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Wind Speed Forecasting toward El Nino Factors Using Recurrent Neural Networks

机译:使用经常性神经网络对EL NINO因子的风速预测

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Wind speed prediction is needed in various sectors, such as in industry. However, the weather conditions change all the time, so it is not easy to predict. The wind that blows is influenced by several climatic weather factors such as humidity and rainfall. Also, wind speed patterns change when there is a global climate change, El Nino. Therefore this research involved the element in predicting wind patterns one week ahead. Recurrent Neural Networks (RNN) and Long-short Term Memory (LSTM) methods are used for sequential data processing, such as climate data. Climate data for ten years used were wind speed, humidity, and rainfall provided by Meteorological, Climatological, and Geophysical Agency (BMKG) of a weather observation station, while Southern Oscillation Index (SOI), was obtained from the Australian Bureau of Meteorology (ABM). Data need to be pre-processed to solve missing data. Moreover, all variables were normalized and segmentation by overlapping to avoid data discontinuity. The results showed that the use of the amount of data, learning rate, epoch, and selection of the right optimization model could give good accuracy. The purpose of the proper configuration has a good performance, with accuracy reaching 88.34%. The results showed that the use of SOI factors improved correctness from 74.75% without SOI. The results also show that the model Adaptive Moment Estimation (Adam) provides better accuracy than the model Stochastic Gradient Descent (SGD), which gives an accuracy of only 71.84%. Meanwhile, the study also examined the effect of the learning rate and composition of training data and test data. The best accuracy is shown for the learning rate of 0.020 and 80:20% of training and test data comparison.
机译:各个部门需要风速预测,例如工业。但是,天气条件一直在变化,所以它不容易预测。吹击的风受到几种气候天气因素,如湿度和降雨。此外,当有全球气候变化,El Nino时,风速模式会发生变化。因此,这项研究涉及预测风图案的元素,一周前一周。经常性神经网络(RNN)和长短短期内存(LSTM)方法用于顺序数据处理,例如气候数据。使用十年的气候数据是气象速度,湿度和降雨由气象,气候学和地球物理机构(BMKG)的天气观测站,而南方振荡指数(SOI)是从澳大利亚气象局获得的(ABM )。需要预处理数据以解决缺失数据。此外,所有变量都是通过重叠进行标准化和分割,以避免数据不连续。结果表明,使用数据量,学习率,时代和选择正确优化模型的选择可以给出良好的准确性。适当配置的目的具有良好的性能,精度达到88.34%。结果表明,使用SOI因素的使用从74.75%的情况下改善了正确的情况。结果还表明,模型自适应力矩估计(ADAM)提供比模型随机梯度下降(SGD)的更好的精度,这给出了仅71.84%的准确性。同时,该研究还研究了学习率和训练数据的组成和测试数据的影响。最佳准确性显示为0.020和80:20%的培训和测试数据比较的学习率。

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