Viviane Luíse Silva de Lima, Israel Panazollo, Gustavo Cordeiro dos Santos, D. Bernardon, M. Sperandio, Rafael Crochemore Ney
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引用次数: 0
Abstract
Over the years, there has been a significant increase in the number of photovoltaic installations, this is due to the innovation of the electric sector based on new regulations, government incentives and more accessible technologies. However, the vast majority of existing low voltage networks were not expected to absorb a large volume of distributed generation, mainly residential feeders, which generally have low demand during the day, when photovoltaic generation reaches its peak production, which it can cause a reversal of the energy flow in the feeder, resulting in a series of technical losses for the energy distributors. This article presents a method using Monte Carlo Method (MMC) to analyze the losses associated with high photovoltaic insertion in secondary distribution networks, in order to guarantee quality electrical energy, without jeopardizing the expansion of photovoltaic generation. To perform the simulations and allocations, the algorithm is implemented in Python programming language, which uses the OpenDSS COM interface for power flow calculations.
多年来,光伏装置的数量显著增加,这是由于电力部门在新法规、政府激励措施和更容易获得的技术基础上的创新。然而,绝大多数现有的低压电网并没有期望吸收大量的分布式发电,主要是住宅馈线,白天通常需求较低,当光伏发电达到峰值时,它会导致馈线中的能量流逆转,给能源分销商带来一系列的技术损失。本文提出了一种利用蒙特卡罗方法(Monte Carlo method, MMC)分析二次配电网中光伏高插电损耗的方法,以保证电能质量,同时不影响光伏发电的扩展。为了进行仿真和分配,该算法采用Python编程语言实现,并使用OpenDSS COM接口进行潮流计算。