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Mapping wide-area land subsidence from groundwater use in the North China plain by machine learning-based InSAR adjustment 基于机器学习的InSAR平差绘制华北平原地下水利用引起的大面积地面沉降
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-06 DOI: 10.1016/j.rse.2025.115226
Mi Jiang , Zhou Wu , Xudong Wang , Lin Bai , Zhiwei Li , Zhong Lu
Since 2014, a series of China's water resource management policies have been implemented to mitigate groundwater-induced land subsidence in the North China Plain (NCP). While previous studies have demonstrated the benefits of Synthetic Aperture Radar interferometry (InSAR) in providing policy-relevant insights into the spatio-temporal dynamics of subsidence and groundwater recovery, most have focused on localized regions, leaving the long-term impact of these measures across the entire NCP insufficiently evaluated. A key challenge is the variation of long-wavelength errors in each SAR frame, which results in inconsistencies in the subsidence velocity field over large areas. To address this issue, this paper proposes a machine learning-based adjustment approach for routinely wide-area subsidence mapping and then fully evaluating land subsidence and associated groundwater depletion in the NCP from the end of 2014 to 2022. The novelty of this method lies in the adaptive selection of the optimal model for each SAR frame, which minimizes the varying long-wavelength errors, rather than relying on a unified model for all SAR frames as commonly used in state-of-the-art approaches. Additionally, we mitigated the difference of InSAR measurement in the overlap regions between consecutive tracks caused by the varying incidence angles by incorporating GNSS data and a plate motion model. Using synthetic and real Sentinel-1 data, we validated the performance of the proposed method against prevalent approaches through an independent GNSS validation dataset, demonstrating accuracy improvements from 3.8-17.5 mm/yr to 2.0 mm/yr. The results indicated that approximately 56,882 km2 of the NCP area experienced land subsidence greater than 20 mm/yr. The central alluvial and coastal plains were the primary areas of subsidence, with a maximum cumulative subsidence of up to 2 m. The average subsidence velocity peaked in 2018 at 38.5 mm/yr. Subsidence has been alleviated after 2021. Our results revealed the lower bound of groundwater loss from the confined aquifer in the NCP, totaling 24.9 billion m3 between the end of 2014 and 2022. Of this total, 20.2 billion m3 (81 %) was lost from October 2014 to the end of 2020, with the loss decreasing to 4.7 billion m3 (19 %) during the period from January 2021 to December 2022. This study provides new evidence for China's groundwater management practices in addressing land subsidence in the NCP.
自2014年以来,中国实施了一系列水资源管理政策,以缓解华北平原地下水引起的地面沉降。虽然以前的研究已经证明了合成孔径雷达干涉测量(InSAR)在为沉降和地下水恢复的时空动态提供与政策相关的见解方面的好处,但大多数研究都集中在局部区域,没有充分评估这些措施对整个NCP的长期影响。一个关键的挑战是每个SAR帧的长波长误差的变化,这导致大面积下沉速度场的不一致。为了解决这一问题,本文提出了一种基于机器学习的平差方法,用于常规广域沉降制图,然后对2014年底至2022年NCP的地面沉降和相关地下水枯竭进行全面评估。该方法的新颖之处在于自适应选择每个SAR帧的最佳模型,从而最大限度地减少变化的长波长误差,而不是像目前常用的方法那样依赖于所有SAR帧的统一模型。此外,我们还结合GNSS数据和板块运动模型,缓解了InSAR在连续航迹重叠区域因入射角变化造成的测量差异。利用合成和真实的Sentinel-1数据,我们通过独立的GNSS验证数据集验证了所提出方法与流行方法的性能,证明精度从3.8-17.5 mm/yr提高到2.0 mm/yr。结果表明,近56,882 km2的NCP区地表沉降大于20 mm/yr。中部冲积区和沿海平原是沉降的主要区域,最大累积沉降可达2 m。平均沉降速度在2018年达到38.5毫米/年的峰值。2021年后,沉降得到缓解。研究结果显示,2014年底至2022年,华北地区承压含水层的地下水损失下限为249亿m3。其中,2014年10月至2020年底损失202亿立方米(81%),2021年1月至2022年12月期间损失减少至47亿立方米(19%)。本研究为中国地下水管理实践在解决华北地区地面沉降问题上提供了新的依据。
