Mine Fire Source Discrimination Using Fire Sensors and Neural Network Analysis (55f50308-9407-4980-bfb6-201496866bae)

- Organization:
- The National Institute for Occupational Safety and Health (NIOSH)
- Pages:
- 5
- File Size:
- 213 KB
- Publication Date:
- Jan 1, 2000
Abstract
Fire experiments were conducted in the Safety Research Coal Mine (SRCM) at the National Institute for Occupational Safety and Health, Pittsburgh Research Laboratory, with coal, diesel-fuel, electrical-cable, conveyor-belt, and metal-cutting fire sources to determine the response of fire sensors to products-of-combustion (POC). Metal oxide semiconductor (MOS) and smoke fire sensors demonstrated an earlier fire detection capability than a CO sensor. This capability was of particular significance for a conveyor-belt fire in which the optical visibility was reduced to 1.52 m with an increase in CO of less than 2 ppm at a distance of 148 m from the fire. Application of a neural-network program to the sensor responses from each type of fire source resulted in correct classifications of coal, diesel-fuel, cable, belt, and metal-cutting combustion with a mean of 96% of the test data correctly classified.
Citation
APA:
(2000) Mine Fire Source Discrimination Using Fire Sensors and Neural Network Analysis (55f50308-9407-4980-bfb6-201496866bae)MLA: Mine Fire Source Discrimination Using Fire Sensors and Neural Network Analysis (55f50308-9407-4980-bfb6-201496866bae). The National Institute for Occupational Safety and Health (NIOSH), 2000.