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A short term wind speed forcasting using SVR and BP-ANN: A comparative analysis

机译:利用SVR和BP-ANN进行短期风速预报的比较分析

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Forecasting wind speed is a very important part in weather forecasting. Because of the nonlinear behaviors of nature and climate changes, wind speed prediction becomes a challenging task, particularly country like Bangladesh where lots of areas are costal and season changes in frequent. This study is done to make an attempt to predict the wind speed using two very potential and wide frames of statistical data mining and machine learning approaches; Support Vector Regression (SVR) and Artificial Neural Network (ANN) with back propagation technique. 7years (2008-2014) historical dataset of wind speed of Chittagong costal area were collected from Bangladesh meteorological division (BMD) for undertaking the experiment. Leaky ReLu function was applied as the rectifier to the input data to control the thresholds and activations of neurons in MLP. The aim of this study was to propose a model that can predict short term wind speed with maximum accuracy. Finally, after considerable amount of experimentations the outcome from this study is; our proposed SVR and ANN models are able to predict wind speed with more than 99% accuracy in short term prediction. Moreover, ANN can outperform SVR in some situations with highest 99.80% accuracy. But SVR models are best suited for overall wind speed forecasting in different horizons with highest 99.60% accuracy. These results outperform the performances of previous recent works that are mentioned in literature review and reference sections of this paper.
机译:预测风速是天气预报中非常重要的部分。由于自然和气候变化的非线性行为,风速预测成为一项具有挑战性的任务,尤其是在孟加拉国这样的国家,那里的许多地区都是沿海地区,并且季节变化频繁。进行这项研究是为了尝试使用统计数据挖掘和机器学习方法的两个非常有潜力和广泛的框架来预测风速;通过反向传播技术支持向量回归(SVR)和人工神经网络(ANN)。孟加拉国气象局(BMD)收集了吉大港沿海地区风速7年(2008-2014)的历史数据集进行了实验。 Leaky ReLu功能被用作输入数据的整流器,以控制MLP中神经元的阈值和激活。这项研究的目的是提出一个可以最大程度地预测短期风速的模型。最后,经过大量的实验,这项研究的结果是:我们提出的SVR和ANN模型能够在短期预测中以99%以上的精度预测风速。此外,在某些情况下,ANN可以以最高99.80%的精度胜过SVR。但是SVR模型最适用于不同水平的整体风速预测,其最高准确度为99.60%。这些结果优于文献回顾和本文参考部分中提到的以前的最新作品。

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