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S&M1797 Research Paper of Special Issue https://doi.org/10.18494/SAM.2019.2162 Published: February 18, 2019 Accident Prediction Model Using Environmental Sensors for Industrial Internet of Things [PDF] Jung-Hyok Kwon and Eui-Jik Kim (Received October 15, 2018; Accepted December 3, 2018) Keywords: accident prediction model, association rule, big data, industrial Internet of Things, safety management
We present an accident prediction model using environmental sensors for industrial Internet of Things (IIoT), with the aim of preventing various accidents that occur at construction sites. The model is expressed as association rules generated by analyzing data collected from environmental sensors that periodically measure the changes in their surrounding environment. To develop the prediction model, we conduct the following three steps: preprocessing, association rule generation, and visualization. In the preprocessing step, the continuous value within the dataset is converted into the categorical value. In the association rule generation step, the association rules used for the prediction model are generated to represent the relationship between the accident types and causes. Finally, in the visualization step, the generated association rules are visualized in the form of a matrix plot and network graph. To demonstrate the accident prediction model, we performed an experimental implementation using open-source R. The results show that the generated association rules enable the prediction of various accidents including heatstroke, asphyxiation, collapse, and fire on the basis of the environmental factors of the construction site.
Corresponding author: Eui-Jik KimThis work is licensed under a Creative Commons Attribution 4.0 International License. Cite this article Jung-Hyok Kwon and Eui-Jik Kim, Accident Prediction Model Using Environmental Sensors for Industrial Internet of Things, Sens. Mater., Vol. 31, No. 2, 2019, p. 579-586. |