Author(s): Haibin Yan; David Zhu
Linked Author(s): David Z. Zhu
Keywords: Data-deficient; Deep tunnel; Machine learning; Prediction model; Semi-supervised learning; Urban stormwater quality
Abstract: Deep tunnel systems are designed to mitigate the risk of flooding and corresponding pollution in urban areas. Predictive modeling can enhance the functionality of deep tunnel systems. Machine learning is an effective predicting tool in data-deficient areas. By integrating data from different catchments, the model performance can be enhanced. Consideration of catchment characteristics can improve the model's generalization capacity. The pseudo-labeling learning can elevate the model's predictive ability.
DOI: https://doi.org/10.3850/iahr-hic2483430201-408
Year: 2024