A Bayesian Network Model for Reducing Accident Rates of Electrical and Mechanical (E&M) Work
Abstract
:1. Introduction
2. Research on Bayesian Networks
3. Methodology
4. Questionnaire Survey
5. Bayesian Network—Structure Learning
6. Bayesian Network—Parameter Learning
- (1)
- States of “strongly agree” and “agree” are combined into one new state of “(S1) Good”,
- (2)
- the state of “neither agree nor disagree” is changed to be “(S2) Average”, and
- (3)
- the states of “strongly disagree” and “disagree” are integrated as “(S3) poor”.
7. Bayesian Network Analysis Results
7.1. Conditional Probability Table (CPT)
- (1)
- <“working experience” = Short, “workmate influences” = Positive>,
- (2)
- <“working experience” = Short, “workmate influences” = Neutral>,
- (3)
- <“working experience” = Short, “workmate influences” = Negative>,
- (4)
- <“working experience” = Medium, “workmate influences” = Positive>,
- (5)
- <“working experience” = Medium, “workmate influences” = Neutral>,
- (6)
- <“working experience” = Medium, “workmate influences” = Negative>,
- (7)
- <“working experience” = Long, “workmate influences” = Positive>,
- (8)
- <“working experience” = Long, “workmate influences” = Neutral>,
- (9)
- <“working experience” = Long, “workmate influences” = Negative>,
7.2. Bayesian Prediction for E&M RMAA Accidents
7.3. Single Strategy to Reduce the Number of Accidents
7.4. Joint Strategies to Reduce the Number of Accidents
7.5. Diminishing Returns of Improving the Safety Factors
8. Limitations and Area for Future Research
9. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Organization/Trades | Position | |
---|---|---|
1 | Contractor | Safety Manager |
2 | Contractor | Manager |
3 | Property management company | Technical Manager |
4 | Hong Kong government | Deputy Chief Occupational Safety Officer |
5 | Hong Kong government | Senior Manager (Safety and Health) |
6 | Hong Kong government | Senior Structural Engineer |
7 | Self-regulatory body of insurers | Representative |
8 | Quasi-government body | General Manager |
9 | Occupational Safety and Health Council | Principle Consultant |
10 | Construction Industry Institute—Hong Kong | Director |
11 | Private developer | Manager |
12 | Electrical and mechanical contractor | Executive Director |
13 | Utility service company | Safety, Health, Environment and Quality Manager |
Category | Factor | Question |
---|---|---|
Safety Climate Factors | Safety attitudes |
|
Understanding of work risks |
| |
Management commitments |
| |
Safety resources and equipment |
| |
Safety procedures |
| |
Workmate influences |
| |
Personal Factors | Working experience |
|
Smoking habit |
| |
Drinking habit |
| |
Dependent Variable | Number of accidents |
|
No. | Relationship Pairs | References |
---|---|---|
1 | Working experience & Safety attitude | [44,64,67] |
2 | Working experience & Understanding of work risk | [45,68] |
3 | Understanding of work risk & Number of accidents | [69,70] |
4 | Safety attitude & Understanding of work risk | [71] |
5 | Safety attitude & Number of accidents | [44,68] |
6 | Workmate influences & Safety attitude | [45,72,73,74] |
7 | Workmate influences & Drinking habit | [45,60,74] |
8 | Workmate influences & Smoking habit | [74] |
9 | Drinking habit & Number of accidents | [74,75] |
10 | Smoking habit & Number of accidents | [74,76,77] |
11 | Management Commitment & Number of accidents | [37,67] |
12 | Management Commitment & Safety resources and equipment | [61,78] |
13 | Management Commitment & Safety procedures | [45,63] |
14 | Safety resources and equipment & Safety procedures | [63,79,80] |
15 | Safety resources and equipment & Number of accidents | [61,62,67] |
16 | Safety procedures & Number of accidents | [62,64,67,79] |
“Safety Attitude” | Parents’ Node of “Safety Attitude” | |||
---|---|---|---|---|
Good | Average | Bad | Working Experience | Workmate Influences |
0.54 | 0.32 | 0.14 | Short | Positive |
0.45 | 0.48 | 0.07 | Short | Neutral |
0.34 | 0.33 | 0.33 | Short | Negative |
