Identifying Risk Factors from MSHA Accidents and Injury Data Using Logistic Regression "Mining, Metallurgy & Exploration (2021)"

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 19
- File Size:
- 2594 KB
- Publication Date:
- Nov 3, 2020
Abstract
The global mining industry has recorded significant declines in accident and injury rates attributed to the advancement in
technology, increased enforcement, and safety consciousness. A goal of the mining industry is to achieve zero injury and
occupational illness on all mine sites, prompting increased research into ways to further reduce mine accidents. A machine
learning technique known as multiclass logistic regression is applied on a 10-year injury dataset from the Mine Safety and Health
Administration (MSHA) to determine a miner’s susceptibility to a class of injury and to help identify significant risk factors
associated with different classes of injury. The data is aggregated based on injury classification to provide statistically relevant
results. The analysis identifies specific risk factors that influence a mine worker’s susceptibility to a given class of injury, i.e.,
non-fatal with no days lost or restricted activity, non-fatal with days lost and/or days of restricted work activity, and fatal and total
permanent or partial permanent disability. These factors include miner’s age, mine type (coal vs. non-coal), experience on the
current job (years), shift start time, employment type (operator vs. contractor), mining district, and type of accident. The results of
the analysis indicate that a miner’s experience on the job, i.e., the number of years worked in a current job, is a significant risk to
injury occurrence, even for those with decades of total mining experience. We further show the differences and similarities
between the surface and underground mine incidents.
Citation
APA:
(2020) Identifying Risk Factors from MSHA Accidents and Injury Data Using Logistic Regression "Mining, Metallurgy & Exploration (2021)"MLA: Identifying Risk Factors from MSHA Accidents and Injury Data Using Logistic Regression "Mining, Metallurgy & Exploration (2021)". Society for Mining, Metallurgy & Exploration, 2020.