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首页> 外文期刊>Ecological indicators >Monitoring soil salinity via remote sensing technology under data scarce conditions: A case study from Turkey
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Monitoring soil salinity via remote sensing technology under data scarce conditions: A case study from Turkey

机译:在数据匮乏的情况下通过遥感技术监测土壤盐分:来自土耳其的案例研究

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摘要

Due to its negative impacts on land productivity and plant growth, soil salinization is a significant problem particularly in arid and semi-arid regions of the world. Among the natural factors of soil salinization, parent materials including high amount of salts and minerals in soil structure, known as primary salinization, can be addressed. Conventional irrigation techniques and poor drainage systems are predominant human-induced activities that result in secondary salinization. Countries with especially dryland environment, face difficulty in providing adequate food for their rapidly increasing population since each year lots of cultivated land are abandoned due to adverse effects of primary and secondary soil salinization. Therefore, monitoring, mapping and predicting soil salinization is of utmost importance regarding lessening and/or preventing further increase in soil salinity through some protective measures. The subject of concern becomes even more pronounced particularly in agricultural lands as is the case in the vicinity of Tuz (Salt) Lake Region in Turkey. This research focuses mainly on multi-temporal monitoring of Tuz Lake Region in order to track changes in areas of salty spots in years 1990, 2002, 2006, 2011 and 2015. A total number of 25 Landsat-5 TM and Landsat-8 images obtained between 1990 and 2015 were analysed in this study. Field electrical conductivity (EC) measurements for 322 soil samples in year 2002 were checked; and 28 of these samples were selected for generating salinity maps representing areas in the vicinity of the lake. All satellite images were radiometrically and atmospherically corrected prior to classification. Following the pre-processing step, five soil salinity indices were applied on all satellite images. 28 soil samples were then overlaid on images in order to extract the exact index values related to soil samples and regression approach was used to relate satellite image-derived salinity indices and field measurements. Linear and exponential regression analyses were conducted separately as the next step for all indices based on data gathered in 2002. Salinity index (SI) 1 = B-147B showed the best result with R2 value of 0.93 and 0.83 for exponential and linear regression analysis, respectively. Salinity maps for years 1990, 2006, 2011 and 2015 were further produced utilizing the exponential and linear regression expressions attained for year 2002. Besides, this study detected land cover changes in the area from year 2000-2006, and from 2006 to 2012 by using CORINE land cover data to analyse the possible relationships between land cover change and salinity changes. (C) 2016 Elsevier Ltd. All rights reserved.
机译:由于其对土地生产力和植物生长的负面影响,土壤盐碱化是一个重大问题,尤其是在世界干旱和半干旱地区。在土壤盐渍化的自然因素中,可以解决母体材料(包括土壤结构中大量盐和矿物质)的问题,即所谓的主要盐渍化。传统的灌溉技术和排水系统差是导致人为盐碱化的主要人类活动。干旱地区尤其如此的国家面临着为其迅速增长的人口提供充足食物的困难,因为每年由于主要和次要土壤盐渍化的不利影响而放弃了许多耕地。因此,对于通过某些保护措施减少和/或防止土壤盐分进一步增加而言,监测,测绘和预测土壤盐分化至关重要。尤其是在农业土地上,令人关注的问题变得尤为突出,就像土耳其的图兹(盐)湖地区附近的情况一样。这项研究主要集中在图兹湖地区的多时相监测,以追踪1990、2002、2006、2011和2015年的咸斑区域变化。共获得25张Landsat-5 TM和Landsat-8图像本研究分析了1990年至2015年之间的收入。检查了2002年对322个土壤样品的现场电导率(EC)测量结果;从这些样本中选择了28个,以生成代表湖附近区域的盐度图。在分类之前,对所有卫星图像进行了辐射和大气校正。在预处理步骤之后,将五个土壤盐度指数应用于所有卫星图像。然后将28个土壤样品覆盖在图像上,以提取与土壤样品相关的确切指标值,并使用回归方法将卫星图像衍生的盐度指标与田间测量结果相关联。下一步,根据2002年收集的数据,对所有指数分别进行线性和指数回归分析。盐度指数(SI)1 = B-147B显示出最佳的指数和线性回归分析结果,R2值分别为0.93和0.83,分别。利用2002年获得的指数和线性回归表达式进一步绘制了1990年,2006年,2011年和2015年的盐度图。此外,本研究还利用2000年至2006年以及2006年至2012年的土地覆盖率变化来检测CORINE土地覆盖数据可分析土地覆盖变化与盐度变化之间的可能关系。 (C)2016 Elsevier Ltd.保留所有权利。

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