April 24, 2024
Esmaeil Abbasi

Esmaeil Abbasi

Academic Rank: Assistant professor
Address: Persian Gulf University, Bushehr, Iran
Degree: Ph.D in Climatology
Phone: 07731222230
Faculty: Persian Gulf Research Institue

Research

Title Dust storm source detection using ANP and WRF models in southwest of Iran
Type Article
Keywords
Dust storms . Dust sources . The analytic network processes . WRF numerical model . Iran
Journal Arabian Journal of Geosciences
DOI DOI: 10.1007/s12517-021-07608-z
Researchers Esmaeil Abbasi (First researcher) , Hana Etemadi (Second researcher) , Joseph Smoak (Third researcher) , Mohammad Hassan Mahoutchi (Fifth researcher)

Abstract

In recent years, dust storms with huge adverse impacts on the environment have become more frequent and intense in the southwest of Iran. The first step to control or influence the dust storm process is source identification. The objective of this study is to detect the major sources of dust storms in Bushehr Province of Iran using the analytic network processes (ANP) and the weather research and forecasting (WRF) models. Five synoptic stations for this purpose were examined over 17 years from 2001 to 2017. The spatial data includes land use, NDVI, slope, aspect-slope, elevation, and soil used as the major layers. The layers were weighted by applying the paired comparison and analytic hierarchy process methods. Also, local scale pressure systems were identified using the WRF numerical model. Results revealed that pressure systems at the local scale in different seasons are located exactly over areas prone to dust storm generation within the study area. Furthermore, the WRF model correctly showed the atmospheric pressure and wind field locations at a local scale. Based on ANP output, more than 25% of Bushehr Province has been active as dust-prone regions at a local scale. The ANP model identified the zones of erosion-prone areas, and the WRF model determined the location of permanent or semi-permanent pressure systems. Results demonstrated that applying the WRF and ANP models provided a useful tool to identify and validate the local dust sources with high accuracy in the study sites.