Bright Sunshine Duration Index-Based Prediction of Solar PV Power Using ANN Approach

D. V. S. K. Rao, B. Prusty, Hareesh Myneni
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引用次数: 1

Abstract

The grid integration of solar photovoltaic (PV) systems has recently grabbed considerable research attention. Simultaneously, the grid has been subjected to disturbances due to PV generations' variability, uncertainty, and intermittency; therefore, accurately estimating the weather-dependent PV power is imperative. The daily global solar radiation, temperature, and sunshine duration of a location can reflect its weather condition; hence, they are used to estimate PV power output using artificial neural network (ANN). A sunshine duration index, “k,” has been introduced to classify a location's weather condition. Accordingly, two weather conditions are considered based on “k,” and solar PV power estimation models are developed for both cases (Condition-I: 0
基于日照时数指数的人工神经网络预测太阳能光伏发电能力
近年来,太阳能光伏系统的并网问题引起了人们的广泛关注。同时,由于光伏发电的可变性、不确定性和间歇性,电网受到干扰;因此,准确估计与天气相关的光伏发电是必要的。一个地点的日全球太阳辐射、温度和日照时数可以反映该地点的天气状况;因此,使用人工神经网络(ANN)来估计光伏输出功率。日照时间指数“k”被引入,用于对一个地区的天气状况进行分类。因此,基于“k”考虑了两种天气条件,并针对这两种情况(条件i: 0
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