Assessment of a Hybrid HMM-GMM and LSTM Pipeline for State Identification and Predictive Maintenance in Shaft Alignment
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Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
This thesis provides an implementation and evaluation of a predictive pipeline
consisting of Long Short-Term Memory (LSTM) networks and Hidden Markov
Model with Gaussian emissions (HMM-GMM) for predicting anomalies and operating
states in shaft alignment. The study focuses on a motor-pump setup, utilizing
the Easy-Laser XT770 laser measurement platform for data acquisition as well as
external temperature readings. Monitoring shaft alignment is critical, as misalignment
leads to increased energy consumption and accelerated wear on bearings and
other mechanical components. Empirical data collected from a physical setup provided
initial insights into real-world behavior of the system. However, the algorithms
were development centered around simulated data. Consequently, a simulation environment
was designed to emulate a variety of physical systems, providing diverse
datasets for training and evaluation.
In the proposed architecture, the LSTM model is employed for forecasting future
alignment trends, while the HMM-GMM is utilized for state identification and
anomaly detection. A marginalized variant of the HMM-GMM was also developed
to perform these tasks without the continuous requirement of the laser measurement
units. While the models yielded promising results in simulated environments, performance
deviated when applied to empirical data, likely due to a model mismatch
between the simulation and the physical system.
The results suggest that the HMM-GMM can function as a preliminary framework
for identifying states and anomalies. Although further refinement is needed before
practical deployment, the study demonstrates the potential of using a single measurement
session of healthy states to initialize the model for real-world applications.
Beskrivning
Ämne/nyckelord
Predictive Maintenance, Machine Learning, Shaft alignment, Hidden Markov model, Gaussian Mixture Model, LSTM
