ISSN: 2157-7617

Zeitschrift für Geowissenschaften und Klimawandel

Offener Zugang

Unsere Gruppe organisiert über 3000 globale Konferenzreihen Jährliche Veranstaltungen in den USA, Europa und anderen Ländern. Asien mit Unterstützung von 1000 weiteren wissenschaftlichen Gesellschaften und veröffentlicht über 700 Open Access Zeitschriften, die über 50.000 bedeutende Persönlichkeiten und renommierte Wissenschaftler als Redaktionsmitglieder enthalten.

Open-Access-Zeitschriften gewinnen mehr Leser und Zitierungen
700 Zeitschriften und 15.000.000 Leser Jede Zeitschrift erhält mehr als 25.000 Leser

Indiziert in
  • CAS-Quellenindex (CASSI)
  • Index Copernicus
  • Google Scholar
  • Sherpa Romeo
  • Online-Zugriff auf Forschung in der Umwelt (OARE)
  • Öffnen Sie das J-Tor
  • Genamics JournalSeek
  • JournalTOCs
  • Ulrichs Zeitschriftenverzeichnis
  • Zugang zu globaler Online-Forschung in der Landwirtschaft (AGORA)
  • Zentrum für Landwirtschaft und Biowissenschaften International (CABI)
  • RefSeek
  • Hamdard-Universität
  • EBSCO AZ
  • OCLC – WorldCat
  • Proquest-Vorladungen
  • SWB Online-Katalog
  • Publons
  • Euro-Pub
  • ICMJE
Teile diese Seite

Abstrakt

Comparison of MLP-ANN Scheme and SDSM as Tools for Providing Downscaled Precipitation for Impact Studies at Daily Time Scale

Hashmi MZ, Shamseldin AY and Melville BW

Statistical downscaling has become an important part in most of the watershed scale climate change investigations. It is usually performed using multiple regression-based models. Basic working principle of such models is to develop a suitable relationship between the large scale (predictors) and the local climatic parameters called predictands. The development of such relationships using linear regression becomes very challenging when the local parameter to be downscaled is complex in nature such as precipitation. For this reason, use of nonlinear data driven techniques including Artificial Neural Networks (ANNs) is becoming more and more popular. Therefore, an attempt has been made in the study presented here to introduce a new Multi-Layer Perceptron (MLP) ANN-based scheme to develop a robust predictors-predictand relationship to be used as a downscaling model at daily time scale. The efficiency of this model has been compared with a popularly used model called Statistical Down Scaling Model (SDSM), for daily precipitation at the Clutha watershed in New Zealand. The results show that the model developed based on ANN scheme exhibits better performance than the SDSM. Hence, it is concluded that the use of artificial intelligence techniques such as ANN can greatly help in developing more efficient predictor-predictand models for even for precipitation being the toughest climate variable to model