A Multi-Level Optimization Framework for Blockchain Security: Integrating Metaheuristics, Reinforcement Learning, and Game Theory

Authors

  • Kassem Danach Basic and Applied Sciences Research Center, Al Maaref University, Beirut, Lebanon
  • Abbas Tarhini Lebanese American University
  • Wael Hosny Fouad Aly College of Engineering and Technology, American University of the Middle East, Kuwait
  • Hussin Jose Hejase Basic and Applied Sciences Research Center, Al Maaref University, Beirut, Lebanon

DOI:

https://doi.org/10.29020/nybg.ejpam.v18i4.6555

Keywords:

Cryptography, machine learning, Metaheuristic

Abstract

Blockchain technology relies on cryptographic mechanisms for transaction security and data integrity. However, the growing computational complexity, high transaction costs, and scalability issues pose significant challenges to blockchain adoption. Traditional cryptographic methods—such as hashing, key generation, encryption, and decryption—introduce excessive computational overhead, leading to energy inefficiencies and increased latency. This research proposes an optimization-driven crypto analysis framework that integrates metaheuristic algorithms, combinatorial optimization, reinforcement learning, and game theory to enhance the efficiency and security of blockchain cryptographic processes. The framework focuses on optimized cryptographic computation, gas fee reduction in smart contracts, security enhancement against cryptanalysis, and improved scalability of consensus mechanisms. Experimental evaluations demonstrate up to 39.4\% reduction in cryptographic execution time, 29.4\% savings in smart contract gas fees, and 33.3\% improvement in decentralization of Proof-of-Stake validators. These results validate the effectiveness of the proposed framework in achieving secure, scalable, and cost-efficient blockchain operations.

Downloads

Published

2025-11-05

Issue

Section

Optimization

How to Cite

A Multi-Level Optimization Framework for Blockchain Security: Integrating Metaheuristics, Reinforcement Learning, and Game Theory. (2025). European Journal of Pure and Applied Mathematics, 18(4), 6555. https://doi.org/10.29020/nybg.ejpam.v18i4.6555