M. Edwin Syahputra Lubis
Jurnal Penelitian Kelapa sawit

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PENGGUNAAN MODEL JARINGAN SARAF TIRUAN (ARTIFICIAL NEURON NETWORK) UNTUK MEMPREDIKSI HASIL TANDAN BUAH SEGAR (TBS) KELAPA SAWIT BERDASAR CURAH HUJAN DAN HASIL TBS SEBELUMNYA Iman Yani Harahap; M. Edwin Syahputra Lubis
Jurnal Penelitian Kelapa Sawit Vol 26 No 2 (2018): Jurnal Penelitian Kelapa Sawit
Publisher : Pusat Penelitian Kelapa Sawit

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (1814.848 KB) | DOI: 10.22302/iopri.jur.jpks.v26i2.42

Abstract

Abstract. To predict oil palm yield in 2018 at 4 Indonesian Oil Palm Research Institue field Trial Plantation (Padang Mandarsah, Dalu-dalu, Bukit Sentang, and Aek Pancur), then it was built an Artificial Neuron Network (ANN) model. The data used were monthly yield and rainfall during 2013-2017. The model output taking by the relation of non-linear Autoregressive to the rainfall external input (NARX). The model built processing including training using the data 2013-2015, validation using the data 2016, testing using the data 2017. From the testing model result, were taken a good fit model architecture n-d-h-o (variable input,n ; d-tapped delayed , d, node hidden, h; output layer, o) and correlation coefficient (r) between output model and actual data for each plantation. Padang Mandarsah 2-3-4-1 with r= 0,84 ; Dalu-dalu 2-24-5-1 with r = 0,74; Bukit Sentang 2-24-10-1 with r = 0,84, and Aek Pancur 2-3-5-1 with r = 0,86.