Filters
Results 1 - 1 of 1
Results 1 - 1 of 1.
Search took: 0.032 seconds
Burr, T.; Doak, J.; Howell, J.A.; Martinez, D.; Strittmatter, R.
Los Alamos National Lab., NM (United States). Funding organisation: USDOE, Washington, DC (United States)1996
Los Alamos National Lab., NM (United States). Funding organisation: USDOE, Washington, DC (United States)1996
AbstractAbstract
[en] This report describes work performed during FY 95 for the Knowledge Fusion Project, which by the Department of Energy, Office of Nonproliferation and National Security. The project team selected satellite sensor data as the one main example to which its analysis algorithms would be applied. The specific sensor-fusion problem has many generic features that make it a worthwhile problem to attempt to solve in a general way. The generic problem is to recognize events of interest from multiple time series in a possibly noisy background. By implementing a suite of time series modeling and forecasting methods and using well-chosen alarm criteria, we reduce the number of false alarms. We then further reduce the number of false alarms by analyzing all suspicious sections of data, as judged by the alarm criteria, with pattern recognition methods. This report describes the implementation and application of this two-step process for separating events from unusual background. As a fortunate by-product of this activity, it is possible to gain a better understanding of the natural background
Primary Subject
Secondary Subject
Source
Mar 1996; 39 p; CONTRACT W-7405-ENG-36; Also available from OSTI as DE96008300; NTIS; US Govt. Printing Office Dep
Record Type
Report
Report Number
Country of publication
Reference NumberReference Number
INIS VolumeINIS Volume
INIS IssueINIS Issue