Optimal Placement of Distribution Generator by Incorporating Demand Response Strategy for Residential and Industrial User

P. Shanmugapriya, M. Kumaran, J. Baskaran, C. Nayanatara, P. Sharmila
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Abstract

Demand response strategy mainly focuses in reducing the peak demand of the end user by proper scheduling of the appliances which is differentiated as elastic and fixed load by the customer. Demand side management (DSM) lets the customers to minimize the energy consumption and reshapes the load profile. This scheduling is also based on categorizing the devices for whole day in 24 hours duration according to the customer comfort. For execution of the proposed model the entire formulation is conducted by the heuristic approach. Genetic algorithm (GA) is a potent method to get near ideal answer. The impact of the proposed model is studied by simulating on a IEEE - 9 bus distribution system.
结合住宅和工业用户需求响应策略的配电发电机优化配置
需求响应策略主要侧重于通过合理调度终端用户的弹性负荷和固定负荷来降低终端用户的峰值需求。需求侧管理(DSM)使客户能够最大限度地减少能源消耗并重塑负载分布。这种调度也是根据客户的舒适度,在24小时内对全天的设备进行分类。为了执行所提出的模型,整个公式是通过启发式方法进行的。遗传算法是求解近似理想解的有效方法。通过对一个IEEE - 9总线配电系统的仿真,研究了该模型的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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