EN
TR
Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP
Öz
Integrating renewable energy sources with new technologies such as artificial intelligence (AI) is important to balance energy supply and demand. The predictability of variable energy sources, such as solar energy, plays an important role in maintaining the stability and efficiency of power grids. This study examines the use of various algorithms in AI applications within renewable energy systems. The study critically evaluates existing methods and proposes an innovative approach for AI prediction in solar energy systems using advanced machine learning techniques. It focuses on the effectiveness of MLP, Ridge, and RF algorithms in forecasting Direct Current (DC). The results showed that the RF algorithm achieved the highest R² value (0.9999) and the lowest error RMSE (0.0024) and MAE (0.0006) measurements to demonstrate the superior ability of the models to explain variance in the data and make accurate predictions. In addition, the model developed with SHAP and LIME explainable AI algorithms is interpreted.
Anahtar Kelimeler
Kaynakça
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Ayrıntılar
Birincil Dil
İngilizce
Konular
Mühendislik Uygulaması, Risk Mühendisliği
Bölüm
Araştırma Makalesi
Yayımlanma Tarihi
1 Mayıs 2025
Gönderilme Tarihi
4 Aralık 2024
Kabul Tarihi
7 Nisan 2025
Yayımlandığı Sayı
Yıl 2025 Cilt: 12 Sayı: 2
APA
Öter, A., & Ersöz, B. (2025). Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP. El-Cezeri, 12(2), 205-212. https://doi.org/10.31202/ecjse.1591721
AMA
1.Öter A, Ersöz B. Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP. ECJSE. 2025;12(2):205-212. doi:10.31202/ecjse.1591721
Chicago
Öter, Ali, ve Betül Ersöz. 2025. “Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP”. El-Cezeri 12 (2): 205-12. https://doi.org/10.31202/ecjse.1591721.
EndNote
Öter A, Ersöz B (01 Mayıs 2025) Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP. El-Cezeri 12 2 205–212.
IEEE
[1]A. Öter ve B. Ersöz, “Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP”, ECJSE, c. 12, sy 2, ss. 205–212, May. 2025, doi: 10.31202/ecjse.1591721.
ISNAD
Öter, Ali - Ersöz, Betül. “Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP”. El-Cezeri 12/2 (01 Mayıs 2025): 205-212. https://doi.org/10.31202/ecjse.1591721.
JAMA
1.Öter A, Ersöz B. Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP. ECJSE. 2025;12:205–212.
MLA
Öter, Ali, ve Betül Ersöz. “Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP”. El-Cezeri, c. 12, sy 2, Mayıs 2025, ss. 205-12, doi:10.31202/ecjse.1591721.
Vancouver
1.Ali Öter, Betül Ersöz. Artificial Intelligence Assisted Solar Energy Forecasting by Explainability Approaches with LIME and SHAP. ECJSE. 01 Mayıs 2025;12(2):205-12. doi:10.31202/ecjse.1591721
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