...
首页> 外文期刊>Journal of Hydrology >Models for estimating daily rainfall erosivity in China
【24h】

Models for estimating daily rainfall erosivity in China

机译:中国日降雨侵蚀力的估算模型

获取原文
获取原文并翻译 | 示例
           

摘要

The rainfall erosivity factor (R) represents the multiplication of rainfall energy and maximum 30 min intensity by event (EI30) and year. This rainfall erosivity index is widely used for empirical soil loss prediction. Its calculation, however, requires high temporal resolution rainfall data that are not readily available in many parts of the world. The purpose of this study was to parameterize models suitable for estimating erosivity from daily rainfall data, which are more widely available. One-minute resolution rainfall data recorded in sixteen stations over the eastern water erosion impacted regions of China were analyzed. The R-factor ranged from 781.9 to 8258.5 MJ mm ha(-1) h(-1) y(-1). A total of 5942 erosive events from one-minute resolution rainfall data of ten stations were used to parameterize three models, and 4949 erosive events from the other six stations were used for validation. A threshold of daily rainfall between days classified as erosive and non-erosive was suggested to be 9.7 mm based on these data. Two of the models (I and II) used power law functions that required only daily rainfall totals. Model I used different model coefficients in the cool season (Oct.-Apr.) and warm season (May-Sept.), and Model II was fitted with a sinusoidal curve of seasonal variation. Both Model I and Model II estimated the erosivity index for average annual, yearly, and half-month temporal scales reasonably well, with the symmetric mean absolute percentage error MAPE(sym) ranging from 10.8% to 32.1%. Model II predicted slightly better than Model I. However, the prediction efficiency for the daily erosivity index was limited, with the symmetric mean absolute percentage error being 68.0% (Model I) and 65.7% (Model II) and Nash-Sutcliffe model efficiency being 0.55 (Model I) and 0.57 (Model II). Model III, which used the combination of daily rainfall amount and daily maximum 60-min rainfall, improved predictions significantly, and produced a Nash-Sutcliffe model efficiency for daily erosivity index prediction of 0.93. Thus daily rainfall data was generally sufficient for estimating annual average, yearly, and half-monthly time scales, while sub daily data was needed when estimating daily erosivity values. (C) 2016 Elsevier B.V. All rights reserved.
机译:降雨侵蚀力因子(R)表示降雨能量与事件(EI30)和年份的最大30分钟强度的乘积。该降雨侵蚀力指数被广泛用于经验性土壤流失预测。然而,其计算需要世界上许多地方不容易获得的高时间分辨率降雨数据。这项研究的目的是参数化适合于根据每日降雨数据估算侵蚀力的模型,该模型可广泛使用。分析了在中国东部水蚀影响地区的16个气象站记录的一分钟分辨率降雨数据。 R因子范围从781.9到8258.5 MJ mm ha(-1)h(-1)y(-1)。来自十个站点的一分钟分辨率降雨数据中的总共5942个侵蚀事件被用于参数化三个模型,而来自其他六个站点的4949个侵蚀事件被用于验证。根据这些数据,在分为侵蚀性和非侵蚀性两天之间的每日降雨量阈值建议为9.7 mm。其中两个模型(I和II)使用幂律函数,这些函数仅需要每日总降雨量。模型I在凉爽的季节(10月至4月)和温暖的季节(5月至9月)使用了不同的模型系数,模型II则拟合了季节性变化的正弦曲线。模型I和模型II都相当合理地估计了平均年度,年度和半个月时间尺度的侵蚀指数,对称平均绝对百分比误差MAPE(sym)的范围为10.8%至32.1%。模型II的预测略好于模型I。但是,每日侵蚀力指数的预测效率受到限制,对称平均绝对百分比误差为68.0%(模型I)和65.7%(模型II),而Nash-Sutcliffe模型效率为0.55(模型I)和0.57(模型II)。结合每日降雨量和每日最大60分钟降雨量的模型III,显着改善了预测,并产生了Nash-Sutcliffe模型的效率,其每日侵蚀指数为0.93。因此,每日降雨量数据通常足以估算年度平均,年度和半月时间尺度,而估算每日侵蚀力值时则需要次日数据。 (C)2016 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号