Journal of Systems Engineering and Electronics ›› 2024, Vol. 35 ›› Issue (5): 1190-1210.doi: 10.23919/JSEE.2024.000114
• SYSTEMS ENGINEERING • Previous Articles Next Articles
Wei LI(), Yue WANG(), Lijuan JIA(), Senran PENG(), Ruixi HE()
Received:
2022-10-12
Online:
2024-10-18
Published:
2024-11-06
Contact:
Lijuan JIA
E-mail:18522191168@163.com;wangyue@bit.edu.cn;jlj@bit.edu.cn;pengsenran1997@163.com;cheneyhe2016@163.com
About author:
Supported by:
Wei LI, Yue WANG, Lijuan JIA, Senran PENG, Ruixi HE. Battlefield target intelligence system architecture modeling and system optimization[J]. Journal of Systems Engineering and Electronics, 2024, 35(5): 1190-1210.
Table 1
Organizational element list"
Organizational node | Organizational element |
Reconnaissance sensor | Reconnaissance satellite, reconnaissance sensor of reconnaissance aircraft, reconnaissance drone, radar detection end, reconnaissance sensor of reconnaissance vehicle, reconnaissance sensor of the reconnaissance ship |
Sensor console | Satellite earth station, reconnaissance console of reconnaissance aircraft, UAV ground station, radar console, reconnaissance console of reconnaissance vehicle, reconnaissance console of the reconnaissance ship |
Intelligence center | Intelligence center |
Client | Command post, weapon platform, combat unit |
Table 2
Running resources list of organization nodes"
Organizational node | Running resource |
Reconnaissance sensor | Photoelectric sensors, radar, positioning and ranging equipment, electronic reconnaissance sensors, sonar sensors, information transceiver equipment |
Sensor console | Reconnaissance data preprocessing module, reconnaissance data positioning and identification processing module, information transceiver equipment, sensor control module |
Intelligence center | Information transceiver equipment, intelligence fusion module, intelligence storage module, intelligence distribution module, command and control module |
Client | Information transceiver equipment, information display equipment, fire control system, human-computer interaction equipment |
Table 3
Operational information flow matrix"
Serial number | Information element | Source node | Source node activity | Destination node | Destination node activity |
1 | Demand information | Clients | Propose intelligence demands | Intelligence center | Develop reconnaissance plans |
2 | Reconnaissance order | Intelligence center | Give reconnaissance orders | Sensor consoles | Control reconnaissance sensor |
3 | Control commands | Sensor consoles | Control reconnaissance sensor | Reconnaissance sensors | Conduct reconnaissance |
4 | Target reconnaissance data | Reconnaissance sensors | Sending data | Sensor consoles | Receive data |
5 | Target identification and positioning information | Sensor consoles | Send processed intelligence information | Intelligence center | Receive intelligence information |
6 | Intelligence products | Intelligence center | Distribute intelligence products | Clients | Receive and display intelligence products |
Table 4
List of running actions of organization nodes"
Organizational node | Running action |
Reconnaissance sensor | Conduct reconnaissance Send data to the sensor console |
Sensor console | Control sensors start reconnaissance Preprocess reconnaissance data Determine whether the data meets the processing requirements Conduct identification and positioning processing Send intelligence information to intelligence center |
Intelligence center | Develop reconnaissance plans Assign reconnaissance tasks, give reconnaissance orders Fuse and process target intellifence Determine whether the target intelligence meets the mission requirements Storage and distribute targeted intelligence products |
Client | Propose intelligence demands Receive and display intelligent content |
Table 5
List of running information elements"
Organization node that generates information | Information element |
Reconnaissance sensor | Target reconnaissance data: optical image data, radar detection data, electromagnetic radiation source signal data, distance measurement data, sonar detection data |
Sensor console | Control commands Target identification and positioning information |
Intelligence center | Reconnaissance order Intelligence products |
Client | Demand information |
Table 6
List of system functions corresponding to running actions"
Running action | System function |
Reconnaissance | Optical photo reconnaissance function Radar detection reconnaissance function Electronic reconnaissance function Distance measuring function Sonar detection reconnaissance function |
The sensor console controls the sensor to start reconnaissance | Control sensor function |
Preprocessing of reconnaissance data | Reconnaissance data preprocessing function |
Identification and location processing of reconnaissance data | Reconnaissance data identification processing function Reconnaissance data location processing function |
Develop reconnaissance plans | Develop reconnaissance plan function |
Perform target intelligence fusion processing | Perform target intelligence fusion processing function |
Store and distribute target intelligence | Target intelligence storage function Target intelligence distribution function |
Receive and display intelligent content | Demonstrate target intelligence product function |
Table 7
System technology and skills forecast"
Optimization direction | Predictive technology 1 | Predictive technology 2 | Predictive technology 3 |
Intelligence processing function | Data annotation accumulation, building target datasets [ | Automatic target recognition and positioning processing technology [ | − |
Intelligence fusion function | Intelligence information automatic fusion technology [ | − | − |
Intelligence distribution function | Intelligent distribution technology [ | − | − |
Information interaction function | New generation data link technology [ | − | − |
Security and confidentiality function | Blockchain technology [ | General computing platform localization technology [ | − |
Command and control function | Intelligent intelligence staff technology [ | Unmanned platform collaborative command and control technology [ | − |
Information system computing architecture | Cloud computing technology [ | Edge computing technology [ | Fog computing technology [ |
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