Advanced Machine Learning in Secure Authentication for Users in Healthcare Application
DOI:
https://doi.org/10.64229/j3q9mm90Keywords:
Secure Authentication, Users Records, SHA-3 Algorithm, Sustainable Healthcare Systems, SDGAbstract
Networking and data communications technologies have evolved more rapidly thanks to sustainable computing. The idea of developing intelligent health systems is currently taking shape as the Sustainable Healthcare Systems. The study of security for Sustainable Healthcare Systems-based application systems, including such e-healthcare systems, industry automation systems, tactical surveillance systems, and so on, has recently made considerable achievements in the academic world. Chaotic Map assisted SHA-3 algorithm is discovered as a crucial security-control method to the design of Smart Environments. The S-USI assigns a unary-token to the authorised users so they can access the various services offered by a service provider across an IP-enabled distributed system in order to guarantee fidelity. There are many authenticating methods available for cloud-based decentralized systems. The majority of the techniques are still susceptible to security risks like replay attacks, powerful intrusion attempts, user request, and authentication protocols. In order to provide security and privacy, the intelligent healthcare industry described in this study help of sensors and sensor-tag technology. A strong secured based mechanism and well-formed cohabitation protocols proof for ubiquitous cloud services are suggested in order to bolster the authentication process. The significance of the proposed measures is demonstrated to demonstrate the security effectiveness of the suggested method using a formal security analysis. The comparison has been done from the formal verification show that the presented method uses less overhead processing, making it more appropriate for telemedicine hospital information systems.
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