ANN: Model of Back-Propagation Architecture on the Logs Production by Type of Wood

Muhammad Noor Hasan Siregar(1*),

(1) Universitas Graha Nusantara, Padangsidimpuan, Sumatera Utara
(*) Corresponding Author

Abstract


Indonesia is rich in forest products. The production forest is a forest area that can be utilized for the community, such as logs, rattan, and some forest plants that have high economic value. This research aims to make the best architectural model by using artificial neural network. The method used is backpropagation algorithm. With this model it will continue to predict the output of logs. Data are sourced from BPS-Statistics Indonesia. Based on the results of research results of logs production using backpropogation method, obtained the result of 3 model architecture (18-18-1, 18-25-1 and 18-18-25- 1) that model of architecture 18- 25-1 is the best model with 72% accuracy, MSE: 0.0221670942 and epochs: 660.


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DOI: https://doi.org/10.30645/ijistech.v1i2.12

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