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   پیش‌بینی میزان تابش‌خورشیدی با استفاده از دمای روزانه و شبکه‌های عصبی‌مصنوعی در اقلیم‌های مختلف آب‌و‌هوایی  
   
نویسنده ساعدی ایمان ,علیمردانی رضا ,موسی زاده حسین
منبع ماشين هاي كشاورزي - 1397 - دوره : 8 - شماره : 1 - صفحه:197 -211
چکیده    برآورد میزان تابش خورشیدی در هواشناسی، کشاورزی و سامانه های مبتنی بر این منبع انرژی پاک و تجدیدپذیر اهمیت دارد. در این پژوهش ازدمای روزانه که در دسترس ترین داده هواشناسی است به عنوان تنها پارامتر مورد نیاز در اقلیم های مختلف، استفاده و با کمک شبکه های عصبی مصنوعی مدل های پیش بینی تابش خورشیدی توسعه داده شد. معیارهای ارزیابی مدل ها شامل mape و rmse ،r و نمودارهای پراکندگی مقادیر واقعی و پیش بینی شده بود. برای تامین داده های طولانی مدت و معتبر، ایالت واشنگتن در شمال غربی امریکا با 19 ایستگاه هواشناسی در اقلیم های مختلف، انتخاب شد. ابتدا، یک ایستگاه با بیشترین داده معتبر برای توسعه شبکه های عصبی لحاظ شد. برای آن، مدل هایی با سه تابع آموزشی لونبرگ -،(lm) مارکوارتگرادیان توام مقیاس شده (scg) و تنظیم بیزین (br) در حالات یک و دولایه پنهان با حداکثر 20 نرون در هرلایه (در مجموع 1260 مدل) توسعه داده شد و شش مدل برتر انتخاب گردید. این مدل ها سپس در سایر ایستگاه های این ایالت سنجیده شد و در نهایت، دقیق ترین و همه جانبه ترین آنها برای ارزیابی میزان تابش خورشیدی در اقلیم مشهد به عنوان نمونه ای از اقلیم داخل کشور انتخاب شد. نتایج نشان داد که شبکه های ،عصبی بیزین دقیق ترین پاسخ(r< 0/92 > ، >mape<62/75% ،3/54>rmse<4/78mjm^-2 < 28/81) و الگوریتم scg با بالاترین سرعت های پردازش، کمترین دقت( 33/74 0/90 >mape<77/28% ،3/91>rmse<5/30mjm^-2،0/83
کلیدواژه تابش جهانی خورشیدی، تنظیم بیزین، دمای روزانه، شبکه عصبی
آدرس دانشگاه صنعتی شاهرود, دانشکده کشاورزی, ایران, دانشگاه تهران, گروه مهندسی مکانیک ماشین‌های کشاورزی, ایران, دانشگاه تهران, گروه مهندسی مکانیک ماشین‌های کشاورزی, ایران
 
   Prediction of Daily Global Solar Radiation by Daily Temperatures and Artificial Neural Networks in Different Climates  
   
Authors Mousazadeh H ,Alimardani R ,Saedi S. I
Abstract    <strong > Introduction </strong >Global solar radiation is the sum of direct, diffuse, and reflected solar radiation. Weather forecasts, agricultural practices, and solar equipment development are three major fields that need proper information about solar radiation. Furthermore, sun in regarded as a huge source of renewable and clean energy which can be used in numerous applications to get rid of environmental impacts of nonrenewable fossil fuels. Therefore, easy and fast estimation of daily global solar radiation would play an effective role is these affairs. <strong >Materials and Methods </strong >This study aimed at predicting the daily global solar radiation by means of artificial neural network (ANN) method, based on easytogain weather data i.e. daily mean, minimum and maximum temperatures. Having a variety of climates with longterm valid weather data, Washington State, located at the northwestern part of USA was chosen for this purpose. It has a total number of 19 weather stations to cover all the State climates. First, a station with the largest number of valid historical weather data (Lind) was chosen to develop, validate, and test different ANN models. Three training algorithms i.e. Levenberg – Marquardt (LM), Scaled Conjugate Gradient (SCG), and Bayesian regularization (BR) were tested in one and two hidden layer networks each with up to 20 neurons to derive six best architectures. R, RMSE, MAPE, and scatter plots were considered to evaluate each network in all steps. In order to investigate the generalizability of the best six models, they were tested in other Washington State weather stations. The most accurate and general models was evaluated in an Iran sample weather station which was chosen to be Mashhad. <strong >Results and Discussion </strong >The variation of MSE for the three training functions in one hidden layer models for Lind station indicated that SCG converged weights and biases in shorter time than LM, and LM did that faster than BR. It means that SCG provided the fastest performance. However, the story for accuracies was different i.e. the BR, LM, and SCG algorithms provided the most accurate performances, respectively, both among one or two hidden layers. According to the evaluation criteria, six most accurate derived models out of 1260 tested ones for Lind station was 3141 and 311191 with LM, 3201 and 320191 with BR, and 391 and 320171 with SCG training algorithm, and 320191 topology with BR showed the best performance out of all architectures. Results of the evaluation of the six accurate models in the remaining 18 stations of Washington State proved that regardless of the climate, in each weather station, BR with its inherent automatic regularization, provided the most accurate models (0.87 <R <0.92, 3.54 <RMSE <4.78 MJm2, 28.81 <MAPE <62.75 %), then LM (0.91 >R >0.85, 3.64 >RMSE > 5.02 MJm2 ،29.14 >MAPE > 67.41 %), and then SCG (0.90 >R >0.83, 3.91 >RMSE <5.30 MJm2, 33.74 >MAPE > 77.28 %). Therefore, the Bayesian neural networks, which showed the best performance among all Washington State weather stations, were evaluated for Mashhad station, as an Iran sample climate. The results proved the ability of the said networks for this climate (R=0.82, RMSE=3.92 MJm2, MAPE=79.92%). <strong >Conclusions </strong >The results indicated that the Bayesian neural networks are capable of predicting global solar radiation with minimum inputs in different climates. This was concluded both in Washington State weather stations, which has a variety of climates, and also in Mashhad as an Iran sample weather station. These models would eliminate the need for complex climatedependent mathematical relations or other models which are mostly dependent on many inputs. So, this algorithm would be a good means first in weather forecast practices, also in the design and development of solar assisted equipment, as well as in managerial practices in agriculture when monitoring crop solardependent processes like photosynthesis and evapotranspiration.
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