Proactive failure prediction for train air production units using XGBoost and SHAP. Leverages MetroPT-3 dataset to enhance safety and maintenance with interpretable ML models.
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Apr 30, 2025 - Jupyter Notebook
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Proactive failure prediction for train air production units using XGBoost and SHAP. Leverages MetroPT-3 dataset to enhance safety and maintenance with interpretable ML models.
Predictive maintenance for train air compressors using BiLSTM and SHAP. Combines MetroPT and MetroPT-3 datasets to estimate Remaining Useful Life (RUL) with interpretable ML models.
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