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Forecasting renewable energy for environmental resilience through computational intelligence

机译:通过计算智能预测可再生能源的环境恢复能力

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Wind power forecasting plays a key role in the design and maintenance of wind power generation which can directly help to enhance environment resilience. Offshore wind power forecasting has become more challenging due to their operation in a harsh and multi-faceted environment. In this paper, the data generated from offshore wind turbines are used for power forecasting purposes. First, fragmented data is filtered and Deep Auto-Encoding is used to select high dimensional features. Second, a mixture of the CNN and LSTM models is used to train prominent wind features and further improve forecasting accuracy. Finally, the CNN-LSTM deep learning hybrid model is fine-tuned with various parameters for reliable forecasting of wind energy on three different offshore Windfarms. A state-of-the-art comparison against existing models is presented based on root mean square error (RMSE) and mean absolute error (MAE) respectively. The forecasting analyses indicate that the proposed CNN-LSTM strategy is quite successful for offshore wind turbines by retaining the lowest RMSE and MAE along with high forecasting accuracy. The experimental findings will be helpful to design environment resilient energy transition pathways.
机译:风力预测在风力发电的设计和维护方面发挥着关键作用,可以直接有助于提高环境弹性。由于其在苛刻和多面环境中的操作,海上风电预测变得更具挑战性。在本文中,从海上风力涡轮机产生的数据用于电力预测目的。首先,过滤碎片数据,深度自动编码用于选择高维特征。其次,CNN和LSTM模型的混合物用于培训突出的风特征,进一步提高预测精度。最后,CNN-LSTM深度学习混合模型采用各种参数进行微调,可靠地预测三种不同的海上风粪。基于根均线误差(RMSE)和平均绝对误差(MAE),呈现对现有模型的最先进的比较。预测分析表明,通过保留最低的RMSE和MAE以及高预测精度,拟议的CNN-LSTM策略对于海上风力涡轮机非常成功。实验结果将有助于设计环境弹性能量转换途径。

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