Aktionen
Anzeigeoptionen
  • Titel
    An enhanced method for predicting and analysing forest fires using an attention-based CNN model
  • Verfasser
  • Erscheinungsort
    Berlin
  • Verlag
  • Erscheinungsjahr
    2024
  • Seiten
    13 S.
  • Material
    Sonderdruck
  • Digitales Dokument
  • Standardsignatur
    13365S
  • Datensatznummer
    40005103
  • Quelle
  • Abstract
    Prediction, prevention, and control of forest fires are crucial on at all scales. Developing effective fire detection systems can aid in their control. This study proposes a novel CNN (convolutional neural network) using an attention blocks module which combines an attention module with numerous input layers to enhance the performance of neural networks. The suggested model focuses on predicting the damage affected/burned areas due to possible wildfires and evaluating the multilateral interactions between the pertinent factors. The results show the impacts of CNN using attention blocks for feature extraction and to better understand how ecosystems are affected by meteorological factors. For selected meteorological data, RMSE 12.08 and MAE 7.45 values provide higher predictive power for selecting relevant and necessary features to provide optimal performance with less operational and computational costs. These findings show that the suggested strategy is reliable and effective for planning and managing fire-prone regions as well as for predicting forest fire damage.Keywords: CNN; Attention module; Fire prediction; Ecosystem; Damage prediction
ExemplarnummerSignaturLeihkategorieFilialeLeihstatus
13365S13365SPDFelektronische PublikationVerfügbar