基于自适应深度学习的变地形条件下短期风速预测模型

Sourav Malakar;Saptarsi Goswami;Bhaswati Ganguli;Amlan Chakrabarti
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引用次数: 0

摘要

由于丘陵、山脉和山谷的形状和高度,气流的速度和方向会有很大的波动,因此在复杂地形中,准确的风速(WS)预测是必不可少的。每小时的地面50米的WS数据,来自NASA MERRA-2(2015-2021),从五个印度风站收集,用于平原和复杂地形。本文提出了一种新的、自适应的短期WS预报模型。本文的主要贡献如下。(a)利用偏自相关函数(PACF)最小化本征模态函数集(IMF)的维数,从而减少训练时间;(b)使用样本熵(SampEn)来计算简化后的imf集的复杂度。由于基于复杂性选择了特定的深度学习模型-特征组合,因此该方法具有自适应性;(c)为复杂的国际货币基金组织提出了一种新的双向特征- lstm框架,从而提高了预测的准确性;(d)与持续、混合、集合经验模态分解(EEMD)、自适应噪声的完全集合经验模态分解(CEEMDAN)和基于变分模态分解(VMD)的DL模型相比,该模型的预测性能提高了55.94%。在简单地形和复杂地形之间实现了最小的预测方差0.70%,保证了预测的稳健性。IMF的降维和基于复杂度的模型特征选择使训练时间减少了68.77%,预测质量平均提高了58.58%。这些优点突出了该模型在应对复杂地形的WS预测挑战方面的适应性、有效性和弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Deep Learning Based Short-Term Wind Speed Forecasting Model for Variable Terrain Conditions
Wind flow can be highly unpredictable suffer substantial fluctuations in speed and direction due to the shape and height of hills, mountains, and valleys, making accurate wind speed (WS) forecasting essential in complex terrain. Hourly WS data at 50 meters above ground, from MERRA-2, NASA (2015–2021), collected from five Indian wind stations for plain and complex terrain. This article presents a novel and adaptive model for short-term WS forecasting. The article's key contributions are as follows. (a) the partial auto correlation function (PACF) is utilized to minimize the dimension of the set of intrinsic mode functions (IMF), hence reducing training time; (b) The sample entropy (SampEn) was used to calculate the complexity of the reduced set of IMFs. Since a particular deep learning (DL) model-feature-combination was selected based on complexity, the proposed method is adaptive; (c) a novel bidirectional feature-LSTM framework for complicated IMFs has been suggested, resulting in improved forecasting accuracy; (d) the proposed model shows 55.94% superior forecasting performance compared to the persistence, hybrid, ensemble empirical mode decomposition (EEMD), complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN), and variational mode decomposition (VMD)-based DL models. It has achieved the lowest prediction variance between simple and complex terrain at 0.70%, ensuring robust forecasting performance. Dimension reduction of IMF's and complexity-based model-feature selection helps reduce the training time by 68.77%, additionally forecasting quality is improved by 58.58% on average. These benefits highlight the model's adaptability, effectiveness, and resilience in addressing WS forecasting challenges on complex terrain.
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