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Membership Function Comparative Investigation on Productivity Forecasting of Solar Still Using Adaptive Neuro-Fuzzy Inference System Approach

机译:自适应神经模糊推理系统方法在太阳静止生产力预测中的隶属度函数比较研究

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摘要

Modeling solar still productivity (SSP) is one of the most studied topics in solar desalination due to it having essential applications in the design of solar still systems. This study applied an adaptive neuro-fuzzy inference system (ANFLS) and different membership functions (MFs) to predict the SSP required by designers, operators, and beneficiaries of solar stills. The output of this research can be used as a reference for designing and managing solar stills that could lead to optimizing the performance. The modeling process was based on real-field experimental data. The model considers the solar radiation, relative humidity, total dissolved solids of the feed, total dissolved solids of the brine, and feed flow rate as the input variables. The results show that ANFIS forecasting with generalized bell MF (GBELLMF) produced the highest correlation coefficient (CO and the smallest root mean square error (RMSE) when compared with other MF types. Thus, the ANFIS model with GBELLMF (CC=0.99; RMSE= 0.03 L/m~2/h) provides the best SSP prediction accuracy, which is better than other models with MFs. In addition, the statistical indicators demonstrate that the ANFIS model is better for predicting the SSP than multiple linear regressions. These findings demonstrate that ANFIS can be applied to forecast the SSP using weather and operational data as inputs with the best membership function (which is GBELLMF).
机译:建模太阳能静止生产率(SSP)是太阳能淡化研究最多的主题之一,因为它在太阳能静止系统的设计中具有必不可少的应用。这项研究应用了自适应神经模糊推理系统(ANFLS)和不同的隶属函数(MF)来预测太阳剧照的设计者,操作者和受益者所需的SSP。这项研究的结果可作为设计和管理可能导致性能优化的太阳剧照的参考。建模过程基于实际实验数据。该模型将太阳辐射,相对湿度,进料的总溶解固体,盐水的总溶解固体和进料流速视为输入变量。结果表明,与其他类型的MF相比,广义钟型MF(GBELLMF)进行的ANFIS预测产生最高的相关系数(CO和最小的均方根误差(RMSE),因此具有GBELLMF的ANFIS模型(CC = 0.99; RMSE = 0.03 L / m〜2 / h)提供了最佳的SSP预测精度,比其他带有MF的模型要好;此外,统计指标表明ANFIS模型比多种线性回归方法更适合预测SSP。证明可以将ANFIS应用于天气和运营数据作为具有最佳隶属度函数(GBELLMF)的输入的SSP预报。

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