Probabilistic ultra-short-term solar photovoltaic power forecasting using natural gradient boosting with attention-enhanced neural networks

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zhe Song , Fu Xiao , Zhe Chen , Henrik Madsen
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引用次数: 0

Abstract

Probabilistic forecasting provides insights in estimating the uncertainty of photovoltaic (PV) power forecasts. In this study, an innovative probabilistic ultra-short-term PV power forecasting framework that integrates natural gradient boosting (NGBoost) and deep neural networks is developed. Specifically, an attention-enhanced neural network combining convolutional neural networks (CNN) and bidirectional long short-term memory (BiLSTM) networks is employed for feature engineering to extract abstract features from time-series data. The extracted features are then fed into an optimized NGBoost model to yield probabilistic forecasts. In comparison to the benchmark models, i.e., the recently reported quantile regression (QR)-based deep learning methods and NGBoost, the proposed model demonstrates an enhanced ability to capture variation patterns in PV power output, further improving the forecast skill score by approximately 15–60 % in deterministic forecasting. In terms of probabilistic forecasting, the proposed model shows superior forecast reliability and sharpness compared to all benchmark methods. Its continuous ranked probability score (CRPS) ranges from 0.0710 kW to 0.0898 kW, achieving reductions of approximately 21–43 % over QR-based models and 29–40 % over NGBoost. Furthermore, within confidence intervals of 10–90 %, the proposed model consistently maintains higher coverage probabilities along with narrower average forecast intervals, as evidenced by a lower Winkler score (WS) than the benchmark models. The findings of this study provide insightful references for probabilistic PV power forecasting research, contributing to efficient solar power management and dispatch.

Abstract Image

基于自然梯度增强和注意力增强神经网络的超短期太阳能光伏发电概率预测
概率预测为估计光伏发电预测的不确定性提供了见解。本文提出了一种结合自然梯度增强(NGBoost)和深度神经网络的概率超短期光伏发电功率预测框架。具体而言,将卷积神经网络(CNN)和双向长短期记忆(BiLSTM)网络相结合的注意增强神经网络用于特征工程,从时间序列数据中提取抽象特征。然后将提取的特征输入到优化的NGBoost模型中,以产生概率预测。与基准模型(即最近报道的基于分位数回归(QR)的深度学习方法和NGBoost)相比,该模型显示出更强的捕捉光伏发电输出变化模式的能力,在确定性预测中进一步提高了约15 - 60%的预测技能得分。在概率预测方面,与所有基准方法相比,该模型具有更好的预测可靠性和预测清晰度。它的连续排序概率评分(CRPS)范围为0.0710 kW至0.0898 kW,比基于qr的模型降低了约21 - 43%,比NGBoost模型降低了29 - 40%。此外,在10 - 90%的置信区间内,所提出的模型始终保持较高的覆盖概率和较窄的平均预测区间,其Winkler分数(WS)低于基准模型。研究结果可为光伏发电概率预测研究提供参考,有助于实现高效的光伏发电管理与调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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