The Performance Machine Learning Powel-Beale for Predicting Rubber Plant Production in Sumatera

Siska Rama Dani, SR and Solikhun, S and Dadang Priyanto, DP (2023) The Performance Machine Learning Powel-Beale for Predicting Rubber Plant Production in Sumatera. Performance Machine Learning Powel-Beale for Predicting Rubber Plant Production in Sumatra, 2 (1). pp. 29-38. ISSN 2828-5611

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Abstract

This study aims to predict rubber plants in Sumatra; rubber plants have a relatively high economic value; rubber sap must be cultivated because it is a product of the rubber plant, which is the raw material for the rubber industry, so in large quantities. Therefore, rubber sap, the selling value will increase so that it can increase farmers' income. Rubber production in Sumatra experiences ups and downs; therefore, this study aims to predict rubber plants using the Powell-Beale algorithm method, one of the Artificial Neural Network methods often used for data prediction, implemented using Matlab software. That supports it. This study does not discuss the prediction results. Still, it discusses the ability of the Powell-Beale algorithm to make predictions based on datasets of rubber plant production in recent years obtained from the Central Statistics Agency. Based on this data, a network architecture model will be formed and determined, including 6-10-1, 6-15-1, 6-30-1, 6-45-1 and 6-50-1. The best architecture is 6-15-1, with the lowest Performance/MSE test score of 0.00791984

Item Type: Article
Keywords: Artificial Neural NetworkMachine LearningPredictionRubber Plant Production
Subjects: T Technology > T Technology (General)
Divisions: Fakultas Teknik dan Desain > Ilmu Komputer
Depositing User: Dr. Dadang Priyanto, S.Kom.,M.Kom
Date Deposited: 09 Oct 2023 00:31
Last Modified: 09 Oct 2023 00:31
URI: http://repository.universitasbumigora.ac.id/id/eprint/3389

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