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Optimizing Wireless Networks with Deep Unfolding: Comparative Study on Two Deep Unfolding Mechanisms
March 29, 2024, 4:42 a.m. | Abuzar B. M. Adam, Mohammed A. M. Elhassan, Elhadj Moustapha Diallo
cs.LG updates on arXiv.org arxiv.org
Abstract: In this work, we conduct a comparative study on two deep unfolding mechanisms to efficiently perform power control in the next generation wireless networks. The power control problem is formulated as energy efficiency over multiple interference links. The problem is nonconvex. We employ fractional programming transformation to design two solutions for the problem. The first solution is a numerical solution while the second solution is a closed-form solution. Based on the first solution, we design …
abstract arxiv control cs.lg cs.ni efficiency energy energy efficiency interference multiple networks next power study type wireless work
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