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Research on factors analysis model of dualistic soil salinization sensitivity in typical northwestern arid area

机译:典型西北干旱区二元土壤盐渍化敏感性因子分析模型研究

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Soil secondary salinization is one of the typical ecological side effects caused by land and water resources development in northwestern arid China. Factors that affect the occurrences and developments of salinization come from both natural conditions and human activities. Research on the mechanisms of salinization, build dynamic prediction model of salt accumulation and analyze sensitivities to different factors would supply effective references to the prediction and prevention of soil salinization. It is well known that related factors are always intertexture together, affecting each other, which result in multivariable, nonlinear and overall influences that work on the process of soil salinization. Artificial intelligence technologies may play important role in this domain. In this paper, genetic artificial neural network based model is built to simulate and evaluate soil salt accumulation and sensitivity of soil salinization. Example is taken from the Shule River watershed, typical arid area in northwestern China. Basic data of June 2000 are prepared depending on GIS and Remote Sensing. Precipitations, evaporations, groundwater levels, groundwater chemical analysis data and soil accumulation data are achieved and interpolated in the research area. Slope of the land are derived from DEM, MODIS images are used in the process of dealing with land use information. At the same time, landform and soil type are considered in model building. Soil salt accumulation is analyzed with its 8 influenced factors with verified models. Results showing that groundwater TDS is the most sensitive factor followed by groundwater level, evaporation and the depth of upper bed of clay. In most cases clay layers play key roles in soil salt accumulation, precipitation and slop have similar sensitivities. Results would have better research and application value in arid areas of northwestern China.
机译:土壤次生盐渍化是西北干旱地区土地和水资源开发造成的典型生态副作用之一。影响盐碱化发生和发展的因素来自自然条件和人类活动。研究盐渍化机理,建立盐分累积动态预测模型,分析对不同因素的敏感性,为土壤盐渍化的预测和防治提供有效的参考。众所周知,相关因素总是相互交织在一起,相互影响,从而导致对土壤盐渍化过程起作用的多变量,非线性和整体影响。人工智能技术可能在这一领域发挥重要作用。本文建立了基于遗传人工神经网络的模型来模拟和评估土壤盐分的积累和盐渍化的敏感性。以中国西北地区典型的干旱地区疏勒河流域为例。根据GIS和遥感准备了2000年6月的基本数据。在研究区获得并插值了降水,蒸发量,地下水位,地下水化学分析数据和土壤积累数据。土地的坡度来自DEM,在处理土地利用信息的过程中使用了MODIS图像。同时,在模型构建中要考虑地形和土壤类型。通过验证模型分析了土壤盐分累积的8个影响因素。结果表明,地下水TDS是最敏感的因素,其次是地下水位,蒸发量和粘土上层深度。在大多数情况下,黏土层在土壤盐分的积累,降水和边坡中起着关键作用,它们具有相似的敏感性。研究结果在西北干旱地区具有较好的研究和应用价值。

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