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Innovative Hybrid Modeling of Wind Speed Prediction Involving Time-Series Models and Artificial Neural Networks

机译:涉及时间序列模型和人工神经网络的风速预测的创新混合建模

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This work proposes hybrid models combining time-series models (using linear functions) and artificial intelligence (using a nonlinear function) that can be used to provide monthly mean wind speed predictions for the Brazilian northeast region. These might be useful for wind power generation; for example, they could acquire important information on how the local wind potential can be usable for a possible wind power plant through understanding future wind speed values. To create the proposed hybrid models, it was necessary to set the wind speed variable as a dependent variable of exogenous variables (i.e., pressure, temperature, and precipitation). Thus, it was possible to consider the meteorological characteristics of the study regions. It is possible to verify the hybrid models’ efficiency in providing perfect adjustments to the observed data. This statement is based on the low values found in the error statistical analysis, i.e., an error of approximately 5.0% and a Nash–Sutcliffe coefficient near to 0.96. These results were certainly important in predicting the wind speed time-series, which was similar to the observed wind speed time-series profile. Great similarities of maximums and minimums between the series were evident and showed the capacity of the models to represent the seasonality characteristics.
机译:这项工作提出了将时间序列模型(使用线性函数)和人工智能(使用非线性函数)相结合的混合模型,这些模型可用于提供巴西东北地区的月平均风速预测。这些对于风力发电可能有用;例如,他们可以通过了解未来的风速值来获取有关如何将本地风能用于可能的风力发电厂的重要信息。要创建建议的混合模型,必须将风速变量设置为外生变量(即压力,温度和降水)的因变量。因此,可以考虑研究区域的气象特征。可以验证混合模型对观测数据进行完美调整的效率。该陈述是基于在误差统计分析中找到的低值,即,误差约为5.0%,Nash-Sutcliffe系数接近0.96。这些结果对于预测风速时间序列肯定是重要的,这类似于观察到的风速时间序列轮廓。系列之间的最大值和最小值之间存在极大的相似性,这表明模型具有表示季节性特征的能力。

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