A Study on Data Pre-Processing and Accident Prediction Modelling for Occupational Accident Analysis in the Construction Industry
Abstract
:1. Introduction
2. Materials and Methods
2.1. Initial Data and Data Description
2.2. Data Preprocessing
2.2.1. Latent Class Cluster Analysis (LCCA)
2.2.2. Chi-Square Test
2.2.3. Cramer’s V test
2.3. Machine Learning (ML)
2.3.1. Support Vector Machine (SVM)
2.3.2. Ensemble
2.4. Principal Component Analysis (PCA)
3. Results and Analysis
3.1. First Data Preprocessing for Selection of Major Variables
3.2. Second Data Preprocessing for Reduction of Elements
3.3. Prediction of Various Dependent Variables
4. Discussion
4.1. Correlation Analysis between Variables
4.2. Correlation Analysis between Elements
4.3. Analysis of Other Major Variables Influencing Severity
4.3.1. Grouping with LCCA
4.3.2. Visualization with PCA
5. Conclusions
- For construction accident data involving many variables and wide categories, it is possible to identify the most influential variable among many variables by using clustering, chi-square test, and other procedures.
- Because the types or categories of the major variables are numerous, it is difficult to identify meaningful relationships. Therefore, standardization and element grouping can be performed, and the accuracy can be analyzed according to the categories of the variables; through this, an optimal grouping using the fewest elements can be found.
- The correlations between factors can be analyzed by examining the correlations between and contributions of variables, using ML analysis on the optimal variable type and category.
- Through PCA and clustering, the distribution and combinations of variables that contribute to the prediction of each variable can be understood, and we anticipate that effective accident prevention measures can be established by utilizing these results.
- The severity level in the classified list of personal damage was predicted and analyzed, so this study can have some limitations. The more quantitative data such as the days of convalescence for each accident can yield more reliable results.
- There are differences in variables and elements to be filled out because construction accident data are all different in forms managed by countries and companies. Therefore, to apply the analysis method proposed in this study, the data standardization is necessary.
Author Contributions
Funding
Conflicts of Interest
References
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Year/Reference | Methods | Input Data | Output Data | Details |
---|---|---|---|---|
2016/[37] | Random Forest, Stochastic Gradient Tree Boosting | 69 variables, such as construction materials, tools, and equipment. 9 variables, such as work procedure and carelessness | Injured area, energy source, severity | Prediction and accuracy comparison for Machine learning method using 78 construction site parameters |
2019/[8] | Latent Dirichlet Allocation, Support vector machine, Artificial neural network(ANN), Decision Tree | 16 variables such as accident day, month, department, outcome, impact type, injury type, and topic | Injury, near miss, property damage | Emphasized the importance of preprocessing of accident data, reduced variables with chi-square, and predicted accident types |
2020/[1] | Latent Class Cluster Analysis (LCCA), ANN | Categorical (project type, age (interval), occupation, experience (interval), incident case etc.), binary (incident, human factor, hazardous behavior) | Prediction for 6 accident types (recognition of risk, improper use of equipment, insufficient preventive measures, etc.) | By reducing 142 variables down to 60, the severity of construction accidents was predicted. Limitation: only binary variables were reduced |
2020/[38] | K-means Clustering, Principal component analysis (PCA) | Survey based score of 35 questions, considering age, employment type, career, and risk in each country | Construction risk prediction by country | PCA was performed on the survey scores, major components were extracted and grouped by k-means clustering. Limitation: the principal component values of PCA were grouped simply |
Variable | Type | Number of Elements | Element Names |
---|---|---|---|
Accident classification | Categorical | 3 | Injury, death, property damage, etc. |
