• ورود به سامانه
      مشاهده مورد 
      •   صفحهٔ اصلی
      • نشریات انگلیسی
      • Global Journal of Environmental Science and Management
      • Volume 5, Issue 3
      • مشاهده مورد
      •   صفحهٔ اصلی
      • نشریات انگلیسی
      • Global Journal of Environmental Science and Management
      • Volume 5, Issue 3
      • مشاهده مورد
      JavaScript is disabled for your browser. Some features of this site may not work without it.

      Application of ensemble learning techniques to model the atmospheric concentration of SO2

      (ندگان)پدیدآور
      Masih, A.
      Thumbnail
      دریافت مدرک مشاهده
      FullText
      اندازه فایل: 
      763.2کیلوبایت
      نوع فايل (MIME): 
      PDF
      نوع مدرک
      Text
      ORIGINAL RESEARCH PAPER
      زبان مدرک
      English
      نمایش کامل رکورد
      چکیده
      In view of pollution prediction modeling, the study adopts homogenous (random forest, bagging, and additive regression) and heterogeneous (voting) ensemble classifiers to predict the atmospheric concentration of Sulphur dioxide. For model validation, results were compared against widely known single base classifiers such as support vector machine, multilayer perceptron, linear regression and regression tree using M5 algorithm. The prediction of Sulphur dioxide was based on atmospheric pollutants and meteorological parameters. While, the model performance was assessed by using four evaluation measures namely Correlation coefficient, mean absolute error, root mean squared error and relative absolute error. The results obtained suggest that 1) homogenous ensemble classifier random forest performs better than single base statistical and machine learning algorithms; 2) employing single base classifiers within bagging as base classifier improves their prediction accuracy; and 3) heterogeneous ensemble algorithm voting have the capability to match or perform better than homogenous classifiers (random forest and bagging). In general, it demonstrates that the performance of ensemble classifiers random forest, bagging and voting can outperform single base traditional statistical and machine learning algorithms such as linear regression, support vector machine for regression and multilayer perceptron to model the atmospheric concentration of sulphur dioxide.
      کلید واژگان
      Air pollution modeling
      Ensemble learning techniques
      Multilayer Perceptron (MLP)
      Random Forest
      Bagging
      Sulphur dioxide (SO2)
      Support Vector Machine (SVM)
      Voting
      Environmental modeling

      شماره نشریه
      3
      تاریخ نشر
      2019-07-01
      1398-04-10
      ناشر
      GJESM Publisher
      سازمان پدید آورنده
      Department of System Analysis and Decision Making, Ural Federal University, Ekaterinburg, Russian Federation

      شاپا
      2383-3572
      2383-3866
      URI
      https://dx.doi.org/10.22034/GJESM.2019.03.04
      https://www.gjesm.net/article_35122.html
      https://iranjournals.nlai.ir/handle/123456789/92004

      مرور

      همه جای سامانهپایگاه‌ها و مجموعه‌ها بر اساس تاریخ انتشارپدیدآورانعناوینموضوع‌‌هااین مجموعه بر اساس تاریخ انتشارپدیدآورانعناوینموضوع‌‌ها

      حساب من

      ورود به سامانهثبت نام

      تازه ترین ها

      تازه ترین مدارک
      © کليه حقوق اين سامانه برای سازمان اسناد و کتابخانه ملی ایران محفوظ است
      تماس با ما | ارسال بازخورد
      قدرت یافته توسطسیناوب