Non-orthogonal multiple access (NOMA) technique is important for achieving a high data rate in next-generation wireless communications. A key challenge to fully utilizing the effectiveness of the NOMA technique is the optimization of the resource allocation (RA), e.g., channel and power. However, this RA optimization problem is NP-hard, and obtaining a good approximation of a solution with a low computational complexity algorithm is not easy. To overcome this problem, we propose the coherent Ising machine (CIM) based optimization method for channel allocation in NOMA systems. The CIM is an Ising system that can deliver fair approximate solutions to combinatorial optimization problems at high speed (millisecond order) by operating optimization algorithms based on mutually connected photonic neural networks. The performance of our proposed method was evaluated using a simulation model of the CIM. We compared the performance of our proposed method to simulated annealing, a conventional-NOMA pairing scheme, deep Q learning based scheme, and an exhaustive search scheme. Simulation results indicate that our proposed method is superior in terms of speed and the attained optimal solutions.
翻译:在下一代无线通信中,非横向多重存取(NOMA)技术对于实现高数据率非常重要。充分利用NOMA技术有效性的一个关键挑战是如何优化资源分配(RA),例如频道和电力。然而,RA优化问题是NP硬的,并且很难以低计算复杂性算法获得一个解决方案的极近近近近。为了克服这一问题,我们提议在NOMA系统中采用一致的Ising机器(CIM)为基础的频道分配优化方法。CIM是一个能通过运行基于相互连接的光子神经网络的优化算法,以高速(毫秒顺序)为组合优化问题提供合理近似解决方案的ISing系统。我们拟议方法的性能是使用CIM模拟模型进行评估的。我们比较了我们拟议方法的模拟射线性能、常规-NOMA配对办法、深Q学习办法和详尽的搜索办法。模拟结果表明,我们拟议的方法在速度和达到的最佳解决办法方面优劣。