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Thermal performance analysis of an inclined passive solar still using agricultural drainage water and artificial neural network in arid climate

机译:干旱气候下利用农业排水和人工神经网络对倾斜被动式太阳蒸馏器的热性能分析

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In this study, a model based on artificial neural network (ANN) was developed in order to predict the thermal performance of an inclined passive solar still in an arid climate, in which the thermal performance of the still was expressed as instantaneous thermal efficiency (ITE). Agricultural drainage water (AWD) was used as a feed for the desalination process, and this is considered a non-conventional water source. Appropriate meteorological variables, viz., ambient air temperature, relative humidity, wind speed, and solar radiation were used alongside the key operational variables, viz., flow rate, temperature, and total dissolved solids of feed water were used as input variables. The results revealed that an ANN with six neurons and a hyperbolic tangent transfer function was the most appropriate model for ITE prediction. Consequently, the optimal ANN model had a 7-6-1 architecture. The results also indicated that the optimal ANN model forecast the ITE accurately, with a mean root mean square error (RMSE) of just 1.933% and a mean coefficient of determination (CD) of 0.949. To create a sensible comparison, a multiple linear regression (MLR) model was also developed. It was found that the ANN model performed better than the MLR model, which displayed a mean RMSE of 4.345% and a mean CD of 0,739. The mean relative errors of forecasted ITE values within the ANN model were mostly in the region of +8% to -6%. One major output of this research is a comprehensive assessment of the ANN modeling technique for the ITE of a solar still, which adds a new perspective to system analysis, design and modeling of the potential productivity of solar stills in terms of the AWD desalination process. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项研究中,建立了一个基于人工神经网络(ANN)的模型,以预测在干旱气候下倾斜的被动式太阳能蒸馏器的热性能,其中,将蒸馏器的热性能表示为瞬时热效率(ITE )。农业排水(AWD)用作海水淡化过程的进料,这被视为非常规水源。将适当的气象变量(即环境空气温度,相对湿度,风速和太阳辐射)与关键操作变量(即流速,温度和给水的总溶解固体)一起用作输入变量。结果表明,具有六个神经元和双曲正切传递函数的ANN是最适合ITE预测的模型。因此,最佳的ANN模型具有7-6-1的架构。结果还表明,最佳的ANN模型可以准确地预测ITE,其均方根误差(RMSE)仅1.933%,平均确定系数(CD)为0.949。为了建立合理的比较,还开发了多元线性回归(MLR)模型。发现ANN模型的表现优于MLR模型,后者的均方根误差(RMSE)为4.345%,平均CD为0,739。在ANN模型中,预测ITE值的平均相对误差大部分在+ 8%至-6%的范围内。这项研究的一项主要成果是对太阳能蒸馏器ITE的ANN建模技术进行了全面评估,这为AWD脱盐工艺方面的太阳能蒸馏器潜在生产率的系统分析,设计和建模提供了新视角。 (C)2017 Elsevier Ltd.保留所有权利。

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