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首页> 外文期刊>Journal of Cleaner Production >A proper model to predict energy efficiency, exergy efficiency, and water productivity of a solar still via optimized neural network
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A proper model to predict energy efficiency, exergy efficiency, and water productivity of a solar still via optimized neural network

机译:通过优化的神经网络预测太阳能效率,高效效率和水生产率的适当模型

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In this research, the proper models are developed to simultaneously predict the energy efficiency, exergy efficiency, and water productivity of a single-slope solar still via an Artificial Neural Network (ANN) and a neural network optimized by Imperialist Competition Algorithm (ICA). The outputs are modeled as a function of the time, ambient temperature, solar radiation, glass temperature, basin temperature, and water temperature. The empirical data are utilized to train both the ANN and ICA-enhanced ANN. The neural network with five hidden neurons demonstrates the best performance. The results reveal that implementing the ICA significantly improves the performance of the ANN in predicting all the three outputs. Thereby, as a result of employing the ICA in the ANN, Mean Absolute Error (MAE) experiences 54.30%, 40.11%, and 53.35% reductions in prediction of the water productivity, energy efficiency, and exergy efficiency, respectively, based on the testing date set. Moreover, based on the test data, the ANN-ICA predicts the water productivity, energy efficiency, and exergy efficiency with root mean square error (RMSE) values of about 15.77, 1.37, and 0.29, respectively. In addition, the developed mathematical correlations are finally presented as a function of the inputs. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在该研究中,开发了适当的模型,以同时通过人工神经网络(ANN)和由帝国主义竞争算法(ICA)优化的神经网络来预测单斜率太阳能的能效,高度效率和水生产率。该输出被建模为时间,环境温度,太阳辐射,玻璃温度,盆腔温度和水温。经验数据用于培训ANN和ICA增强的ANN。具有五个隐蔽神经元的神经网络表现出最佳性能。结果表明,实施ICA显着提高了ANN预测所有三个产出的性能。因此,由于在ANN中使用ICA,平均误差(MAE)的经验分别基于测试的水生产率,能源效率和高效率的预测54.30%,40.11%和53.35%的减少日期集。此外,基于测试数据,ANN-ICA分别预测水生产率,能量效率和高度效率,分别具有约15.77,1.37和0.29的根均方误差(RMSE)值。另外,最终将发育的数学相关性作为输入的函数呈现。 (c)2020 elestvier有限公司保留所有权利。

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