과제정보
본 연구는 APCC의 지원을 통해 수행되었습니다. 아울러, 본 연구는 S2S 데이터베이스로부터 APCC 기후 센터 내 구축된 데이터 인벤토리를 활용하였습니다. 지속적으로 해당 기후예측 자료를 수집하고 갱신해 주신 연구원님께 감사드립니다.
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