Research in Agricultural Engineering (Sep 2020)

Electronic nose sensor development using ANN backpropagation for Lombok Agarwood classification

  • Farel Ahadyatulakbar Aditama,
  • Lalu Zulfikri,
  • Laili Mardiana,
  • Tri Mulyaningsih,
  • Nurul Qomariyah,
  • Rahadi Wirawan

DOI
https://doi.org/10.17221/26/2020-RAE
Journal volume & issue
Vol. 66, no. 3
pp. 97 – 103

Abstract

Read online

The aim of the present study is the development of an electronic nose system prototype for the classification of Gyrinops versteegii agarwood. The prototype consists of three gas sensors, i.e., TGS822, TGS2620, and TGS2610. The data acquisition and quality classification of the nose system are controlled by the Artificial Neural Network backpropagation algorithm in the Arduino Mega2650 microcontroller module. The testing result shows that an electronic nose can distinguish the quality of Gyrinops versteegii agarwood. The good-quality agarwood has an output of [1 -1], while the poor-quality agarwood has an output of [-1 1].

Keywords