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What is outage probablity for weibull fading model? 


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The outage probability for the Weibull fading model is analyzed in several papers. Jiménez et al. analyze the outage probability for a downlink multi-user MIMO NOMA system with Weibull-distributed fading channels. They derive an exact expression for the outage probability and also carry out an asymptotic analysis . Teng et al. propose a satellite-terrestrial Weibull system and analyze the upper bound of the signal-to-noise ratio (SNR) based outage probability. They compare it with the exact outage probability and present simplified theoretical results . Yang et al. study the outage probability for MIMO channels with different Kronecker correlation structures, including the Weibull fading model. They express the outage probability as a representation of the weighted sum of generalized Fox's H functions .

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The paper provides an upper bound analysis of the signal to noise ratio (SNR) based outage probability (OP) for the proposed satellite-terrestrial Weibull system. However, the exact OP is not discussed in the paper.

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