多目标粒子群优化方法实现智能建筑-智能电网

L. A. H. Munoz, P. Nguyen, W. Kling
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引用次数: 10

摘要

本文提出了一种提高建筑物作为电力负荷的灵活性以支持配电网运行的有效方法。建筑的能源消耗是能源系统运行的结果,这些系统支持建筑的运行。由于建筑的主要目的是提供一个安全的环境,因此建筑能源需求的很大一部分来自于舒适系统的运行。此外,目标始终是尽可能少地使用电能。本文在考虑低压电网运行的情况下,对舒适性最大化和能耗最小化这两个相互冲突的目标进行优化,给出了帕累托最优解。将加权聚集法与粒子群算法相结合,求出Pareto最优解。该模型在低压配电试验馈线上进行了测试,并使用不同的重量来调节建筑的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple objective Particle Swarm Optimization approach to enable smart buildings-smart grids
This paper proposes an effective method for improving the flexibility of buildings as electrical loads to support the distribution grid operation. The buildings energy consumption is the result of the operation of the energy systems that are there to support its operation. As the buildings main purpose is to provide a safe environment, a great part of the buildings energy demand come from the operation of the comfort systems. Furthermore, the aim is always to use as less electrical energy as possible. In this paper, two conflicting objectives, i.e. maximization of comfort and minimization of energy consumption, are optimized to provide a Pareto optimal solution, taking into account the low voltage network operation. A Weighted Aggregation Approach is used in a combination with Particle Swarm Optimization to find this Pareto optimal. The model is tested on a low voltage distribution test feeder, and different weights are used to tune the flexibility of the building.
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