Spatio-Temporal Forecasting of Retaining Wall Deformation: Mitigating Error Accumulation via Multi-Resolution ConvLSTM Stacking Ensemble
arXiv cs.LG / 3/12/2026
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Key Points
- The paper proposes a multi-resolution ConvLSTM ensemble framework that combines three models trained at different input resolutions with a meta-learner to improve long-horizon forecasts of retaining-wall deformation during staged excavation.
- It builds a large dataset of 2,000 time-series deflection profiles generated from PLAXIS2D simulations, incorporating five-layer soil stratigraphy, two excavation depths (14 and 20 m), and stochastic parameter variation.
- The ensemble consistently outperforms the individual ConvLSTM models, particularly for long-term multi-step predictions, by reducing error accumulation and enhancing generalization.
- Validation uses both numerical results and field measurements, underscoring the potential of multi-resolution ensemble strategies to improve AI-driven geotechnical forecasting across diverse temporal scales.
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