Human Factors Analysis by Classifying Chemical Accidents into Operations
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Collection Tools
2.2. The HFACS Model
- (1)
- The organizational influences level is divided into three categories: resource management (contains top management decision-making about the utilization of resources such as equipment, facilities, money, and personnel), organizational climate (refers to the factors that affect employee performance, such as organizational structure, culture, and policies), and organizational process (relates to the decision-making that determines how an organization conducts its daily business, including its operations, procedures, and oversight).
- (2)
- The unsafe supervision level, which is divided into four categories, deals with the actions and decisions of managers and supervisors that may have an impact on the performance of front-line personnel: Planned inappropriate operations (which involve circumstances in which managers fail to assess the risk involved in a task, putting personnel at an unacceptable level of risk. These include insufficient personnel, missions that do not adhere to norms or regulations, and insufficient opportunities for personnel rest), failure to correct the problem (refers to situations when inadequate equipment, training, or behavior is found but is left unchecked, implying that managers are failing to take corrective action or report such unsafe conditions), supervisory violations (the willful violation of the established laws and regulations by individuals in positions of authority), and inadequate supervision (involves those instances where supervision either fails to give advice, oversight, or training or does it incorrectly or improperly).
- (3)
- The preconditions for unsafe acts level is divided into three categories: Environmental factors are the physical and technological factors that impact people’s behaviors, conditions, and activities that can lead to harmful situations or human error. Condition of operators refers to the adverse mental state, physiological state, and physical/mental limitation factors that impact individual actions, needs, or behaviors and cause harmful situations or human error. Finally, personnel factors include personal readiness and crew resource management factors that affect behaviors, conditions, or individual decisions that cause a situation to be unsafe or lead to human error.
- (4)
- The unsafe acts level is divided into two categories: errors and violations. Errors (decision, skill-based, perceptual errors) are unintentional behaviors and operator activities that fail to provide the desired results. Violations (routine violations, exceptional violations) are a deliberate disregard for the regulations. Skill-based errors are described as skills that occur without considerable conscious thought. Decision errors are intentional actions that go as planned, but the strategy is ineffective or wrong for the situation. Perceptual errors can often occur when one’s perception of the world differs from reality. Routine violations tend to be habitual and usually tolerated by the leading authority. Exceptional violations are departures from a rule that is neither indicative of a person’s usual behavior pattern nor approved by management [26]. In this context, the HFACS model framework is shown in Figure 2.
