利用前馈神经网络、联邦学习和可解释人工智能进行高级水文信息建模以增强洪水预测

Shahariar Hossain Mahir;Md Tanjum An Tashrif;Md Ahsan Karim;Dipanjali Kundu;Anichur Rahman;Md. Amir Hamza;Fahmid Al Farid;Abu Saleh Musa Miah;Sarina Mansor
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引用次数: 0

摘要

洪水预测是当今世界面临的最关键的挑战之一。预测洪水可能发生的时间和可能受影响的地区是它的主要目标,对于像孟加拉国锡尔赫特这样的地区来说更是如此,因为跨境水流和气候变化增加了灾害的风险。准确的洪水探测通过及时预警和战略规划,在减轻这些影响方面发挥着至关重要的作用。洪水预测研究的最新进展包括开发用于城市部署的可靠、准确和低成本的洪水模型。通过应用和利用强大的深度学习模型,可以提高预测和预防的准确性。但这些模型面临着与可扩展性、数据隐私问题和跨境数据共享限制相关的重大问题,包括气候模式变化导致的预测模型不准确。为了解决这个问题,我们的研究采用了联邦学习(FL)框架,努力训练最先进的深度学习模型,如长短期记忆循环神经网络(LSTM-RNN)、前馈神经网络(FNN)和时间融合变压器-卷积神经网络(TFT -CNN),该模型基于印度梅卡拉亚邦和阿萨姆邦Sylhet及其上游地区78年的降雨、河流流量和气象变量数据集。这种方法促进了数据隐私,并允许在跨境数据共享约束下进行协作学习,从而提高了预测的准确性。结果表明,在FL环境下,表现最好的FNN模型的r平方值为0.96,平均绝对误差(MAE)值为0.02,百分比偏差(PBIAS)值为0.4185,均方根误差(RMSE)较低。可解释的人工智能技术,如SHAP,揭示了上游降雨和河流动态,特别是来自Cherrapunji和Surma-Kushiyara河系统,在驱动Sylhet洪水事件中发挥的最重要作用。这些结果证明了隐私保护和人工智能驱动方法的有效性。这些正在用于改进洪水预测,并为决策者和灾害管理当局提供可操作的见解,为可用于减轻脆弱地区洪水影响的可扩展的跨国战略铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Hydro-Informatic Modeling Through Feedforward Neural Network, Federated Learning, and Explainable AI for Enhancing Flood Prediction
Flood prediction is one of the most critical challenges facing today's world. Predicting the probable time of a flood and the area that might get affected is the main goal of it, and more so for a region like Sylhet, Bangladesh where transboundary water flows and climate change have increased the risk of disasters. Accurate flood detection plays a vital role in mitigating these impacts by allowing timely early warnings and strategic planning. Recent advancements in flood prediction research include the development of robust, accurate, and low-cost flood models designed for urban deployment. By applying and utilizing powerful deep learning models show promise in improving the accuracy of prediction and prevention. But those models faced significant issues related to scalability, data privacy concerns and limitations of cross-border data sharing including the inaccuracies in prediction models due to changing climate patterns. To address this, our research adopts the Federated Learning (FL) framework in an effort to train state-of-the-art deep learning models like Long Short-Term Memory Recurrent Neural Network (LSTM-RNN), Feed-Forward Neural Network (FNN) and Temporal Fusion Transformer-Convolutional Neural Network (TFT -CNN) on a 78-year dataset of rainfall, river flow, and meteorological variables from Sylhet and its upstream regions in Meghalaya and Assam, India. This approach promotes data privacy and allows collaborative learning while working under cross-border data-sharing constraints, therefore improving the accuracy of prediction. The results showed that the best-performing FNN model achieved an R-squared value of 0.96, a Mean Absolute Error (MAE) value of 0.02, Percent bias (PBIAS) value of 0.4185 and lower Root Mean Square Error (RMSE) in the FL environment. Explainable AI techniques, such as SHAP, sheds light on the most significant role played by upstream rainfall and river dynamics, particularly from Cherrapunji and the Surma-Kushiyara river system, in driving flood events in Sylhet. These results demonstrate the effectiveness of privacy-preserving and AI-driven methodology implemented. These are being used in improving flood prediction and provide actionable insights for policymakers and disaster management authorities to pave the way toward scalable, transnational strategies that can be applied to mitigate the effects of flooding in vulnerable regions.
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