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首页> 外文期刊>Environmental earth sciences >Soil water-salt dynamics state and associated sensitivity factors in an irrigation district of the loess area: a case study in the Luohui Canal Irrigation District, China
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Soil water-salt dynamics state and associated sensitivity factors in an irrigation district of the loess area: a case study in the Luohui Canal Irrigation District, China

机译:黄土灌区土壤水盐动态及相关敏感性因子研究-以洛回渠灌区为例。

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摘要

Soil salinisation determines the distribution pattern of crop processes in irrigation districts. The research presented here was conducted in the Luohui Canal Irrigation District, which is located in the loess area of Shaanxi Province, China. A back-propagation artificial neural network (BPANN) for the soil water-salt state was established to predict soil salinity and alkalinity. The degree of influence of numerous factors on the dynamics was quantitatively determined using the default factor testing method and verified with grey relational analysis. The results show that the BPANN prediction accuracy is very high, and it can efficiently depict the comprehensive relationships between the influential factors and dynamic states. The influence of soil moisture, evaporation, groundwater salt and groundwater depth on the dynamics is significant in the region. The current irrigation method, used for many years, cannot meet the water necessities for the vegetation, causing the groundwater levels to decline and a lowering of the soil moisture zone, leading to the occurrence of serious soil salinisation. Under the action of evaporation, more salt accumulates in the upper part of the soil, resulting in extensive soil salinisation. The higher the groundwater salt content, the more salt is carried by rising capillary water, and the more the soil is salinised. If groundwater depth was to exceed the critical water table, then groundwater and salt would move to the soil surface by moisture evaporation, and salt would build up on the soil surface in this irrigation district. The interactions between each factor forms a complex coupling relationship state.
机译:土壤盐渍化决定了灌溉区作物生产过程的分布方式。此处介绍的研究是在位于中国陕西省黄土地区的hui回渠灌区进行的。建立了土壤水盐状态的反向传播人工神经网络(BPANN),以预测土壤的盐度和碱度。使用默认因子测试方法定量确定多种因素对动力学的影响程度,并通过灰色关联分析进行验证。结果表明,BPANN预测精度很高,可以有效地描述影响因素与动态状态之间的综合关系。该地区土壤水分,蒸发,地下水盐和地下水深度对动力学的影响很大。目前使用的灌溉方法已经使用了很多年,不能满足植被的水需要,导致地下水位下降和土壤湿度降低,导致严重的土壤盐碱化。在蒸发作用下,更多的盐累积在土壤的上部,导致土壤盐碱化。地下水中的盐分含量越高,上升的毛细水带走的盐分越多,土壤的盐碱化程度也越高。如果地下水深度超过临界水位,则地下水和盐分会因水分蒸发而流到土壤表层,盐分会在该灌溉区积聚。每个因素之间的相互作用形成一个复杂的耦合关系状态。

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