Konferans Bildirisi

Battery State of Health and Charge Estimation Using Machine Learning Methods

Sayı: 26 31 Temmuz 2021
PDF İndir
TR EN

Battery State of Health and Charge Estimation Using Machine Learning Methods

Öz

In this study, state of health (SOH) and state of charge (SOC) estimation of series connected batteries were evaluated for their charge and discharge durations. For this purpose, an ARM-based electronics card module was developed for observing instantaneous batteries voltage, current and temperature values during the charge and discharge process. The implemented microcontroller based card module gathers data from the current, voltage, and temperature sensors and it transfers to the computer environment via serial communication port. A specific human machine interface is designed via app-designer. The obtained variables were used for estimating regression models of the machine-learning toolbox. Random forest, decision tree, polynomial, extreme gradient boosting, linear and gradient boosting regression models were used for instantaneous SOH and SOC estimation for batteries during the charge-discharge period. Root Mean Square Error (RMSE) and R^2score results were used for performance evaluation of regression models. When the RMSE and R^2 score results were compared, the decision tree regression model was the regression model that made the most accurate SOH and SOC estimation and the results were presented.

Anahtar Kelimeler

Destekleyen Kurum

Scientific and Technical Research Council of Turkey (TUBITAK) under 2209B – Research Project Support Programme for Undergraduate Students

Proje Numarası

1139B412001117

Teşekkür

I would like to express my special thanks to my advisor Assoc. Prof. Savaş ŞAHİN for his patience, motivation and continuous support. My sincere thanks also goes to Mr. İbrahim TANAĞARDIGİL for his guidance and helping me with every step of the project. Finally, I would like to thank my family and friends for their endless support.

Kaynakça

  1. Badeda, Julia, Monika Kwiecien, Dominik Schulte, and Dirk Uwe Sauer. "Battery state estimation for lead-acid batteries under float charge conditions by impedance: Benchmark of common detection methods." Applied Sciences 8, no. 8 (2018): 1308.
  2. Brown, G. (2012). Discovering the STM32 microcontroller. Cortex, 3, 34.
  3. Cacciato, M., Nobile, G., Scarcella, G., & Scelba, G. (2016). Real-time model-based estimation of SOC and SOH for energy storage systems. IEEE Transactions on Power Electronics, 32(1), 794-803.
  4. El Hadi, M., Ouariach, A., Essaadaoui, R., El Moussaouy, A., & Mommadi, O. (2021). RC time constant measurement using an INA219 sensor: creating an alternative, flexible, low-cost configuration that provides benefits for students and schools. Physics Education, 56(4), 045015.
  5. Fahrmeir, L., Kneib, T., Lang, S., & Marx, B. (2013). Regression models. In Regression (pp. 21-72). Springer, Berlin, Heidelberg.
  6. Freedman, D.A., (2009), Statistical Models: Theory and Practice. Cambridge University Press. ISBN 978-1-139-47731-4.
  7. Hannan, Mohammad A., MS Hossain Lipu, Aini Hussain, and Azah Mohamed. "A review of lithium-ion battery state of charge estimation and management system in electric vehicle applications: Challenges and recommendations." Renewable and Sustainable Energy Reviews 78 (2017): 834-854.
  8. Stanimirescu, A., Egri, A., Soica, F. F., & Radu, S. M. (2020). Measuring the change of air temperature with 8 LM75A sensors in mining area. In MATEC Web of Conferences (Vol. 305, p. 00046). EDP Sciences.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Mühendislik

Bölüm

Konferans Bildirisi

Yayımlanma Tarihi

31 Temmuz 2021

Gönderilme Tarihi

30 Haziran 2021

Kabul Tarihi

30 Haziran 2021

Yayımlandığı Sayı

Yıl 2021 Sayı: 26

Kaynak Göster

APA
Şahin, E. M., Sahin, S., & Tanağardıgil, İ. (2021). Battery State of Health and Charge Estimation Using Machine Learning Methods. Avrupa Bilim ve Teknoloji Dergisi, 26, 389-394. https://doi.org/10.31590/ejosat.959630
AMA
1.Şahin EM, Sahin S, Tanağardıgil İ. Battery State of Health and Charge Estimation Using Machine Learning Methods. EJOSAT. 2021;(26):389-394. doi:10.31590/ejosat.959630
Chicago
Şahin, Enes Malik, Savas Sahin, ve İbrahim Tanağardıgil. 2021. “Battery State of Health and Charge Estimation Using Machine Learning Methods”. Avrupa Bilim ve Teknoloji Dergisi, sy 26: 389-94. https://doi.org/10.31590/ejosat.959630.
EndNote
Şahin EM, Sahin S, Tanağardıgil İ (01 Temmuz 2021) Battery State of Health and Charge Estimation Using Machine Learning Methods. Avrupa Bilim ve Teknoloji Dergisi 26 389–394.
IEEE
[1]E. M. Şahin, S. Sahin, ve İ. Tanağardıgil, “Battery State of Health and Charge Estimation Using Machine Learning Methods”, EJOSAT, sy 26, ss. 389–394, Tem. 2021, doi: 10.31590/ejosat.959630.
ISNAD
Şahin, Enes Malik - Sahin, Savas - Tanağardıgil, İbrahim. “Battery State of Health and Charge Estimation Using Machine Learning Methods”. Avrupa Bilim ve Teknoloji Dergisi. 26 (01 Temmuz 2021): 389-394. https://doi.org/10.31590/ejosat.959630.
JAMA
1.Şahin EM, Sahin S, Tanağardıgil İ. Battery State of Health and Charge Estimation Using Machine Learning Methods. EJOSAT. 2021;:389–394.
MLA
Şahin, Enes Malik, vd. “Battery State of Health and Charge Estimation Using Machine Learning Methods”. Avrupa Bilim ve Teknoloji Dergisi, sy 26, Temmuz 2021, ss. 389-94, doi:10.31590/ejosat.959630.
Vancouver
1.Enes Malik Şahin, Savas Sahin, İbrahim Tanağardıgil. Battery State of Health and Charge Estimation Using Machine Learning Methods. EJOSAT. 01 Temmuz 2021;(26):389-94. doi:10.31590/ejosat.959630

Cited By