“…Various methods have been proposed, including time-domain statistical features like kurtosis, crest factor [39], variance, skewness, kurtosis, higher-order moments [40], impulse and clearance factors [41], DWT-Discrete Wavelet Transform for denoising, TSA-Time-synchronous Averaging, [42], Kurtograms and wavelets [43,44], MCKD-Maximum Correlated Kurtosis Deconvolution [45], Gabor wavelets and, wavelet transform [46], HHT-Hilbert Huang Transform and SVMs-Support Vector Machines [47], time domain analysis combined with fuzzy C-means [48], envelope analysis from the Kurtogram [49] as well as various statistical features [50], have been proposed in the literature for detecting rotating component faults. Moreover, recent advancements in deep learning techniques such as LSTM (Long Short Time Memory), RNN (Recurrent Neural Networks), DBN (Deep Belief Network) [51], Multi-Layer Perceptron (MLP) [52], and CNN-Convolutional Neural Networks [53] are also examined in vibration based condition monitoring.…”