2.3. Statistical Methods
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Categories in the HFACS Framework | Maintenance Repair | Process | Storage | Shutdown Startup | Loading Unloading | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
n | * (%) | n | * (%) | n | * (%) | n | * (%) | n | * (%) | |||
Organizational Influences | Resource Management | 2 | 3.03 | 20 | 21.97 | 4 | 23.52 | 5 | 20.83 | 11 | 20.75 | |
Organizational Climate | 3 | 4.54 | 11 | 12.08 | 2 | 11.76 | 2 | 8.33 | 3 | 5.66 | ||
Organizational Process | 46 | 69.69 | 58 | 63.73 | 12 | 70.58 | 22 | 91.66 | 26 | 49.05 | ||
Unsafe Supervision | Planned Inappropriate Operations | 4 | 6.06 | 5 | 5.49 | 0 | 0 | 2 | 8.33 | 5 | 9.43 | |
Failure to Correct Problem | 3 | 4.54 | 2 | 2.19 | 0 | 0 | 2 | 8.33 | 2 | 3.77 | ||
Supervisory Violations | 15 | 22.72 | 4 | 4.39 | 5 | 29.41 | 1 | 4.16 | 4 | 7.54 | ||
Inadequate Supervision | 24 | 36.36 | 41 | 45.05 | 7 | 41.17 | 11 | 45.83 | 27 | 50.94 | ||
Preconditions for Unsafe Acts | Environmental Factors | Physical Environment | 14 | 21.21 | 11 | 12.08 | 6 | 35.29 | 3 | 12.50 | 4 | 7.54 |
Technological Environment | 26 | 39.39 | 49 | 53.84 | 5 | 29.41 | 19 | 79.16 | 18 | 33.96 | ||
Condition of Operators | Adverse Mental States | 6 | 9.09 | 13 | 14.28 | 1 | 5.88 | 1 | 4.16 | 3 | 5.66 | |
Physical- Mental Limitations | 1 | 1.51 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | ||
Personnel Factors | Personal Readiness | 12 | 18.18 | 5 | 5.49 | 0 | 0 | 0 | 0 | 5 | 9.43 | |
Crew Resource Management | 9 | 13.63 | 12 | 13.18 | 2 | 11.76 | 3 | 12.50 | 6 | 11.32 | ||
Unsafe Acts | Errors | Decision Errors | 20 | 30.30 | 4 | 4.39 | 1 | 5.88 | 5 | 20.83 | 5 | 9.43 |
Skill-Based Errors | 54 | 81.81 | 55 | 60.43 | 11 | 64.70 | 14 | 58.33 | 35 | 66.03 | ||
Perceptual Errors | 14 | 21.21 | 16 | 17.58 | 8 | 47.05 | 4 | 16.66 | 11 | 20.75 | ||
Violations | Routine | 28 | 42.42 | 19 | 46.34 | 1 | 5.88 | 10 | 41.66 | 16 | 30.18 | |
Exceptional | 8 | 12.12 | 16 | 17.58 | 2 | 11.76 | 5 | 20.83 | 9 | 16.98 |
Resource Management | Organizational Climate | Organizational Process | ||||
---|---|---|---|---|---|---|
n | % | n | % | n | % | |
Maintenance repair | 2 | 4.8 | 3 | 14.3 | 46 | 28.0 |
Process | 20 | 47.6 | 11 | 52.4 | 58 | 35.4 |
Loading unloading | 11 | 26.2 | 3 | 14.3 | 26 | 15.9 |
Storage | 4 | 9.5 | 2 | 9.5 | 12 | 7.3 |
Shutdown startup | 5 | 11.9 | 2 | 9.5 | 22 | 13.4 |
Test value | 12.231 | 1.980 | 13.149 | |||
p value | 0.013 | 0.746 | 0.010 |
Planned Inappropriate Operations | Failure to Correct Problem | Supervisory Violations | Inadequate Supervision | |||||
---|---|---|---|---|---|---|---|---|
n | % | n | % | n | % | n | % | |
Maintenance repair | 4 | 25.0 | 3 | 33.4 | 15 | 51.7 | 24 | 21.8 |
Process | 5 | 31.3 | 2 | 22.2 | 4 | 13.8 | 41 | 37.3 |
Loading unloading | 5 | 31.3 | 2 | 22.2 | 4 | 13.8 | 27 | 24.5 |
Storage | - | - | - | - | 5 | 17.2 | 7 | 6.4 |
Shutdown startup | 2 | 12.4 | 2 | 22.2 | 1 | 3.4 | 11 | 10.0 |
Test value | 1.759 | 2.336 | 16.542 | 8.552 | ||||
p value | 0.810 | 0.673 | 0.001 | 0.070 |
Physical Environment | Technological Environment | Adverse Mental States | Personal Readiness | Crew Resource Management | ||||||
---|---|---|---|---|---|---|---|---|---|---|
n | % | n | % | n | % | n | % | n | % | |
