Constrained Deep Reinforcement Based Functional Split Optimization in Virtualized RANs
Fahri Wisnu Murti, Samad Ali, and Matti Latva-aho

TL;DR
This paper introduces a constrained deep reinforcement learning approach using LSTM-based sequence modeling to optimize functional splits in virtualized RANs, aiming to minimize network costs efficiently in real-time.
Contribution
It proposes a novel constrained deep RL method with sequence-to-sequence policy modeling for real-time functional split optimization in vRANs, addressing large action spaces and system constraints.
Findings
Achieves near-optimal split decisions with real-time inference.
Effectively handles large action spaces using LSTM-based policy.
Demonstrates improved cost minimization on synthetic and real datasets.
Abstract
In virtualized radio access network (vRAN), the base station (BS) functions are decomposed into virtualized components that can be hosted at the centralized unit or distributed units through functional splits. Such flexibility has many benefits; however, it also requires solving the problem of finding the optimal splits of functions of the BSs in such a way that minimizes the total network cost. The underlying vRAN system is complex and precise modelling of it is not trivial. Formulating the functional split problem to minimize the cost results in a combinatorial problem that is provably NP-hard, and solving it is computationally expensive. In this paper, a constrained deep reinforcement learning (RL) approach is proposed to solve the problem with minimal assumptions about the underlying system. Since in deep RL, the action selection is the outcome of inference of a neural network, it…
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