应用反向传播人工神经网络预测棕榈油价格

Edi Ismanto, Noverta Effendi, Eka Pandu Cynthia
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引用次数: 3

摘要

廖内省是以种植业产品闻名的地区之一,特别是在油棕领域,因此廖内省和各区域都把油棕植物作为廖内省种植园的主要商品。根据廖内省中央统计局(BPS)的数据,廖内省油棕种植园,特别是小农种植园的年产量一直在增加。对全球CPO的需求也是如此。但由于诸多因素的影响,小农油棕鲜果串的销售价格有时会发生变化。我们使用人工神经网络方法,反向传播算法对影响数据的时间序列变量进行训练和测试,即廖内省油棕种植园面积数据;廖内省棕榈油总产量;廖内省棕榈油产量;廖内省棕榈油出口与世界平均棕榈油价格。然后在未来进行价格预测。根据训练和测试结果,得到了具有9个输入层、5个隐藏层和1个输出层的最佳人工神经网络(ANN)体系结构模型。RMSE 0000699的误差值和准确率输出为99.97%,可以根据给定的目标值进行价格预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Backpropagation Artificial Neural Networks to Predict Palm Oil Price Fresh Fruit Bunches
Riau Province is one of the regions known for its plantation products, especially in the oil palm sector, so that Riau Province and regional districts focus on oil palm plants as the main commodity of plantations in Riau. Based on data from the Central Bureau of Statistics (BPS) of Riau Province, the annual production of oil palm plantations, especially smallholder plantations in Riau province has always increased. So is the demand for world CPO. But sometimes the selling price of oil palm fresh fruit bunches (FFB) for smallholder plantations always changes due to many influential factors. With the Artificial Neural Network approach, the Backpropagation algorithm we conduct training and testing of the time series variables that affect the data, namely data on the area of oil palm plantations in Riau Province; Total palm oil production in Riau Province; Palm Oil Productivity in Riau Province; Palm Oil Exports in Riau Province and Average World CPO Prices. Then price predictions will be made in the future. Based on the results of the training and testing, the best Artificial Neural Network (ANN) architecture model was obtained with 9 input layers, 5 hidden layers and 1 output layer. The output of RMSE 0000699 error value and accuracy percentage is 99.97% so that it can make price predictions according to the given target value.
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