基于变大气参数的神经网络GSR预测可靠性评估

M. Al-Omary, Aiman Albatayneh, R. Aljarrah, Khaled Alzaareer
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引用次数: 1

摘要

太阳总辐射(GSR)的测量值有波动。这是由云、灰尘、反射和其他因素共同作用的结果。其潜在价值的模糊性对许多工程应用和太阳能系统制造商构成了挑战。全球太阳辐射的间歇性与提前找到正确可靠的数值的必要性相冲突。与随机和统计方法相比,采用基于神经网络的预测方法来实现对这些值的先验知识,具有很高的效率。尽管如此,这些网络的可靠性在很大程度上取决于不同的输入,因此被认为是可变的。这项工作评估了专门使用大气参数的不同神经网络的可靠性,将它们视为单个输入和两个或三个参数的组合。结果表明,使用(天顶角、气温、相对湿度)的网络最可靠,相关系数为0.997。相反,根据相关系数的0.603,只有(空气温度)的网络是最低可靠度的网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability Evaluation of GSR Prediction Using Neural Networks with Variant Atmospheric Parameters
Global Solar Radiation (GSR) has fluctuations in its measured values. This occurs by actions of several factors including clouds, dust, reflections, and others. The ambiguity associated with its prospective values forms a challenge for many engineering applications and manufacturers of solar-based systems. The intermittent nature of global solar radiation conflicts with the necessity to find correct and reliable values in advance. The neural network-based prediction has been adopted to fulfill a prior knowledge about these values for being highly efficient compared to the stochastic and statistic approaches. Despite that, the reliability of those networks is considered variant for being largely dependent on different inputs. This work evaluates the reliability of different neural networks that specifically use atmospheric parameters, considering them as single inputs and combinations of two and three parameters. The results appeared that the network that uses (Zenith Angle, Air Temperature, and Relative Humidity) is the most reliable one with 0.997 recorded for the correlation coefficient. Oppositely, the network of only (Air Temperature) is the network of the lowest reliability according to the 0.603 that is found for the correlation coefficient.
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