Wind speed prediction and insight for generalized predictive modeling framework: a comparative study for different artificial intelligence models framework: a comparative study for different artificial intelligence models

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Wind speed prediction and insight for generalized predictive modeling framework: a comparative study for different artificial intelligence models framework: a comparative study for different artificial intelligence models

Wind speed prediction and insight for generalized predictive modeling framework: a comparative study for different artificial intelligence models framework: a comparative study for different artificial intelligence models

Year : 2024

Publisher : Springer Berlin Heidelberg

Source Title : Neural Computing and Applications

Document Type :

Abstract

Wind speed (WS) has played a vital role in local urban and sub-urban weather, agriculture, and ecosystem. Several meteorological parameters are influencing WS such as relative humidity (at 2 m, %), surface pressure (kPa), maximum temperature (at 2 m, °C), minimum temperature (at 2 m, °C), average temperature (at 2 m, °C), and all sky insolation incident on a horizontal surface (kW-h/m2/day). The current research was conducted to predict WS at different locations at Vietnam using the feasibility of computer aid models (i.e., multivariate adaptive regression splines (MARS), extreme gradient boosting (XGBoost) and random forest generator (Ranger)). Pearson correlation (PC) was investigated to select the high significant predictors to predict the WS at 10 m high. All inputs (maximum number, 6) are chosen by the PC approach for PhuongNinh, DaNang, and HaNoi; and for minimum number of inputs i.e four, are selected for  PhuongHung, CanTho, and SaPa city; that exhibit the relationship with WS, citywise. The sequence selection of input parameters differed in each station as per the PC analysis. Based on the statistical evaluation and graphical presentation, MARS model attained the best prediction results, followed by XGBoost and Ranger. MARS predictive model remains at the top performance among others based on 95% confidence interval.