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The Model of Wind Power Short-Term Prediction Based on Artificial Fish Swarm Algorithm of Support Vector Machine

机译:基于人工鱼类群算法的风电短期预测模型

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In order to improve the accuracy of wind power prediction and solve the parameter selection problem of support vector machine(SVM)model for the wind power prediction, the artificial fish swarm algorithm(AFSA) is proposed to look for the support vector machine's optimal parameter of kernel function and the parameter of error penalty. The model of AFSA-SVW is established to predict the wind power with the numerical weather forecast(NWP) data after clustering analysis. Form the result of simulation experiment, it shows that the model of AFSA-SVW has a higher accuracy than the model of BP and the model of BP and the model of BP and the model of PSO-SVM in the short-term wind power prediction.
机译:为了提高风力电力预测的准确性和解决支持向量机的参数选择问题(SVM)模型,用于风力发电预测,建议寻找支持向量机的最佳参数的人工鱼类群算法(AFSA)内核函数和错误惩罚参数。建立AFSA-SVW的模型,以预测聚类分析后的数值天气预报(NWP)数据的风力。形成仿真实验的结果,它表明AFSA-SVW的模型比BP的模型和BP的模型以及短期风力预测中BP的模型以及BPS-SVM模型的准确性更高。 。

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