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首页> 外文期刊>Journal of Hydrology >Estimating monthly (R)USLE climate input in a Mediterranean region using limited data
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Estimating monthly (R)USLE climate input in a Mediterranean region using limited data

机译:使用有限的数据估算地中海地区的每月(R)USLE气候输入

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This work presents three empirical models (MMFI, Morais Modification of Fournier Index; GJRM, Grimm-Jones-Rusco-Montanarella; REMDB, Diodato-Bellocchi Rainfall-Erosivity Model) where monthly-based climate data are used to estimate long-term (R)USLE (Universal Soil Loss Equation and its Revisions) rainfall erosivity factor (R-m, MJ mm h(-1) ha(-1) month(-1)). The objective was to evaluate two known models (MMFI and GJRM), and compare the results with the novel model REMDB meant for complex terrains. MMFI and GJRM are both based on the precipitation amount, whilst REMDB takes site latitude, elevation and precipitation seasonality also into account. The test area was the Italian region, where 30 stations (attitudes from about sea Level up to 1270 m, over the latitudinal range 36-46 degrees North) with sufficient data to calculate Rm according to USLE were available. The three models were evaluated against USLE rainfall erosivity over a validation data set of 14 stations, using a range of performance statistics. The REMDB estimates generally compared well with the USLE estimates according to different statistics. For REMDB, the relative root mean square error was, in average, 48.58% against 71.49% for MMFI and 66.55% for GJRM. The average modelling efficiency of REMDB was 0.51 against -0.02 (MMFI) and 0.13 (GJRM). REMDB was also superior in preventing biased errors in time, as quantified by the average pattern index versus months: 17.65 MJ mm h(-1) ha(-1) month(-1), against 58.54 MJ mm h(-1) ha(-1) month(-1) (MMFI) and 57.76 MJ mm h(-1) ha(-1) month(-1) (GJRM). Of the two simplified models, the MMFI was the worst performer while the GJRM model performed similarly to the REMDB at two mid-attitude sites of Central Italy. (C) 2007 Elsevier B.V. All rights reserved.
机译:这项工作提出了三个经验模型(MMFI,傅里叶指数的莫赖斯修正; GJRM,Grimm-Jones-Rusco-Montanarella; REMDB,Diodato-Bellocchi降雨-侵蚀率模型),其中基于月的气候数据用于估算长期(R USLE(通用土壤流失方程及其修订)降雨侵蚀力因子(Rm,MJ mm h(-1)ha(-1)month(-1))。目的是评估两个已知模型(MMFI和GJRM),并将结果与​​适用于复杂地形的新颖模型REMDB进行比较。 MMFI和GJRM均基于降水量,而REMDB也考虑了地点的纬度,海拔和降水季节。测试区域是意大利地区,这里有30个站(海拔高度约1270 m,北纬36-46度),具有足够的数据来根据USLE计算Rm。使用一系列性能统计数据,通过14个站的验证数据集,针对USLE降雨侵蚀力对这三个模型进行了评估。根据不同的统计数据,REMDB的估算值通常与USLE的估算值可以很好地比较。对于REMDB,相对均方根误差平均为48.58%,而MMFI为71.49%,GJRM为66.55%。 REMDB的平均建模效率是0.51对-0.02(MMFI)和0.13(GJRM)。 REMDB在防止时间偏差方面也表现出色,如通过平均模式指数相对于月份进行量化:17.65 MJ mm h(-1)ha(-1)month(-1)相对于58.54 MJ mm h(-1)ha (-1)month(-1)(MMFI)和57.76 MJ mm h(-1)ha(-1)month(-1)(GJRM)。在这两个简化模型中,MMFI的表现最差,而GJRM模型在意大利中部的两个中等高度地点的表现与REMDB相似。 (C)2007 Elsevier B.V.保留所有权利。

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