PAPR analysis of OFDM system using AI based multiple signal representation methods

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Abstract

OFDM (orthogonal frequency division multiplexing) is widely used in 4th generation applications owing to its robustness in fading environments. The major issues with OFDM systems is the high PAPR (peak-to-average power ratio) of the transmitted signals, it leads to in and out of band distortion. SLM (selective mapping) and PTS (partial transmit sequence) are two key methods for PAPR reduction. Both the methods require exhaustive searching of phase factors to optimize the PAPR, these searches lead to high computational complexity. This paper discusses using optimization based PAPR reduction methods which an be used with PTS for the reduction of computational complexity and search space. In this paper we have analyzed PTS and SLM with particle swarm optimization (PSO), Artificial Bee Colony (ABC) and differential evolution (DE). PAPR and BER (bit error rate) comparison is done for both the cases.

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Shukla, J., Joshi, A., & Tyagi, R. (2019). PAPR analysis of OFDM system using AI based multiple signal representation methods. Telkomnika (Telecommunication Computing Electronics and Control), 17(6), 2983–2991. https://doi.org/10.12928/TELKOMNIKA.v17i6.11511

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