Data processing: artificial intelligence – Neural network – Learning task
Reexamination Certificate
2007-08-08
2010-10-26
Vincent, David R (Department: 2129)
Data processing: artificial intelligence
Neural network
Learning task
Reexamination Certificate
active
07822697
ABSTRACT:
There is described herein a method for detecting anomalies in an infrastructure, the method comprising: providing a computationally-intelligent analysis model to model a behaviour of at least one detection instrument in said infrastructure; inputting control instrument data into said analysis model, said control instrument data being provided by control instruments in said infrastructure; outputting an estimated behaviour for said at least one detection instrument from said analysis model; comparing actual data from said at least one detection instrument to said estimated behaviour and generating a set of residuals representing a difference between said actual data and said estimated behaviour; and identifying anomalies when said residuals exceed a predetermined threshold.
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Bagchi Ashutosh
Garabedian Armenih
Joshi Anand
Khorasani Khashayar
Sobhani Tehrani Ehsan
Globvision Inc.
Ogilvy Renault LLP
Vincent David R
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