Abstract
In order to realize Digital Oil Field, some key problems need to be improved,
esp. accurate and automatic prediction of oilfield development indexes which
may be resolved by designing of intelligent prediction system. With the
shortcoming of inference of system designed by us, automatic inference
problem for a complicated intelligent prediction system was improved using
pattern recognition method. First, intelligent prediction system and the
methods as well as principles of pattern recognition were introduced. Then
the framework of intelligent prediction system based on pattern recognition
was formulated by using technologies and methods of human-computer
interface, fuzzy processing and pattern recognition. Secondly, the knowledge
base was extended as augmented knowledge base with introducing credibility
to measure uncertainty of knowledge. Particularly, the methods and
principles of pattern recognition were used to design two recognizers and
one inferring machine. Moreover, the method of selecting predictive model
based on reasoning of pattern recognition was presented by coupling them and
intelligent prediction system. Finally, the design of improving intelligent
prediction system of oilfield development indexes was simulated. Simulation
result shows that improved system may automatically realize to select
optimal prediction model by computer according to different reservoirs and
different development stages. The results obtained in this thesis will
helpful to design for intelligent prediction system.
Publisher
National Library of Serbia