Doctoral thesis - abstract

A cognitive model for the control of a group of industrial robots
Kleywords: ubiquitous computing, contextual cognition, semantics, probabilistic robotics.

Compared to classical approaches in which robotic systems are programmed for a limited number of activities, systems that rely on the concepts of Ubiquitous Computing can independently predict behaviours in specific situations.
In this thesis a cognitive model for the control of networked robots, based on the contextual perception of the environment is developed. Here, concepts of Ubiquitous Computing that are achieved by developing an appropriate ontology associated with some decision-making mechanisms are used. By developing the ontology for a system of robots, a descriptive model of knowledge to be used in industrial robotic assembly applications is defined. Decision-making mechanisms are based on Descriptive Logic achieved within the ontology and on a Bayesian Network, allowing a sufficient level of abstraction required for making unambiguous decisions appropriate to the current context.









[Hrvatska verzija]

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