Yıl 2020, Cilt 4 , Sayı 1, Sayfalar 1 - 11 2020-03-31

Estimation of the switching losses in DC-DC boost converters by various machine learning methods

Kadir SABANCI [1] , Selami BALCI [2] , Muhammet Fatih ASLAN [3]


DC-DC converter circuits are topologies commonly used in power electronics applications such as renewable energy sources, electric vehicles, uninterruptible power supplies and DC transmission systems. The most important factors affecting efficiency and thus performance is the choice of the power semiconductor switching element as well as the circuit design and types of these topologies. In this context, power semiconductors are determined according to the switching frequency and current-voltage parameters. However, due to other operating modes of the circuit and load variation during the power conversion, the losses of the switching elements do not remain constant. In this study, a parametric simulation is performed in a conventional DC-DC boost converter circuit using the parameters related to the Insulated-Gate Bipolar Transistor (IGBT) power-switching element selected at a certain current-voltage capacity. These parameters are switching frequency, duty ratio and load change of the converter. Finally, using the data obtained, the loss of switching losses are estimated by the Multilayer Perceptron (MLP), Support Vector Machine (SVM), K- Nearest Neighbors (KNN) and Random Forest (RF) Machine Learning (ML) techniques.

K- Nearest Neighbors, Multilayer Perceptron, Random Forests, Support Vector Machine, Switching Losses
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Birincil Dil en
Konular Mühendislik, Elektrik ve Elektronik
Bölüm Araştırma Makaleleri
Yazarlar

Orcid: 0000-0003-0238-9606
Yazar: Kadir SABANCI
Kurum: KARAMANOGLU MEHMETBEY UNIVERSITY
Ülke: Turkey


Orcid: 0000-0002-3922-4824
Yazar: Selami BALCI
Kurum: KARAMANOGLU MEHMETBEY UNIVERSITY
Ülke: Turkey


Orcid: 0000-0001-7549-0137
Yazar: Muhammet Fatih ASLAN (Sorumlu Yazar)
Kurum: KARAMANOGLU MEHMETBEY UNIVERSITY
Ülke: Turkey


Tarihler

Yayımlanma Tarihi : 31 Mart 2020

Bibtex @araştırma makalesi { jes635582, journal = {Journal of Energy Systems}, issn = {}, eissn = {2602-2052}, address = {}, publisher = {Erol KURT}, year = {2020}, volume = {4}, pages = {1 - 11}, doi = {10.30521/jes.635582}, title = {Estimation of the switching losses in DC-DC boost converters by various machine learning methods}, key = {cite}, author = {SABANCI, Kadir and BALCI, Selami and ASLAN, Muhammet Fatih} }
APA SABANCI, K , BALCI, S , ASLAN, M . (2020). Estimation of the switching losses in DC-DC boost converters by various machine learning methods. Journal of Energy Systems , 4 (1) , 1-11 . DOI: 10.30521/jes.635582
MLA SABANCI, K , BALCI, S , ASLAN, M . "Estimation of the switching losses in DC-DC boost converters by various machine learning methods". Journal of Energy Systems 4 (2020 ): 1-11 <https://dergipark.org.tr/tr/pub/jes/issue/52420/635582>
Chicago SABANCI, K , BALCI, S , ASLAN, M . "Estimation of the switching losses in DC-DC boost converters by various machine learning methods". Journal of Energy Systems 4 (2020 ): 1-11
RIS TY - JOUR T1 - Estimation of the switching losses in DC-DC boost converters by various machine learning methods AU - Kadir SABANCI , Selami BALCI , Muhammet Fatih ASLAN Y1 - 2020 PY - 2020 N1 - doi: 10.30521/jes.635582 DO - 10.30521/jes.635582 T2 - Journal of Energy Systems JF - Journal JO - JOR SP - 1 EP - 11 VL - 4 IS - 1 SN - -2602-2052 M3 - doi: 10.30521/jes.635582 UR - https://doi.org/10.30521/jes.635582 Y2 - 2020 ER -
EndNote %0 Journal of Energy Systems Estimation of the switching losses in DC-DC boost converters by various machine learning methods %A Kadir SABANCI , Selami BALCI , Muhammet Fatih ASLAN %T Estimation of the switching losses in DC-DC boost converters by various machine learning methods %D 2020 %J Journal of Energy Systems %P -2602-2052 %V 4 %N 1 %R doi: 10.30521/jes.635582 %U 10.30521/jes.635582
ISNAD SABANCI, Kadir , BALCI, Selami , ASLAN, Muhammet Fatih . "Estimation of the switching losses in DC-DC boost converters by various machine learning methods". Journal of Energy Systems 4 / 1 (Mart 2020): 1-11 . https://doi.org/10.30521/jes.635582
AMA SABANCI K , BALCI S , ASLAN M . Estimation of the switching losses in DC-DC boost converters by various machine learning methods. JES. 2020; 4(1): 1-11.
Vancouver SABANCI K , BALCI S , ASLAN M . Estimation of the switching losses in DC-DC boost converters by various machine learning methods. Journal of Energy Systems. 2020; 4(1): 11-1.