2025 : 9 : 29

Mehdi Heydari

Academic rank: Professor
ORCID:
Education: PhD.
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HIndex:
Faculty: Agriculture
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Research

Title
Modeling Climate Change Effects on the Distribution of Oak Forests with Machine Learning
Type
JournalPaper
Keywords
species distribution; climate change; Bayesian; machine learning; artificial intelligence; deep learning; mathematics; forest; big data; data science
Year
2023
Journal FORESTS
DOI
Researchers Hengameh Mirhashemi ، Mehdi Heydari ، Omid Karami ، Kourosh Ahmadi ، Amir Mosavi

Abstract

The present study models the effect of climate change on the distribution of Persian oak (Quercus brantii Lindl.) in the Zagros forests, located in the west of Iran. The modeling is conducted under the current and future climatic conditions by fitting the machine learning method of the Bayesian additive regression tree (BART). For the anticipation of the potential habitats for the Persian oak, two general circulation models (GCMs) of CCSM4 and HADGEM2-ES under the representative concentration pathways (RCPs) of 2.6 and 8.5 for 2050 and 2070 are used. The mean temperature (MT) of the wettest quarter (bio8), solar radiation, slope and precipitation of the wettest month (bio13) are respectively reported as the most important variables in the modeling. The results indicate that the suitable habitat of Persian oak will significantly decrease in the future under both climate change scenarios as much as 75.06% by 2070. The proposed study brings insight into the current condition and further projects the future conditions of the local forests for proper management and protection of endangered ecosystems.