Prediksi Masa Simpan Tandan Buah Segar Kelapa Sawit Berbasis Jaringan Saraf Tiruan
Shelf Life Prediction of Oil Palm Fresh Fruit Bunches Using Artificial Neural Networks

Date
2024Author
Sani, Farhan Khalil
Advisor(s)
Fahmi
Siregar, Yulianta
Metadata
Show full item recordAbstract
Indonesia, as one of the world's main producers of palm oil, has a Crude Palm
Oil (CPO) export performance index of 0.94. One of the largest palm oil
producing regions in Indonesia is North Sumatra Province with CPO production
of 5.3 million tons in 2021 which has a growth rate of 2.8% to 5.45 million tons in
2022. One important factor that must be considered before managing oil palm
plants is the process of storing oil palm. The oil palm storage process is the
process when oil palm fruit is collected before being processed or distributed. Oil
Palm that has matured and fallen from the tree will usually rot in about 1 week,
but there is no measuring instrument that can accurately determine when the fruit
becomes rotten, making it difficult to estimate the shelf life which causes the fruit
to rot during the storage and distribution process. This research creates an
innovation to predict the shelf life of palm fruit by utilizing a Multi-Layer
Perceptron artificial neural network. The shelf life prediction is calculated based
on the results of electrical, gas and color resistivity sensor measurements on oil
palm processed using an Arduino nano. The application of artificial neural
networks in predict the shelf life of oil palm fruit achieves an accuracy rate of
98,62% with an MSE value of 0.006 so that the system can predict when palm
fruit will rot quite accurately.
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- Master Theses [167]