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:: Volume 19, Issue 65 (6-2019) ::
جغرافیایی 2019, 19(65): 299-317 Back to browse issues page
Application of Spot 5 Satellite image to Oil-contaminated soils Identification and statistical analyzes in Marun Oilfield – Khuzestan
Abstract:   (4718 Views)

 Application of Spot 5 Satellite image to Oil-contaminated soils Identification and statistical analyzes in Marun Oilfield – Khuzestan

Introduction

In recent years, using remote sensing technology and variety of satellite images as one of the main sources of information have evaluated to monitor the optimal utilization of resources, soil pollution, water pollution and land. Remote sensing application technology (satellite image data) in different domains has led to its application in areas such as oil and gas. The soil pollution is a form of pollution due to human activity in which huge amount of crude oil is leak aged or released into the field and soil. The recovery and cleaning process is very difficult and take more times. Some oil spills may take even years to clean up. This process depends upon various factors such as the type of oil spilled, soil and environmental factors. Several oil spills occurred at oil platforms in Marun oil field, Ahvaz. The oil spills were subsequently imaged by different types of satellite sensors, The object of paper is identify oil pollution in soil using satellite imagery for identify oil pollution in soils and find source of pollution in the Marun oil filed Khuzastan, south of Iran.

 

Material and methods

The study area is an oil field, located in the Khuzestan province of Iran and is the second-largest oil field in Iran. Marun oil field is situated in the southwest of Iran in the south of North Dezful Embayment between Kupal, Aghajari, Ramin, Shadegan and Ramshir oil fields. This field consists of Asmari and Bangestan reservoirs producing oil and Khami reservoir comprising mainly gas. This field is an asymmetric anticline with NW-SE trend. The dimensions of Marun oil field at the Asmari oil reservoir horizon are 67 and 7 kilometers in length and width, respectively. The GPS data were collected in the WGS-84 (World Geodatic Systems-84) datum in the latitude/longitude system and were subsequently transformed into the Universal Transverse Mercator (UTM) Zone 39-North system. The GCP coordinates within the UTM projection were then integrated with the satellite images using the software for georeferencing. The satellite images were enhanced using an image processing software package (Envi 5.0) to facilitate the pre-processing and processing of the study area. High precision, were used to capture data at several identifiable points on the images to be used as ground control points (GCPs).

 

Results & Discussion

This paper aims to identify oil pollution in soil using SPOT5 satellite imagery. In this study, SPOT5 satellite images are used with supervised classification methods that created two color threshold, Low to High of petroleum products in the study area. In the study area the high threshold have the most pollution. Grounds point control are used for accuracy and validation of results, five point with certain color threshold, for identification polluted soils. In the study area, results of statistical analysis show that metal concentrations Ni and Co elements compared with World Shale Standard are contaminated with high amount and average concentrations of all three metals Ni, Co and V compared with non-contaminated soil standard are also polluted with high range. Soil salinity factor in the study area is plotted at saline range according of saline soils classification. According to statistical results, high correlation between pH, Oil / Grease, V and EC are showed that Vanadium is characteristic of oil pollution ,also the salinity and pollution oil / grease in soil due to crude oil been created. The correlation between Ni and Co elements, indicates that the source of them are same and due to the geological factors. Principal component analysis show that first factor is most effective factor in the contamination of soil which has a high correlation with pH, Oil / Grease, V and the EC which can dominated the same source of these parameters with crude oil. The second factor is shown high correlation between Co and Ni have same source that due to material of soil in the study area.

