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Prediction of flood routing results in the Central Anatolian region of Tuerkiye with various machine learning models

机译:使用各种机器学习模型预测安纳托利亚中部图尔基耶地区的洪水路径结果

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摘要

Flood routing models are vital in predicting floods and taking all necessary precautions in the region where floods occur, preventing loss of life and property in the region and protecting agricultural areas. This study aims to compare the performance of various machine learning models such as Bagged Tree, Gradient-Boosted Machine, Random Forest, K-Nearest Neighbor, Support Vector Machine and Extreme Gradient Boosting for flood routing prediction models in Ankara, Eskisehir and Sivas. In addition, the predictive success of tree-based algorithms established according to the optimized and default parameters was compared. For this purpose, the flood data of 2013, 2014 and 2015 discharge observation stations located in Ankara D12A242-D12A126, D12A170-D12A172 in Eskisehir and D15A290-E15A035 in Sivas were used. While establishing the machine learning (ML) models, the data was selected as 80 training and 20 testing. Model performances were tested according to various statistical indicators such as root mean square error, mean absolute error and determination coefficient. As a result of the study, the Gradient-Boosted Machine was chosen as the most successful model in estimating flood routing. In addition, the K-nearest neighbor model with 3-nearest neighbor achieved high-level prediction success with the lowest error rates in Ankara. The findings are important in terms of flood management and taking necessary precautions before the flood occurs.
机译:洪水路径模型对于预测洪水和在发生洪水的地区采取一切必要的预防措施、防止该地区的生命和财产损失以及保护农业地区至关重要。本研究旨在比较各种机器学习模型的性能,如袋装树、梯度提升机、随机森林、K-最近邻、支持向量机和极端梯度提升在安卡拉、埃斯基谢希尔和锡瓦斯的洪水路径预测模型中的性能。此外,还比较了根据优化参数和默认参数建立的基于树的算法的预测成功率。为此,使用了位于安卡拉D12A242-D12A126、埃斯基谢希尔D12A170-D12A172和锡瓦斯D15A290-E15A035的2013年、2014年和2015年排放观测站的洪水数据。在建立机器学习 (ML) 模型时,数据被选为 80% 的训练和 20% 的测试。根据均方根误差、均值绝对误差和决定系数等各种统计指标对模型性能进行检验。作为研究的结果,梯度增压机被选为估计洪水路线最成功的模型。此外,具有 3 个最近邻的 K 最近邻模型在安卡拉以最低的错误率实现了高水平的预测成功。这些发现对于洪水管理和在洪水发生前采取必要的预防措施非常重要。

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