Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)

Background and aims: Considering the role of human errors in the incidence of catastrophic events in control rooms and also Lack of effectiveness of classical techniques to identify the human errors, special techniques are required for identification of human errors. Therefore, this study aimed to i...

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Main Authors: Abbas ZarraNezhad, Moosa Jabbari, Mehrzad Keshavarzi
Format: Article
Language:fas
Published: Iran University of Medical Sciences 2013-07-01
Series:Salāmat-i kār-i Īrān
Subjects:
hta
amp
Online Access:http://ioh.iums.ac.ir/article-1-728-en.html
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spelling doaj-66083e91c8194adaa14838043a98a2ff2021-01-28T06:11:57ZfasIran University of Medical SciencesSalāmat-i kār-i Īrān1735-51332228-74932013-07-011021123Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)Abbas ZarraNezhad0Moosa Jabbari1Mehrzad Keshavarzi2 MOP Shahid Beheshti University of Medical Science POGC Background and aims: Considering the role of human errors in the incidence of catastrophic events in control rooms and also Lack of effectiveness of classical techniques to identify the human errors, special techniques are required for identification of human errors. Therefore, this study aimed to identify human errors in the control room in an oil company Using HEIST Technique.   Methods: The present study is a case study of qualitative research that was conducted with using HEIST Technique. Collection of the required information has been done with Walking-Talking Trough and «Rose & Roses» model that is used for classification the decision-making process.   «Kirwan» model is used for classification of factors that are involved in human errors and Types of errors have been detected with the SRK Model.   Results: Overall, 300 human errors has been detected. Of which, » interactions with controllers and indicators « , » instructions « and » training and experience « alone causes 71 percent of human errors in control room operators.   In addition, 90% of human errors were related to the "stages of implementation of the solution", "observing system" and "selection hypothesis". Conclusion: The results of this study showed a variety of possible scenarios resulting from human errors and their unintended consequences.These results emphasize that there are several weaknesses suggesting the implementation of both engineering and administrative controls simultaneously to reduce human errorshttp://ioh.iums.ac.ir/article-1-728-en.htmlhuman errorcontrol roomheisthtarose &ampamprose
collection DOAJ
language fas
format Article
sources DOAJ
author Abbas ZarraNezhad
Moosa Jabbari
Mehrzad Keshavarzi
spellingShingle Abbas ZarraNezhad
Moosa Jabbari
Mehrzad Keshavarzi
Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
Salāmat-i kār-i Īrān
human error
control room
heist
hta
rose &amp
amp
rose
author_facet Abbas ZarraNezhad
Moosa Jabbari
Mehrzad Keshavarzi
author_sort Abbas ZarraNezhad
title Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
title_short Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
title_full Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
title_fullStr Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
title_full_unstemmed Identification of the Human Errors in Control Room Operators by Application of HEIST Method (Case Study in Oil Company)
title_sort identification of the human errors in control room operators by application of heist method (case study in oil company)
publisher Iran University of Medical Sciences
series Salāmat-i kār-i Īrān
issn 1735-5133
2228-7493
publishDate 2013-07-01
description Background and aims: Considering the role of human errors in the incidence of catastrophic events in control rooms and also Lack of effectiveness of classical techniques to identify the human errors, special techniques are required for identification of human errors. Therefore, this study aimed to identify human errors in the control room in an oil company Using HEIST Technique.   Methods: The present study is a case study of qualitative research that was conducted with using HEIST Technique. Collection of the required information has been done with Walking-Talking Trough and «Rose & Roses» model that is used for classification the decision-making process.   «Kirwan» model is used for classification of factors that are involved in human errors and Types of errors have been detected with the SRK Model.   Results: Overall, 300 human errors has been detected. Of which, » interactions with controllers and indicators « , » instructions « and » training and experience « alone causes 71 percent of human errors in control room operators.   In addition, 90% of human errors were related to the "stages of implementation of the solution", "observing system" and "selection hypothesis". Conclusion: The results of this study showed a variety of possible scenarios resulting from human errors and their unintended consequences.These results emphasize that there are several weaknesses suggesting the implementation of both engineering and administrative controls simultaneously to reduce human errors
topic human error
control room
heist
hta
rose &amp
amp
rose
url http://ioh.iums.ac.ir/article-1-728-en.html
work_keys_str_mv AT abbaszarranezhad identificationofthehumanerrorsincontrolroomoperatorsbyapplicationofheistmethodcasestudyinoilcompany
AT moosajabbari identificationofthehumanerrorsincontrolroomoperatorsbyapplicationofheistmethodcasestudyinoilcompany
AT mehrzadkeshavarzi identificationofthehumanerrorsincontrolroomoperatorsbyapplicationofheistmethodcasestudyinoilcompany
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