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Evolutionary Multi-Objective Cost and Privacy Driven Load Morphing in Smart Electricity Grid Partition

机译:智能电网分区中进化的多目标成本和隐私驱动载荷变形

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摘要

Utilization of digital connectivity tools is the driving force behind the transformation of the power distribution system into a smart grid. This paper places itself in the smart grid domain where consumers exploit digital connectivity to form partitions within the grid. Every partition, which is independent but connected to the grid, has a set of goals associated with the consumption of electric energy. In this work, we consider that each partition aims at morphing the initial anticipated partition consumption in order to concurrently minimize the cost of consumption and ensure the privacy of its consumers. These goals are formulated as two objectives functions, i.e., a single objective for each goal, and subsequently determining a multi-objective problem. The solution to the problem is sought via an evolutionary algorithm, and more specifically, the non-dominated sorting genetic algorithm-II (NSGA-II). NSGA-II is able to locate an optimal solution by utilizing the Pareto optimality theory. The proposed load morphing methodology is tested on a set of real-world smart meter data put together to comprise partitions of various numbers of consumers. Results demonstrate the efficiency of the proposed morphing methodology as a mechanism to attain low cost and privacy for the overall grid partition.
机译:数字连接工具的利用是将配电系统转换为智能电网的驱动力。本文将其自身用于智能网格域中,消费者利用数字连接以在网格内形成分区。每个独立但连接到网格的每个分区都有一组与电能消耗相关的目标。在这项工作中,我们认为每个分区旨在改性最初的预期分区消费,以便同时最小化消费成本并确保其消费者的隐私。这些目标被制定为两个目标功能,即每个目标的单个目标,随后确定多目标问题。通过进化算法寻求问题的解决方案,更具体地,是非主导的分类遗传算法-II(NSGA-II)。 NSGA-II能够通过利用Pareto最优性理论来定位最佳解决方案。拟议的负载变形方法在一组现实世界智能仪表数据上进行测试,以包括各种数量的消费者的分区。结果展示了所提出的变形方法的效率作为对整体网格分区达到低成本和隐私的机制。

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