Keywords: oil-contaminated of soil, Remote Sensing, images SPOT5, Pollution indicators, Multivariate Statistics, Marun Oilfield
Full-Text [PDF 1203 kb]   (1536 Downloads)    
Type of Study: Research | Subject: Special
Received: 2016/12/22 | Accepted: 2018/11/13 | Published: 2019/06/15
References
1. - Abosede, E. A., (2013), "Effect of crude oil pollution on some soil physical properties", IOSR Journal of agriculture and veterinary science, 6 (3): 14-17. [DOI:10.9790/2380-0631417]
2. Ahmadi Rohany, R., Karimpour, M. H., Rahimi, B., Malakzadeh Shafaroudi, A., Najafi Afshar, S., (2014), "Application of remote sensing to enhance, recognize and analysis of the structural characteristics of alteration-related lineation's in the Bajestan area, East of Iran", Iranian Journal of Earth Science, 26 (103): 169-182. [In Persian].
3. Asgari, K., Amini, H., (2014), "Biomonitoring of trace element in air and soil pollution by using Acacia", Journal of Iranian Zoology, 21: 111-126. [In Persian].
4. Bhuiyan, M. A. H., Parvez, L., Islam, M. A., Dampare, S. B., Suzuki, Sh., (2010), "Heavy metal pollution of coal mine-affected agricultural soils in the northern part of Bangladesh", Journal of Hazardous Materials,173: 384-392. [DOI:10.1016/j.jhazmat.2009.08.085]
5. Delavar, M., Safari,Y., (2015), "Source Identification of heavy metals in soils surrounding the Zanjan zinc town by multivariate statistical techniques", Journal of Water and Soil, 29 (3): 627-637. [In Persian].
6. Feizi, H., Mosaferi, M., Dastgiri, S., Zolali, S., Pouladi, N., Azarfam, P., (2008), "Contamination of drinking water with arsenic and its various health effects in the Village of Ghopuz", Iranian journal of epidemiology, 3 (3): 21-27. [In Persian].
7. Gravand, M., Ghasemi, H., Hafezi Moghadas, N., (2012), "Geochemical and environmental analysis of heavy metals in the soils produced by the schists of Gorgan", Earth Science, 22 (86): 35-46. [In Persian].
8. Hese, S., Schmullius, C., (2008), "Object oriented oil spill contamination mapping in west siberia with Quick Bird data", Springer, Berlin, Heidelberg, New york.
9. Jahangiri, S., Janadeleh, H., (2016), "Study of contamination and risk assessment of heavy metal in fish (Otolithes ruber) and sediments from Persian Gulf", Journal of Community Health Research, 5 (3): 169-181. [In Persian].
10. Kabata-Pendias, A., Mukherjee, A. B., (2007), "Trace elements from soil to human", Springer Berlin Heidelberg: New York. [DOI:10.1007/978-3-540-32714-1]
11. Islam, M. S., Ahmad, M. K., Raknuzzaman, M. M., Mamun, M. H. A., (2015), "Heavy metal pollution in surface water and sediment: A preliminary assessment of an urban river in a devaloping contry", Ecological Indicators, 48: 282-291. [DOI:10.1016/j.ecolind.2014.08.016]
12. Liu, G., Yu, Y., Hou, J., Xue, W., Liu, X., Liu, Y., Wang, W., Alsaide, A., Hayat, T., Liu, Zh., (2014), "An ecological risk assessment of heavy metal pollution of the agricultural ecosystem near a lead-acid battery factory", Ecological Indicators, 47: 218-210. [DOI:10.1016/j.ecolind.2014.04.040]
13. Mehrmanesh, H., Pazhoohi, B., Fazlollahtabar, H., (2013), "Proposing a framework for performance improvement in a bi-direction multi-layer and multi-product supply chain using data mining", Journal of Management Science and Practice, 1 (1): 22-31. [In Persian].
14. Mousavi, E., Soffianian, A., Mirghafari, N., Khodakarami, L., (2012), "Investigation of spatial distribution of heavy metals in surface soil of hamadan province", Journal of Soil and water, 25: 323-336. [In Persian].
15. Muller, G., (1979), "Schwermetalle in densedimenten des Rheins Veranderungen seit", Umschau, 79 (24): 778-783.
16. Rastmanesh, F., Zarasvandi, A., Birgani, A. B., (2016), "Investigation of the impact of Abadan petrochemical complex and petroleum refinery on soil heavy metal and sulfur concentrations", Journal of advance applied geology, 17: 11-220. [In Persian].
17. Roodgarmi, P., Khorasani, N., Monavari, S., Noori, J., (2013), "Predication of environmental effects with satellite image and remote sensing", Journal of science and technology in Environment, 11 (1): 161-172. [In Persian].
18. Salem, F., Kafatos, M., El- Ghazawi, T., Gomes, R., Yang, R., (2005), "Hyperspectral image assessment of oil-contaminated wetland", International. Journal remote sensing, 26 (4): 811-821. [DOI:10.1080/01431160512331316883]
19. Shayestehfar, M., Rezaei, A., (2011), "Copper mine pollution rate and distribution of heavy metals using geochemical data and statistical analysis", Journal of Mining. Engineering, 6 (11): 34-25. [In Persian].
20. Smejkalova, E., Bujok, P., (2012), "Remote sensing methods in the identification of oil contaminations", GeoScience Engineering, 1: 33-24. [DOI:10.2478/v10205-011-0010-6]
21. Smejkalova, E., Bujok, P., (2015), "Data collection and spectral libraries oil contaminations, far east", Journal of electronics and communications, 14 (1):79-71. [DOI:10.17654/FJECMar2015_071_079]
22. Soleimani, B., Zarvani, A. S., (2010), "Lithological and petrophysical evaluation of the cap rock keybeds, Asmari reservoir of Pazanan oil field, Zagros, Iran", Sonklanakarin Journal of Science and Technology, 31 (6): 654- 655. [In Persian].
23. Van Der Meijde, M., knox, N. M., cundill, S. I., Noomen, M. F., Van Der Werff, h. M. A., Hecker, C., (2013), "Detection of hydrocarbons in clay soil: A laboratory experiment using spectroscopy in the mid- and thermal", International journal of applied earth observation and geoiformation, 23: 388-384. [DOI:10.1016/j.jag.2012.11.001]
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Application of Spot 5 Satellite image to Oil-contaminated soils Identification and statistical analyzes in Marun Oilfield – Khuzestan . جغرافیایی 2019; 19 (65) :299-317
URL: http://geographical-space.iau-ahar.ac.ir/article-1-2735-en.html


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