Ravikumar, K.N.Yadav, A.Kumar, H.Gangadharan, K.V.Narasimhadhan, A.V.2026-02-052021Measurement: Journal of the International Measurement Confederation, 2021, 186, , pp. -2632241https://doi.org/10.1016/j.measurement.2021.110099https://idr.nitk.ac.in/handle/123456789/22965Fault diagnosis methods based on signal analysis techniques are widely used to diagnose faults in gear and bearing. This paper introduces a fault diagnosis model that includes a multi-scale deep residual learning with a stacked long short-term memory (MDRL-SLSTM) to address sequence data in a gearbox health prediction task in an internal combustion (IC) engine. In the MDRL-SLSTM network, CNN and residual learning is firstly utilized for local feature extraction and dimension reduction. The experiment is carried out on the gearbox of an IC engine setup, two datasets are used; one is from bearing and the other from 2nd driving gear of gearbox. To reduce the number of parameters, down-sampling is carried out on input data before giving to the architecture. The model achieved better diagnostic performance with vibration data of gearbox. Classification accuracy of 94.08% and 94.33% are attained on bearing datasets and 2nd driving gear of gearbox respectively. © 2021 Elsevier LtdBall bearingsClassification (of information)Fault detectionGearsIntegrated circuitsInternal combustion enginesLong short-term memoryTiming circuitsAnalysis techniquesDeep learning techniqueDiagnosis faultsFault diagnosis methodFaults diagnosisGearboxLearning techniquesLSTMMulti-scalesSignals analysisFailure analysisGearbox fault diagnosis based on Multi-Scale deep residual learning and stacked LSTM model