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Performance Study of Cybertwin-Assisted Random Access NOMA

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In this article, a cybertwin-assisted non-orthogonal random access system is presented, where the cybertwins of the physical devices at the access point (AP) collect the devices’ information and decide the… Click to show full abstract

In this article, a cybertwin-assisted non-orthogonal random access system is presented, where the cybertwins of the physical devices at the access point (AP) collect the devices’ information and decide the transmission parameters on behalf of the devices to achieve the maximum system performance. Specifically, the system performance of a p-persistent slotted CSMA system with non-orthogonal multiple access (NOMA) is analyzed, in which wireless devices transmit data to the ensure the received signal strength at the AP side is either high power or low power with certain probabilities. We first develop an analytical framework to quantify the successful transmission probability and the sum data rate as a function of the above probabilities. Accordingly, the feasible region of the number of high power and low power devices to ensure successful transmission is derived. With the analysis, non-convex optimization problems are then formulated to maximize successful transmission probability and the sum data rate, respectively. To tackle the non-convexity, an effective and fast-convergent iterative algorithm is designed to obtain the optimal transmission probabilities for the devices. Extensive simulations are conducted to validate our analytical results and demonstrate the benefits of NOMA in random access networks.

Keywords: transmission; random access; access noma; performance; access; cybertwin assisted

Journal Title: IEEE Internet of Things Journal
Year Published: 2021

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