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Smart grid adaptive energy conservation and optimization engine utilizing Particle Swarm Optimization and Fuzzification

机译:利用粒子群优化和模糊化的智能电网自适应节能优化引擎

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摘要

This paper aims to present a novel smart grid adaptive energy conservation and optimization engine for smart distribution networks. The optimization engine presented in this paper tries to minimize distribution network loss, improve voltage profile of the system and minimize the operating cost of reactive power injection by switchable shunt Capacitor Banks using Advanced Metering Infrastructure data. Moreover, it performs Conservation Voltage Reduction (CVR) and minimizes transformer loss. To accurately weight the optimization engine objective function sub-parts, Fuzzification technique is employed in this paper. Particle Swarm Optimization (PSO) is applied as Volt-VAR Optimization (VVO) algorithm. Substantial benefits of the proposed energy conservation and optimization engine include but not limited to: adequate accuracy and speed, comprehensive objective function, capability of using AMI data as inputs, and ability to determine weighting factors according to the cost of each objective sub-part. To precisely test the applicability of proposed engine, 33-node distribution feeder is used as case study. The result analysis shows that the proposed approach could lead distribution grids to achieve higher levels of optimization and efficiency compared with conventional techniques. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文旨在提出一种用于智能配电网的新型智能电网自适应节能优化引擎。本文提出的优化引擎试图通过使用高级计量基础设施数据的可切换并联电容器组来最大程度地减少配电网络的损耗,改善系统的电压曲线并最小化无功注入的运营成本。此外,它还执行节能降压(CVR)并最大程度地减少了变压器损耗。为了准确地权衡优化引擎目标函数子部分,本文采用模糊化技术。粒子群优化(PSO)被用作Volt-VAR优化(VVO)算法。提出的节能和优化引擎的实质好处包括但不限于:足够的准确性和速度,全面的目标功能,使用AMI数据作为输入的能力以及根据每个目标子部分的成本确定加权因子的能力。为了精确地测试所提出的发动机的适用性,以33节点分配馈线为案例研究。结果分析表明,与传统技术相比,该方法可以使配电网达到更高的优化和效率水平。 (C)2016 Elsevier Ltd.保留所有权利。

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