Quantum software industrial engineering and intelligent cognitive robotics in industry 4.0 as control objects - prototypes of industry 5.0 / 6.0 models: introduction

Автор: Tyatyushkina Olga Yu., Ulyanov Sergey V.

Журнал: Сетевое научное издание «Системный анализ в науке и образовании» @journal-sanse

Статья в выпуске: 1, 2023 года.

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International project Industry 4.0 (based on intelligent cognitive robotics and Internet of Things (IoT) as forth industrial revolution) together with Quantum Software Engineering and Quantum intelligent control implementations (as the third quantum revolution) open new possibilities for the development “wise Industry 5.0” with practically unbounded information resources (based on a new end-to-end information technology of quantum soft computing and small quantum computers for Quantum Internet of Things). A exible manufacturing system (FMS) involving several robots with different capabilities in a shop oor layout context [1-3]. This use case is composed of an automatic production system and a set of manual workstations where the operator can be assisted by cobotic arms for assembly tasks. In this article we consider autonomous and smarm robots with different intelligent and cognitive levels for Industry 4.0 with the application of embedded quantum intelligent controllers as model background of Industry 5.0.

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Cobotic arms, quantum intelligent controllers, sociotechnical cyber-physical robotic systems, industry 5.0

Короткий адрес: https://sciup.org/14128092

IDR: 14128092

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