郑博福,刘海燕,吴汉卿,等. 中国农田磷流失风险评价及其关键驱动因素[J]. 农业工程学报,2024,40(2):332-343. DOI: 10.11975/j.issn.1002-6819.202308101
    引用本文: 郑博福,刘海燕,吴汉卿,等. 中国农田磷流失风险评价及其关键驱动因素[J]. 农业工程学报,2024,40(2):332-343. DOI: 10.11975/j.issn.1002-6819.202308101
    ZHENG Bofu, LIU Haiyan, WU Hanqing, et al. Risk assessment and key driving factors of phosphorus loss in farmland of China[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2024, 40(2): 332-343. DOI: 10.11975/j.issn.1002-6819.202308101
    Citation: ZHENG Bofu, LIU Haiyan, WU Hanqing, et al. Risk assessment and key driving factors of phosphorus loss in farmland of China[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2024, 40(2): 332-343. DOI: 10.11975/j.issn.1002-6819.202308101

    中国农田磷流失风险评价及其关键驱动因素

    Risk assessment and key driving factors of phosphorus loss in farmland of China

    • 摘要: 农田面源磷流失是农业面源污染的重要原因之一,识别流域内农田磷流失风险的关键源区及其影响因子是面源污染控制的重要手段。基于磷指数模型开展2000—2020年中国农田磷流失风险评估,选取土壤有效磷含量、磷肥施用量为源因子,土壤侵蚀模数、年径流深、农田和水体间归一化距离指数为迁移因子,结合GIS技术评估了中国农田磷流失的关键源区;在此基础上,利用随机森林法分析影响中国农田磷流失的关键因子,并通过结构方程模型揭示了农田磷流失风险指数与各因子的关系。结果表明:1)2000—2020年中国农田的磷流失的低、中、高、极高风险面积分别占农田总面积的43.8%、40.5%、13.4%、2.4%。2)中国农田磷流失在2000、2005、2010、2015、2020年高风险和极高风险总面积的年平均占比从大到小依次为:淮河流域、长江流域、珠江流域、东南诸河流域、松辽河流域、西南诸河流域、黄河流域、内陆河流域、海河流域。3)影响农田磷流失风险的关键源因子和迁移因子分别为土壤有效磷含量和归一化距离指数,其重要性特征值分别为129.53和65.12,土壤有效磷含量是农田磷流失最主要影响因子。4)磷流失风险指数与源因子指数、迁移因子指数呈极显著正相关,选取的14个指标对磷指数的解释度达0.62,其中源因子和迁移因子对磷指数的贡献率分别为0.77、0.19(P < 0.001)。研究结果可为中国农田磷流失风险评估提供科学参考,对中国农业面源污染的宏观防控及战略决策具有重要意义。

       

      Abstract: Non-point source phosphorus (P) loss from farmland is one of the most serious causes of agricultural non-point source pollution. It is very necessary to identify the critical source areas and influence factors for the risk of P loss from farmland in a watershed, in order to prevent non-point source pollution. The objective of this study was to assess the risk of P loss from farmland in China from 2000 to 2020. P index model was also used. Among them, the soil available P content and fertilizer-P application rate were selected as the source factors. The soil-erosion modulus, annual runoff depth, and the normalized differential distance index between farmland and river network were used as the transport factors. Additionally, the GIS technology was then combined to identify the critical source areas of P loss from farmland. Random Forest (RF) was utilized to derive the critical influencing factors on the P loss from farmland in China. Structural Equation Modeling (SEM) was constructed to explore the relationship between the P index and influencing factors. The results show that: 1) The low, medium, high, and very high-risk areas of P loss from 2000 to 2020 accounted for 43.8%, 40.5%, 13.4%, and 2.4% of the total area of farmland, respectively. 2) The annual average percentage of the total area at high and very high risk of P loss from farmland in 2000, 2005, 2010, 2015, and 2020 was ranked in the descending order: the Huaihe River Basin, Yangtze River Basin, Pearl River Basin, Southeast River Basin, Songhua and Liaohe River Basin, Southwest River Basin, Yellow River Basin, Continental River Basin, and Haihe River Basin. 3) The RF results showed that the available P content and normalized differential distance index were the critical influencing factors of the P index, whose importance eigenvalues were 129.53 and 65.12, respectively. The available P content was the critical influencing factor of the P loss from the farmland. 4) SEM images showed that the P index was extremely significantly positively correlated with the source and transport factor indexes. The P index of the 14 selected index factors amounted to 0.62, in which the contribution rates of the source factor and the migration factor to the P index were 0.77 and 0.19, respectively (P<0.001). In conclusion, the findings can provide scientific references for the evaluation of non-point source pollution in farmland. It is of great significance for the decision-making on the prevention and control of agricultural surface pollution.

       

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