Follow
Divish Rengasamy
Divish Rengasamy
Institute for Aerospace Technology, University of Nottingham
Verified email at nottingham.ac.uk
Title
Cited by
Cited by
Year
Deep learning with dynamically weighted loss function for sensor-based prognostics and health management
D Rengasamy, M Jafari, B Rothwell, X Chen, GP Figueredo
Sensors 20 (3), 723, 2020
872020
Deep learning approaches to aircraft maintenance, repair and overhaul: A review
D Rengasamy, HP Morvan, GP Figueredo
2018 21st International Conference on Intelligent Transportation Systems …, 2018
422018
Machine learning to determine the main factors affecting creep rates in laser powder bed fusion
S Sanchez, D Rengasamy, CJ Hyde, GP Figueredo, B Rothwell
Journal of Intelligent Manufacturing 32 (8), 2353-2373, 2021
242021
Towards a more reliable interpretation of machine learning outputs for safety-critical systems using feature importance fusion
D Rengasamy, BC Rothwell, GP Figueredo
Applied Sciences 11 (24), 11854, 2021
232021
Feature importance in machine learning models: A fuzzy information fusion approach
D Rengasamy, JM Mase, A Kumar, B Rothwell, MT Torres, MR Alexander, ...
Neurocomputing 511, 163-174, 2022
222022
Load prediction using support vector regression
LW Chong, D Rengasamy, YW Wong, RK Rajkumar
TENCON 2017-2017 IEEE Region 10 Conference, 1069-1074, 2017
152017
Asymmetric loss functions for deep learning early predictions of remaining useful life in aerospace gas turbine engines
D Rengasamy, B Rothwell, GP Figueredo
2020 International Joint Conference on Neural Networks (IJCNN), 1-7, 2020
112020
Anomaly detection for unmanned aerial vehicle sensor data using a stacked recurrent autoencoder method with dynamic thresholding
V Bell, D Rengasamy, B Rothwell, GP Figueredo
arXiv preprint arXiv:2203.04734, 2022
102022
An intelligent toolkit for benchmarking data-driven aerospace prognostics
D Rengasamy, JM Mase, B Rothwell, GP Figueredo
2019 IEEE intelligent transportation systems conference (ITSC), 4210-4215, 2019
42019
Mechanistic interpretation of machine learning inference: A fuzzy feature importance fusion approach
D Rengasamy, JM Mase, MT Torres, B Rothwell, DA Winkler, ...
arXiv preprint arXiv:2110.11713, 2021
32021
System condition monitoring through Bayesian change point detection using pump vibrations
E Tochev, D Rengasamy, H Pfifer, S Ratchev
2020 IEEE 16th International Conference on Automation Science and …, 2020
32020
EFI: A Toolbox for Feature Importance Fusion and Interpretation in Python
A Kumar, JM Mase, D Rengasamy, B Rothwell, MT Torres, DA Winkler, ...
International Conference on Machine Learning, Optimization, and Data Science …, 2022
22022
Towards a more reliable interpretation of machine learning outputs for safety-critical systems using feature importance fusion
D Rengasamy, B Rothwell, G Figueredo
arXiv preprint arXiv:2009.05501, 2020
22020
Deep Learning Approaches to Aircraft Maintenance
D Rengasamy, HP Morvan, GP Figueredo
Repair and Overhaul: A Review, 150-156, 2018
22018
Machine learning to determine the main factors affecting creep rates in laser powder bed fusion
D Rengasamy, CJ Hyde, GP Figueredo, B Rothwell
Journal of Intelligent Manufacturing 32 (8), 2021
2021
The system can't perform the operation now. Try again later.
Articles 1–15