Advances in Applied Research
  • Year: 2012
  • Volume: 4
  • Issue: 2

Fuzzy logic based classification model for aquaculture development

  • Author:
  • Mahalakshmi Ponnuchamy, Ganesan Kaliyaperumal
  • Total Page Count: 6
  • Page Number: 90 to 95

School of Information Technology and Engineering, Vellore Institute of Technology, Vellore - 632 014, Tamil Nadu, India

*Corresponding author: E Mail: maha_ciba@yahoo.com

Online published on 7 April, 2014.

Abstract

In this paper, fuzzy logic was applied as a decision making model to classify the aqua sites based on water, soil, support, infrastructure, input, and risk factor related information. For input and output linguistic variables of the model, suitable Gaussian and triangular membership functions were selected. Totally 729 rules with logical AND operator, truncation implication, and centriod method for defuzzfication were employed to develop an efficient fuzzy model for decision making about classification of aqua sites. The model classifies each site in the datasets into one of the three classes such as suitable, moderate or unsuitable. In order to validate the performance of the fuzzy model the same sets were classified by aquaculture expert, too. Classification results obtained from the developed fuzzy model showed 92% agreement with the results from the aquaculture expert. Thus the fuzzy rule based model is a feasible model for classification of aqua sites and also it involves less computation and has clear implementation and working schemes

Keywords

Fuzzy logic, membership function, linguistic variables, classification, aquaculture