论文标题
分散的汽车雷达频谱分配,以避免使用增强学习相互干扰
Decentralized Automotive Radar Spectrum Allocation to Avoid Mutual Interference Using Reinforcement Learning
论文作者
论文摘要
如今,汽车雷达之间的相互干扰已成为广泛关注的问题。在本文中,提出了分散的频谱分配方法,以避免汽车雷达之间相互干扰。尽管已经在认知无线电传感器网络中广泛研究了分散的频谱分配,但使用雷达的汽车传感器观察到了两个挑战。首先,由于所有雷达都安装在移动的车辆上,因此分配方法应是动态的。其次,每个雷达都不会与其他雷达通信,因此信息的信息非常有限。使用机器学习技术,强化学习,是因为它可以在未知的动态环境中学习决策政策。由于单个雷达观察不完整,因此使用长期的短期记忆复发网络通过时间汇总雷达观测值,以便每个雷达都可以通过结合当前和过去的观测值来学习选择频率子带。进行了仿真实验,以将所提出的方法与其他常见的频谱分配方法(例如随机和近视政策)进行比较,这表明我们的方法表现优于其他方法。
Nowadays, mutual interference among automotive radars has become a problem of wide concern. In this paper, a decentralized spectrum allocation approach is presented to avoid mutual interference among automotive radars. Although decentralized spectrum allocation has been extensively studied in cognitive radio sensor networks, two challenges are observed for automotive sensors using radar. First, the allocation approach should be dynamic as all radars are mounted on moving vehicles. Second, each radar does not communicate with the others so it has quite limited information. A machine learning technique, reinforcement learning, is utilized because it can learn a decision making policy in an unknown dynamic environment. As a single radar observation is incomplete, a long short-term memory recurrent network is used to aggregate radar observations through time so that each radar can learn to choose a frequency subband by combining both the present and past observations. Simulation experiments are conducted to compare the proposed approach with other common spectrum allocation methods such as the random and myopic policy, indicating that our approach outperforms the others.