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Short-Term Wind Power Prediction and Comprehensive Evaluation based on Multiple Methods

机译:基于多种方法的短期风电预测和综合评价

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Firstly, this study used prediction methods, including Kalman filter method, the GARCH (Generalized Autoregressive Conditional Heteroskedasticity) model and the BP neural network model based on time sequence, to predict real-timely the wind power. And then, we construct indexes such as mean absolute error, root-mean-square error, accuracy rate and percent of pass to have error analysis on the predictive effect and get the best results of prediction effect that based on time sequence of the BP neural network model. Finally, we concluded the universal rule between the relative prediction error of single typhoon electric unit power of and the prediction relative error of total machine power by the analysis into lateral error indicators. And we analyze the influence on the error of the prediction result that resulting from the converge of wind generator power.
机译:首先,本研究使用了预测方法,包括卡尔曼滤波方法,加卓(广义自回归条件异循环性能)模型和基于时间顺序的BP神经网络模型,以预测实时风电。然后,我们构建指标,例如平均绝对误差,根均方误差,准确度和通过百分比对预测效果有误差分析,并获得基于BP神经网络的时间序列的预测效果的最佳结果网络模型。最后,我们通过分析到横向误差指示器的单台台风电气单元电力的相对预测误差与总机电总功率的预测相对误差之间的普遍规则。我们分析了风力发电机电力汇聚导致的预测结果误差的影响。

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