首页> 外文期刊>International Journal of Distributed Sensor Networks >Evaluation of Annual Rainfall Erosivity Index Based on Daily, Monthly, and Annual Precipitation Data of Rainfall Station Network in Southern Taiwan
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Evaluation of Annual Rainfall Erosivity Index Based on Daily, Monthly, and Annual Precipitation Data of Rainfall Station Network in Southern Taiwan

机译:基于台湾南部雨量站网日,月和年降水量数据的年降雨侵蚀力指数评估

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The erosivity factor in the universal soil loss equation (USLE) provides an effective means of evaluating the erosivity power of rainfall. The present study proposes three regression models for estimating the erosivity factor based on daily, monthly, and annual precipitation data of rainfall station network, respectively. The validity of the proposed models is investigated using a dataset consisting of 16,560 storm events monitored by 55 rainfall stations in southern Taiwan. The results show that, for 49 of the 55 stations, a strong positive correlation(r2>0.5)exists between the annual rainfall amount and the annual rainfall erosivity factor. In other words, the estimation model based on the annual precipitation data provides a reliable means of predicting the long-term annual rainfall erosivity in southern Taiwan. Furthermore, the root mean square error (RMSE) and mean absolute percentage error (MAPE) analysis results show that the estimation models based on annual and monthly precipitation data have a more accurate prediction performance than that based on daily precipitation data.
机译:通用土壤流失方程(USLE)中的侵蚀因子提供了一种评估降雨侵蚀力的有效手段。本研究提出了三种回归模型,分别基于雨量站网的日,月和年降水量数据估算侵蚀力因子。利用由台湾南部55个降雨站监测的16,560个暴风雨事件组成的数据集,研究了所提出模型的有效性。结果表明,在55个站点中,有49个站点的年降水量与年侵蚀力因子之间存在很强的正相关(r2> 0.5)。换句话说,基于年降水量数据的估算模型为预测台湾南部长期年降雨侵蚀力提供了可靠的手段。此外,均方根误差(RMSE)和绝对绝对百分比误差(MAPE)分析结果表明,基于年和月降水量数据的估计模型比基于每日降水量数据的估计模型具有更准确的预测性能。

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