The paper describes an online deep learning algorithm (ODL) for adaptive modulation and coding in massive MIMO. The algorithm is based on a fully connected neural network, which is initially trained on the output of the traditional algorithm and then incrementally retrained by the service feedback of its output. We show the advantage of our solution over the state-of-the-art Q-learning approach. We provide system-level simulation results to support this conclusion in various scenarios with different channel characteristics and different user speeds. Compared with traditional OLLA, the algorithm shows a 10\% to 20\% improvement in user throughput in the full-buffer case.
翻译:本文描述了用于大型MIMO适应性调制和编码的在线深层次学习算法(ODL) 。 该算法基于一个完全连接的神经网络,该网络最初接受传统算法输出的培训,然后通过输出的服务反馈进行逐步再培训。 我们展示了我们解决方案相对于最先进的Q学习方法的优势。 我们以不同频道特点和不同用户速度的不同情景提供系统级模拟结果来支持这一结论。 与传统的 OLLA 相比, 该算法显示,在全缓冲案例中用户输送量有10到20个百分点的改善。