利用长短期记忆研究每小时全球水平辐照度预报

Asma Z. Yamani, Sarah N. Alyami
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引用次数: 0

摘要

太阳能是最清洁的可再生能源之一。一些研究提出了全球水平辐照度(GHI)预测模型,这些模型表明,长短期记忆(LSTM)等深度学习模型可以成功地完成这项任务。然而,这些模型需要相对大量的训练数据才能达到优异的准确性,这对于只有有限数据可用的位置来说可能是具有挑战性的。本实验旨在确定研究人员提前一小时预测GHI所需的最小历史数据量,使用深度学习LSTM模型,同时保持由nRMSE测量的优异精度范围。为了实现这一目标,我们用不同数量的训练数据训练了一个LSTM模型,从5年的训练数据开始,然后在每次试验中逐渐减少1年的训练数据,直到只使用1年的训练数据。在每次试验中报告了该模型在nRMSE方面的准确性。这些实验是利用沙特阿拉伯三个地点的历史GHI和气象数据进行的。结论是,LSTM模型仅使用两年的训练数据就有可能实现出色的GHI预测精度(nRMSE<10%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Hourly Global Horizontal Irradiance Forecasting Using Long Short-Term Memory
Solar energy is one of the cleanest renewable energy sources available. Several studies proposed models for Global Horizontal Irradiance (GHI) forecasting, which showed that deep learning models such as Long Short-Term Memory (LSTM) could be successful at this task. However, these models needed relatively large amounts of training data to reach excellent accuracy, which may be challenging for locations where only limited data are available. This experiment aims to determine the minimum amount of historical data needed by researchers to forecast GHI one hour ahead, using a deep learning LSTM model whilst maintaining an excellent accuracy range measured by nRMSE. To achieve this objective, we trained an LSTM model with different amounts of training data, starting with five years of training data then gradually reducing the amount by one year in each trial until using only one year of training data. The accuracy of the model in terms of nRMSE is reported in each trial. The experiments were conducted using historical GHI and meteorological data from three locations in Saudi Arabia. It is concluded that it is possible for an LSTM model to achieve excellent GHI forecasting accuracy (nRMSE<10%) using only two years of training data.
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