Document Type : Research Article
Authors
1 Associated Professor, Department of Water Engineering and Sciences, Faculty of Agriculture and Natural Resources, Ardakan University, Ardakan, Iran
2 Water, Energy and Environment Research Institute, Ardakan University, P.O. Box 184, Ardakan, Iran Assistant Professor, Department of Electrical Engineering, Faculty of Engineering, Ardakan University, Ardakan, Iran
Abstract
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جهان تیغ، ن.، پیری، ج. 1402. تخمین میزان تابش خورشیدی در اقلیمهای مختلف ایران با استفاده از روشهای هیبریدی یادگیری ماشین. نشریه علوم کاربردی و محاسباتی در مکانیک. 34(4): در حال چاپ.
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