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首页> 外文期刊>International review of automatic control >Global Solar Radiation Prediction in Colombia Using a Backpropagation Neural Network Architecture
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Global Solar Radiation Prediction in Colombia Using a Backpropagation Neural Network Architecture

机译:哥伦比亚的全球太阳辐射预测使用了深度反向化神经网络架构

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摘要

The main source of renewable energy available in nature is solar radiation, which is the most promising resource to replace non-renewable energy sources and reduce gas emissions into the atmosphere since it allows various forms of capture and transformation through photovoltaic and photothermal systems. For an optimum use of solar energy, it is necessary to characterize and know the solar radiation at the level of the earth's surface, but this varies with time instantaneously, hourly, daily, and during seasons, with the latitude and with the local microclimates of the site. Therefore, a backpropagation artificial neural network (ANN) has been used to develop a mathematical model to predict solar radiation and the polycrystalline temperature, as a function of the ambient in the Colombian territory, specifically in the Atlantic coast. The network has been trained with 300 of the 381 data that constituted the matrix to obtain the RMSE that has been 0.164, with a network architecture composed of 10 layers and 5 neurons per layer. In addition, it has been used as a learning constant of 0.5 for each interconnection of the ANN. The increase in the number of hidden layers and the number of neurons increases the network performance, improving the prediction of the objective variable around 13% when using an architecture with five neurons per layer (NL), and 15 numbers of layers (L). In general, the results obtained have shown an acceptable performance of the artificial neural network in the estimation of solar radiation, but with certain possibilities of being improved.
机译:自然可再生能源的主要来源是太阳辐射,这是更换不可再生能源的最有希望的资源,并将气体排放量降至大气中,因为它允许通过光伏和光热系统进行各种形式的捕获和转化。为了最佳地使用太阳能,有必要在地球表面的水平下表征和了解太阳辐射,但这种情况随着纬度和局部微跨度而瞬间,每小时,每日和季节期间都随时间而变化网站。因此,反向化人工神经网络(ANN)已被用来开发一种数学模型以预测太阳辐射和多晶温度,作为哥伦比亚领土的环境,特别是在大西洋海岸。网络已经接受培训,其中381个数据中的300个数据构成矩阵以获得已有0.164的RMSE,网络架构由10层和每层5个神经元组成。此外,对于ANN的每个互连,它已被用作0.5的学习常数。隐藏层数量的增加和神经元数量增加了网络性能,当使用每层(NL)的五个神经元的架构和15个层(L)时,提高目标变量的预测约为13%。通常,所获得的结果显示了人工神经网络在太阳辐射估计中的可接受性能,但具有改进的某些可能性。

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