Over the past decade, wind energy has gained more attention in the world. However, owing to its indirectness and volatility properties, wind power penetration has increased the difficulty and complexity in dispatching and planning of electric power systems. Therefore, it is needed to make the high-precision wind power prediction in order to balance the electrical power. For this purpose, in this study, the prediction performance of linear regression, k-nearest neighbor regression and decision tree regression algorithms is compared in detail. k-nearest neighbor regression algorithm provides lower coefficient of determination values, while decision tree regression algorithm produces lower mean absolute error values. In addition, the meteorological parameters of wind speed, wind direction, barometric pressure and air temperature are evaluated in terms of their importance on the wind power parameter. The biggest importance factor is achieved by wind speed parameter. In consequence, many useful assessments are made for wind power predictions.
翻译:过去十年来,风能在世界上受到更多的注意,然而,由于风能的间接性和波动性,风能渗透增加了电力系统发送和规划的难度和复杂性,因此,需要进行高精度风力预测,以平衡电力。为此,本研究详细比较了线性回归、K-最近邻回归和决定性树回归算法的预测性能。 k-最近邻回归算法提供了较低的确定值系数,而决定性树回归算法则产生了较低的绝对误差值。此外,还根据风速、风向、气压和空气温度等气象参数对风能参数的重要性进行了评估。最大重要因素是通过风速参数实现的。因此,对风能预测进行了许多有用的评估。