Abstract:In view of the fact that the current wireless tactical network topology is mainly perceived through protocol analysis, which is difficult to achieve in non-cooperative complex scenarios, a communication relationship mining method based on the physical characteristics and statistical laws of spectrum signals and an improved DBSCAN algorithm is proposed; by analyzing the communication characteristics of spectrum signals in the network, it is determined to select characteristics such as carrier frequency, bandwidth, frequency hopping period and average signal power as signal labels for communication behavior mining, and the improved DBSCAN algorithm is used to adaptively select appropriate clustering parameters to process the data; the target communication relationship is judged by analyzing the clustering results; experimental results show that this method can effectively discover important information such as individual behavior and communication relationship of communication nodes without deciphering the content carried by the spectrum signals, which provides a new research idea for mining and discovering the communication relationship of nodes and has high engineering application value.