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首页> 外文期刊>Journal of Hydrology >Using machine learning models, remote sensing, and GIS to investigate the effects of changing climates and land uses on flood
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Using machine learning models, remote sensing, and GIS to investigate the effects of changing climates and land uses on flood

机译:使用机器学习模型,遥感和GIS调查变化气候和土地使用对洪水的影响

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摘要

The purpose of this study is to investigate the effects of climate and land use changes on flood susceptibility areas in the Tajan watershed, Iran. To do this, land use changes over the next 20 years (2019-2040) were predicted from land use changes of the past 29 years (1990-2019) using the land change modeler (LCM) method. Future climate change was projected for the next 20 years (2020-2040) based on climate data from 1990 to 2015 using Lars-WG software and two scenarios, RCP2.6 and RCP8.5. Twelve factors that influence flooding and 262 locations of past floods were used to model the spatial pattern of flood susceptibility in the watershed. A random forest (RF) model and a Bayesian generalized linear model (GLMbayes) were used to predict areas susceptible to flooding. The results showed that elevation (21.55), distance from river (15.28), land use (11.1), slope (10.58), and rainfall (6.8) are the most important factors affecting flooding in this basin. The factors were modified according to land use changes and climate changes and the models were revised. The land use and climate forecasting in this region indicate that land use change, like decreased forest cover (77.19 km(2)) and reduced rangeland (218.83 km(2)) near rivers and downstream, can be expected and rainfall is projected to increase (under from both scenarios). These changes would result in increased probabilities of flooding in the downstream portion of the watershed and near the sea. The area-under-the-curve evaluation of the models indicates that the RF model more accurately predicted flood probability (0.91) than did the GLMbayes model (0.847).
机译:本研究的目的是调查气候和土地利用变化对伊朗塔詹流域洪水易发区的影响。为此,使用土地变化建模器(LCM)方法,根据过去29年(1990-2019)的土地利用变化预测未来20年(2019-2040)的土地利用变化。根据1990年至2015年的气候数据,使用Lars WG软件和两种情景RCP2,预测了未来20年(2020-2040年)的气候变化。6和RCP8。5.12个影响洪水的因素和262个过去洪水的位置被用来模拟流域洪水敏感性的空间格局。使用随机森林(RF)模型和贝叶斯广义线性模型(GLMbayes)预测易受洪水影响的区域。结果表明,海拔(21.55)、距河距离(15.28)、土地利用(11.1)、坡度(10.58)和降雨量(6.8)是影响该流域洪水的最重要因素。根据土地利用变化和气候变化对因子进行了修正,并对模型进行了修正。该地区的土地利用和气候预测表明,土地利用变化,如河流附近和下游的森林覆盖减少(77.19 km(2))和牧场减少(218.83 km(2)),是可以预期的,并且降雨预计会增加(根据这两种情况)。这些变化将导致流域下游和附近海域发生洪水的可能性增加。模型的曲线下面积评估表明,RF模型比GLMbayes模型(0.847)更准确地预测洪水概率(0.91)。

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