Classification of Different Wheat Varieties by Using Data Mining Algorithms

Abstract

There are various applications using computer-aided quality controlling system. In this study, seed data set acquired from UCI machine learning database was used. The purpose of the study is to perform the operations for separation of seed species from each other in the seed data set. Three different seed whose data was acquired from the UCI machine learning database was used. Later it was classified by applying the methods of KNN, Naive Bayes, J48 and multilayer perceptron to the dataset. While wheat seed data received from the UCI machine learning database was classified, WEKA program was used. Depending on the number of neurons the highest classification success came in 7-layer neurons. Our success rate for the number of 7-layer neurons came to 97.17% When the classification success rate was calculated according to KNN for the values of different neighbour, the highest success rate for neighbour was set at 95.71% for 4. Neighbour. With this method, classification of seeds depending on their properties was provided more quickly and effectively.

Authors and Affiliations

Kadir Sabanci*| Karamanoglu Mehmetbey University, Faculty of Engineering Department of Electrical and Electronics Engineering, Karaman, Turkey, Mustafa Akkaya| KMU, Faculty of Engineering Department of Energy Systems Engineering, Karaman,Turkey

Keywords

Related Articles

Store Data from Experiments with Microorganisms Used in Food Industry

The aim of this paper is to present results from collaboration of computer engineers and experimenters in microbiology working with molecular-genetic methods. The experimenters in microbiological laboratory at the Univer...

Classification of Neurodegenerative Diseases using Machine Learning Methods

In this study, neurodegenerative diseases (Amyotrophic Lateral Sclerosis, Huntington’s disease, and Parkinson’s disease) were diagnosed and classified using force signals. In the classification, five machine learning al...

A robust adaptive control of interleaved boost converter with power factor correction in wind energy systems

Power converters are generally utilized to convert the power from the wind sources to match the load demand and grid requirement to improve the dynamic and steady-state characteristics of wind generation systems and to i...

Long Term and Remote Health Monitoring with Smartphone

The basic aim of our work is to provide solutions with monitoring the heart beat rates of disabled or old people. And also we expect to help the people who have specific heart diseases like potential cardiac arrests...

Fuzzy Multicriterial Methods for the Selection of IT-Professionals

This paper presents the solution of issues related to selection based on evaluation of demand set forth to IT specialists, to develop appropriate decision support system. In this case problem is reduced to multicriterial...

Download PDF file
  • EP ID EP797
  • DOI 10.18201/ijisae.62843
  • Views 374
  • Downloads 23

How To Cite

Kadir Sabanci*, Mustafa Akkaya (2016). Classification of Different Wheat Varieties by Using Data Mining Algorithms. International Journal of Intelligent Systems and Applications in Engineering, 4(2), 40-44. https://europub.co.uk/articles/-A-797