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Socio-technical smart grid optimization via decentralized charge control of electric vehicles

机译:通过电动汽车分散电荷控制的社会技术智能电网优化

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The penetration of electric vehicles becomes a catalyst for the sustainability of Smart Cities. However, unregulated battery charging remains a challenge causing high energy costs, power peaks or even blackouts. This paper studies this challenge from a socio-technical perspective: social dynamics such as the participation in demand-response programs, the discomfort experienced by alternative suggested vehicle usage times and even the fairness in terms of how equally discomfort is experienced among the population are highly intertwined with Smart Grid reliability. To address challenges of such a sociotechnical nature, this paper introduces a fully decentralized and participatory learning mechanism for privacy-preserving coordinated charging control of electric vehicles that regulates three Smart Grid socio-technical aspects: (i) reliability, (ii) discomfort and (iii) fairness. In contrast to related work, a novel autonomous software agent exclusively uses local knowledge to generate energy demand plans for its vehicle that encode different battery charging regimes. Agents interact to learn and make collective decisions of which plan to execute so that power peaks and energy cost are reduced systemwide. Evaluation with real-world data confirms the improvement of drivers' comfort and fairness using the proposed planning method, while this improvement is assessed in terms of reliability and cost reduction under a varying number of participating vehicles. These findings have a significant relevance and impact for power utilities and system operator on designing more reliable and socially responsible Smart Grids with high penetration of electric vehicles. (C) 2019 The Author( s ). Published by Elsevier B.V.
机译:电动车辆的渗透成为智能城市可持续性的催化剂。然而,不受管制的电池充电仍然是导致高能量成本,功率峰值甚至停电的挑战。本文研究了社会技术视角的这一挑战:社会动态,如参与需求 - 响应计划,替代方案所经历的不适,甚至在人口中经历同样不适的方面的公平性高度与智能电网可靠性交织在一起。为了应对这种社会技术性质的挑战,本文介绍了一种全面分散和参与式学习机制,可用于规范三个智能电网社会技术方面的电动汽车的隐私保留协调充电控制:(i)可靠性,(ii)不适和( iii)公平。与相关工作相比,新颖的自主软件代理专门使用本地知识来为其车辆产生编码不同电池充电制度的能源需求计划。代理商互动,以学习并制定计划执行的集体决定,以便在系统上减少功率峰值和能源成本。使用现实世界的数据进行评估证实了使用拟议的规划方法改善驾驶员的舒适和公平性,而在不同数量的参与车辆下的可靠性和成本减少方面评估了这种改进。这些调查结果对电力公用事业和系统运营商进行了显着的相关性和影响,用于设计具有高渗透电动汽车的更可靠和社会负责的智能电网。 (c)2019年作者。 elsevier b.v出版。

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