According to the Ministry of Agriculture of the Republic of Indonesia (2019), it was informed that foreign exchange earned from oil palm decreased by 20%, this was due to the large number of old plants that were less productive and also many plants affected by disease. In order to increase oil palm productivity, the President of the Republic Indonesia given Instruction No. 6 of 2019 concerning the National Action Plan for Sustainable Oil Palm Plantations for 2019-2024, with one of the actions to increase national oil palm productivity being strengthened data, coordination, and infrastructure. The aim of this study is to produce mapping of oil palm age based on Google Earth Engine (GEE) toward one data oil palm management. The methodology includes data collection, georeferencing, estimation of oil palm age, and visualization. The result showed mapping and visualization of spatial distribution of oil palm age in Indonesia. For further direction, the oil palm age mapping will be integrated with geodatabase one oil palm data management.

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