在蒙特卡洛研究中创建更现实的屋顶pv分配场景的方法

Diego G. Almeida, T. R. Ricciardi, F. Trindade
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引用次数: 0

摘要

由于越来越多的屋顶光伏发电机安装在电力分配系统和内在的不确定性,影响研究需要概率方法,如蒙特卡罗模拟。屋顶光伏系统蒙特卡罗模拟的一个重要不确定性是安装位置。考虑公用事业数据库中接收屋顶光伏发电机的所有客户单位的相同概率提供了不切实际的结果。例如,建筑物的客户不应该得到与房屋相同的待遇。在这种情况下,为了进行更现实的研究,本工作提出了一种考虑净计量电价选择最可能安装屋顶光伏发电机的客户单位的方法。该方法包括读取配电公用事业的真实完整数据库,对屋顶光伏发电机进行大小调整,过滤最有可能接收光伏发电机的客户单位,并为蒙特卡洛研究创建场景。最后,利用OpenDSS对两个实际配电网进行了计算仿真,以说明该方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methodology for the Creation of More Realistic Scenarios of Rooftop PVs Allocation in Monte Carlo Studies
Due to the increased installation of rooftop PV generators in electric power distribution systems and the intrinsic uncertainties, impact studies require probabilistic methods such as Monte Carlo simulation. An important uncertainty of the Monte Carlo simulation involving rooftop PV systems is the local of installation. Considering all the customer units from the utility database with equal probability for receiving a rooftop PV generator provides unrealistic results. For instance, customers of a building should not receive the same treatment as houses. In this context, to allow more realistic studies, this work presents a methodology for selecting the most probable customer units to install rooftop PV generators considering net metering tariff. The methodology consists of reading a real complete database of a distribution utility, sizing the rooftop PV generators, filtering the customer units with the highest potential to receive a PV generator, and creating the scenarios for the Monte Carlo study. At the end, computational simulations using OpenDSS are carried out in two real distribution networks to illustrate the application of the method.
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