IoT Security and Authentication schemes Based on Machine Learning: Review
This is an incremental survey paper that synthesizes existing research on authentication methods for IoT devices to guide future work in the field.
This paper reviews machine learning-based authentication schemes for IoT security, examining both behavioral biometrics and physical layer authentication approaches and discussing their advantages and challenges regarding accuracy, usability, and security.
With the latest developments in technology, extra and extra human beings depend on their private gadgets to keep their touchy information. Concurrently, the surroundings in which these gadgets are linked have grown to grow to be greater dynamic and complex. This opens the dialogue of if the modern day authentication strategies being used in these gadgets are dependable ample to preserve these user's records safe. This paper examines the distinct consumer authentication schemes proposed to make bigger the protection of exceptional devices. This article is break up into two one of a kind avenues discussing authentication schemes that use both behavioral biometrics or physical layer authentication. This survey will talk about each the blessings and challenges that occur with the accuracy, usability, and standard protection of computing device getting to know strategies in these authentication systems. This article targets to enhance in addition lookup in this subject via exhibiting the more than a few present day authentication models, their schematics, and their results.