Enhancing stormwater network overflow prediction: investigation of ensemble learning models

IF 2.3 4区 地球科学
Samira Boughandjioua, Fares Laouacheria, Nabiha Azizi
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引用次数: 0

Abstract

This study addresses the critical issue of urban flooding caused by stormwater network overflow, necessitating unified and efficient management measures to handle increasing water volumes and the effects of climate change. The proposed approach aims to improve the precision and efficiency of overflow rate predictions by investigating advanced machine learning algorithms, specifically ensemble methods such as gradient boosting and random forest algorithms. The main contribution lies in introducing the SWN-ML approach, which integrates hydraulic simulations using MIKE + with machine learning to predict average overflow rates for various rainfall durations and return periods. Mike + model was calibrated for the only available observed data of water depth at the outlet point during the storm event of February 4, 2019. The datasets for model calibration used in ML models consisted of many input variables such as peak flow, max depth, length, slope, roughness, and diameter and average overflow rate as output variable. Experimental results show that these methods are effective under a variety of scenarios, with the ensemble methods consistently outperforming classical machine learning models. For example, the models exhibit similar performance metrics with an MSE of 0.023, RMSE of 0.15, and MAE of 0.101 for a 2-h rainfall duration and a 10-year return period. Correlation analysis further confirms the strong correlation between ensemble method predictions and MIKE + simulated models, with values ranging between 0.72 and 0.80, indicating their effectiveness in capturing stormwater network dynamics. These results validate the utility of ensemble learning models in predicting overflow rates in flood-prone urban areas. The study highlights the potential of ensemble learning models in forecasting overflow rates, offering valuable insights for the development of early warning systems and flood mitigation strategies.

Abstract Image

加强雨水管网溢流预测:研究集合学习模型
本研究探讨了雨水管网溢流造成的城市内涝这一关键问题,需要采取统一高效的管理措施来应对日益增长的水量和气候变化的影响。所提出的方法旨在通过研究先进的机器学习算法,特别是梯度提升和随机森林算法等集合方法,提高溢流率预测的精度和效率。其主要贡献在于引入了 SWN-ML 方法,将使用 MIKE + 进行的水力模拟与机器学习相结合,预测各种降雨持续时间和重现期的平均溢流率。Mike + 模型根据 2019 年 2 月 4 日暴雨事件期间出水口水深的唯一可用观测数据进行了校准。ML 模型中使用的模型校准数据集包括许多输入变量,如峰值流量、最大水深、长度、坡度、粗糙度和直径,以及作为输出变量的平均溢流率。实验结果表明,这些方法在各种情况下都很有效,集合方法的性能始终优于经典机器学习模型。例如,在降雨持续时间为 2 小时、回归周期为 10 年的情况下,这些模型表现出相似的性能指标,MSE 为 0.023,RMSE 为 0.15,MAE 为 0.101。相关性分析进一步证实了集合方法预测与 MIKE + 模拟模型之间的强相关性,相关值介于 0.72 和 0.80 之间,表明它们在捕捉雨水网络动态方面的有效性。这些结果验证了集合学习模型在预测洪水易发城市地区溢流率方面的实用性。这项研究强调了集合学习模型在预测溢流率方面的潜力,为开发早期预警系统和制定洪水缓解策略提供了宝贵的见解。
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来源期刊
Acta Geophysica
Acta Geophysica GEOCHEMISTRY & GEOPHYSICS-
CiteScore
3.80
自引率
13.00%
发文量
251
期刊介绍: Acta Geophysica is open to all kinds of manuscripts including research and review articles, short communications, comments to published papers, letters to the Editor as well as book reviews. Some of the issues are fully devoted to particular topics; we do encourage proposals for such topical issues. We accept submissions from scientists world-wide, offering high scientific and editorial standard and comprehensive treatment of the discussed topics.
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