Evaluation of meteorological data and satellite images in identifying dust phenomenon in desert areas (Case study: Kerman province)

Document Type : Research Article

Authors

1 Assistant Professor, Department of Soil Conservation and Watershed Management Research, Kerman Agricultural and Natural Resource Research Center, Agricultural Research, Education and Extension Organization, Kerman, Iran.

2 Soil Conservation and Watershed Management Research Institute, Agricultural Research, Education and Extension Organization (AREEO), Tehran, Iran

10.22067/geoeh.2024.87528.1476

Abstract

Extended Abstract
Introduction
Dust storms have become a serious problem in Iran, and the scope of this issue is increasing steadily. The country of Iran, due to its geographical location and climatic conditions, is particularly susceptible to dust storms. Dust storms and the spread of haze in various regions of the country have been some of the most significant environmental challenges in recent years, affecting not only Iran but also the Middle East and Western Asia. These challenges have had adverse social, economic, environmental, and commercial effects on the people of this region, severely disrupting their daily lives. Additionally, dust is considered a significant source of heavy metals in the environment. The aim of the present research is to examine meteorological codes and evaluate the performance of detection algorithms in identifying dust storms in Kerman Province. This study aims to provide a better understanding of dust phenomena in this province and assesses the accuracy and efficiency of various algorithms in detecting dust storms. Furthermore, it identifies the most effective algorithm for this purpose.
Material and Methods
Kerman Province, with an area of 182,301 km², is located in the southern part of Iran between 53°26' to 59°29' east longitude and 25°55' to 32° north latitude. It is the largest province in terms of area. The northern boundary of the province is bordered by the provinces of Khorasan and Yazd, the southern boundary by Hormozgan Province, the eastern boundary by Sistan and Baluchestan Province, and the western boundary by Fars Province. The average annual rainfall in the province is 145 millimeters, which is approximately 58% of the national average and 19% of the global average rainfall.
To evaluate meteorological data and satellite images in detecting dust phenomena in Kerman Province, data from thirteen synoptic stations covering a period of 20 years (2000 to 2020) were obtained from IRIMO. MODIS images were used to analyze the dust phenomenon. To detect dust, codes 06 and 07 were applied, along with algorithms such as Ackerman, TDI, TIIDI, Roskovensky and Liou, NDDI, and Miller.
 
Results and Discussion
Dust storms are common phenomena in arid and semi-arid regions of the world. In recent years, the occurrence of frequent and intense dust storms has become one of the most destructive environmental disasters in the Middle East, with Kerman Province being one of the regions most severely affected. This province has been given particular focus in this research.
The results showed that Sirjan station has the highest occurrence of dust storms with both local and regional origins, while Golbaf station has the lowest occurrence. Bam station recorded the highest annual frequency, while the least occurrence was observed in Babak city, with only two days of dust per year. Among the studied algorithms, the TIIDI and TDI algorithms demonstrated better performance compared to others. Overall, the annual frequency data with a horizontal visibility of 1,000 meters or less indicates an increasing trend in dust storm occurrence from 2000 to 2011, followed by a decline until 2020.
Conclusion
Although the Ackerman algorithm showed relatively acceptable performance in detecting dust, it performed poorly in northern regions and near dust source areas. Studies on other algorithms indicate inadequate performance in detecting dust phenomena in the studied area. Therefore, it is recommended that, considering the specific conditions of Kerman Province, serious attention should be given to identifying dust source areas and planning strategies to control and mitigate the negative effects of dust storms. This is essential for future research projects to prevent potential damage to industrial and agricultural facilities and other vital infrastructure.

