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Simulated annealing algorithm optimized GRU neural network for urban rainfall-inundation prediction

Ying Yan, Wenting Zhang, Yongzhi Liu, Zhixuan Li

2023Journal of Hydroinformatics15 citationsDOIOpen Access PDF

Abstract

Abstract In the context of global climate change and the continuous development of urban areas, rainfall-inundation modeling is a common approach that provides critical support for the protection and early warning of urban waterlogging protection. The present study conducts a data-driven model for hourly urban rainfall-inundation depth prediction, which is based on a gated recurrent unit (GRU) neural network and uses the simulated annealing (SA) algorithm for the hyperparameter optimization of GRU, namely the SA-GRU model. To verify the performance of the proposed model, backpropagation, long short-term memory (LSTM), and bidirectional LSTM (BiLSTM) neural networks are set as benchmarks. Results show that the SA-GRU has high accuracy in the case of short-term inundation prediction, with the Nash–Sutcliffe efficiency from 0.999 to 0.596 for the 1-h-ahead to 8-h-ahead predictions. And further research reveals that the SA-GRU integrates the significant optimization of SA, with an average 20% reduction of the root mean square error within the first eight prediction periods, and the efficient training speed of GRU, with 23.7% faster than LSTM and 44.2% faster than BiLSTM. In conclusion, the SA-GRU excels in urban inundation prediction, demonstrating its value in flood management and decision-making.

Topics & Concepts

Artificial neural networkSimulated annealingComputer scienceBackpropagationMean squared errorHyperparameterAlgorithmData miningMachine learningMathematicsStatisticsHydrological Forecasting Using AIFlood Risk Assessment and ManagementHydrology and Watershed Management Studies
Simulated annealing algorithm optimized GRU neural network for urban rainfall-inundation prediction | Litcius