2024
DOI: 10.3934/math.202411310
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Enhancing sewage flow prediction using an integrated improved SSA-CNN-Transformer-BiLSTM model

Jiawen Ye,
Lei Dai,
Haiying Wang

Abstract: <p>Accurate prediction of sewage flow is crucial for optimizing sewage treatment processes, cutting down energy consumption, and reducing pollution incidents. Current prediction models, including traditional statistical models and machine learning models, have limited performance when handling nonlinear and high-noise data. Although deep learning models excel in time series prediction, they still face challenges such as computational complexity, overfitting, and poor performance in practical applications… Show more

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