Keywords

Main Subjects


Alam, K., Qureshi, S., & Blaschke, T. (2011). Monitoring spatio-temporal aerosol patterns over Pakistan based on MODIS, TOMS and MISR satellite data and a HYSPLIT model. Atmospheric Environment45(27), 4641-4651. https://doi: 10.1016/j.atmosenv.2011.05.055
Azhdari Moghadam, M., & Raispoor, K. (2011). Statistical Analysis and Identification of the Origin of Dust Phenomenon Using Meteorological Codes (Case Study: Khuzestan Province). Paper presented at the 11th Iranian Congress of Geographers, Tehran. [In Persian] https://civilica.com/doc/336497/
Cheki Forak, M., Doostan, R., & Minaei, M. (2023). Identification of Dust Centers in Birjand City. Geography and Territorial Spatial Arrangement13(46), 61-84. [In Persian] https://doi.org/10.22111/gaij.2023.42530.3034
Ghasemi Aryan, Y., Sayed Akhlaghi, S. J., Farajollahi, A., Faiaz, M., & Ganjali, M. (2021). Challenges and strategies towards combating dust storm in Sistan based on the institutional stakeholders viewpoint. Water and Soil Management and Modelling1(4), 48-56. [In Persian] https://doi.org/10.22098/mmws.2021.9436.1044
 Ghorbani, M. (2014). National social network analysis project; modeling, policy making and implementation of participatory management of natural resources (First phase). Final report of a national project, University of Tehran. [In Persian]
Gupta, P., Christopher, S. A., Wang, J., Gehrig, R., Lee, Y. C., & Kumar, N. (2006). Satellite remote sensing of particulate matter and air quality assessment over global cities. Atmospheric Environment40(30), 5880-5892. https://doi.org/10.1016/j.atmosenv.2006.03.016
Jebali, A., Zare, M., Ekhtesasi, M. R., & Jafari, R. (2022). Performance Evaluation of Detector Algorithms of Dust Storms in Arid Lands (Case Study: Yazd Province). Desert Ecosystem Engineering8(23), 85-105. [In Persian] https://deej.kashanu.ac.ir/article_112676.html?
Kheirandish, Z., Jamali, J., & Rayegani, B. )2018(. Identification of the best algorithm for dust detection using MODIS data. Journal of Natural Environment Hazards, 7(15), 207- 220. [In Persian] https://doi. 10.22111/jneh.2017.3363
Liu, Y., & Liu, R. (2011). A thermal index from MODIS data for dust detection. Paper presented at the 2011 IEEE International Geoscience and Remote Sensing Symposium, Vancouver, BC, Canada, 3783-3786. https://doi.org/10.1109/IGARSS.2011.6050054
Makhfi, G., Karimi, A., Solgi, E., & Bagherpor, S. (2022). Evaluation and determination of the ecological risk of lead, zinc and cadmium in the atmospheric dust of Isfahan city. Journal of Environmental Health Enginering9(4), 485-501. [In Persian] http://dx.doi.org/10.61186/jehe.9.4.485
Miller, S. D. (2003). A consolidated technique for enhancing desert dust storms with MODIS. Geophysical Research Letters, 30(20). https://doi.org/10.1029/2003GL018279
Nabavi, S., Moradi, H. M., & Sharifi Kia, M. (2019). Evaluation of dust storm temporal distribution and the relation of the effective factors with the frequency of occurrence in Khuzestan Province from 2000 to 2015. Quarterly of Geographical Data, 28(111), 191-203. [In Persian] https://dor.isc.ac/dor/20.1001.1.25883860.1398.28.111.13.4
Naderi, M., Ghorbani, M., & Yavari, A. (2014). Network Analysis of Information Exchange and Key Actors in Policy-making and Sustainable Management of Sarkeh-Hesar National Park. Researches in Earth Sciences, 5(4), 16-28. [In Persian] https://dor.isc.ac/dor/20.1001.1.20088299.1393.5.4.2.5
Pour Asgharian, A., Nekoamal Kermani, M., Sisipour, M., & Ranjbar Saadat abadi, A. (2014). Assessment of Dust Phenomenon Frequency in Hormozgan Province. Paper presented at the Second National Conference on Deserts with Approach of Management of Arid and Desert Areas. [In Persian] https://civilica.com/doc/329506/
Qaderi Nasab, F., & Rahnama, M. B. (2018). Detection of dust storms in Jazmoriyan drainage basin using multispectral techniques and MODIS image. Physical Geography Research50(3), 545-562. https://doi.org/10.22059/jphgr.2018.248345.1007159
Qu, J. J., Hao, X., Kafatos, M., & Wang, L. (2006). Asian dust storm monitoring combining Terra and Aqua MODIS SRB measurements. IEEE Geoscience and Remote Sensing Letters, 3(4), 484-486. https://doi.org/10.1109/LGRS.2006.877752
Rasekhi, S. (2014). Social network analysis in range management and participatory management planning (Case study: Fars Province). Ph.D. Thesis, Islamic Azad University, Science and Research Branch, Tehran. [In Persian]
Rashki, A., Kaskaoutis, D. G., Eriksson, P. G., de W. Rautenbach, C. J., Flamant, C., & Abdi Vishkaee, F. (2014). Spatio-temporal variability of dust aerosols over the Sistan region in Iran based on satellite observations. Natural Hazards71, 563-585. https://doi.org/10.1007/s11069-013-0927-0
Roskovensky, J. K., & Liou, K. N. (2003). Detection of thin cirrus from 1.38 μm/0.65 μm reflectance ratio combined with 8.6 –11 μm brightness temperature difference. Geophysical Research Letters, 30(19). https://doi.org/10.1029/2003GL018135
Salari, F. (2014). Modeling and analysis of water resources management network in the watershed (Case study: Kermanshah resin watershed). Master's thesis, University of Tehran. [In Persian]
Sarikhani, A., Dehghani, M., Karimi-Jashni, A., & Saadat, S. (2021). A New Approach for Dust Storm Detection Using MODIS Data. Iranian Journal of Science and Technology, Transactions of Civil Engineering45, 963-969. https://doi.org/10.1007/s40996-020-00508-4
Shamshiri, S., Jafari, R., Soltani, S., & Ramazani, N. )2014(. Identification and zonation of dust storms in Kermanshah Province by using MODIS images. Applied Ecology, 3(8),23-35. [In Persian] http://dorl.net/dor/20.1001.1.24763128.1393.3.8.3.3
Wald, A. E., Kaufman, Y. J., Tanré, D., & Gao, B. C. (1998). Daytime and nighttime detection of mineral dust over desert using infrared spectral contrast. Journal of Geophysical Research: Atmospheres, 103, 32307-32313. https://doi:10.1029/98JD01454
Zandkarimi, A., Fatehi, P., & Shah-Hoseini, R. (2020). An improved dust identification index (IDII) based on MODIS observation. International Journal of Remote Sensing, 41(20), 8048-8068. https: doi:10.1080/01431161.2020.1770366
Zangeneh, M. (2014). Climatological Analysis of Dust Storms in Iran. Journal of Applied Climatology1(1), 1-12. [In Persian] https://jac.ui.ac.ir/article_15593.html
Zhao, T. X. P., Ackerman, S., & Guo, W. (2010). Dust and smoke detection for multi-channel imagers. Remote Sensing2(10), 2347-2368. https://doi.org/10.3390/rs2102347
 
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