Smart microgrid operation simulator for management and electrification planning

J. Thornburg, T. Ustun, B. Krogh
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引用次数: 20

Abstract

Smart grid technology that enables fine-grained monitoring and control of electrical power systems makes it possible to envision new operating strategies and even new business models. Possibilities for leveraging these smart grid tools in the developing world are being explored, particularly with emerging microgrids for rural electrification. In these off-grid systems, smart meters at the residential level are being used to manage the delivery of affordable electricity through novel uses of mobile payments and direct demand-side control at the customer level. In contrast to traditional power systems in the developed world, the available total supply in microgrids, which can incorporate multiple types of generation, is not always sufficient to meet the aggregate demand, even under normal operating conditions. Moreover, both the available supply and the demand are highly variable, limiting the value of deterministic analyses. This paper introduces a simulation tool for assessing the performance of these systems using probabilistic models of supply and demand. A key feature of the tool is the use of stochastic models for the individual loads and supplies, which are aggregated precisely to obtain stochastic models of the system-level behavior. This makes it possible to evaluate and compare system performance for different operating and business strategies that take advantage of the capabilities for fine-grained control. The paper describes the simulator inputs, computations and illustrative results for a case study.
用于管理和电气化规划的智能微电网运行模拟器
智能电网技术能够对电力系统进行细粒度的监测和控制,这使得设想新的运营战略甚至新的商业模式成为可能。正在探索在发展中国家利用这些智能电网工具的可能性,特别是新兴的用于农村电气化的微电网。在这些离网系统中,住宅级的智能电表正被用于管理可负担得起的电力的交付,通过新颖的移动支付和客户级的直接需求侧控制。与发达国家的传统电力系统相比,即使在正常运行条件下,微电网的可用总供应也并不总是足以满足总需求,因为微电网可以包含多种发电类型。此外,可用的供给和需求都是高度可变的,限制了确定性分析的价值。本文介绍了一种利用供需概率模型来评估这些系统性能的仿真工具。该工具的一个关键特征是对单个负载和供应的随机模型的使用,这些模型被精确地聚合以获得系统级行为的随机模型。这使得评估和比较利用细粒度控制功能的不同操作和业务策略的系统性能成为可能。本文介绍了仿真器的输入、计算和实例分析结果。
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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