Litcius/Paper detail

Machine–learning‐enabled metasurface for direction of arrival estimation

Min Huang, Bin Zheng, Tong Cai, Xiaofeng Li, Jian Liu, Chao Qian, Hongsheng Chen

2022Nanophotonics89 citationsDOIOpen Access PDF

Abstract

Abstract Metasurfaces, interacted with artificial intelligence, have now been motivating many contemporary research studies to revisit established fields, e.g., direction of arrival (DOA) estimation. Conventional DOA estimation techniques typically necessitate bulky‐sized beam‐scanning equipment for signal acquisition or complicated reconstruction algorithms for data postprocessing, making them ineffective for in‐situ detection. In this article, we propose a machine‐learning‐enabled metasurface for DOA estimation. For certain incident signals, a tunable metasurface is controlled in sequence, generating a series of field intensities at the single receiving probe. The perceived data are subsequently processed by a pretrained random forest model to access the incident angle. As an illustrative example, we experimentally demonstrate a high‐accuracy intelligent DOA estimation approach for a wide range of incident angles and achieve more than 95% accuracy with an error of less than . The reported strategy opens a feasible route for intelligent DOA detection in full space and wide band. Moreover, it will provide breakthrough inspiration for traditional applications incorporating time‐saving and equipment‐simplified majorization.

Topics & Concepts

Direction of arrivalComputer scienceRange (aeronautics)SIGNAL (programming language)Random forestSignal processingSequence (biology)AlgorithmArtificial intelligenceComputer hardwareTelecommunicationsEngineeringDigital signal processingAerospace engineeringAntenna (radio)BiologyProgramming languageGeneticsIndoor and Outdoor Localization TechnologiesMetamaterials and Metasurfaces ApplicationsSpeech and Audio Processing