应用地统计学方法表征乌尔米亚湖流域土壤盐分空间变异特征

Taha Gorji, Aylin Yildirim, N. Hamzehpour, Elif Sertel, A. Tanik
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引用次数: 0

摘要

盐碱化导致的土地退化是威胁土壤可持续性的主要环境危害之一,特别是在世界上降水少、蒸发量高的干旱和半干旱地区。近二十年来,地理统计方法和遥感技术提供了快速、准确和经济的土壤盐度预测和制图。利用卫星影像获取不同空间域、不同尺度的多时相数据是土壤盐分空间变异性监测的关键发展之一。此外,地质统计方法具有从有限样本数据生成预测面的能力。本研究旨在利用地统计学方法,对伊朗乌尔米米亚湖盆西部试验区土壤盐分空间分布进行研究。以电导率(EC)测量值为主要变量,以三种不同的土壤盐度指数值为次要变量,绘制了基于克里格的地图和三种不同的共同克里格地图。利用同一野外测量日期获取的Sentinel-2A影像,建立3个土壤盐分指数,生成3个不同的土壤盐分预测图。通过比较和验证地质统计方法获得的盐度图,了解这些方法在土壤盐度预测方面的性能。研究结果表明,当有相关且丰富的卫星影像二次数据时,共同克里格法可以提供有希望的土壤盐分空间变异性估计。
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Characterizing the spatial variability of soil salinity in Lake Urmia Basin by applying geo-statistical methods
Land degradation by salinity is one of the main environmental hazards threatening soil sustainability especially in arid and semi-arid regions of the world characterized by low precipitation and high evaporation. Geo-statistical approaches and remote sensing (RS) techniques have provided fast, accurate and economic prediction and mapping of soil salinity within the last two decades. Obtaining multi-temporal data via satellite images in different spatial domains with various scales is one of the key developments of monitoring spatial variability of soil salinity. In addition, geo-statistical methods have the capability of producing prediction surfaces from limited sample data. This study aims to map spatial distribution of soil salinity in the selected pilot area which is located in the western part of Urmia Lake Basin, Iran, by applying geo-statistical methods. A kriging based map and three different co-kriging based maps were produced using electrical conductivity (EC) measurements as primary variable and three different soil salinity index values as secondary variable. Three soil salinity indices were created by using Sentinel-2A image that were acquired in the same date of field measurements to generate 3 various soil salinity prediction maps. Salinity maps obtained from geo-statistical methods were compared and validated to understand the performance of these approaches for soil salinity prediction. The results of this study demonstrated that co-kriging can provide promising estimation of spatial variability of soil salinity especially when there is relevant and abundant set of secondary data derived from satellite images.
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