【24h】

A combination prediction model for wind farm output power

机译:风电场输出功率的组合预测模型

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摘要

Wind power's volatility and intermittence have a profound impact on power system's security and economic operation. However, high-precision power prediction is the important prerequisite to reduce the influence of wind power on the power system. This paper illustrates a wind power prediction model based on time-series and back propagation artificial neural network (BP-ANN), considering wind speed, temperature, humidity, geographical conditions and other factors. Taking account of approximate linear relationship between wind speeds, the prediction model of wind speed was built based on time-series, and the model of wind speed-to-power was set up in the way of the nonlinear mapping relationship based on the method of BP-ANN. The paper predicts wind power based on the measured data of 24h ahead. By analyzing predicted data, it shows that the combined prediction model based on time-series and BP-ANN is effective.
机译:风电的波动性和间歇性对电力系统的安全和经济运营产生了深远的影响。然而,高精度功率预测是减少风电对电力系统影响的重要前提。本文说明了基于时序和背部传播人工神经网络(BP-ANN)的风力预测模型,考虑风速,温度,湿度,地理条件和其他因素。考虑到风速之间的近似线性关系,基于时间序列建立风速预测模型,并以基于方法的非线性映射关系的方式建立了风速电力模型BP-Ann。该纸张基于未来24小时的测量数据预测风力。通过分析预测数据,它表明基于时间序列和BP-ANN的组合预测模型是有效的。

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