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引用次数: 0
A radiometrically and spatially consistent super-resolution framework for Sentinel-2 Sentinel-2的辐射和空间一致性超分辨率框架
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-06 DOI: 10.1016/j.rse.2025.115222
Cesar Aybar, Julio Contreras, Simon Donike, Enrique Portalés-Julià, Gonzalo Mateo-García, Luis Gómez-Chova
Deep learning-based super-resolution (SR) models offer a promising approach to enhancing the effective spatial resolution of optical satellite images. However, existing SR implementations have shown that, while these models can reconstruct fine-scale details, they often introduce undesirable artifacts, such as nonexistent local structures, reflectance distortions, and geometric misalignment. To mitigate these issues, fully synthetic data approaches have been explored for training, as they provide complete control over the degradation process and allow precise supervision and ground-truth availability. However, challenges in domain transfer have limited their effectiveness when applied to real satellite images. In this work, we propose SEN2SR, a new deep learning framework trained to super-resolve Sentinel-2 images while preserving spectral and spatial alignment consistency. Our approach harmonizes synthetic training data to match the spectral and spatial characteristics of Sentinel-2, ensuring realistic and artifact-free enhancements. SEN2SR generates 2.5-meter resolution images for Sentinel-2, upsampling the 10-meter RGB and NIR bands and the 20-meter Red Edge and SWIR bands. To ensure that SR models focus exclusively on enhancing spatial resolution, we introduce a low-frequency hard constraint layer at the final stage of SR networks that always enforces spectral consistency by preserving the original low-frequency content. We evaluate a range of deep learning architectures, including Convolutional Neural Networks, Mamba, and Swin Transformers, within a comprehensive assessment framework that integrates Explainable AI (xAI) techniques. Quantitatively, our framework achieves superior PSNR while maintaining near-zero reflectance deviation and spatial misalignment, outperforming state-of-the-art SR frameworks. Moreover, we demonstrate maintained radiometric fidelity in downstream tasks that demand high-fidelity spectral information and reveal a significant correlation between model performance and pixel-level model activation. Qualitative results show that SR networks effectively handle diverse land cover scenarios without introducing spurious high-frequency details in out-of-distribution cases. Overall, this research underscores the potential of SR techniques in Earth observation, paving the way for more precise monitoring of the Earth’s surface. Models, code, and examples are publicly available at https://github.com/ESAOpenSR/SEN2SR.
基于深度学习的超分辨率(SR)模型为提高光学卫星图像的有效空间分辨率提供了一种很有前景的方法。然而,现有的SR实现已经表明,虽然这些模型可以重建精细尺度的细节,但它们经常引入不受欢迎的工件,例如不存在的局部结构、反射扭曲和几何错位。为了缓解这些问题,已经探索了用于训练的完全合成数据方法,因为它们提供了对退化过程的完全控制,并允许精确的监督和真实的可用性。然而,领域转移的问题限制了其应用于真实卫星图像的有效性。在这项工作中,我们提出了SEN2SR,这是一种新的深度学习框架,可以在保持光谱和空间对准一致性的同时训练超分辨率Sentinel-2图像。我们的方法协调了合成训练数据,以匹配Sentinel-2的光谱和空间特征,确保了真实和无伪影的增强。SEN2SR为Sentinel-2生成2.5米分辨率的图像,对10米RGB和NIR波段以及20米红边和SWIR波段进行上采样。为了确保SR模型专注于提高空间分辨率,我们在SR网络的最后阶段引入了低频硬约束层,该层始终通过保留原始低频内容来强制频谱一致性。我们在集成可解释人工智能(xAI)技术的综合评估框架内评估了一系列深度学习架构,包括卷积神经网络、曼巴和天鹅变形金刚。从数量上讲,我们的框架在保持近零反射偏差和空间失调的同时实现了卓越的PSNR,优于最先进的SR框架。此外,我们在下游任务中证明了需要高保真光谱信息的辐射保真度,并揭示了模型性能与像素级模型激活之间的显著相关性。定性结果表明,SR网络可以有效地处理不同的土地覆盖场景,而不会在分布外情况下引入虚假的高频细节。总的来说,这项研究强调了SR技术在地球观测中的潜力,为更精确地监测地球表面铺平了道路。模型、代码和示例可在https://github.com/ESAOpenSR/SEN2SR上公开获得。
