Yıl: 2022 Cilt: 4 Sayı: 2 Sayfa Aralığı: 161 - 175 Metin Dili: Türkçe DOI: 10.51541/nicel.1117756 İndeks Tarihi: 27-12-2022

ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL

Öz:
Bataryaların şarj durumunun doğru tahmini, yalnızca elektrikli araçlarda değil, aynı zamanda hibrit elektrikli araçlarda, insansız hava araçlarında ve akıllı şebeke sistemlerinde yer alan batarya paketlerinin güvenilir çalışması için kritik öneme sahiptir. Bu çalışmada, elektrikli araç bataryalarının şarj durumunun değerini tahmin etmek için Torbalama-Rastgele Orman yaklaşımına dayalı bir model önerilmiştir. Önerilen yöntem ile bataryaya ait şarj değeri, bataryanın anlık akım, gerilim ve sıcaklığı ile ilişkilendirilmiştir. Çalışmada BMW i3 aracının bataryasına ait gerçek sürüşlerden elde edilen 32067 adet veri kullanılmıştır. Önerilen yöntemin etkinliğini göstermek amacıyla, popüler makine öğrenmesi yöntemlerinden Doğrusal Regresyon ve Destek Vektör Makinesi yaklaşımlarıyla da testler gerçekleştirilmiştir. Kök Ortalama Kare Hata ve Ortalama Mutlak Hata metriklerine dayanan deneysel sonuçlar, önerilen modelin literatürdeki diğer yöntemlere göre daha üstün olduğu ortaya koyulmuştur.
Anahtar Kelime: Batarya Şarj Durum Tahmini Elektrikli Araç Torbalama-Rastgele Orman Makine Öğrenmesi

SOC ESTIMATION FOR BATTERY OF ELECTRIC VEHICLES

Öz:
Accurate estimation of the state of charge of batteries is critical for the reliable operation of battery packs, not only in electric vehicles, but also in hybrid electric vehicles, unmanned aerial vehicles and smart grid systems. In this study, a model based on the Bagging-Random Forest approach is proposed to predict the value of the state of charge of electric vehicle batteries. With the proposed method, the charge value of the battery is associated with the instantaneous current, voltage and temperature of the battery. In the study, 32067 data obtained from real driving of the battery of the BMW i3 vehicle were used. In order to demonstrate the effectiveness of the proposed method, tests were also carried out using popular machine learning methods including Linear Regression and Support Vector Machine. The experimental results based on the Root Mean Square Error and Mean Absolute Error Metrics revealed that the proposed model is superior to the other methods in the literature.
Anahtar Kelime: Battery State of Charge Estimation Electric vehicle Bagging Random Forest Machine Learning

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Keskin B, SORA GUNAL E, urazel b, Keskin K (2022). ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. , 161 - 175. 10.51541/nicel.1117756
Chicago Keskin Büşra,SORA GUNAL Efnan,urazel burak,Keskin Kemal ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. (2022): 161 - 175. 10.51541/nicel.1117756
MLA Keskin Büşra,SORA GUNAL Efnan,urazel burak,Keskin Kemal ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. , 2022, ss.161 - 175. 10.51541/nicel.1117756
AMA Keskin B,SORA GUNAL E,urazel b,Keskin K ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. . 2022; 161 - 175. 10.51541/nicel.1117756
Vancouver Keskin B,SORA GUNAL E,urazel b,Keskin K ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. . 2022; 161 - 175. 10.51541/nicel.1117756
IEEE Keskin B,SORA GUNAL E,urazel b,Keskin K "ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL." , ss.161 - 175, 2022. 10.51541/nicel.1117756
ISNAD Keskin, Büşra vd. "ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL". (2022), 161-175. https://doi.org/10.51541/nicel.1117756
APA Keskin B, SORA GUNAL E, urazel b, Keskin K (2022). ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. Nicel bilimler dergisi (Online), 4(2), 161 - 175. 10.51541/nicel.1117756
Chicago Keskin Büşra,SORA GUNAL Efnan,urazel burak,Keskin Kemal ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. Nicel bilimler dergisi (Online) 4, no.2 (2022): 161 - 175. 10.51541/nicel.1117756
MLA Keskin Büşra,SORA GUNAL Efnan,urazel burak,Keskin Kemal ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. Nicel bilimler dergisi (Online), vol.4, no.2, 2022, ss.161 - 175. 10.51541/nicel.1117756
AMA Keskin B,SORA GUNAL E,urazel b,Keskin K ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. Nicel bilimler dergisi (Online). 2022; 4(2): 161 - 175. 10.51541/nicel.1117756
Vancouver Keskin B,SORA GUNAL E,urazel b,Keskin K ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL. Nicel bilimler dergisi (Online). 2022; 4(2): 161 - 175. 10.51541/nicel.1117756
IEEE Keskin B,SORA GUNAL E,urazel b,Keskin K "ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL." Nicel bilimler dergisi (Online), 4, ss.161 - 175, 2022. 10.51541/nicel.1117756
ISNAD Keskin, Büşra vd. "ELEKTRİKLİ ARAÇ BATARYALARININ ŞARJ DURUMU TAHMİNİ İÇİN BİR MODEL". Nicel bilimler dergisi (Online) 4/2 (2022), 161-175. https://doi.org/10.51541/nicel.1117756