Kinerja Artificial Neural Network pada Model Berat Segar Daun Pakcoy
Date
2022-07-27Author
RUSDIANA, Riza Yuli
WIDURI, Laily Ilman
RESTANTO, Didik Pudji
Metadata
Show full item recordAbstract
The growth of leaf biomass can be predicted from an increase in the surface area and thickness of
the leaves. Measurements of leaf biomass are approached with the fresh weight of the leaves. The
relationship between biomass and leaf surface area commonly performed by regression analysis.
The analysis requires assuming linear relationship between dependent variables and independent
variables. Artificial Neural Network (ANN) is alternative that can be used to analyze the relationship
of leaves and leaf biomass without requiring linear relationships. The research aimed to evaluate
ANN performance in determining the fresh weight of pakcoy leaves based on leaf area parameters.
Datasets in the study included leaf area datasets and length-width datasets. ANN architecture used
Multi Layer Perceptron (MLP) with backpropagation. Ramsey’s test results showed that leaf area
datasets is linier model and length-width datasets is nonlinier model. ANN performs well in
predicting leaf fresh weight data on both nonlinear and linear models. The best ANN architecture
for modeling the leaf fresh weight with leaf area is MLP (1-3-1) while the leaf fresh weight model
with length and width is MLP (2-3-1).
Collections
- LSP-Jurnal Ilmiah Dosen [7356]