Publication | Closed Access
SDOA-Net: An Efficient Deep-Learning-Based DOA Estimation Network for Imperfect Array
38
Citations
46
References
2024
Year
Wireless CommunicationsImperfect ArrayConvolutional Neural NetworkSuper-resolution Doa NetworkMachine LearningEngineeringSensor ArraySmart AntennaSparse Neural NetworkRadar Signal ProcessingSynthetic Aperture RadarComputer EngineeringComputer ScienceDeep LearningNeural Architecture SearchSignal ProcessingRadarArray ProcessingSdoa-net UsesDoa EstimationChannel Estimation
The estimation of direction of arrival (DOA) is a crucial issue in conventional radar, wireless communication, and integrated sensing and communication (ISAC) systems. However, low-cost systems often suffer from imperfect factors, such as antenna position perturbations, mutual coupling effect, inconsistent gains/phases, and non-linear amplifier effect, which can significantly degrade the performance of DOA estimation. This paper proposes a DOA estimation method named super-resolution DOA network (SDOA-Net) based on deep learning (DL) to characterize the realistic array more accurately. Unlike existing DL-based DOA methods, SDOA-Net uses sampled received signals instead of covariance matrices as input to extract data features. Furthermore, SDOA-Net produces a vector that is independent of the DOA of the targets but can be used to estimate their spatial spectrum. Consequently, the same training network can be applied to any number of targets, reducing the complexity of implementation. The proposed SDOA-Net with a low-dimension network structure also converges faster than existing DL-based methods. The simulation results demonstrate that SDOA-Net outperforms existing DOA estimation methods for imperfect arrays. The SDOA-Net code is available online at https://github.coni/chenpengseu/SDOA-Netgit.
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