Journal of Systems Engineering and Electronics ›› 2026, Vol. 37 ›› Issue (3): 788-799.doi: 10.23919/JSEE.2026.000106

• CROSS-DOMAIN ELECTROMAGNETIC PERCEPTION AND COMMUNICATION & NETWORKING TECHNOLOGY (PART I) • Previous Articles     Next Articles

Collaborative channel state perception with classification-based correction for heterogeneous networks

Zhiyong ZHAO1,2,*(), Yaozong PAN1(), Zhongyang MAO1,2(), Mengjiao WANG1(), Jianwu XU1()   

  1. 1School of Aviation Combat Service, Naval Aviation University, Yantai 264001, China
    2Key Laboratory of Sea-Air Information Perception and Processing Technology of Shandong Province, Yantai 264001, China
  • Received:2025-12-25 Accepted:2026-05-13 Online:2026-06-18 Published:2026-06-29
  • Contact: Zhiyong ZHAO E-mail:mailzzy@126.com;Panyaozong1284@163.com;freedom_mzy@163.com;tinaw11b10ck@139.com;xjw1225@yeah.net

Abstract:

Accurately sensing the channel state of heterogeneous networks is key to matching users’ diverse service communication demands with the channel state, and is an effective way to improve the utilization efficiency of network resource. However, existing channel state perception methods are not suitable for heterogeneous network, and their perception performance is easily affected by interference uncertainty. In order to achieve channel state perception of heterogeneous networks, this paper adopts a centralized collaborative perception model, where each node obtains local channel state perception results based on statistical pulse parameters at the physical layer. In order to reduce the impact of interference on perception performance, this paper uses the Jousselme distance to quantify the degree of difference among nodes caused by interference. Using the average credibility as a threshold, nodes in the sensing area are classified. On this basis, the local perception results of each node are performed classification-based correction to improve the accuracy and reliability of channel state perception. Simulation results indicate that the proposed method has good adaptability for channel state perception in complex electromagnetic environments. The perception results can accurately reflect the actual channel state, which is conducive to improving the network throughput.

Key words: collaborative perception, heterogeneous networks, classification-based correction, channel state