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引用次数: 0
Hyperspectral BRDF based on UAV measurements can characterize optical properties of flat desert surfaces: A comprehensive comparison with laboratory and satellite data 基于无人机测量的高光谱BRDF可以表征平坦沙漠表面的光学特性:与实验室和卫星数据的综合比较
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-05 DOI: 10.1016/j.rse.2025.115228
Yuechao Sheng , Xiuqing Hu , Xingwei He , Lin Chen , Zhongqiu Sun , Shan Lu
Desert is a crucial component of terrestrial ecosystems, and its optical reflection properties are essential for understanding land surface radiative balance. Combining the hyperspectral and angular measurements has been considered as an effective method to characterize optical reflection properties of desert surfaces. However, the ground and satellite-based instruments cannot obtain both hyperspectral and angular reflectance of desert surfaces at appropriate scales due to the limitations of their measurement configurations. We employed an unmanned aerial vehicle (UAV) equipped with a spectrometer to perform hyperspectral BRDF measurements of six desert areas in Northwest China to overcome the limitations. In the comparison with those obtained from laboratory and satellite observations at the same geometries, it is found that UAV-measured hyperspectral reflectance has a spectral shape similar to that of spectra measured in laboratory settings, and UAV-measured angular reflectance shows a good match of BRDF characterization as the satellite observations in the hemispherical space. Moreover, we compared the modeled angular reflectance, which are derived from BRDF models, with measured angular reflectance of deserts at selected wavelengths from MODIS. The BRDF models using UAV-measured hyperspectral BRDF have superior performance in spectral BRDF simulation. The uncertainty analysis based on a Bayesian inversion further confirmed the reliability of the UAV data in effectively characterizing optical properties of the desert surface. These results demonstrate the robustness of UAV-based spectral and angular measurements in quantifying the hyperspectral BRDF, which provide comprehensive in-situ optical properties of desert surfaces. These data can serve as valuable validation for future studies on radiative balance of desert surfaces.
沙漠是陆地生态系统的重要组成部分,其光学反射特性对了解地表辐射平衡至关重要。结合高光谱和角度测量已被认为是表征沙漠表面光学反射特性的有效方法。然而,地面和卫星仪器由于其测量配置的限制,无法同时获得适当尺度的沙漠表面高光谱和角反射率。为了克服高光谱BRDF测量的局限性,我们利用配备光谱仪的无人机(UAV)对中国西北6个沙漠地区进行了高光谱BRDF测量。通过与相同几何形状的实验室和卫星观测结果进行比较,发现无人机测得的高光谱反射率与实验室测得的光谱形状相似,无人机测得的角反射率与半球形空间的卫星观测结果具有良好的BRDF特征匹配。此外,我们还将BRDF模型的模拟角反射率与MODIS中选定波长下沙漠的实测角反射率进行了比较。基于无人机实测高光谱BRDF的BRDF模型在光谱BRDF模拟中具有优越的性能。基于贝叶斯反演的不确定性分析进一步证实了无人机数据在有效表征沙漠表面光学特性方面的可靠性。这些结果证明了基于无人机的光谱和角度测量在量化高光谱BRDF方面的鲁棒性,它提供了沙漠表面的综合原位光学特性。这些数据可为今后沙漠地表辐射平衡的研究提供有价值的验证。
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引用次数: 0
An extended vector inclination method for inferring detailed slip surfaces beneath landslides from SAR and optical satellite remote sensing image 从SAR和光学卫星遥感影像中推断滑坡下滑动面细节的扩展向量倾角方法
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-05 DOI: 10.1016/j.rse.2025.115225
Ya Kang , Zhong Lu , Chaoying Zhao , Yufen Niu , Liquan Chen , Wei Qu , Menghua Li
