MsPF-Trans: A Generative Transformer for Multistep Probabilistic Forecasting of Radar Pulse Repetition Interval Sequences

Zihao Wang, Yunjie Li, Zheng Gong, Mengtao Zhu*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

One central purpose of modern electronic receivers is to perform automatic analysis of noncooperative radar signals. There is an urgent need to develop intelligent forecasting algorithms for these devices due to emerging complexity and agility of radar pulse sequences. The increased flexibility and agility of modern radars especially multifunction radars in transmitted pulse sequences with complex interpulse and inner pulse modulations and dynamically varying scheduled waveforms pose great challenges for modern electronic receivers or radar warning receivers for conducting rapid and effective countermeasures. This article considers the pulse-level multistep probabilistic forecasting (MsPF) of noncooperative radar pulse repetition interval (PRI) sequences. At first, the complex intercepted PRI sequences are modeled through state space models with non-Markovian and nonlinear dynamics. Then, a generative Transformer called MsPF-Trans is proposed with consideration of both deterministic and stochastic factors in the received PRI sequences. The MsPF-Trans parameterizes the PRI sequences with non-Markovian and nonlinear temporal structures. A sparse attention module is designed to further facilitate model training and to reduce computational complexity in full attention. Variational inference is utilized in model training. The timestepwise variational lower bound is maximized with minibatch stochastic optimization to obtain estimates of model parameters. Finally, the MsPF is achieved through estimating the parameters of the conditional observation probability density function of each individual pulse in future time steps nonautoregressively. Comprehensive simulation experiments validate the effectiveness, superiority, and robustness of the proposed method against State-of-the-Art methods in terms of forecasting accuracy and adaptation ability to nonideal conditions.

Original languageEnglish
Pages (from-to)1725-1741
Number of pages17
JournalIEEE Transactions on Aerospace and Electronic Systems
Volume61
Issue number2
DOIs
Publication statusPublished - 2025
Externally publishedYes

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