과제정보
This publication resulted (in part) from research supported by: (1)The Ministry of Research, Technology and Higher Education of the Republic of Indonesia for the 2022 fiscal year under Contract Number 158/E5/PG.02.00.PT/2022, 001/LL6/PB/AK.04/2022 and (2)Universitas Kristen Satya Wacana under Contract Number 171/SPK-PDKN/PR V/5/2022.
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