Abstract:
The architecture of a human-machine intelligent system has been developed based on a
consortium of intelligent software and cyber-physical agents that perform simulation modeling, decision
making and synthesis of cooperative control of selection and seed production processes. Understanding the
meaningful content and collective decision-making in the production and agrotechnical cycles of breeding and
seed production in systems based on such a computing architecture will be ensured by the work of cooperative
intelligent software agents of general artificial intelligence based on multi-agent neurocognitive architectures.
The developed computational model of a distributed consortium of heterogeneous intelligent agents can be
used to create intelligent expert and collaborative information and control systems that provide a significant
increase in the efficiency of breeding and seed production based on the use of self-learning decentralized
multi-agent neurocognitive systems for controlling the processes of precise selection and seed production.