Hidden markov model-based approach for process monitoring
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Date
2019
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Abstract
Hidden Markov Models (HMMs) are a popular and ubiquitous tool for modelling
a large range of time series data. It has been applied successfully to various complex
problems, being especially effective with those requiring a huge amount of measured
data, such as pattern recognition in speech, handwriting and even facial recognition.
Since Fault detection and diagnosis is an important problem in process engineering
recent studies are focusing on developing new techniques which are more accurate,
sensitive to small faults, with no time delay and can monitor multi-mode process ef-
fectively. In order to satisfy these requirements, a huge data are needed and a suitable
model to process these data is the HMM. The main objective of this work is to develop
novel HMM-based approach to diagnose various operating modes of a process includ-
ing Bayesian methods for mode selection. The mode in this work refers to process
operational statuses such as normal or abnormal operating conditions.
Description
59 p.
Keywords
Hidden markov models (HMMs), HMMs, Multi-mode process, Process monitoring
