1403/02/01
جمیل امان اللهی

جمیل امان اللهی

مرتبه علمی: دانشیار
ارکید:
تحصیلات: دکترای تخصصی
اسکاپوس: 37017276500
دانشکده: دانشکده منابع طبیعی
نشانی: سسنندج، انتهای خیابان پاسداران، دانشگاه کردستان، دانشکده منابع طبیعی، گروه محیط زیست
تلفن: داخلی3219

مشخصات پژوهش

عنوان
Assessing the accuracy of ANFIS, EEMD-GRNN, PCR, and MLR models in predicting PM2.5
نوع پژوهش
JournalPaper
کلیدواژه‌ها
Air quality data, Meteorological data, Hybrid models, linear model
سال
2016
مجله ATMOSPHERIC ENVIRONMENT
شناسه DOI
پژوهشگران Shadi Ausati ، Jamil Amanollahi

چکیده

Since Sanandaj is considered one of polluted cities of Iran, prediction of any type of pollution especially prediction of suspended particles of PM2.5, which are the cause of many diseases, could contribute to health of society by timely announcements and prior to increase of PM2.5. In order to predict PM2.5 concentration in the Sanandaj air the hybrid models consisting of an ensemble empirical mode decomposition and general regression neural network (EEMD-GRNN), Adaptive Neuro-Fuzzy Inference System (ANFIS), principal component regression (PCR), and linear model such as multiple liner regression (MLR) model were used. In these models the data of suspended particles of PM2.5 were the dependent variable and the data related to air quality including PM2.5, PM10, SO2, NO2, CO, O3 and meteorological data including average minimum temperature (Min T), average maximum temperature (Max T), average atmospheric pressure (AP), daily total precipitation (TP), daily relative humidity level of the air (RH) and daily wind speed (WS) for the year 2014 in Sanandaj were the independent variables. Among the used models, EEMD-GRNN model with values of R2=0.90, root mean square error (RMSE)=4.9218 and mean absolute error (MAE)=3.4644 in the training phase and with values of R2=0.79, RMSE=5.0324 and MAE=3.2565 in the testing phase, exhibited the best function in predicting this phenomenon. It can be concluded that hybrid models have accurate results to predict PM2.5 concentration compared with linear model.