Combining remote sensing and modeling approaches to assess soil salinity in irrigated areas of the Aral Sea Basin

Mirzakhayot Ibrakhimov, Usman Khalid Awanb, M. Sultanov, A. Akramkhanov, Kakhramon Djumaboev, C. Conrad, J. Lamers
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引用次数: 2

Abstract

Accurate assessment of the soil salinization is an important step for mitigation of agricultural land degradation. Remote sensing (RS) is widely used for salinity assessment, but knowledge on prediction precision is lacking. A RS-based salinity assessment in Khorezm allows for modest reliable prediction with weak (R2=0.15–0.29) relationship of the salinity maps produced with RS and interpolation of electromagnetic EM38 during growth periods and more reliable (R2=0.35–0.56) beyond irrigation periods. Modeling with HYDRUS-1D at slightly, moderately and highly saline sites at various depths showed that irrigation forces salts to move to deeper layers: salts reappear in the upper profile during dry periods. Beyond irrigation events, salts gradually accumulated in the upper soil layers without fluctuations. Coupling RS techniques with numerical modeling provided better insight into salinity dynamics than any of these approaches alone. This should be of interest to farmers and policy makers since the combination of methods will allow for better planning and management.
咸海盆地灌区土壤盐碱度遥感与模拟相结合评价
准确评估土壤盐碱化是缓解农业用地退化的重要步骤。遥感在盐度评估中应用广泛,但对预测精度的认识还很欠缺。在Khorezm,基于RS的盐度评估允许适度可靠的预测,在生长期使用RS和电磁EM38插值生成的盐度图之间的关系较弱(R2= 0.15-0.29),在灌溉期之后更可靠(R2= 0.35-0.56)。利用HYDRUS-1D在不同深度的轻度、中度和高盐点进行建模表明,灌溉迫使盐向更深的层移动:盐在干旱期重新出现在上部剖面。在灌溉事件之外,盐逐渐在上层土壤中积累,没有波动。将RS技术与数值模拟相结合,可以比单独使用这些方法更好地了解盐度动态。这应该引起农民和决策者的兴趣,因为这些方法的结合将有助于更好地规划和管理。
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