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Cyber-Physical System for Industrial Automation Using Quantum Deep Learning

Anand Singh Rajawat, S. B. Goyal, Pradeep Bedi, Neagu Bogdan Constantin, Maria Simona Raboacă, Chaman Verma

202214 citationsDOI

Abstract

Automation industries are using Industry 4.0 solutions for several reasons. Still, the most important is to make it easier for their employees to get secure information and to work better with people in other departments. The goal of this effort is to improve productivity and efficiency by making it easier to make good decisions at the right time. This will make it possible to make these kinds of improvements. Constraint-based security solutions are becoming increasingly popular as the digital and physical worlds become more connected. Based on the processing speed, the amount of memory that can be used, and the amount of backup power that can be used. The algorithms and security frameworks used in earlier research need many resources. Several researchers have given an overview of the many security problems with the CPS and their studies and recommendations. But constraint-based applications need light security systems that can work with hardware with limited capabilities. We proposed a safety mechanism that can be used with the already-made constraint-based CPS program. To propose Cyber-Physical System for Industrial Automation Using Quantum Deep Learning, We proposed Cyber-Physical System for Industrial Automation that uses Quantum Learning to find attacking patterns.

Topics & Concepts

Computer scienceCyber-physical systemAutomationBackupConstraint (computer-aided design)Computer securityRisk analysis (engineering)EngineeringDatabaseOperating systemMechanical engineeringMedicineBlockchain Technology Applications and SecurityAdvanced Malware Detection TechniquesAdversarial Robustness in Machine Learning
Cyber-Physical System for Industrial Automation Using Quantum Deep Learning | Litcius