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Forecasting solar still performance from conventional weather data variation by machine learning method
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作者 高文杰 沈乐山 +9 位作者 孙森山 彭桂龙 申震 王云鹏 AbdAllah Wagih Kandeal 骆周扬 a.e.kabeel 张坚群 鲍华 杨诺 《Chinese Physics B》 SCIE EI CAS CSCD 2023年第4期19-25,共7页
Solar stills are considered an effective method to solve the scarcity of drinkable water.However,it is still missing a way to forecast its production.Herein,it is proposed that a convenient forecasting model which jus... Solar stills are considered an effective method to solve the scarcity of drinkable water.However,it is still missing a way to forecast its production.Herein,it is proposed that a convenient forecasting model which just needs to input the conventional weather forecasting data.The model is established by using machine learning methods of random forest and optimized by Bayesian algorithm.The required data to train the model are obtained from daily measurements lasting9 months.To validate the accuracy model,the determination coefficients of two types of solar stills are calculated as 0.935and 0.929,respectively,which are much higher than the value of both multiple linear regression(0.767)and the traditional models(0.829 and 0.847).Moreover,by applying the model,we predicted the freshwater production of four cities in China.The predicted production is approved to be reliable by a high value of correlation(0.868)between the predicted production and the solar insolation.With the help of the forecasting model,it would greatly promote the global application of solar stills. 展开更多
关键词 solar still production forecasting forecasting model weather data random forest
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