과제정보
이 논문은 2023년 정부(방위사업청)의 재원으로 국방과학연구소의 지원을 받아 수행된 연구임.(UG190055RD)
참고문헌
- https://www.newspim.com/news/view/20230106000810
- https://www.bbc.com/korean/international-49705340
- https://www.darpa.mil/work-with-us/offensive-swarmenabled-tactics
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