Information and Navigation College, Air Force Engineering University, Xi'an 710077, China.
Unit 94916 of PLA, Nanjing 211500, China.
Sensors (Basel). 2022 Sep 21;22(19):7141. doi: 10.3390/s22197141.
The traditional carrier-phase differential detection technology mainly relies on the spatial processing method, which uses antenna arrays or moving antennas to detect spoofing signals, but it cannot be applied to static single-antenna receivers. Aiming at this problem, this paper proposes a rotating single-antenna spoofing signal detection method based on the improved probabilistic neural network (IPNN). When the receiver antenna rotates at a constant speed, the carrier-phase double difference of the real signal will change with the incident angle of the satellite. According to this feature, the classification and detection of spoofing signals can be realized. Firstly, the rotating single-antenna receiver collects carrier-phase values and performs double-difference processing. Then, we construct an IPNN model, whose smoothing factor can be adaptively adjusted according to the type of failure mode. Finally, we use the IPNN model to realize the classification and processing of the carrier-phase double-difference observations and obtain the deception detection results. In addition, in order to reflect that the method has a certain practical value, we simulate the spoofing scenario of satellite signals and effectively identify abnormal satellite signals according to the detection results of the inter-satellite differential combination. Actual experiments indicate that the detection accuracy of the proposed method for spoofing signals reaches 98.84%, which is significantly better than the classical probabilistic neural network (PNN) and back-propagation neural network (BPNN), and the method can be implemented in fixed base station receivers for the real-time detection of forwarding spoofing.
传统的载波相位差分检测技术主要依赖于空域处理方法,该方法使用天线阵列或移动天线来检测欺骗信号,但无法应用于静态单天线接收器。针对这一问题,本文提出了一种基于改进概率神经网络(IPNN)的旋转单天线欺骗信号检测方法。当接收器天线以恒定速度旋转时,真实信号的载波相位双差会随卫星入射角的变化而变化。根据这一特征,可以实现对欺骗信号的分类和检测。首先,旋转单天线接收器采集载波相位值并进行双差处理。然后,我们构建一个 IPNN 模型,其平滑因子可以根据故障模式的类型自适应调整。最后,我们使用 IPNN 模型对载波相位双差观测值进行分类和处理,得到欺骗检测结果。此外,为了体现该方法具有一定的实用价值,我们模拟了卫星信号的欺骗场景,并根据星间差分组合的检测结果有效识别异常卫星信号。实际实验表明,所提方法对欺骗信号的检测精度达到 98.84%,明显优于经典概率神经网络(PNN)和反向传播神经网络(BPNN),该方法可在固定基站接收器中实现转发欺骗的实时检测。