Preprocessing in noisy data of array sensor to enhance pattern recognition and classification problem
Wahyu Hidayat, Agus Suroso

Theoretical High Energy Physics Division, FMIPA
ITB


Abstract

We will present the pre-processing of experimental data generated by a series of gas sensors, a device known as an electronic nose. We propose the use of a combination of statistical methods and artificial neural networks (ANN) to recognize data containing noise. As a result, we will get the optimal number of sensor arrays that can be used and also function properly. In addition, data pre-processing prove the increasing quality of data for classification and pattern recognition purposes.

Keywords: Noisy Data, Governing Equations, Array Sensor, ANN

Topic: Computer Science

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