DocumentCode
340455
Title
SEIDAM: a flexible and interoperable metadata-driven system for intelligent forest monitoring
Author
Goodenough, David G. ; Charlebois, Daniel ; Bhogal, A. S Pal ; Dyk, Andrew ; Skala, Matthew
Author_Institution
Natural Resources Canada, Pacific Forestry Centre, Victoria, BC, Canada
Volume
2
fYear
1999
fDate
1999
Firstpage
1338
Abstract
The Advanced Forest Technologies Group at the Pacific Forestry Centre is continuing to develop a System of Experts for Intelligent Data Management (SEIDAM). SEIDAM manages large amounts of remotely sensed and GIS data and processes information for intelligent forest management and inventory updates. SEIDAM uses artificial intelligence (planning, case-based reasoning, software agents and machine learning) with previously captured domain expertise. SEIDAM uses a Prolog expert system shell called RESHELL. In order to manage and process natural resource information, SEIDAM relies on metadata that describes GIS data, field data and heterogeneous, multi-temporal remotely sensed imagery. The authors discuss improvements to SEIDAM. The system is presently composed of a multitude of software agents that currently reside on a LAN. These agents are controlled by SEIDAM´s main expert system and are synchronous in nature. By redesigning the interfaces between SEIDAM agents and the central system, SEIDAM will be able to operate in a distributed asynchronous manner across the Internet by taking advantage of new interchange protocols. For this initial implementation, the authors are concentrating on a suite of agents for automated analysis of AirSAR and AVIRIS data, beginning with the automated management of the hyperspectral and AirSAR meta data
Keywords
artificial intelligence; expert systems; forestry; geophysical signal processing; geophysics computing; software agents; vegetation mapping; Advanced Forest Technologies Group at the Pacific Forestry Centre; GIS data; Prolog expert system shell; RESHELL; SEIDAM; System of Experts for Intelligent Data Management; artificial intelligence; case-based reasoning; expert system; forestry; geophysical measurement technique; intelligent forest monitoring; interoperable metadata-driven system; machine learning; planning; remote sensing; software agent; vegetation mapping; Artificial intelligence; Expert systems; Forestry; Geographic Information Systems; Intelligent agent; Inventory management; Learning systems; Machine learning; Software agents; Technology management;
fLanguage
English
Publisher
ieee
Conference_Titel
Geoscience and Remote Sensing Symposium, 1999. IGARSS '99 Proceedings. IEEE 1999 International
Conference_Location
Hamburg
Print_ISBN
0-7803-5207-6
Type
conf
DOI
10.1109/IGARSS.1999.774623
Filename
774623
Link To Document