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Assessing impact of land uses on land salinization in the Yellow River Delta, China using an integrated and spatial statistical model.

机译:使用综合和空间统计模型评估中国黄河三角洲土地利用对土地盐碱化的影响。

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摘要

Intensification of agriculture and industry in salinized areas poses a risk of secondary salinization. Thus, comprehensive and spatially explicit assessments are needed to assist government in developing ecologically sound policies. Few assessments have comprehensively quantified the impacts of multiple anthropogenic activities on salinization as environmental interferences and salinity autocorrelation are largely neglected. This study tried to perform such an assessment by identifying the nature of human impacts on salinization from three aspects in the Yellow River Delta (YRD) of China. A versatile GIS-based spatial autoregression (SAR) was applied to nine selected explainable variables in six sub-region models. Sub-region model was verified as an effective tool of normalizing environmental interferences because more useful spatial information was provided compared to the whole region model. GIS-SAR model fit better and performed better in quantifying human activities, compared to the conventional ordinary least square regression (OLSR) model, as SAR can deal with spatial autocorrelation in soil salinity. Among the well-defined key determinants, oil exploitation and saline aquaculture were aggregative to salinization but only in originally highly saline sub-regions, such as coastal zone and Gleyic Solonchaks (coastal saline moisture soil) area. Two agricultural activities, crop plantation and fertilization, were mainly ameliorators in most sub-regions. The most effective salinization alleviation occurred in moderately saline sub-regions, such as floodplain and Salic Fluvisols (saline moisture soil) area, which benefitted from the development of agroforests and farm ponds. The SAR sub-region model is spatially explicit for spotting the hazardous areas and some suggestions were also provided for the policy makers.
机译:盐碱化地区的农业和工业集约化具有二次盐碱化的风险。因此,需要进行全面和空间明确的评估,以协助政府制定对生态无害的政策。很少有评估能够全面量化多种人为活动对盐碱化的影响,因为很大程度上忽略了环境干扰和盐度自相关。这项研究试图通过从中国黄河三角洲(YRD)的三个方面确定人类对盐碱化影响的性质来进行这种评估。将通用的基于GIS的空间自回归(SAR)应用于六个子区域模型中的九个选定的可解释变量。子区域模型被证明是归一化环境干扰的有效工具,因为与整个区域模型相比,它提供了更多有用的空间信息。与常规的普通最小二乘回归(OLSR)模型相比,GIS-SAR模型在拟合人类活动方面更合适,并且表现更好,因为SAR可以处理土壤盐分的空间自相关。在明确定义的关键决定因素中,石油开采和盐水养殖对盐碱化有影响,但仅在最初高度盐分的区域,例如沿海地区和Gleyic Solonchaks(沿海盐分潮湿的土壤)区域。在大多数次区域中,两种农业活动,即作物种植和施肥,主要是改善措施。最有效的盐碱化缓解发生在中等盐分地区,例如洪泛区和Salic Fluvisols(盐湿土壤)地区,得益于农林和农田池塘的发展。 SAR分区模型在空间上明确了危险区域的位置,并为决策者提供了一些建议。

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