilistic Optimisation (FAPO) bidding strategy for trading electricity within a local energy market aimed at maximising participation incentives. This is formulated as an optimisation problem targeting the maximisation of prosumers’ individual utilities. The FAPO methodology is applied in a simplified local energy market simulation environment, and its results are compared to two other well-established bidding strategies: Zero Intelligence-Constrained and Adaptive Aggressiveness. The results indicate that FAPO achieved a wider range of clearing prices than both Adaptive Aggressiveness and Zero Intelligence-Constrained, incentivising greater prosumer participation. Specifically, FAPO enabled the trading of 1.48 MWh of electricity, compared to 1.34 MWh with Adaptive Aggressiveness and 1.37 MWh with Zero Intelligence-Constrained. Furthermore, FAPO cleared 100% of all asks and 98% of all bids, while the other two strategies cleared approximately 90% of submitted orders. Consequently, FAPO is proven to be an engaging bidding methodology likely to attract more prosumers to local energy markets. This is critical for the successful acceptance, uptake, and widespread application of this financial market type, which is key for smooth distributed energy resource integration into the network.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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