Improving the security of wireless sensor networks using Game Theory
الموضوعات :Behzad Seif 1 , mohammad goodarzi 2
1 - Department of Computer Engineering, Garmsar branch, Islamic Azad University, Garmsar, IRAN
2 - Mohammad goodarzi ,Computer Engineering Department, Islamic Azad University Garmsar branch, IRAN (m_goodarzi181@yahoo.com).
الکلمات المفتاحية: Game theory, Sleep Prevention Attack, wireless sensor networks, Authentication,
ملخص المقالة :
Today, the use of wireless sensor networks has become very popular in many applications. Due to the connection in wireless sensor networks, it is done wirelessly, so they are naturally insecure and prone to various types of attacks. In the past, various solutions were offered in this regard, each of which had its problems. Therefore, in this proposed solution, an attempt was made to solve these problems. The proposed solution for securing sensor nodes uses authentication based on the ZKP protocol, which has been improved with Interlock, and game theory has also been used to more quickly identify intrusive nodes. One of the most important benefits of the proposed solution is to prevent attacks such as sleep deprivation. The proposed algorithm is able to detect quickly and is able to prevent network damage in the fastest possible time. The proposed solution was implemented and reviewed in MATLAB environment and the studies showed a very good performance of the proposed method.
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