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FAST DESIGN ALGORITHMS FOR ANTENNA ARRAYS USING MACHINE LEARNING

Programme Reference

22-D-T-TEC-02-c

Status

Closed

Country

Denmark

Start Date

2022

End Date

2024

Programme: Discovery Prime Contractor: TICRA Fond

Description

The work carried out reports on a new machine learning-based software prototype for designing and optimising phased array antennas. The prototype can rapidly and accurately compute excitation coefficients for large-scale antenna arrays across diverse configurations and far-field requirements. The prototype relies on tailored neural networks integrating structural physics and domain knowledge using an encoder-decoder structure. Results indicate that the prototype has a significant potential to outperform traditional synthesis methods, offering a promising new tool for antenna engineers, enabling near real-time design and optimisation for phased antenna arrays.

Application domain: Earth Observation

Technology Domain:
01 - On-board Data Subsystems
06 - RF Subsystems, Payloads and Technologies
09 - Mission Operation and Ground Data Systems
Competence Domain:
05 - End-to-end RF / Optical Systems / Products for Navigation, Comm., Remote Sensing
09 - Digital Engineering for Space Missions
Initial TRL: TRL N/A Target TRL: TRL N/A Achieved TRL: TRL N/A

Public Document:

Executive Summary
PDF

FAST DESIGN ALGORITHMS FOR ANTENNA ARRAYS USING MACHINE LEARNING