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Predicting the Health Status of a Pulp Press Based on Deep Neural Networks and Hidden Markov Models
被引:6
作者:
Martins, Alexandre
[1
,2
]
Mateus, Balduino
[1
,2
]
Fonseca, Inacio
[3
]
Farinha, Jose Torres
[3
,4
]
Rodrigues, Joao
[1
,2
]
Mendes, Mateus
[3
]
Cardoso, Antonio Marques
[2
]
机构:
[1] Lusofona Univ, EIGeS Res Ctr Ind Engn Management & Sustainabil, Campo Grande 376, P-1749024 Lisbon, Portugal
[2] Univ Beira Interior, CISE Electromechatron Syst Res Ctr, P-62001001 Covilha, Portugal
[3] Polytech Coimbra, Inst Super Engn Coimbra, P-3045093 Coimbra, Portugal
[4] Univ Coimbra, Ctr Mech Engn Mat & Proc CEMMPRE, P-3030788 Coimbra, Portugal
来源:
关键词:
maintenance;
diagnosis;
prognosis;
deep neural network;
hidden Markov models;
machine learning;
CONDITION-BASED MAINTENANCE;
PRINCIPAL COMPONENT ANALYSIS;
FRAMEWORK;
OPTIMIZATION;
RECOGNITION;
SYSTEM;
D O I:
10.3390/en16062651
中图分类号:
TE [石油、天然气工业];
TK [能源与动力工程];
学科分类号:
0807 ;
0820 ;
摘要:
The maintenance paradigm has evolved over the last few years and companies that want to remain competitive in the market need to provide condition-based maintenance (CBM). The diagnosis and prognosis of the health status of equipment, predictive maintenance (PdM), are fundamental strategies to perform informed maintenance, increasing the company's profit. This article aims to present a diagnosis and prognosis methodology using a hidden Markov model (HMM) classifier to recognise the equipment status in real time and a deep neural network (DNN), specifically a gated recurrent unit (GRU), to determine this same status in a future of one week. The data collected by the sensors go through several phases, starting by cleaning them. After that, temporal windows are created in order to generate statistical features of the time domain to better understand the equipment's behaviour. These features go through a normalisation to produce inputs for a feature extraction process, via a principal component analysis (PCA). After the dimensional reduction and obtaining new features with more information, a clustering is performed by the K-means algorithm, in order to group similar data. These clusters enter the HMM classifier as observable states. After training using the Baum-Welch algorithm, the Viterbi algorithm is used to find the best path of hidden states that represent the diagnosis of the equipment, containing three states: state 1-"State of Good Operation"; state 2-"Warning State"; state 3-"Failure State". Once the equipment diagnosis is complete, the GRU model is used to predict the future, both of the observable states as well as the hidden states coming out from the HMM. Thus, through this network, it is possible to directly obtain the health states 7 days ahead, without the necessity to run the whole methodology from scratch.
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页数:26
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