Headquarter | Categorical | 3 | Housing construction, civil, plant construction |
Process rate | Categorical | 10 | 1–10, 11–20, …, 91–100 |
Year | Categorical | 6 | 2015, 2016, 2017, 2018, 2019, 2020 |
Month | Categorical | 12 | 1–12 |
Day of the week | Categorical | 7 | Monday, Tuesday, Wednesday, Thursday, Friday, Saturday, Sunday |
Hour | Categorical | 19 | Occupational accident occurrence time from 0 to 23:00 in hourly increments |
Age | Categorical | 6 | 20–30, 31–40, 41–50, 51–60, 61–70, 71–80 |
Gender | Binary | 2 | Male, Female |
Type of work | Categorical | 15 | Carpenter, painter, scaffolder, stonemason, safety officer, welder, equipment operator, electric piping equipment worker, landscaper, window worker, structural steel/steel frame worker, concrete worker, tunnel worker, earth worker, woodworker |
Type of accident | Categorical | 10 | Jamming, fall down, fall off, hit, collapse, struck, imbalance and uncontrolled motion, occupational diseases, mutilation/cut/puncture, fire/explosion/blast |
Injured part | Categorical | 12 | Pelvis, ear, eye, leg, multiple head location, foot, hand, brain, mouth, nose, arm, chest/abdomen |
Workplace | Binary | 2 | Internal work, external work |
Assailing materials | Categorical | 21 | Formwork/shores, construction and mining machinery, stair and ladder, metal fine particles/trace elements/dust/fumes, other buildings/structures/etc., end portion and opening, fauna and flora, floor and ground/etc., scaffolding and work plate, equipment/machinery parts and appendages, hand tool nonpowered, container and pack, transporting, lifting equipment, machinery, land transportation, manpower machinery, processing equipment/machinery, natural phenomena (e.g., working environment and atmospheric conditions), material, electrical equipment/parts, debris/garbage, hand tool powered |
Cause of accident | Categorical | 7 | Unsafe work(worker), lack of personal protective equipment(worker), facility defect/collapse(management), lack of safety measures(management), work equipment defect(worker), carelessness(worker), third-party liability(worker) |
Severity | Categorical | 3 | slight injury, serious injury, fatal injury |
Variables | Predictor Importance | Rank | Chi-Square p-Value | Rank | Cramer’s V | Rank | Cluster Group | Selected Variable |
---|---|---|---|---|---|---|---|---|
Accident classification | 0 | 12 | 7.09 × 10−6 | 6 | 0.12 | 10 | X | - |
Headquarter | 0 | 12 | 5.74 × 10−1 | 14 | 0.04 | 14 | O | - |
Process rate | 1.36 × 10−4 | 6 | 4.46 × 10−1 | 12 | 0.10 | 12 | X | - |
Year | 4.46 × 10−4 | 5 | 1.20 × 10−8 | 5 | 0.17 | 5 | O | √ |
Month | 1.06 × 10−4 | 10 | 1.84 × 10−2 | 10 | 0.14 | 8 | X | - |
Day of the week | 0 | 12 | 9.03 × 10−1 | 15 | 0.06 | 13 | X | - |
Hour | 1.29 × 10−4 | 7 | 3.42 × 10−2 | 11 | 0.17 | 6 | X | - |
Age | 4.21 × 10−5 | 11 | 1.17 × 10−2 | 9 | 0.11 | 11 | X | - |
Gender | 1.11 × 10−4 | 9 | 1.73 × 10−4 | 7 | 0.13 | 9 | X | - |
Type of work | 6.65 × 10−4 | 4 | 8.55 × 10−3 | 8 | 0.16 | 7 | O | √ |
Type of accident | 2.07 × 10−3 | 2 | 1.59 × 10−20 | 2 | 0.27 | 2 | O | √ |
Injured part | 7.94 × 10−3 | 1 | 2.36 × 10−78 | 1 | 0.48 | 1 | O | √ |
Work place | 0 | 12 | 5.30 × 10−1 | 13 | 0.04 | 15 | O | - |
Assailing materials | 1.15 × 10−3 | 3 | 1.26 × 10−9 | 4 | 0.25 | 3 | O | √ |
Cause of accident | 1.14 × 10−4 | 8 | 9.76 × 10−11 | 3 | 0.19 | 4 | O | √ |
No. | Case | ML Method | Accuracy | Accuracy (Nested CV Applied) |
---|---|---|---|---|
1 | A-B(15)-C-D(12)-E(21)-F | Ensemble | 72.17% | 70.19% |
SVM | 94.60% | 58.32% | ||
2 | A-B(15)-C-D(12)-E(6)-F | Ensemble | 71.34% | 69.26% |
SVM | 93.98% | 55.87% | ||
3 | A-B(15)-C-D(5)-E(21)-F | Ensemble | 68.02% | 69.57% |
SVM | 93.67% | 55.66% | ||
4 | A-B(15)-C-D(5)-E(6)-F | Ensemble | 68.33% | 69.26% |
SVM | 92.63% | 54.36% | ||
5 | A-B(5)-C-D(12)-E(21)-F | Ensemble | 69.57% | 66.87% |
SVM | 91.28% | 57.54% | ||
6 | A-B(5)-C-D(12)-E(6)-F | Ensemble | 68.54% | 66.87% |
SVM | 89.30% | 56.41% | ||
7 | A-B(5)-C-D(5)-E(21)-F | Ensemble | 67.29% | 66.87% |
SVM | 89.62% | 55.02% | ||
8 | A-B(5)-C-D(5)-E(6)-F | Ensemble | 67.08% | 67.29% |
SVM | 87.54% | 55.45% |
Output Variable | Method | Accuracy | Precision | Recall | F1 Score |
---|---|---|---|---|---|
Year | Ensemble | 34.50% | 41.93% | 26.63% | 32.57% |
SVM | 26.69% | 16.89% | 21.08% | 18.75% | |
Type of work | Ensemble | 66.04% | 30.28% | 21.79% | 25.34% |
