基于粒子群优化的智慧城市隐私驱动的电力群需求响应

M. Alamaniotis, L. Tsoukalas, M. Buckner
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引用次数: 14

摘要

在未来的智慧城市中,数字互联将成为从需求端实现电力智能化管理的基石。特别是,消费者将通过通信网络连接起来,交换数据信息或共享信息。信息的利用将使消费者能够以更有效和更经济的方式管理他们的电力消耗。然而,连接和信息交换是以降低隐私为代价的。特别是,与电网相连的第三方能够监测消费信号,并对消费者的行为进行推断。在本文中,提出了一种智能方法来增强智能城市中智能电力系统的隐私。该方法融合了接入电网的多个用户的需求模式,提供了一种新的消费模式。利用粒子群算法求解优化问题,得到了隐藏消费者个体特征的新模式。该方法的测试是在一组真实的消费模式上执行的,同时对遗传算法进行基准测试。结果表明了所提出的智能方法的有效性,以及它比基准算法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Driven Electricity Group Demand Response in Smart Cities Using Particle Swarm Optimization
In the smart cities of the future, digital connectivity will become the cornerstone for implementing intelligent management of electric power from the side of demand. In particular, consumers will connect via communication networks and exchange data messages or share information. Utilization of information will allow consumers to manage their electricity consumption in a more efficient and economical way. However, connectivity and information exchange come at a cost of reduced privacy. In particular, third parties connected to the power grid are able to monitor the consumption signals and make inferences about the consumers' behavior. In this a paper, an intelligent methodology for enhancing privacy in smart power systems in smart cities is presented. The methodology fuses the demand patterns of several consumers, which are connected to the power grid, and provides a new consumption pattern. The new pattern, which hides individual consumer characteristics, is obtained as the solution to an optimization problem whose solution is computed by particle swarm optimization. Testing of the methodology is performed on a set of real consumption patterns, while benchmarked against genetic algorithm. Results exhibit the efficiency of the proposed intelligent methodology, and its superiority over the benchmarked algorithm.
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