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Avoiding Interference in Multi-Emitter Environments: A Reinforcement Learning Approach

机译:避免干扰多发射极环境:加强学习方法

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In this paper, we investigate the interference avoidance performance of a single phased-array radar in a multi-emitter environment under a partially observable Markov decision process (POMDP) model. Considering deep Q-network (DQN) and long short term memory (LSTM) networks utilizing deep reinforcement learning algorithm, in the proposed solution, the radar learns how to predict that a certain beam position will incur interference in the next time slot according to its past observations of the estimated direction of arrivals (DoAs). This allows the radar to proactively choose a highly probable vacant beam position. Simulation results show that the proposed neural networks successfully predict vacant beam positions. This significantly reduces the average probability of interference up to 0.1%, which ensures a high reliability in radar systems.
机译:在本文中,我们在部分观察到的马尔可夫决策过程(POMDP)模型下,研究了单分数阵列雷达的干扰避免性能。考虑利用深度加强学习算法的深度Q-Network(DQN)和长期内存(LSTM)网络,在提出的解决方案中,雷达学会了如何预测某个光束位置将根据其下一次时隙产生干扰过去观察估计的抵达方向(DOA)。这允许雷达主动选择高度可能的空隙光束位置。仿真结果表明,建议的神经网络成功地预测空置光束位置。这显着降低了干扰的平均概率高达0.1%,这确保了雷达系统的高可靠性。

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