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Multi-objective Optimal Energy Consumption Scheduling in Smart Grids

机译:智能电网中的多目标最佳能耗调度

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Due to the increasing discrepancy of the load demand during peak hours and off peak hours, the inefficiency in the power grids is getting more prominent. In order to meet the load demand during peak hours while maintaining a reasonable security margin above the peak hours demand, additional generation capacity may be needed, which involves vast investments and deterioration of the utilization of the generation capacity. With the introduction of the Smart Grids, a two-way communication between the grid operator and the users is realized by Smart Meters (SMs). Demand Response (DR) has also been proposed to avoid installation of new power plants in the Smart Grids. DR enables real-time pricing strategy, which allows modification of users' demand profiles according to the unit cost of energy consumption. This strategy aims to effectively shift the peak hours load demand to the off peak hours, therefore to improve the current utilization of the generation capacity. In this paper, a utility company is supplying energy to a group of residential users from a community and a third-party is considered, which can be the utility manager of the community and is responsible for scheduling the consumption profiles of all users. The load scheduling problem is formulated as a constrained multi-objective optimization problem (CMOP), with two conflicting and non-commensurable objectives being first minimizing the total energy cost and second maximizing the overall utility, which is the comfort of living in the community. The two evolutionary algorithms (EAs) adopted to address the CMOP are modified version of Multi-objective Optimization Evolutionary Algorithm based on Decomposition using Differential Evolution operator (MOEA/D-DE) based on the original framework and constrained Non-Dominated Sorting Genetic Algorithm-II (NSGA II). By comparing the results obtained by these two algorithms, it is observed that the proposed MOEA/D-DE outperforms constrained NSGA II in terms of convergence and diversity preservation.
机译:由于在高峰时段和高峰时段的负载需求的差异不断增加,电网的低效率越来越突出。为了在高峰时段期间满足负载需求,同时保持高于高峰时段需求的合理安全率,可能需要额外的发电能力,这涉及巨大的投资和利用发电能力的恶化。随着智能电网的引入,电网运营商与用户之间的双向通信由智能电表(SMS)实现。还提出了需求响应(DR)以避免在智能电网中安装新的电厂。 DR使实时定价策略能够根据能量消耗的单位成本来修改用户的需求配置文件。该策略旨在有效地将峰值数量的需求转移到OFF高峰时段,因此提高了产生容量的电流利用率。在本文中,一家公用事业公司正在向一群社区提供能源,并考虑第三方,这可以是社区的公用事业经理,并负责安排所有用户的消费配置文件。负载调度问题被制定为约束的多目标优化问题(CMOP),具有两个冲突和不可追象的目标,首先最小化总能源成本和第二种最大化整体实用程序,这是居住在社区中的舒适性。采用用于解决CMOP的两个进化算法(EAS)是基于原始框架的差分演进运算符(MOEA / D-DE)的分解和受约束非主导分类遗传算法的分解版本的修改版II(NSGA II)。通过比较通过这两种算法获得的结果,观察到所提出的MOEA / D-DE优于收敛和多样性保存方面的NSGA II。

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