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低軌電磁監測智能處理框架與關鍵技術綜述

LEO constellation-based electromagnetic monitoring intelligent processing framework and a review of key technologies

  • 摘要: 依托低軌星座構建電磁頻譜監測系統成為實現全球電磁頻譜管理的有效途徑與當前的研究熱點。傳統低軌電磁監測系統架構采用“星上采集與處理”的模式,即衛星對信號進行采集并處理后,將處理的結果回傳到地面。這導致系統性能受限于單星載荷。針對此問題提出采集與處理分離的低軌電磁監測系統智能處理框架,衛星作為數據的轉發節點,僅負責采集信號,地面數據中心對數據進行下一步處理。同時,針對傳統技術方法難以高效處理該架構下地面數據中心海量數據的問題,將深度學習與傳統架構下的關鍵技術進行了有機融合,為實現全球時空連續電磁頻譜監測提供了新的選擇。梳理了基于深度學習的頻譜感知、盲源分離和無源定位三大關鍵技術及其近幾年研究進展;重點討論了各關鍵技術向星座系統遷移的適用性問題與技術核心突破問題,給出了低軌電磁監測系統智能處理框架中關鍵技術的下一步研究建議。

     

    Abstract: The development of an electromagnetic spectrum monitoring (ESM) system based on a low-earth orbit (LEO) constellation has shown to be an effective method of achieving global ESM and is now a research hotspot in several fields. In the classic LEO-based ESM system, the “on-satellite acquisition and processing” architecture is used in which the satellite gathers and analyzes electromagnetic signal data before transmitting the processed results back to the data center on the ground. Although this framework can reduce the transmission pressure on the satellite-ground link, it yields a limited system performance of the single satellite payload. This paper proposes an intelligent processing framework for the LEO-based ESM system with separate acquisition and processing. In this framework, the satellites serve as forwarding nodes for electromagnetic signal data. The satellites are only responsible for acquiring electromagnetic signal data, which is then processed by a data center on the ground. Unlike the traditional framework, this framework delivers massive amounts of raw electromagnetic data to the ground. To address the problem that the massive data in this framework are difficult to process using traditional technical methods, deep learning is organically integrated with the key technologies of the traditional framework. Deep learning provides a new option for realizing global space–time continuous ESM. The three key technologies involved in the proposed framework are spectrum sensing, blind source separation, and passive positioning based on deep learning, and their research progress in recent years has been sorted out. Compared with ground-based systems, constellation-based systems have the following characteristics: (1) the satellites are far away from the radiation source; (2) the satellites are fast; (3) the satellites show long-distance distribution among them; (4) the topology of the constellation is always in high-speed dynamic change. These characteristics cause a significant divergence between their essential technologies and the research of ground-based systems for these technologies. However, the present efforts relating to essential technologies are based on research conducted on ground-based platforms. There is an issue of applicability to consider when immediately transitioning them to the constellation-based system. Thus, the suitability of each important technology for the migration of constellation-based systems is thoroughly examined. The future trajectory of each major technological breakthrough is then investigated. Finally, recommendations for further studies are made based on the leading technologies of the intelligent processing framework for LEO-based ESM systems.

     

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