The slip-surface geometry of a landslide is crucial for stability analysis and early warning, making its accurate and detailed characterization essential for hazard assessment and mitigation. However, traditional methods for obtaining slip-surface geometry are resource-intensive, requiring significant manpower and materials. Some studies have used the three-dimensional (3D) deformation from remote sensing data to infer detailed slip-surface geometry of landslides using the mass conservation method. However, this method usually requires prior data to calibrate the model parameters, and its underlying assumptions may not be valid for all landslide scenarios. In this study, we designed an Extended Vector Inclination Method (EVIM) to determine detailed landslide slip-surface geometry and established a framework for deriving landslide thickness based on 3D deformation derived from SAR and optical remote sensing data. The experiments based on actual events (Hooskanaden, Shangxintian, and Daopo landslide) and simulations demonstrate that EVIM can reliably estimate landslide thickness in a manner consistent with in-situ measurements. Furthermore, simulations indicate that the magnitude of deformation and the error in the constrained 3D deformation affect the accuracy of our method. We conclude that in cases where the mass conservation method is difficult to apply (e.g., landslides lacking prior information), the EVIM may serve as an alternative method. The proposed framework enables rapid slip-surface inversion, making it well-suited for regional-scale landslide stability assessments.
滑坡的滑面几何形状对稳定性分析和早期预警至关重要,使其准确和详细的特征对危害评估和减轻至关重要。然而,传统的获取滑动面几何形状的方法是资源密集型的,需要大量的人力和材料。一些研究利用遥感数据的三维变形,利用质量守恒法来推断滑坡滑面几何形状的细节。然而,这种方法通常需要事先的数据来校准模型参数,其基本假设可能并不适用于所有滑坡情景。在这项研究中,我们设计了一种扩展向量倾角法(EVIM)来确定详细的滑坡滑面几何形状,并建立了基于SAR和光学遥感数据获得的三维变形的滑坡厚度计算框架。基于Hooskanaden滑坡、上新田滑坡和道坡滑坡等实际事件的试验和模拟结果表明,EVIM可以可靠地估算出滑坡厚度,且与现场测量结果一致。此外,仿真结果表明,变形的大小和约束三维变形的误差影响了我们的方法的精度。我们的结论是,在质量守恒方法难以应用的情况下(例如,缺乏先验信息的滑坡),EVIM可以作为一种替代方法。所提出的框架能够实现滑动面快速反演,使其非常适合区域尺度的滑坡稳定性评估。
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引用次数: 0
Large-scale tree-level mapping of forest structure including species type with remote sensing data and ground measurements 基于遥感数据和地面测量的森林结构包括物种类型的大尺度树级制图
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-05 DOI: 10.1016/j.rse.2025.115223
J. Kostensalo , P. Packalen , M. Kuronen , L. Mehtätalo , S. Tuominen , M. Myllymäki
Remote-sensing based tree maps can be used to calculate various diversity indices, but the detection probability of trees depends on size and species. We propose a novel approach combining individual tree detection (ITD) with resampling corrections (+R) which aims to simultaneously correct the size, species, and spatial distribution of trees using scalable algorithms. Using airborne laser scanning, optical data, and ground measurements, we demonstrate the compatibility of ITD+R with two different types of forests and ITD algorithms, as well as its scalability to areas exceeding 3000 km2. The tree maps were evaluated using plot-level variables and benchmarked against area-based k nearest neighbors (k-NN). The ITD+R improved ITD results for most studied metrics, with the Shannon index being an exception, and even outperformed k-NN in predicting dominant height in managed stands, though k-NN still outperformed for stem density and volume. The ITD+R approach was shown to be adaptable to various diversity indices which it has not been specifically trained on, with 254 m2 plot-level predictions correlating at r=0.42–0.91. While ITD trees could be classified with OA=82.0%–86.6% to pine, spruce, and deciduous, further research is needed to account for rare tree species, as low prevalence results in a large number of false detections which cannot be sufficiently addressed with classification alone.
