Graduate School of Environmental Studies, Nagoya University, Nagoya 464-8601, Japan.
Plus GIS, Wakayama 640-8157, Japan.
Environ Sci Technol. 2023 Mar 7;57(9):3971-3979. doi: 10.1021/acs.est.2c08468. Epub 2023 Feb 21.
Built environment stocks have attracted much attention in recent decades because of their role in material and energy flows and environmental impacts. Spatially refined estimation of built environment stocks benefits city management, for example, in urban mining and resource circularity strategy making. Nighttime light (NTL) data sets are widely used and are regarded as high-resolution products in large-scale building stock research. However, some of their limitations, especially blooming/saturation effects, have hampered performance in estimating building stocks. In this study, we experimentally proposed and trained a convolution neural network (CNN)-based building stock estimation (CBuiSE) model and applied it to major Japanese metropolitan areas to estimate building stocks using NTL data. The results show that the CBuiSE model is capable of estimating building stocks at a relatively high resolution (approximately 830 m) and reflecting spatial distribution patterns, although the accuracy needs to be further improved to enhance the model performance. In addition, the CBuiSE model can effectively mitigate the overestimation of building stocks arising from the blooming effect of NTL. This study highlights the potential of NTL to provide a new research direction and serve as a cornerstone for future anthropogenic stock studies in the fields of sustainability and industrial ecology.
近几十年来,由于其在物质和能量流动以及环境影响方面的作用,建筑环境存量吸引了很多关注。对建筑环境存量进行精细化的空间估计有利于城市管理,例如在城市采矿和资源循环策略制定方面。夜间灯光(NTL)数据集被广泛使用,并被视为大规模建筑存量研究中的高分辨率产品。然而,其一些局限性,尤其是过亮/饱和效应,阻碍了其在估算建筑存量方面的性能。在这项研究中,我们实验性地提出并训练了一个基于卷积神经网络(CNN)的建筑存量估算(CBuiSE)模型,并将其应用于日本主要大都市地区,使用 NTL 数据估算建筑存量。结果表明,虽然需要进一步提高精度以增强模型性能,但 CBuiSE 模型能够以相对较高的分辨率(约 830 米)估算建筑存量,并反映空间分布模式。此外,CBuiSE 模型可以有效地减轻 NTL 过亮效应导致的建筑存量高估。这项研究强调了 NTL 的潜力,可以为可持续性和工业生态学领域的未来人为存量研究提供新的研究方向和基石。