Maintenance repair | 14 | 36.8 | 26 | 22.2 | 6 | 25.0 | 12 | 54.6 | 9 | 28.1 |
Process | 11 | 28.9 | 49 | 41.9 | 13 | 54.2 | 5 | 22.7 | 12 | 37.5 |
Loading unloading | 4 | 10.5 | 18 | 15.4 | 3 | 12.5 | 5 | 22.7 | 6 | 18.8 |
Storage | 6 | 15.8 | 5 | 4.3 | 1 | 4.2 | - | - | 2 | 6.3 |
Shutdown startup | 3 | 7.9 | 19 | 16.2 | 1 | 4.2 | - | - | 3 | 9.4 |
Test value | 8.876 | 11.157 | 2.655 | 10.700 | 0.590 | |||||
p value | 0.055 | 0.025 | 0.615 | 0.019 | 0.975 |
Decision Errors | Skill-Based Errors | Perceptual Errors | Routine Violations | Exceptional Violations | ||||||
---|---|---|---|---|---|---|---|---|---|---|
n | % | n | % | n | % | n | % | n | % | |
Maintenance repair | 20 | 57.1 | 54 | 32.0 | 14 | 26.4 | 28 | 37.8 | 8 | 20.0 |
Process | 4 | 11.4 | 55 | 32.5 | 16 | 30.2 | 19 | 25.7 | 16 | 40.0 |
Loading unloading | 5 | 14.3 | 35 | 20.7 | 11 | 20.8 | 16 | 21.6 | 9 | 22.5 |
Storage | 1 | 2.9 | 11 | 6.5 | 8 | 15.1 | 1 | 1.4 | 2 | 5.0 |
Shutdown startup | 5 | 14.3 | 14 | 8.3 | 4 | 7.5 | 10 | 13.5 | 5 | 12.5 |
Test value | 12.304 | 2.296 | 7.772 | 5.849 | 4.680 | |||||
p value | 0.011 | 0.681 | 0.093 | 0.207 | 0.308 |
The Operations | r | p |
---|---|---|
Organizational Influences | ||
Resource Management | 0.139 * | 0.036 |
Organizational Climate | 0.006 | 0.923 |
Organizational Process | −0.125 | 0.060 |
Unsafe Supervision | ||
Planned Inappropriate Operations | 0.017 | 0.833 |
Failure to Correct Problem | 0.012 | 0.876 |
Supervisory Violations | −0.144 | 0.066 |
Inadequate Supervision | 0.100 | 0.202 |
Preconditions for Unsafe Acts | ||
Physical Environment | −0.028 | 0.674 |
Technological Environment | 0.146 * | 0.025 |
Adverse Mental States | −0.040 | 0.539 |
Physical Mental Limitations | −0.084 | 0.199 |
Adverse Physiological States | - | - |
Personal Readiness | −0.164 * | 0.012 |
Crew Resource Management | 0.008 | 0.909 |
Unsafe Acts | ||
Decision Errors | −0.098 | 0.059 |
Skill-Based Errors | −0.009 | 0.862 |
Perceptual Errors | 0.065 | 0.210 |
Routine Violations | −0.026 | 0.618 |
Exceptional Violations | 0.067 | 0.200 |
Parameter Name | B | Std. Error | 95% Wald Confidence Interval | Test of Hypothesis | |||
---|---|---|---|---|---|---|---|
Min. | Max. | Wald Chi-Square | df | p | |||
Resource Management | 0.248 | 0.170 | −0.085 | 0.580 | 2.126 | 1 | 0.145 |
Technological Environment | −0.118 | 0.182 | −0.476 | 0.240 | 0.417 | 1 | 0.518 |
Personal Readiness | 0 a | ||||||
Dummy | −0.284 | 0.169 | −0.615 | 0.046 | 2.843 | 1 | 0.092 |
Value = 1.00 | 0 | ||||||
(Scale) | 1 |
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Yalcin, E.; Ciftcioglu, G.A.; Guzel, B.H. Human Factors Analysis by Classifying Chemical Accidents into Operations. Sustainability 2023, 15, 8129. https://doi.org/10.3390/su15108129
Yalcin E, Ciftcioglu GA, Guzel BH. Human Factors Analysis by Classifying Chemical Accidents into Operations. Sustainability. 2023; 15(10):8129. https://doi.org/10.3390/su15108129
Chicago/Turabian StyleYalcin, Esra, Gokcen Alev Ciftcioglu, and Burcin Hulya Guzel. 2023. "Human Factors Analysis by Classifying Chemical Accidents into Operations" Sustainability 15, no. 10: 8129. https://doi.org/10.3390/su15108129
APA StyleYalcin, E., Ciftcioglu, G. A., & Guzel, B. H. (2023). Human Factors Analysis by Classifying Chemical Accidents into Operations. Sustainability, 15(10), 8129. https://doi.org/10.3390/su15108129