Abstract:
In a limited radio spectrum, the future wireless technologies are supposed to deliver multimedia services such as video, data, and audio with a high data rate and virtually error free communication. The performance of radio signals that propagate through the wireless channel is limited by multipath fading, noise and interference and thus affect the signal quality. Adaptive coding and modulation (ACM) plays a vital role in improving the performance of wireless communication by adapting its transmission parameters such as coding rate and modulation order based on the quality of the wireless channel.
Adaptive coding and modulation with Orthogonal Frequency Division Multiplexing (OFDM) systems allow the efficient use of available bandwidth to maximize data rate. In ACM techniques, both code rate and modulation order are varied dynamically to adapt the time-varying channel to improve capacity and reduce bit error rate (BER) in contrast to fixed systems that either enhance spectral efficiency or minimize BER. Due to the complexity and the uncertainty of the wireless channel, the conventional adaptive techniques, do not cope with the changing environment. Soft computing techniques, which do not require highly non-linear mathematical models, are commonly used to control and model uncertain systems. The fuzzy logic-based ACM is good in decision-making in an uncertain environment and performs better than adaptive and non-adaptive techniques but cannot learn from training examples. The neuro-fuzzy based approach combines the merits of both neural networks and fuzzy logic system. The neuro-fuzzy system grasps the learning capability of the artificial
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neural networks to enhance the intelligent system’s performance using a priori knowledge.
A special neuro-fuzzy method termed adaptive network based fuzzy inference system (ANFIS) is used as the model in our proposed algorithm. In this thesis, a neuro-fuzzy based adaptive coding and modulation for OFDM wireless systems is proposed and simulated in MATLAB environment. By analyzing the simulation results, the neuro-fuzzy based model shows an average of 25.03% data rate/spectral efficiency improvement compared to the existing fuzzy logic model. It also shows that, the proposed approach outperforms compared to neural networks, adaptive and non-adaptive techniques such that the BER and total transmit power remain under certain thresholds.