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首页> 外文期刊>Arabian journal of geosciences >Surface runoff prediction regarding LULC and climate dynamics using coupled LTM, optimized ARIMA, and GIS-based SCS-CN models in tropical region
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Surface runoff prediction regarding LULC and climate dynamics using coupled LTM, optimized ARIMA, and GIS-based SCS-CN models in tropical region

机译:关于Lulc和气候动力学的表面径流预测使用耦合LTM,优化的Arima和热带地区的GIS基SCS-CN模型

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摘要

The effects of climate and land use/land cover (LULC) dynamics have directly affected the surface runoff and flooding events. Hence, current study proposes a full-packaged model to monitor the changes in surface runoff in addition to forecast of the future surface runoff based on LULC and precipitation variations. On one hand, six different LULC classes were extracted from Spot-5 satellite image. Conjointly, land transformation model (LTM) was used to detect the LULC pixel changes from 2000 to 2010 as well as predict the 2020 ones. On the other hand, the time series-autoregressive integrated moving average (ARIMA) model was applied to forecast the amount of rainfall in 2020. The ARIMA parameters were calibrated and fitted by latest Taguchi method. To simulate the maximum probable surface runoff, distributed soil conservation service-curve number (SCS-CN) model was applied. The comparison results showed that firstly, deforestation and urbanization have been occurred upon the given time, and they are anticipated to increase as well. Secondly, the amount of rainfall has non-stationary declined since 2000 till 2015 and this trend is estimated to continue by 2020. Thirdly, due to damaging changes in LULC, the surface runoff has been also increased till 2010 and it is forecasted to gradually exceed by 2020. Generally, model calibrations and accuracy assessments have been indicated, using distributed-GIS-based SCS-CN model in combination with the LTM and ARIMA models are an efficient and reliable approach for detecting, monitoring, and forecasting surface runoff.
机译:气候和土地使用/陆地覆盖(LULC)动态的影响直接影响了地表径流和洪水事件。因此,目前的研究提出了一种全包模型,以监测除了基于LULC和降水变化的未来表面径流之外的表面径流的变化。一方面,从Spot-5卫星图像中提取六种不同的LULC类。结合地,使用陆地转换模型(LTM)从2000到2010的Lulc像素改变,以及预测2020岁。另一方面,应用时间序列 - 自回归综合移动平均(ARIMA)模型预测2020年的降雨量。校准ARIMA参数并通过最新的TAGUCHI方法安装。为了模拟最大可能的表面径流,应用了分布式土壤保护服务曲线数(SCS-CN)模型。比较结果表明,首先,在给定的时间内已经发生了砍伐和城市化,并预计它们也会增加。其次,自2000年以来,降雨量的赤置地拒绝,这一趋势估计将持续到2020年。第三,由于Lulc的破坏性变化,地表径流也增加到2010年,预测逐渐超过到2020年。通常,已经指出了模型校准和准确性评估,使用基于分布式GIS的SCS-CN模型与LTM和Arima模型组合是一种有效且可靠的检测,监测和预测表面径流的方法。

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