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An Intelligent Learning Mechanism for Trading Strategies for Local Energy Distribution

机译:局部能源分配交易策略的智能学习机制

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Although most electric power is presently generated using fossil fuels, two abundant renewable and clean energy sources, solar and wind, are increasingly cost-competitive and offer the potential of decentralized (and hence more robust) sourcing. However, the intermittent nature of solar and wind power presents difficulties in connection with integrating them into national power grids. One approach to addressing these challenges is through an agent-based architecture for coordinating locally-connected energy micro-grids, each of which manages its own local energy production, distribution, and storage. By integrating these micro-grids into a larger network structure, there is the opportunity for them to be more responsive to local needs and hence more cost effective overall. In such an arrangement, the micro-grids have agents that can choose to resell their excess energy in an open, regional market in alignment with respect to their specific goals (which could be to reduce carbon emissions or to maximize their financial outcomes). In this study, we have investigated how agents operating in such an open environment can learn to optimize their individual trading strategies by employing Markov-Decision-Process-based reasoning and reinforcement learning. We empirically show that our learning trading strategies improve net profit loss by up to 29 % and can reduce carbon emissions by 78% when compared to the original (non-learning) trading strategies.
机译:尽管大多数电力目前使用化石燃料产生了两种丰富的可再生和清洁的能源,太阳能和风,越来越具有成本竞争力,并提供了分散的(并且因此更强大)采购的潜力。然而,太阳能和风力发电的间歇性质与将它们集成到国家电网方面存在困难。解决这些挑战的一种方法是通过基于代理的架构,用于协调本地连接的能量微网格,每个架构都管理其自己的本地能源生产,分配和存储。通过将这些微电网集成到更大的网络结构中,有机会对本地需求更加响应,因此总体上更具成本效益。在这种布置中,微电网具有可选择在开放的区域市场中转售它们的多余能量的代理商在其特定目标(可能是减少碳排放或最大化其财务结果)。在这项研究中,我们研究了在这种开放环境中运作的代理商如何通过雇用基于马尔可夫决策过程的推理和加强学习来学习优化其个人交易策略。我们经验证明,与原文(非学习)交易策略相比,我们的学习交易策略将净利润损失提高至29%,可减少78%的碳排放量。

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