0.79 | 0.08 | 0.13 | Medium | Positive |
0.58 | 0.33 | 0.09 | Medium | Neutral |
0.50 | 0.25 | 0.25 | Medium | Negative |
0.69 | 0.20 | 0.10 | Long | Positive |
0.61 | 0.33 | 0.06 | Long | Neutral |
0.40 | 0.20 | 0.40 | Long | Negative |
Probability at Best Scenario of One Factor | “High” Number of Accidents | Sensitivity on Number of Accidents | |
---|---|---|---|
Original Value | New Value | ||
Safety attitude | 31.8% | 27.8% | 4% |
Safety procedures | 31.8% | 27.9% | 3.9% |
Management commitment | 31.8% | 28.7% | 3.1% |
Understanding of work risk | 31.8% | 28.9% | 2.9% |
Smoking habit | 31.8% | 29.2% | 2.6% |
Safety resources and equipment | 31.8% | 29.6% | 2.2% |
Drinking habit | 31.8% | 29.8% | 2% |
Workmate influences | 31.8% | 30.6% | 1.2% |
Working experience | 31.8% | 31.4% | 0.4% |
Joint Strategy | “High” Number of Accidents | Sensitivity on Number of Accidents | |
---|---|---|---|
Original Value | New Value | ||
(“Safety attitude” = Good) + (“Safety procedures” = Good) | 31.8% | 21% | 10.8% |
(“Safety attitude” = Good) + (“Management commitment” = Good) | 31.8% | 23.8% | 8% |
(“Safety procedures” = Good) + (“Understanding of work risk” = Good) | 31.8% | 24.3% | 7.5% |
Number of Factors with Probability at Best Scenario | “High” Number of Accidents | Percentage of Improvement |
---|---|---|
0 Factor | 31.80% | 0% |
1 Factor | 27.80% | 12.60% |
(“Safety attitude” = Good) | ||
2 Factors | 21% | 24.50% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) | ||
3 Factors | 17.20% | 18.10% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) | ||
4 Factors | 14.30% | 16.90% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) | ||
5 Factors | 12.30% | 14.00% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) + (“Management commitment” = Good) OR | ||
(“Safety resources and equipment” = Good) | ||
6 Factors | 11.20% | 8.90% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) + (“Management commitment” = Good) + | ||
(“Safety resources and equipment” = Good) | ||
7 Factors | 10.70% | 4.50% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) + (“Management commitment” = Good) + | ||
(“Safety resources and equipment” = Good) + | ||
(“Drinking habit” = Not Drinking) | ||
8 Factors | 10.70% | 0% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) + (“Management commitment” = Good) + | ||
(“Safety resources and equipment” = Good) + | ||
(“Drinking habit” = Not Drinking) + | ||
(“Workmate influence” = Positive) OR (“Working experience” = Long”) | ||
9 Factors | 10.70% | 0% |
(“Safety attitude” = Good) + | ||
(“Safety procedures” = Good) + | ||
(“Smoking habit” = Not Smoking) + | ||
(“Understanding of work risk” = Good) + (“Management commitment” = Good) + | ||
(“Safety resources and equipment” = Good) + | ||
(“Drinking habit” = Not Drinking) + | ||
(“Workmate influence” = Positive) + | ||
(“Working experience” = Long”) |
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Chan, A.P.C.; Wong, F.K.W.; Hon, C.K.H.; Choi, T.N.Y. A Bayesian Network Model for Reducing Accident Rates of Electrical and Mechanical (E&M) Work. Int. J. Environ. Res. Public Health 2018, 15, 2496. https://doi.org/10.3390/ijerph15112496
Chan APC, Wong FKW, Hon CKH, Choi TNY. A Bayesian Network Model for Reducing Accident Rates of Electrical and Mechanical (E&M) Work. International Journal of Environmental Research and Public Health. 2018; 15(11):2496. https://doi.org/10.3390/ijerph15112496
Chicago/Turabian StyleChan, Albert P. C., Francis K. W. Wong, Carol K. H. Hon, and Tracy N. Y. Choi. 2018. "A Bayesian Network Model for Reducing Accident Rates of Electrical and Mechanical (E&M) Work" International Journal of Environmental Research and Public Health 15, no. 11: 2496. https://doi.org/10.3390/ijerph15112496
APA StyleChan, A. P. C., Wong, F. K. W., Hon, C. K. H., & Choi, T. N. Y. (2018). A Bayesian Network Model for Reducing Accident Rates of Electrical and Mechanical (E&M) Work. International Journal of Environmental Research and Public Health, 15(11), 2496. https://doi.org/10.3390/ijerph15112496