Algorithms to Identify Its Own and Surrounding Tunnels for an Underground Mine Tracking Device
Public Domain
-
2010/01/01
-
-
Series: Mining Publications
Details
-
Personal Author:
-
Description:Underground coal mines can be thought of as a large, intersecting tunnel network generally laid out in a grid pattern, often extending for many kilometers or miles. A growing number of underground coal mines are installing miner tracking systems to monitor miners working underground. One of the major challenges for these systems is to provide enough accuracy to be able to pinpoint the location of miners within the working areas of the mine to the degree that safety is positively impacted. Many current mine tracking systems use a limited number of sensors placed within key tunnels or intersections of the mine as location references to estimate the location of a tracking device carried by the mine worker. The accuracy of those systems could be less than 15 m in one area or greater then 300 m in another area of the same mine, depending on the density of the sensors. A greater density of sensors can result in a higher system accuracy, but at a higher installation and maintenance cost. In addition, more sensors imply the need for additional power components and battery backup units, along with the risks those systems introduce in the underground environment. The algorithms presented here can be used for a tracking device to locate the tunnel it is in or nearby tunnels in an area with a lesser density of sensors to improve and maintain the system accuracy. The algorithms operate on a tunnel intersection matrix of a mine. The tunnel intersection matrix is a collection of the locations of tunnel intersections in a global coplanar coordinate system of the mine's tunnel network, and serves as a mine-wide tunnel geometrical layout information source. The algorithms use the information to locate a tracking device's own or tunnels nearby if it cannot locate its own tunnel. The accuracy of the tracking system is hence less dependent on the density of the external sensors. [Description provided by NIOSH]
-
Subjects:
-
Keywords:
-
Series:
-
Publisher:
-
Document Type:
-
Genre:
-
Place as Subject:
-
CIO:
-
Division:
-
Topic:
-
Location:
-
Pages in Document:190-197
-
NIOSHTIC Number:nn:20036705
-
Citation:Proceedings of the ION International Technical Meeting (ITM) 2010, January 25-27, 2010, San Diego, California. Fairfax, VA: The Institute of Navigation, 2010 Jan; :190-197
-
Federal Fiscal Year:2010
-
Peer Reviewed:False
-
Source Full Name:Proceedings of the ION International Technical Meeting (ITM) 2010
-
Collection(s):
-
Main Document Checksum:urn:sha-512:fcd2eb6a855c43a6eb7f60144a0e981d966d947d4411dd86f6470793d13f352774a0a1b2e9745a4b5e9051101d2953d785a87d4f9185334062995b961d78acd5
-
Download URL:
-
File Type:
ON THIS PAGE
CDC STACKS serves as an archival repository of CDC-published products including
scientific findings,
journal articles, guidelines, recommendations, or other public health information authored or
co-authored by CDC or funded partners.
As a repository, CDC STACKS retains documents in their original published format to ensure public access to scientific information.
As a repository, CDC STACKS retains documents in their original published format to ensure public access to scientific information.
You May Also Like