Title :
Adaptive multi-objective Optimization scheme for cognitive radio resource management
Author :
AlQerm, Ismail ; Shihada, Basem
Author_Institution :
CEMSE Div., KAUST, Thuwal, Saudi Arabia
Abstract :
Cognitive Radio is an intelligent Software Defined Radio that is capable to alter its transmission parameters according to predefined objectives and wireless environment conditions. Cognitive engine is the actuator that performs radio parameters configuration by exploiting optimization and machine learning techniques. In this paper, we propose an Adaptive Multi-objective Optimization Scheme (AMOS) for cognitive radio resource management to improve spectrum operation and network performance. The optimization relies on adapting radio transmission parameters to environment conditions using constrained optimization modeling called fitness functions in an iterative manner. These functions include minimizing power consumption, Bit Error Rate, delay and interference. On the other hand, maximizing throughput and spectral efficiency. Cross-layer optimization is exploited to access environmental parameters from all TCP/IP stack layers. AMOS uses adaptive Genetic Algorithm in terms of its parameters and objective weights as the vehicle of optimization. The proposed scheme has demonstrated quick response and efficiency in three different scenarios compared to other schemes. In addition, it shows its capability to optimize the performance of TCP/IP layers as whole not only the physical layer.
Keywords :
cognitive radio; error statistics; genetic algorithms; learning (artificial intelligence); software radio; telecommunication network management; transport protocols; AMOS; TCP/IP stack layer; adaptive genetic algorithm; adaptive multiobjective optimization scheme; bit error rate; cognitive engine; cognitive radio resource management; constrained optimization modeling; cross-layer optimization; fitness function; machine learning technique; power consumption minimization; software defined radio; spectral efficiency; throughput maximization; Bit error rate; Minimization; Optimization; Quality of service; Sociology; Statistics; Throughput; Cross-layer optimization; cognitive radio; genetic algorithm; radio adaptation; transmission parameters;
Conference_Titel :
Global Communications Conference (GLOBECOM), 2014 IEEE
Conference_Location :
Austin, TX
DOI :
10.1109/GLOCOM.2014.7036916