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Tree-based modeling of complex interactions of phosphorus loadings and environmental factors

机译:基于树的磷负荷与环境因素复杂相互作用的建模

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摘要

Phosphorus (P) enrichment has been observed in the historic oligotrophic Greater Everglades in Florida mainly due to P influx from upstream, agriculturally dominated, low relief drainage basins of the Everglades Agricultural Area (EAA). Our specific objectives were to: (1) investigate relationships between various environmental factors and P loads in 10 farm basins within the EAA, (2) identify those environmental factors that impart major effects on P loads using three different tree-based modeling approaches, and (3) evaluate predictive models to assess P loads. We assembled thirteen environmental variable sets for all 10 sub-basins characterizing water level management, cropping practices, soils, hydrology, and farm-specific properties. Drainage flow and P concentrations were measured at each sub-basin outlet from 1992-2002 and aggregated to derive monthly P loads. We used three different tree-based models including single regression trees (ST), committee trees in Bagging (CTb) and ARCing (CTa) modes and ten-fold cross-validation to test prediction performances. The monthly P loads (MPL) during the monitoring period showed a maximum of 2528 kg (mean: 103 kg) and maximum monthly unit area P loads (UAL) of 4.88 kg P ha~(-1) (mean: 0.16 kg P ha~(-1)). Our results suggest that hydrologic/water management properties are the major controlling variables to predict MPL and UAL in the EAA. Tree-based modeling was successful in identifying relationships between P loads and environmental predictor variables on 10 farms in the EAA indicated by high R~2 (>0.80) and low prediction errors. Committee trees in ARCing mode generated the best performing models to predict P loads and P loads per unit area. Tree-based models had the ability to analyze complex, non-linear relationships between P loads and multiple variables describing hydrologic/water management, cropping practices, soil and farm-specific properties within the EAA.
机译:在佛罗里达州历史上的贫营养化大沼泽地中观察到了磷(P)富集,这主要是由于从大沼泽地农业区(EAA)的农业主导的低排放流域上游的磷流入。我们的具体目标是:(1)研究EAA内10个农业流域中各种环境因素与P负荷之间的关系,(2)使用三种不同的基于树的建模方法确定那些对P负荷产生重大影响的环境因素,以及(3)评估预测模型以评估P负荷。我们为所有10个子流域组装了13个环境变量集,以表征水位管理,耕作方法,土壤,水文和特定于农场的特性。从1992年至2002年,在每个子流域出口处测量排水流量和P浓度,并将其汇总以得出P每月负荷。我们使用了三种不同的基于树的模型,包括单回归树(ST),Bagging(CTb)和ARCing(CTa)模式的委员会树以及十倍交叉验证来测试预测性能。监测期间的每月P负荷(MPL)最高为2528 kg(平均:103千克),最大每月单位面积P负荷(UAL)为4.88 kg P ha〜(-1)(平均:0.16 kg P ha 〜(-1))。我们的结果表明,水文/水管理属性是预测EAA中MPL和UAL的主要控制变量。基于树的建模成功地识别了高R〜2(> 0.80)和低预测误差所指示的EAA中10个农场的P负荷与环境预测变量之间的关系。 ARCing模式下的委员会树生成了性能最佳的模型,以预测P载荷和每单位面积的P载荷。基于树的模型能够分析P负荷与多个变量之间的复杂非线性关系,这些变量描述了EAA中的水文/水管理,耕作实践,土壤和农场特定属性。

著录项

  • 来源
    《Science of the total environment》 |2009年第12期|3772-3783|共12页
  • 作者单位

    Soil and Water Science Department, University of Florida, McCarty Hall 2169, Gainesville, Fl 32611, United States;

    Soil and Water Science Department, University of Florida, McCarty Hall 2169, Gainesville, Fl 32611, United States Everglades Research and Education Center, University of Florida, Belle Glade, Fl, 33430, United States;

    Everglades Research and Education Center, University of Florida, Belle Glade, Fl, 33430, United States;

    South Florida Water Management District, West Palm Beach, Fl 33411, United States;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    phosphorus; phosphorus loads; water quality; regression trees; committee trees; everglades agricultural area;

    机译:磷;磷负荷水质;回归树;委员会树;大沼泽地农业区;
  • 入库时间 2022-08-17 13:57:13

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