Many real-world scenarios for massive machine-type communication involve sensors monitoring a physical phenomenon. As a consequence, the activity pattern of these sensors will be correlated. In this letter, we study how the correlation of user activities can be exploited to improve detection performance in grant-free random access systems where the users transmit pilot-hopping sequences and the detection is performed based on the received energy. We show that we can expect considerable performance gains by adding regularizers, which take the activity correlation into account, to the non-negative least squares, which has been shown to work well for independent user activity.
翻译:大规模机器式通信的许多现实世界情景涉及传感器监测物理现象,因此,这些传感器的活动模式将相互关联。在本信中,我们研究如何利用用户活动的相关性来提高无赠与随机访问系统的检测性能,在这些系统中,用户传输试点选择序列,并根据接收的能量进行检测。我们表明,通过将活动相关性考虑在内的规范化器添加到非负最小的方形上,我们可以期望通过将活动相关性纳入非负最小方形,从而取得相当大的绩效收益。