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R Jegadeeshwaran
R Jegadeeshwaran
Vellore Institute of Technology (VIT University), Chennai.
Verified email at vit.ac.in
Title
Cited by
Cited by
Year
Fault diagnosis of automobile hydraulic brake system using statistical features and support vector machines
R Jegadeeshwaran, V Sugumaran
Mechanical Systems and Signal Processing 52, 436 - 446, 2015
2382015
A machine learning approach for vibration-based multipoint tool insert health prediction on vertical machining centre (VMC)
AD Patange, R Jegadeeshwaran
Measurement 173, 108649, 2021
902021
Comparative study of decision tree classifier and best first tree classifier for fault diagnosis of automobile hydraulic brake system using statistical features
R Jegadeeshwaran, V Sugumaran
Measurement 46 (9), 3247-3260, 2013
832013
Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
V Indira, R Vasanthakumari, R Jegadeeshwaran, V Sugumaran
Engineering Science and Technology, an International Journal 18 (1), 59 - 69, 2015
78*2015
Brake fault diagnosis using Clonal Selection Classification Algorithm (CSCA) - A statistical learning approach
R. Jegadeeshwaran, V Sugumaran.
Engineering Science and Technology, an International Journal 18 (1), 14 - 23, 2015
572015
A Bayesian optimized discriminant analysis model for condition monitoring of face milling cutter using vibration datasets
NS Bajaj, AD Patange, R Jegadeeshwaran, KA Kulkarni, RS Ghatpande, ...
Journal of Nondestructive Evaluation, Diagnostics and Prognostics of …, 2022
502022
Vibration based brake health monitoring using wavelet features: A machine learning approach
TM Alamelu Manghai, R Jegadeeshwaran
Journal of vibration and control 25 (18), 2534-2550, 2019
502019
Milling cutter condition monitoring using machine learning approach
AD Patange, R Jegadeeshwaran, NC Dhobale
IOP Conference Series: Materials Science and Engineering 624 (1), 012030, 2019
472019
Application of bayesian family classifiers for cutting tool inserts health monitoring on CNC milling
AD Patange, R Jegadeeshwaran
International Journal of Prognostics and Health Management 11 (2), 1-13, 2020
462020
Application of metaheuristic optimization based support vector machine for milling cutter health monitoring
NS Bajaj, AD Patange, R Jegadeeshwaran, SS Pardeshi, KA Kulkarni, ...
Intelligent Systems with Applications 18, 200196, 2023
372023
Application of Machine Learning for Tool Condition Monitoring in Turning
AD Patange, R Jegadeeshwaran, NS Bajaj, AN Khairnar, NA Gavade
Sound and Vibration 55 (2), 87-116, 2022
342022
Review on tool condition classification in milling: A machine learning approach
AD Patange, R Jegadeeshwaran
Materials Today: Proceedings 46 (2), 1106-1115, 2021
342021
Condition monitoring of FSW tool using vibration analysis–A machine learning approach
K Balachandar, R Jegadeeshwaran, D Gandhikumar
Materials Today: Proceedings 27, 2970-2974, 2020
332020
Augmentation of decision tree model through hyper-parameters tuning for monitoring of cutting tool faults based on vibration signatures
AD Patange, SS Pardeshi, R Jegadeeshwaran, A Zarkar, K Verma
Journal of Vibration Engineering & Technologies 11 (8), 3759-3777, 2023
312023
Friction stir welding tool condition monitoring using vibration signals and Random forest algorithm–A Machine learning approach
K Balachandar, R Jegadeeshwaran
Materials Today: Proceedings 46 (2), 1174-1180, 2021
312021
Deep learning algorithms for tool condition monitoring in milling: A review
SS Patil, SS Pardeshi, AD Patange, R Jegadeeshwaran
Journal of Physics: Conference Series 1969 (1), 012039, 2021
302021
Improving program outcome attainments using project based learning approach for: UG course-mechatronics
AD Patange, AK Bewoor, SP Deshmukh, SS Mulik, SS Pardeshi, ...
Journal of Engineering Education Transformations 33 (1), 1-8, 2019
302019
A white-box SVM framework and its swarm-based optimization for supervision of toothed milling cutter through characterization of spindle vibrations
TY Deo, AD Patange, SS Pardeshi, R Jegadeeshwaran, AN Khairnar, ...
arXiv preprint arXiv:2112.08421, 2021
282021
Design of bagged tree ensemble for carbide coated inserts fault diagnosis
HS Khade, AD Patange, SS Pardeshi, R Jegadeeshwaran
Materials Today: Proceedings 46 (2), 1283-1289, 2021
252021
Supervision of carbide tool condition by training of vibration-based statistical model using boosted trees ensemble
A Khairnar, A Patange, S Pardeshi, R Jegadeeshwaran
International Journal of Performability Engineering 17 (2), 229, 2021
242021
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