DOI Number : 10.5614/itbj.sci.2010.42.1.3
Hits : 26

Artificial Life of Soybean Plant Growth Modeling Using Intelligence Approaches

Atris Suyantohadi1,2, Mochamad Hariadi2 & Mauridhi Hery Purnomo2

1Agricultural Technology Faculty, University of Gadjah Mada (UGM), Sosioyustisia, Bulaksumur, Yogyakarta, Indonesia

2Electrical Engineering Department, Industrial Technology Faculty, Institute Technology Sepuluh November (ITS), Surabaya, Indonesia


Abstract. The natural process on plant growth system has a complex system and it has could be developed on characteristic studied using intelligent approaches conducting with artificial life system. The approaches on examining the natural process on soybean  (Glycine Max L.Merr) plant growth have been analyzed and synthesized in these research through modeling using Artificial Neural Network (ANN) and Lindenmayer System (L-System) methods. Research aimed to design and to visualize plant growth modeling on the soybean varieties which these could help for studying botany of plant based on fertilizer compositions on plant growth with Nitrogen (N), Phosphor (P) and Potassium (K). The soybean plant growth has been analyzed based on the treatments of plant fertilizer compositions in the experimental research to develop plant growth modeling. By using N, P, K fertilizer compositions, its capable result on the highest production 2.074 tons/hectares. Using these models, the simulation on artificial life for describing identification and visualization on the characteristic of soybean plant growth could be demonstrated and applied.

Keywords: artificial life; artificial neural network; soybean; plant growth; modeling; Lindenmayer System.

Download Article
Bahasa Indonesia | English


Begin on 10 October 2014 this website is no longer activated for article process in Journal of Mathematical and Fundamental Sciences, Journal of Engineering and Technological Sciences, Journal of ICT Research and Applications and Journal of Visual Art and Design. The next process will be proceeded under new website at

For detail information please contact us to:

       ITB Journal Visitor Number #24476463       
       Jl. Tamansari 64, Bandung 40116, Indonesia Visitor IP Address #       
       Tel : +62-22-250 1759 ext. 121 2011 Institut Teknologi Bandung       
       Fax : +62-22-250 4010, +62-22-251 1215 XHTML + CSS + RSS       
       E-mail : or Developed by AVE