Article ID Journal Published Year Pages File Type
240378 Procedia Chemistry 2015 10 Pages PDF
Abstract

Environmental stress such as drought is a limiting factor of the soybean production in Indonesia. The varieties of drought- tolerant soybean become necessary to be cultivated especially in a marginal farmland. The characteristics of these varieties can be identified from the morphology of plants and the content of chlorophylls. Conventional techniques for predicting the variety of drought tolerant are usually labor extensive, time consuming and costly. A simple and rapid method that based on an automatic system to provide predictions on the variety of drought tolerant soybean is proposed in this paper. The method uses a simple multispectral sensor from a web camera that captures physical and physiological characteristics such as leaf areas, plant heights and is also able to calculate the content of chlorophylls. This research also compared fuzzy logic and artificial neural network as artificial intelligence methods to process raw data in order to predict the variety of the drought resistance soybean. The drought tolerant variety can be best predicted by artificial neural network method with an accuracy of about 80%.

Related Topics
Physical Sciences and Engineering Chemical Engineering Chemical Engineering (General)