Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data

A methodology to extract temporal patterns of alarm sequences and operator actions from the log files of alarm management systems is proposed. Firstly, time-segments that are informative from the viewpoint of operator interventions are identified by the algorithm. These segments include series of al...

Full description

Bibliographic Details
Main Authors: Gyula Dorgo, Kristof Varga, Mate Haragovics, Tibor Szabo, Janos Abonyi
Format: Article
Language:English
Published: AIDIC Servizi S.r.l. 2018-08-01
Series:Chemical Engineering Transactions
Online Access:https://www.cetjournal.it/index.php/cet/article/view/569
id doaj-da94e2439d9c4504aa2e97beec5c9244
record_format Article
spelling doaj-da94e2439d9c4504aa2e97beec5c92442021-02-17T20:59:10ZengAIDIC Servizi S.r.l.Chemical Engineering Transactions2283-92162018-08-017010.3303/CET1870139Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data Gyula DorgoKristof VargaMate HaragovicsTibor SzaboJanos AbonyiA methodology to extract temporal patterns of alarm sequences and operator actions from the log files of alarm management systems is proposed. Firstly, time-segments that are informative from the viewpoint of operator interventions are identified by the algorithm. These segments include series of alarms that initialize operator actions, sets of operator actions, and a period that potentially covers the effects of the corrective actions of the operators. In the second step of the methodology, the sets of operator actions that are frequently applied in the same situations are determined. For this purpose, the FP-Growth Algorithm, which is one of the fastest tools of frequent item-set mining and generates well-structured action trees that are not only suitable for the visualization of interventions but lend themselves to build association rules that could be directly applied in decision support systems, is utilized. Finally, multi-temporal sequence mining is applied to reveal what alarms led to the sets of operator actions and what were the effects of these interventions. The applicability of the methodology is illustrated by presenting results connected to the analysis of the delayed coker plant at the Danube Refinery of the MOL Group. https://www.cetjournal.it/index.php/cet/article/view/569
collection DOAJ
language English
format Article
sources DOAJ
author Gyula Dorgo
Kristof Varga
Mate Haragovics
Tibor Szabo
Janos Abonyi
spellingShingle Gyula Dorgo
Kristof Varga
Mate Haragovics
Tibor Szabo
Janos Abonyi
Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
Chemical Engineering Transactions
author_facet Gyula Dorgo
Kristof Varga
Mate Haragovics
Tibor Szabo
Janos Abonyi
author_sort Gyula Dorgo
title Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
title_short Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
title_full Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
title_fullStr Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
title_full_unstemmed Towards Operator 4.0, Increasing Production Efficiency and Reducing Operator Workload by Process Mining of Alarm Data
title_sort towards operator 4.0, increasing production efficiency and reducing operator workload by process mining of alarm data
publisher AIDIC Servizi S.r.l.
series Chemical Engineering Transactions
issn 2283-9216
publishDate 2018-08-01
description A methodology to extract temporal patterns of alarm sequences and operator actions from the log files of alarm management systems is proposed. Firstly, time-segments that are informative from the viewpoint of operator interventions are identified by the algorithm. These segments include series of alarms that initialize operator actions, sets of operator actions, and a period that potentially covers the effects of the corrective actions of the operators. In the second step of the methodology, the sets of operator actions that are frequently applied in the same situations are determined. For this purpose, the FP-Growth Algorithm, which is one of the fastest tools of frequent item-set mining and generates well-structured action trees that are not only suitable for the visualization of interventions but lend themselves to build association rules that could be directly applied in decision support systems, is utilized. Finally, multi-temporal sequence mining is applied to reveal what alarms led to the sets of operator actions and what were the effects of these interventions. The applicability of the methodology is illustrated by presenting results connected to the analysis of the delayed coker plant at the Danube Refinery of the MOL Group.
url https://www.cetjournal.it/index.php/cet/article/view/569
work_keys_str_mv AT gyuladorgo towardsoperator40increasingproductionefficiencyandreducingoperatorworkloadbyprocessminingofalarmdata
AT kristofvarga towardsoperator40increasingproductionefficiencyandreducingoperatorworkloadbyprocessminingofalarmdata
AT mateharagovics towardsoperator40increasingproductionefficiencyandreducingoperatorworkloadbyprocessminingofalarmdata
AT tiborszabo towardsoperator40increasingproductionefficiencyandreducingoperatorworkloadbyprocessminingofalarmdata
AT janosabonyi towardsoperator40increasingproductionefficiencyandreducingoperatorworkloadbyprocessminingofalarmdata
_version_ 1724264698334937088