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Wind-power estimating model based on the experimental data in laboratory

Wind-power estimating model based on the experimental data in laboratory
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出处 《Journal of Energy and Power Engineering》 2009年第9期60-66,共7页 能源与动力工程(美国大卫英文)
关键词 风力发电场 估算模型 实验数据 实验室 灰色预测模型 可湿性粉剂 基础 电力系统 wind-power estimating model neural network grey predictor model
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参考文献18

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