A General Architecture for Behavior Modeling of Nonlinear Power Amplifier using Deep Convolutional Neural Network
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Fadhel M. Ghannouchi | Xin Hu | Weidong Wang | Lexi Xu | Mohamed Helaoui | Zhijun Liu | Qinlong Li | Sun Zhang | Wenhua Chen | You Li | Jia Hu | F. Ghannouchi | M. Helaoui | Qinlong Li | Lexi Xu | Weidong Wang | Xin Hu | Jia Hu | Wen-hua Chen | Zhijun Liu | You Li | Sun Zhang
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