TY - JOUR
T1 - Optimization Objective Function Corona Discharge Acoustic Using Fuzzy c-Means (FcM )
AU - Fikri, Miftahul
AU - Christiono, Christiono
AU - Mulyana K, Iwa Garniwa
AU - Ratnasari, Titi
AU - Atmadja, Kurniawan
AU - Thahara, Andi Amar
AU - Romadhoni, Muhammad Luthfiansyah
PY - 2023
Y1 - 2023
N2 - In many electrical networks in Indonesia, insulation failure due to high voltage phenomena like Corona Discharge (CD) still happens. This is a result of our inability to perform early Corona Discharge (CD) identification. This study’s objective is to optimalize the sound properties of Corona Discharge (CD) as a first step throught the early identification of insulation failure in the form of clustering 20 kV cubicle. Based on observations on the needle-rod electrode 3 cm apart, the smallest breakdown was obtained at 34.3 kV. So that the classification of CD sound by 3 clusters starting 20 kV cubicle voltage until before the failure occurs on 33 kV. The temperature in the cubical is between 27.5℃ - 35.3℃ and humidity ranges from 70% - 95%. It was stated in the study that the FcM method was the most widely used and successful method. In this case, FcM can obtain more flexible results that classify data into clusters easily. This research will be carried out using the Fuzzy c-Means (FcM) method. Feature extraction with linear predictive coding (LPC) method, then optimization by using the Fuzzy c-Means (FcM) method which is expected to be used as an initial step for early detection of insulation failure.
AB - In many electrical networks in Indonesia, insulation failure due to high voltage phenomena like Corona Discharge (CD) still happens. This is a result of our inability to perform early Corona Discharge (CD) identification. This study’s objective is to optimalize the sound properties of Corona Discharge (CD) as a first step throught the early identification of insulation failure in the form of clustering 20 kV cubicle. Based on observations on the needle-rod electrode 3 cm apart, the smallest breakdown was obtained at 34.3 kV. So that the classification of CD sound by 3 clusters starting 20 kV cubicle voltage until before the failure occurs on 33 kV. The temperature in the cubical is between 27.5℃ - 35.3℃ and humidity ranges from 70% - 95%. It was stated in the study that the FcM method was the most widely used and successful method. In this case, FcM can obtain more flexible results that classify data into clusters easily. This research will be carried out using the Fuzzy c-Means (FcM) method. Feature extraction with linear predictive coding (LPC) method, then optimization by using the Fuzzy c-Means (FcM) method which is expected to be used as an initial step for early detection of insulation failure.
KW - Corona discharges
KW - insulation lifetime
KW - linear predictive coding
KW - fuzzy logic
UR - https://jurnal.untan.ac.id/index.php/Elkha/article/view/63601
U2 - 10.26418/elkha.v15i2.63601
DO - 10.26418/elkha.v15i2.63601
M3 - Article
SN - 1858-1463
VL - 15
SP - 84
EP - 90
JO - ELKHA
JF - ELKHA
IS - 2
ER -