Peramalan Jumlah Permintaan Udang Beku PND Menggunakan Metode Jaringan Syaraf Tiruan (JST) Backpropagation (Forecasting of PND Frozen Shrimp Demand Using Artificial Neural Network Method (ANN) Backpropagation)
Date
2017-06-01Author
MUFAIDAH, Iid
SUWASONO, Sony
WIBOWO, Yuli
SOEDIBYO, Deddy Wirawan
Metadata
Show full item recordAbstract
Forecasting is the art or science to estimate how many needs will come in order to meet the
demand for goods or services, often based on historical time series data. The growing number of
emerging companies in Indonesia today has created a very tight business competition in both services
and products. Consumers choose the best service and high quality and low price. Consumer demand
is always uncertain or varied in each subsequent period. The aim of this research was to determind
the best backpropagation neural network architecture design and to predict the demand of frozen
product of PND 26/30. This research used the method of Neural Network (ANN) and Processing ANN
using MATLAB software. Implementation of ANN method in PT.XYZ using Backpropagation
algorithm. Artificial neural network architecture used was 12 input layer, 1 output layer, and 12
hidden layer and activation function used tansig and purelin. Tansig for hidden layer and purelin for
output layer. The best artificial neural network architecture design for product demand for PND
31/40 was a multi layer feedforward value of Mean Square Error (MSE) network training value of
0.01 with MAPE 3.35. The result of JST forecasting period 2017 were 960 MC, 637 MC, 572 MC,
993 MC, 1386 MC, 480 MC, 135 MC, 1209 MC, 1476 MC, 1029 MC, 290 MC, and 952 MC.
Collections
- LSP-Jurnal Ilmiah Dosen [7301]