基于遥感的树图可用于计算各种多样性指数,但树木的检测概率取决于大小和种类。我们提出了一种结合单个树检测(ITD)和重采样校正(+R)的新方法,该方法旨在使用可扩展算法同时校正树木的大小、种类和空间分布。利用机载激光扫描、光学数据和地面测量,我们证明了ITD+R与两种不同类型森林和ITD算法的兼容性,以及它在超过3000平方公里的区域内的可扩展性。使用plot-level变量对树图进行评估,并以基于区域的kk近邻(kk- nn)为基准。除Shannon指数外,ITD+R在大多数研究指标上都改善了ITD结果,在预测管理林分的优势高度方面甚至优于kk-NN,尽管kk-NN在树干密度和体积方面仍然优于kk-NN。研究表明,过渡段+R方法适用于尚未专门训练的各种多样性指数,254 m2的样点水平预测的相关系数为0.42-0.91。虽然过渡段乔木的OA值为82.0% ~ 86.6%,可分类为松树、云杉和落叶乔木,但由于低流行率导致大量误检,单靠分类无法充分解决,因此需要进一步研究以解释稀有树种。
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引用次数: 0
Comparing the performance of different hyperspectral satellite imaging spectroscopy in mapping methane point-source emissions 比较不同高光谱卫星成像光谱在甲烷点源排放制图中的性能
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-03 DOI: 10.1016/j.rse.2025.115224
Fei Li , Keer Lin , Yingqi Yan , Shengxi Bai , Qidan Huang , Chenxi Feng , Shiwei Sun , Shaohua Zhao , Wei Zhou , Chunyan Zhou , Jun Lin , Xinwei Zhang , Yongguang Zhang
Accurate detection and quantification of methane point sources are critical for climate change mitigation. Recent advances in spaceborne hyperspectral imaging spectrometers offer new opportunities for global monitoring, yet systematic evaluation across missions remains limited. Here, we assess the spectral and radiometric performance of six operational hyperspectral satellites for methane plume detection. Results show that EMIT, EnMAP, and the GF5 series provide superior capabilities. EMIT achieved the best retrieval precision (σ = 18 ppb), followed by GF5–02-AHSI (σ = 31 ppb), EnMAP (σ = 33 ppb), and GF5-01 A-AHSI (σ = 47 ppb), outperforming PRISMA (σ = 84 ppb) and ZY1-02E-AHSI (σ = 71 ppb). These differences arise from finer spectral sampling distances (SSD: 7.4–8.4 nm), higher signal-to-noise ratios (SNR: 170–250), and more stable central wavelength shifts (0.3–1.3 nm) within the 2300 nm methane absorption region, which collectively enhance plume discrimination against surface backgrounds. In contrast, PRISMA and ZY1-02E-AHSI exhibit lower sensitivity due to larger wavelength shifts (up to 2.8 nm) and lower SNRs (140–150). Case studies illustrate successful detection of methane plumes from diverse sources, including oil and gas (O&G) infrastructure, coal mines, and a landfill site, highlighting both straightforward and challenging retrieval scenarios. This cross-sensor comparison underscores the importance of spectral fidelity and radiometric performance for methane monitoring. The findings provide a quantitative basis for prioritizing existing assets and guiding the design of future missions, emphasizing that high SNR and stable spectral calibration are key for advancing global detection of point-source methane emissions.
