OFR-113C-93 Coal Mine Injury Analysis: A Model For Reduction Through Training - Volume IV: Analytical Techniques For Mine Safety Management

The National Institute for Occupational Safety and Health (NIOSH)
R. V. Ramani
Organization:
The National Institute for Occupational Safety and Health (NIOSH)
Pages:
69
File Size:
22678 KB
Publication Date:
Jan 1, 1993

Abstract

One area of study in the Coal Mine Injury Analysis project was to illustrate and enhance the ability of mine safety management personnel to apply analytical techniques to injury experience data and to justify requests for funds for safety enhancement actions on a cost/benefit and other quantitative basis. Four volumes of this final project report detail (1) the objective and scope of the mine safety management research, (2) the results of literature review, and case studies, and (3) models developed for mine safety management. The four volumes are titled as Volume III: Mine Safety Management, Volume IV: Analytical Techniques for Mine Safety Management; Volume V: Mine Safety Management Case Studies and Volume IX: Training Cost Model. In this volume, the following material is presented: (i) review of related literature, (ii) mathematical models to perform quantitative analyses of accident/ injury experience data using the tools and techniques of risk analysis, time series analysis, and the Markov process, and (iii) descriptions of the HDBSEL and ACIM programs which are used to perform accident/injury experience analyses and cost analyses, respectively.
Citation

APA: R. V. Ramani  (1993)  OFR-113C-93 Coal Mine Injury Analysis: A Model For Reduction Through Training - Volume IV: Analytical Techniques For Mine Safety Management

MLA: R. V. Ramani OFR-113C-93 Coal Mine Injury Analysis: A Model For Reduction Through Training - Volume IV: Analytical Techniques For Mine Safety Management. The National Institute for Occupational Safety and Health (NIOSH), 1993.

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