Comparative Analysis of Material Fluctuation Response based on Data Set Groups

Melinda Melinda, Patar Sianturi, Agus Santoso Tamsir

Research output: Contribution to journalConference articlepeer-review


Multi spectral capacitive sensor (MSCS) is a sensor that is formed based on the concept of white noise impedance spectroscopy. This concept utilizes the spectral noise frequency approach of the frequency domain signal resulting from the field effect on the dielectric. As a sensor, the consistency results obtained is stable, so that it can facilitate analysis. In this study, we tried to compare data groups, starting with 100 data sets and 300 data sets from a total of 600 data sets for H2O and H2O mixed with NaOH materials and H2O mixed with HCl using a new transformation, namely Tamsir statistical transformation (TST). Furthermore, grouping data uses the total amplitude value of each data set obtained. We obtain the results in the form of differences between groups of data with fluctuations in response patterns that are close together which are shown in 2D graphics. Hence, we can implement the data groups as a reference pattern of fluctuations in a material.

Original languageEnglish
Article number012092
JournalIOP Conference Series: Materials Science and Engineering
Issue number1
Publication statusPublished - 19 Nov 2019
Event2nd Sriwijaya International Conference on Science, Engineering, and Technology, SICEST 2018 - Palembang, Indonesia
Duration: 15 Oct 201816 Oct 2018


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