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자료유형
학술대회자료
저자정보
저널정보
대한인간공학회 대한인간공학회 학술대회논문집 대한인간공학회 2015 추계학술대회
발행연도
2015.10
수록면
27 - 32 (6page)

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The aim of this study is to develop characteristics which can affect the violations in nuclear power plants. Although violations rarely occur in the nuclear power plant, they can cause a serious damage. Thus, violations should be prevented by countermeasures that can be proactively developed by analyzing the characteristics of violations. Violations are classified into four types such as routine, situational, avoidance and optimizing violations. Based on the definitions of the four violations, this study identified preventive characteristics of each type of the violations. The characteristics are collected from causal factors of accident analysis methods such as HEAR and HuRAM+. Each characteristic was evaluated and discussed by human factors experts to define a set of characteristics for each type of the violations. The characteristics were verified and complemented by analyzing real event cases that turn out to be included plausible violations in nuclear power plants. A total of 152 characteristics were grouped into 10 categories (environment, organization, education/training, team, communication, worker, job/task, procedure document, and workplace). The workplace category was excluded from the routine violations while five categories (communication, procedure document, environment, communication, and procedure document) were excluded from avoidance and optimizing violations. A set of characteristics for each type of the violations can make people understand each violation easily and develop many proactive countermeasures in nuclear power plants.

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ABSTRACT
1. Introduction
2. Method
3. Results & Discussion
4. Conclusion
References

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UCI(KEPA) : I410-ECN-0101-2016-530-002088557