A Hybrid Cognitive System for Radar Monitoring and Control Using the Rasmussen Cognition Model
Authors:
- Dr. James Crowder, CAES APD
-
John Carbone,
Department of Electrical and Computer Engineering, Southern Methodist University
Abstract:
The long-term goal of artificial intelligence (AI) is to provide
machines the capabilities to learn, think and reason like humans. To achieve
these long-term goals, it is necessary to introduce human cognitive-like
abilities into AI systems to create truly self-adaptive artificially intelligent
systems. This marriage of human cognitive skills with “machines” creates
hybrid systems that have characteristics of both. The question becomes,
which human cognitive model is appropriate for hybrid artificial intelligent
systems. The purpose of this paper is to discuss the development of cognitive
models to be infused into a modern radar system to create a Cognitive Radar
System (CRS). The notion of a hybrid artificially intelligent system can be
divided into two main categories: (a) human-in-the-loop systems with hybrid
augmented intelligence requiring human-AI communication/collaboration,
and (b) a cognitive computing-based AI in which a fully cognitive model is
infused into the machine to allow fully autonomous operation. Here, we
discuss the first type, human-in-the-loop cognitive radar systems that provide
intelligent decision support and analysis for radar systems. The design of
hybrid artificial intelligence methods and algorithms are presented with applications
to improvement to modern radar systems, utilizing a Rasmussen
Cognition Model (RCM), which we feel is appropriate for a hybrid cognitive
system utilized to create a Cognitive Radar System (CRS).
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