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Comparison of Decision Tree Based Rainfall Prediction Model with Data Driven Model Considering Climatic Variables

机译:考虑气候变量的基于决策树的降雨预测模型与数据驱动模型的比较

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In hydrological cycle, precipitation initiates the flow and governs the system. The preciseness in the prediction of rainfall will reduce the uncertainty involved in estimating the associated hydrological variables such as runoff, infiltration, and stream flow. Many research works has been channelled towards improving the accuracy of these predictions. ANN is the most widely used neural networks in Integrated Water Resource Management. Most of these models, utilize the strength of data-driven modelling approach. The reliability of these predictions depends on the preciseness in selecting the correlated variables. If the available historical database fails to record the most correlated variable, then reliability on these data-driven approach predictions is questionable. In this paper, an attempt has been made to develop a methodological framework that utilizes the strength of a predictive data-mining analysis (decision tree). The developed decision tree based rainfall prediction model maps the climatic variables, namely; a) temperature, b) humidity, and c) wind speed over the observed rainfall database. The performance of the developed model is evaluated based on three performance indicators (Nash Sutcliffe efficiency, RMSE and MSE). The performance of the developed model is also compared with the well- known data-driven (Artificial Neural Network) based rainfall prediction model.
机译:在水文循环中,降水引发水流并控制系统。降雨预报的准确性将减少估算相关的水文变量(如径流,入渗和水流)时所涉及的不确定性。已经进行了许多研究工作以提高这些预测的准确性。人工神经网络是综合水资源管理中使用最广泛的神经网络。这些模型中的大多数都利用了数据驱动建模方法的优势。这些预测的可靠性取决于选择相关变量的准确性。如果可用的历史数据库未能记录最相关的变量,则这些数据驱动方法预测的可靠性值得怀疑。在本文中,已尝试开发一种利用预测数据挖掘分析(决策树)优势的方法框架。开发的基于决策树的降雨预测模型映射了气候变量,即; a)温度,b)湿度和c)在观测的降雨数据库上的风速。基于三个性能指标(纳什·萨特克利夫效率,RMSE和MSE)评估开发模型的性能。还将开发的模型的性能与基于数据驱动(人工神经网络)的降雨预测模型进行比较。

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