شماره ركورد كنفرانس
4001
عنوان مقاله
TEHRAN AIR POLLUTANTS PREDICTION BASED ON RANDOM FOREST FEATURE SELECTION METHOD
پديدآورندگان
Shamsoddini A ali.shamsoddini@modares.ac.ir Tarbiat Modares University , Aboodi M.R. Tarbiat Modares University , Karami J Tarbiat Modares University
تعداد صفحه
6
كليدواژه
AIR POLLUTION , RANDOM FOREST FEATURE SELECTION , ARTIFICIAL NEURAL NETWORKS , MULTIPLE , LINEAR REGRESSION , HUMAN HEALTH , TEHRAN
سال انتشار
1396
عنوان كنفرانس
دومين همايش بين المللي پژوهش هاي اطلاعات مكاني و چهارمين همايش بين المللي سنجنده ها و مدل ها در فتوگرامتري و سنجش از دور و ششمين همايش بين المللي مشاهدات زميني در تغييرات محيطي
زبان مدرك
انگليسي
چكيده فارسي
Air pollution as one of the most serious forms of environmental pollutions poses huge threat to human life. Air pollution leads to environmental instability, and has harmful and undesirable effects on the environment. Modern prediction methods of the pollutant concentration are able to improve decision making and provide appropriate solutions. This study examines the performance of the Random Forest feature selection in combination with multiple-linear regression and Multilayer Perceptron Artificial Neural Networks methods, in order to achieve an efficient model to estimate carbon monoxide and nitrogen dioxide, sulfur dioxide and PM2.5 contents in the air. The results indicated that Artificial Neural Networks fed by the attributes selected by Random Forest feature selection method performed more accurate than other models for the modeling of all pollutants. The estimation accuracy of sulfur dioxide emissions was lower than the other air contaminants whereas the nitrogen dioxide was predicted more accurate than the other pollutants.
كشور
ايران
لينک به اين مدرک