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Modeling And Forecasting The Mean Hourly Wind Speed Time Series Using Gmdh-based Abductive Networks

机译:使用基于Gmdh的归纳网络对平均小时风速时间序列进行建模和预测

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Wind speed forecasts are important for the operation and maintenance of wind farms and their profitable integration into power grids, as well as many important applications in shipping, aviation, and the environment. Modern machine learning techniques including neural networks have been used for this purpose, but it has proved hard to make significant improvements on the performance of the simple persistence model. As an alternative approach, we propose here the use of abductive networks, which offer the advantages of simplified and more automated model synthesis and transparent analytical input-output models. Various abductive models for predicting the mean hourly wind speed 1 h ahead have been developed using wind speed data at Dhahran, Saudi Arabia during the month of May over the years 1994-2005. The models were evaluated on the data for May 2006. Models described include a single generic model to forecast next-hour speed from the previous 24 hourly measurements and an hour index, which give an overall mean absolute error (MAE) of 0.85 m/s and a correlation coefficient of 0.83 between actual and predicted values. The model achieves an improvement of 8.2% reduction in MAE compared to hourly persistence. The above model was used iteratively to forecast the hourly wind speed 6 h and 24 h ahead at the end of a given day, with MAEs of 1.20 m/s and 1.42 m/s which are lower than forecasting errors based on day-to-day persistence by 14.6% and 13.7%. Relative improvements on persistence exceed those reported for several machine learning approaches reported in the literature.
机译:风速预测对于风电场的运营和维护以及将其有利地整合到电网中以及在航运,航空和环境中的许多重要应用中都非常重要。为此,已经使用了包括神经网络在内的现代机器学习技术,但是事实证明,很难对简单持久性模型的性能进行重大改进。作为一种替代方法,我们在这里建议使用绑架网络,该网络具有简化和自动化程度更高的模型合成以及透明的分析输入输出模型的优势。使用1994-2005年5月期间在沙特阿拉伯达兰的风速数据,已经开发出了各种用于预测未来1小时平均每小时风速的诱发模型。对这些模型进行了2006年5月的数据评估。所描述的模型包括一个通用模型,该模型可以根据之前的24小时测量值和一个小时指数来预测下一个小时的速度,其总平均绝对误差(MAE)为0.85 m / s实际值和预测值之间的相关系数为0.83。与每小时的持久性相比,该模型将MAE降低了8.2%。上面的模型被迭代地用于预测给定一天结束时提前6小时和24小时的每小时风速,其MAE为1.20 m / s和1.42 m / s,低于基于逐日的预测误差。日持久性分别为14.6%和13.7%。持久性方面的相对改进超过了文献中报道的几种机器学习方法的报告。

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