SVM | 64.46% | 23.06% | 16.54% | 19.26% | |
Type of accident | Ensemble | 50.34% | 32.05% | 37.12% | 34.40% |
SVM | 37.24% | 28.72% | 19.44% | 23.19% | |
Injured part | Ensemble | 48.86% | 29.31% | 27.10% | 28.16% |
SVM | 45.03% | 36.26% | 22.71% | 27.93% | |
Assailing materials | Ensemble | 53.27% | 28.63% | 33.86% | 31.03% |
SVM | 48.34% | 27.25% | 15.15% | 19.47% | |
Cause of accident | Ensemble | 69.89% | 31.47% | 24.95% | 27.84% |
SVM | 66.24% | 33.51% | 21.08% | 25.88% | |
Severity | Ensemble | 67.29% | 68.60% | 65.14% | 66.82% |
SVM | 55.45% | 52.59% | 54.40% | 53.48% |
Cluster ID | Attributes | Probabilities of Current Cluster | Being Observed (Total) | Being Observed | Percentage | |
---|---|---|---|---|---|---|
Variable | Element | (in the Cluster) | ||||
Cluster 1 | Assailing material | Permanent fixture | 0.594 | 244 | 220 | 90.16% |
Type of accident | Fall down | 0.566 | 250 | 217 | 86.80% | |
Type of accident | Fall off | 0.358 | 174 | 132 | 75.86% | |
Injured part | Outside of the lower body | 0.439 | 271 | 160 | 59.04% | |
Severity | Serious injury | 0.343 | 462 | 240 | 51.95% | |
Cluster 2 | Type of accident | Hit | 0.457 | 157 | 122 | 77.71% |
Type of accident | Struck | 0.313 | 128 | 92 | 71.88% | |
Cause of accident | Third-party liability | 0.657 | 85 | 61 | 71.76% | |
Assailing material | Heavy non-fixture | 0.565 | 337 | 148 | 43.92% | |
Injured part | Outside of the upper body | 0.403 | 395 | 105 | 26.58% | |
Cluster 3 | Type of accident | Mutilation, Cut, Puncture | 0.376 | 71 | 64 | 90.14% |
Assailing material | Light non-fixture (equipment) | 0.531 | 109 | 91 | 83.49% | |
Type of accident | Jamming | 0.357 | 108 | 66 | 61.11% | |
Injured part | Outside of the upper body | 0.871 | 395 | 143 | 36.20% | |
Type of work | Civil | 0.241 | 138 | 43 | 31.16% | |
Cluster 4 | Severity | Fatal injury | 0.961 | 127 | 114 | 89.76% |
Injured part | Inside the upper body | 0.400 | 76 | 47 | 61.84% | |
Injured part | Face | 0.395 | 110 | 46 | 41.82% | |
Year | 2019 | 0.383 | 254 | 88 | 34.65% | |
Type of accident | Fall off | 0.356 | 174 | 42 | 24.14% | |
Cluster 5 | Cause of accident | Unsafe work | 0.825 | 54 | 45 | 83.33% |
Type of accident | Occupational diseases | 0.169 | 11 | 9 | 81.82% | |
Type of accident | Imbalance and uncontrolled motion | 0.778 | 58 | 42 | 72.41% | |
Injured part | Inside the lower body | 0.470 | 111 | 25 | 22.52% | |
Assailing material | Heavy non-fixture | 0.678 | 337 | 37 | 10.98% |
Cluster ID. | Conceptual Definition | Number of Data Entries (Percentage (%)) |
---|---|---|
Cluster 1 | Serious injury to the outside of the lower body from a permanent fixture (floor, etc.) by fall down and fall off accidents | 369(38) |
Cluster 2 | Injury to the outside of the upper body from being hit or struck by a heavy non-fixture (construction material) | 259(27) |
Cluster 3 | Injury due to mutilation, cut, or puncture on the outside of the upper body whilst using light non-fixture (equipment) | 165(17) |
Cluster 4 | Fatal injury on the inside of the upper body and face from fall off | 118(12) |
Cluster 5 | Injury to the inside of the lower body (pelvis) from unbalanced and uncontrolled movements during heavy non-fixture work | 53(6) |
Total | 963(100) |
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Lee, J.Y.; Yoon, Y.G.; Oh, T.K.; Park, S.; Ryu, S.I. A Study on Data Pre-Processing and Accident Prediction Modelling for Occupational Accident Analysis in the Construction Industry. Appl. Sci. 2020, 10, 7949. https://doi.org/10.3390/app10217949
Lee JY, Yoon YG, Oh TK, Park S, Ryu SI. A Study on Data Pre-Processing and Accident Prediction Modelling for Occupational Accident Analysis in the Construction Industry. Applied Sciences. 2020; 10(21):7949. https://doi.org/10.3390/app10217949
Chicago/Turabian StyleLee, Jae Yun, Young Geun Yoon, Tae Keun Oh, Seunghee Park, and Sang Il Ryu. 2020. "A Study on Data Pre-Processing and Accident Prediction Modelling for Occupational Accident Analysis in the Construction Industry" Applied Sciences 10, no. 21: 7949. https://doi.org/10.3390/app10217949
APA StyleLee, J. Y., Yoon, Y. G., Oh, T. K., Park, S., & Ryu, S. I. (2020). A Study on Data Pre-Processing and Accident Prediction Modelling for Occupational Accident Analysis in the Construction Industry. Applied Sciences, 10(21), 7949. https://doi.org/10.3390/app10217949