利用深度主动学习实现全球屋顶光伏检测

IF 13 Q1 ENERGY & FUELS
Matthias Zech , Hendrik-Pieter Tetens , Joseph Ranalli
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引用次数: 0

摘要

了解屋顶光伏系统的位置对于监测地区在实现可持续社会方面的进展以及确保将分散能源资源并入电网至关重要。然而,光伏系统的位置往往是未知的,因此大量研究提出了深度学习的变体,利用有监督的深度学习来检测遥感数据中的光伏板。然而,这些方法都是基于注释数据集,因此在微调或扩展到不同区域时往往需要重新标注。深度主动学习的最新进展提供了一个机会,即根据图像对模型的信息价值,智能地选择下一个要标注的图像,从而大幅减少所需的标注图像数量。在本研究中,我们使用来自不同地区的各种数据集比较了不同的深度主动学习算法,并比较了不同的模型训练变体。在模拟中,基于熵的获取函数表现出最高的性能,在不平衡数据的情况下只需要 3% 的数据,同时实现起来也很简单。我们相信,深度主动学习提供了一种优雅的解决方案,既能保持较高的模型准确性,又能大幅减少标注工作量。这有助于开发适用于全球屋顶光伏检测的通用模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Toward global rooftop PV detection with Deep Active Learning

Toward global rooftop PV detection with Deep Active Learning
It is crucial to know the location of rooftop PV systems to monitor the regional progress toward sustainable societies and to ensure the integration of decentralized energy resources into the electricity grid. However, locations of PV are often unknown, which is why a large number of studies have proposed variants of Deep Learning to detect PV panels in remote sensing data using supervised Deep Learning. However, these methods are based on annotating datasets and therefore often require relabeling when fine-tuned or extended to a different region. Recent advances in Deep Active Learning offer the opportunity to significantly reduce the number of required annotated images by intelligently selecting the images to label next based on their informative value for the model. In this study, we compare different Deep Active Learning algorithms using a variety of datasets from different regions and compare different model training variants. In the simulations, the entropy-based acquisition function shows the highest performance with only 3% of the data needed in case-imbalanced data, while remaining simple to implement. We believe that Deep Active Learning provides an elegant solution to maintain high model accuracy while reducing annotation effort substantially. This facilitates the development of generalizable models for worldwide rooftop PV detection.
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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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