Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)

There is no doubt that climatic factors are one of significant parameters in occurrence of natural fires in forest and range ecosystems. The goal of this study was a monthly-based prediction of the occurrence of the natural fires using artificial neural networks in Izeh, north-west of Khuzestan prov...

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Main Authors: S. Aleemahmoodi Sarab, J. Feghhi, B. Jabarian Amiri
Format: Article
Language:fas
Published: Isfahan University of Technology 2013-03-01
Series:Iranian Journal of Applied Ecology
Subjects:
Online Access:http://ijae.iut.ac.ir/browse.php?a_code=A-10-1-14&slc_lang=en&sid=1
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spelling doaj-6e94ebef9bf64e01a601b0766c85caa82020-11-24T22:39:46ZfasIsfahan University of TechnologyIranian Journal of Applied Ecology2476-31282476-32172013-03-01127586Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)S. Aleemahmoodi Sarab0J. Feghhi1B. Jabarian Amiri2 Dept. of Forestry, College of Natur. Resour., The Univ. of Tehran, Tehran, Iran. Dept. of Forestry, College of Natur. Resour., The Univ. of Tehran, Tehran, Iran. Dept. of Environ. Sci., College of Natur. Resour., The Univ. of Tehran, Tehran, Iran. There is no doubt that climatic factors are one of significant parameters in occurrence of natural fires in forest and range ecosystems. The goal of this study was a monthly-based prediction of the occurrence of the natural fires using artificial neural networks in Izeh, north-west of Khuzestan province. The natural fire occurrence data including date of the occurrence, the burned area and number of the fire occurrence was obtained from Izeh Natural Resources Office. The findings indicated that the algorithm of multiple layer perceptron and hyperbolic function were efficient in exploring the relationship between climatic factors and the natural fire occurrence. The networks with two hidden layers and 15 neurons have revealed high accuracy in prediction of the natural fires occurrence. Moreover, for prediction step FMSE(Final Mean Square) was recorded 0.0038. While for testing step, coefficient of variation, MSE(Mean Square), and NMSE(Normal Mean Square) were equal to 0.99, 0.073, and 0.018, respectively. For validation step, the trained network has indicated a high determination coefficient (r2=0.98) between the observed and predicted values. It should be mentioned that the present approach in this study could achieve an artificial neural network with medium performance (r2=0.58) between climate data and the burned area of the natural fire.http://ijae.iut.ac.ir/browse.php?a_code=A-10-1-14&slc_lang=en&sid=1Natural fires Izeh Neural network Prediction Artificial neural network Climate.
collection DOAJ
language fas
format Article
sources DOAJ
author S. Aleemahmoodi Sarab
J. Feghhi
B. Jabarian Amiri
spellingShingle S. Aleemahmoodi Sarab
J. Feghhi
B. Jabarian Amiri
Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
Iranian Journal of Applied Ecology
Natural fires
Izeh
Neural network
Prediction
Artificial neural network
Climate.
author_facet S. Aleemahmoodi Sarab
J. Feghhi
B. Jabarian Amiri
author_sort S. Aleemahmoodi Sarab
title Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
title_short Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
title_full Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
title_fullStr Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
title_full_unstemmed Predicting the Occurrence of Natural Fires in Forests and Ranges using Artificial Neural Networks (Case Study: Zagros Region, Izeh Township)
title_sort predicting the occurrence of natural fires in forests and ranges using artificial neural networks (case study: zagros region, izeh township)
publisher Isfahan University of Technology
series Iranian Journal of Applied Ecology
issn 2476-3128
2476-3217
publishDate 2013-03-01
description There is no doubt that climatic factors are one of significant parameters in occurrence of natural fires in forest and range ecosystems. The goal of this study was a monthly-based prediction of the occurrence of the natural fires using artificial neural networks in Izeh, north-west of Khuzestan province. The natural fire occurrence data including date of the occurrence, the burned area and number of the fire occurrence was obtained from Izeh Natural Resources Office. The findings indicated that the algorithm of multiple layer perceptron and hyperbolic function were efficient in exploring the relationship between climatic factors and the natural fire occurrence. The networks with two hidden layers and 15 neurons have revealed high accuracy in prediction of the natural fires occurrence. Moreover, for prediction step FMSE(Final Mean Square) was recorded 0.0038. While for testing step, coefficient of variation, MSE(Mean Square), and NMSE(Normal Mean Square) were equal to 0.99, 0.073, and 0.018, respectively. For validation step, the trained network has indicated a high determination coefficient (r2=0.98) between the observed and predicted values. It should be mentioned that the present approach in this study could achieve an artificial neural network with medium performance (r2=0.58) between climate data and the burned area of the natural fire.
topic Natural fires
Izeh
Neural network
Prediction
Artificial neural network
Climate.
url http://ijae.iut.ac.ir/browse.php?a_code=A-10-1-14&slc_lang=en&sid=1
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