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首页> 外文期刊>Theoretical and applied climatology >A new artificial multi-neural approach to estimate the hourly global solar radiation in a semi-arid climate site
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A new artificial multi-neural approach to estimate the hourly global solar radiation in a semi-arid climate site

机译:一种新的人工多神经方法来估计半干旱气候遗址的每小时全球太阳辐射

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In this study, we propose a new hybrid machine-learning algorithm called artificial multi-neural approach, for developing a multi-input single-output (MISO) model to estimate the hourly global solar radiation (HGSR) time series in Agdal site (latitude 31 degrees 37 ' N, longitude 08 degrees 01 ' W, elevation 466 m), Marrakesh, Morocco. To achieve this goal, three training algorithms (scaled conjugate gradient, Levenberg-Marquardt, and resilient backpropagation) are selected to train the developed model, using some accessible hourly meteorological variables recorded during 7 years (from 2008 to 2014) as exogenous inputs. Furthermore, a pertinence determination test (PDT) is used to point out the most pertinent inputs for the accurate HGSR estimation. The best configuration of the multi-neural model includes five known input parameters as the best scenario, i.e., acquisition hour, air temperature, relative humidity, wind speed, and precipitation. Some statistical indicators are used to evaluate the performance of the developed model. The obtained results demonstrate the reliability and the precision of our proposed machine-learning algorithm, representing a good solution for estimating solar radiation time series needed to design and manage solar energy systems compared to the present standards.
机译:在本研究中,我们提出了一种新的混合机学习算法,称为人工多神经方法,用于开发多输入单输出(MISO)模型,以估计Agdal站点中的每小时全球太阳辐射(HGSR)时间序列(纬度31度37'n,经度08度01'W,高度466米),马拉喀什,摩洛哥。为实现这一目标,选择三种训练算法(缩放共轭梯度,Levenberg-Marquardt和Levirient Backpropagation)以使用7年(从2008年至2014年)作为外源投入的一些可接近的每小时气象变量培训开发的模型。此外,采用抑制测定测试(PDT)来指出精确的HGSR估计的最相关的输入。多神经模型的最佳配置包括五个已知的输入参数,作为最佳场景,即采集时间,空气温度,相对湿度,风速和降水。一些统计指标用于评估开发模型的性能。所获得的结果证明了我们所提出的机器学习算法的可靠性和精度,代表了估计设计和管理太阳能系统所需的太阳辐射时间序列的良好解决方案,与本标准相比。

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