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Bi-cLSTM: Residual-Corrected Bidirectional LSTM for Aero-Engine RUL Estimation

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Accurate Remaining Useful Life (RUL) prediction is a key requirement for effective Prognostics and Health Management (PHM) in safety-critical systems such as aero-engines. Existing deep learning approaches, particularly LSTM-based models, often struggle to generalize across varying operating conditions and are sensitive to noise in multivariate sensor data. To address these challenges, we propose a novel Bidirectional Residual Corrected LSTM (Bi-cLSTM) model for robust RUL estimation. The proposed architecture combines bidirectional temporal modeling with an adaptive residual correction mechanism to iteratively refine sequence representations. In addition, we introduce a condition-aware preprocessing pipeline incorporating regime-based normalization, feature selection, and exponential smoothing to improve robustness under complex operating environments. Extensive experiments on all four subsets of the NASA C-MAPSS dataset demonstrate that the proposed Bi-cLSTM consistently outperforms LSTM-based baselines and achieves competitive state-of-the-art performance, particularly in challenging multi-condition scenarios. These results highlight the effectiveness of combining bidirectional temporal learning with residual correction for reliable RUL prediction.

Rafi Hassan Chowdhury, Nabil Daiyan, Faria Ahmed, Md Redwan Iqbal, Morsalin Sheikh• 2026

Related benchmarks

TaskDatasetResultRank
Remaining Useful Life predictionC-MAPSS FD002
RMSE13.96
73
Remaining Useful Life predictionC-MAPSS FD001
RMSE17.51
70
Remaining Useful Life predictionC-MAPSS FD003
RMSE21.38
69
Remaining Useful Life predictionC-MAPSS FD004
RMSE14.25
61
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