IAD Index of Academic Documents
  • Home Page
  • About
    • About Izmir Academy Association
    • About IAD Index
    • IAD Team
    • IAD Logos and Links
    • Policies
    • Contact
  • Submit A Journal
  • Submit A Conference
  • Submit Paper/Book
    • Submit a Preprint
    • Submit a Book
  • Contact
  • Tarım Bilimleri Dergisi
  • Volume:29 Issue:1
  • Machine Learning Approaches for One-Day Ahead Soil Temperature Forecasting

Machine Learning Approaches for One-Day Ahead Soil Temperature Forecasting

Authors : Mehmet BİLGİLİ, Şaban ÜNAL, Aliihsan ŞEKERTEKİN, Cahit GÜRLEK
Pages : 221-238
Doi:10.15832/ankutbd.997567
View : 52 | Download : 11
Publication Date : 2023-01-31
Article Type : Research Paper
Abstract :Present study investigates the capabilities of six distinct machine learning techniques such as ANFIS network with fuzzy c-means insert ignore into journalissuearticles values(ANFIS-FCM);, grid partition insert ignore into journalissuearticles values(ANFIS-GP);, subtractive clustering insert ignore into journalissuearticles values(ANFIS-SC);, feed-forward neural network insert ignore into journalissuearticles values(FNN);, Elman neural network insert ignore into journalissuearticles values(ENN);, and long short-term memory insert ignore into journalissuearticles values(LSTM); neural network in one-day ahead soil temperature insert ignore into journalissuearticles values(ST); forecasting. For this aim, daily ST data gathered at three different depths of 5 cm, 50 cm, and 100 cm from the Sivas meteorological observation station in the Central Anatolia Region of Turkey was used as training and testing datasets. Forecasting values of the machine learning models were compared with actual data by assessing with respect to four statistic metrics such as the mean absolute error, root mean square error insert ignore into journalissuearticles values(RMSE);, Nash−Sutcliffe efficiency coefficient, and correlation coefficient insert ignore into journalissuearticles values(R);. The results showed that the ANFIS-FCM, ANFIS-GP, ANFIS-SC, ENN, FNN and LSTM models presented satisfactory performance in modeling daily ST at all depths, with RMSE values ranging 0.0637-1.3276, 0.0634-1.3809, 0.0643-1.3280, 0.0635-1.3186, 0.0635-1.3281, and 0.0983-1.3256 °C, and R values ranging 0.9910-0.9999, 0.9903-0.9999, 0.9910-0.9999, 0.9911-0.9999, 0.9910-0.9999 and 0.9910-0.9998 °C, respectively.
Keywords : ANFIS, Daily soil temperature, LSTM, Elman neural network ENN, Feed forward neural network

ORIGINAL ARTICLE URL

* There may have been changes in the journal, article,conference, book, preprint etc. informations. Therefore, it would be appropriate to follow the information on the official page of the source. The information here is shared for informational purposes. IAD is not responsible for incorrect or missing information.


Index of Academic Documents
İzmir Academy Association
CopyRight © 2023-2026