具有负荷不确定性的自主需求侧优化

Emmanuel C. Manasseh, S. Ohno, Toru Yamamoto, A. Mvuma
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引用次数: 2

摘要

在未来的智能电网中,需求侧管理(DSM)将在平衡能源分配和需求方面发挥重要作用。事实上,DSM是智能电网的重要功能之一,它允许客户对其能源消耗做出明智的决策,并帮助能源供应商降低峰值负荷需求并重塑负荷分布[1]-[4]。实现有效的需求侧管理对智能电网的成功至关重要。电力需求侧管理项目的成功主要取决于总能源负荷中有多大一部分是可控的。高效的DSM,通过激励或定价机制,通过转移或减少负荷,促进消费的即时变化[3]。在本文中,我们考虑了多住宅设置中的负载控制,其中智能电表中的能耗调度器(ECS)设备用于DSM。多个住宅终端用户共享同一能源,每个住宅用户具有不可调负荷、可调负荷和一个存储设备。住宅用户利用部署在智能电表内的ECS来调节负载以及存储设备的充电和放电。具有ECS功能的智能电表通过运行集中算法自动交互,为每个用户找到最佳的能耗计划,以降低总能源成本和负荷需求的峰均比(PAR)。目标是最小化系统的能源成本和PAR。仿真结果表明,我们提出的方案显著降低了PAR和总电力成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous demand-side optimization with load uncertainty
Demand-side management (DSM) will play an important role in balancing the energy distribution and demand in future smart grids. Indeed DSM is one of the important functions in a smart grid that allows customers to make informed decisions regarding their energy consumption, and help the energy providers reduce the peak load demand and reshape the load profile [1]-[4]. Achieving effective DSM is crucial to the success of the smart grid. The success of DSM programs mainly depends on how big a portion of the total energy load is controllable. Efficient DSM, promote immediate change of consumption by shifting or reducing load through incentives or pricing mechanisms [3]. In this article, we consider load control in a multiple residence setup, where energy consumption scheduler (ECS) devices in smart meters are employed for DSM. Several residential endusers share the same energy source and each residential user has non-adjustable loads, adjustable loads and a storage device. Residential users utilize ECS deployed inside their smart meters for the adjustable loads as well as charging and discharging of their storage devices. The smart meters with ECS functions interact automatically by running a centralized algorithm to find the optimal energy consumption schedule for each user in order to reduce the total energy cost as well as the peak-to-average-ratio (PAR) in load demands. The objective is to minimize the energy cost in the system as well as PAR. Simulation results demonstrate that our proposed scheme significantly reduces the PAR and the total cost of electricity.
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