甲烷点源的准确探测和量化对于减缓气候变化至关重要。星载高光谱成像光谱仪的最新进展为全球监测提供了新的机会,但跨任务的系统评估仍然有限。在这里,我们评估了六颗用于甲烷羽流探测的高光谱卫星的光谱和辐射性能。结果表明,EMIT、EnMAP和GF5系列提供了优越的性能。EMIT的检索精度最高(σ = 18 ppb),其次是GF5-02-AHSI (σ = 31 ppb)、EnMAP (σ = 33 ppb)和GF5-01 A-AHSI (σ = 47 ppb),优于PRISMA (σ = 84 ppb)和ZY1-02E-AHSI (σ = 71 ppb)。这些差异源于更精细的光谱采样距离(SSD: 7.4-8.4 nm),更高的信噪比(SNR: 170-250),以及2300 nm甲烷吸收区内更稳定的中心波长偏移(0.3-1.3 nm),这些共同增强了对地表背景的羽流识别。相比之下,PRISMA和ZY1-02E-AHSI的灵敏度较低,因为波长位移较大(高达2.8 nm),信噪比较低(140-150)。案例研究成功地检测了来自不同来源的甲烷羽流,包括石油和天然气基础设施、煤矿和垃圾填埋场,突出了简单和具有挑战性的回收方案。这种跨传感器的比较强调了光谱保真度和辐射测量性能对甲烷监测的重要性。研究结果为现有资产的优先排序和指导未来任务的设计提供了定量基础,强调了高信噪比和稳定的光谱校准是推进全球点源甲烷排放检测的关键。
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引用次数: 0
Space-based assessment of NOx emissions from global oil and gas fields: Bridging the gap in current emission inventories 全球油气田氮氧化物排放的天基评估:弥合当前排放清单的差距
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-03 DOI: 10.1016/j.rse.2025.115229
Piyushkumar N. Patel , Ritesh Gautam , Mark Omara
<div><div>Identifying air pollutant sources and quantifying related emissions provides crucial information towards improving global air quality and public health. However, emission inventories for oil and gas (OG) activities inadequately represent nitrogen oxide (NO<sub>x</sub>) emissions—a key precursor to tropospheric ozone and secondary aerosols—with notable discrepancies identified. Satellite remote sensing provides a unique vantage point to map and quantify these emissions consistently on a global scale. Here, we quantify annual NO<sub>x</sub> emissions from 44 major OG basins distributed globally, utilizing TROPOspheric Monitoring Instrument (TROPOMI) nitrogen dioxide (NO<sub>2</sub>) observations with the divergence flux method. In addition, we use the spaceborne Visible Infrared Imaging Radiometer Suite (VIIRS) natural gas flaring detections to further constrain satellite-derived NO<sub>x</sub> emissions. The divergence flux method, which addresses 3D topography corrections and chemical loss of NO<sub>x</sub> while accounting for wind-induced flux smearing, provides a robust approach for estimating NO<sub>x</sub> emissions. This top-down approach resolves emissions at the facility and basin scale (0.01° x 0.01°), enabling direct quantification of a major gap in current bottom-up inventories. Our findings reveal significant differences between satellite observations and established inventories, which systematically underestimate OG sector emissions. A direct comparison of our TROPOMI-derived NO<sub>x</sub> emissions against the existing inventories suggests that EDGARv6.1 underestimates onshore emissions by 61 % and offshore emissions by 26 %. The discrepancy is even more pronounced for the CAMS-GLOB-ANT_v5.3 inventory, which underestimates onshore and offshore emissions by 78 % and 92 %, respectively. These findings hold significance for global emission assessments, demonstrating that current inventories are missing a substantial source of NO<sub>x</sub> pollution, particularly from OG fields. Furthermore, our approach provides detailed spatial emission maps that enhance the granularity in depicting NO<sub>x</sub> distribution with error analysis (uncertainties: 32 %-54 %) supporting that inventory discrepancies are statistically significant, representing structural deficiencies rather than measurement error. We further explore the variations in the correlation between NO<sub>x</sub> emissions with OG production volumes and CH<sub>4</sub> concentrations across different OG basins in North America. The observed co-locations and correlations provide important insights into co-pollution emission characteristics of methane and NO<sub>x</sub>, that are respectively a potent greenhouse gas and a reactive air quality pollutant, linked to be originating from oil and gas activity. These findings have important implications for regulatory monitoring and verification, particularly for addressing emissions transparency requirements under internationa
确定空气污染源和量化相关排放为改善全球空气质量和公众健康提供了重要信息。然而,石油和天然气(OG)活动的排放清单不能充分代表氮氧化物(NOx)的排放,氮氧化物是对流层臭氧和二次气溶胶的关键前体,两者之间存在显著差异。卫星遥感提供了一个独特的优势,可以在全球范围内一致地绘制和量化这些排放。本文利用对流层监测仪器(TROPOMI)二氧化氮(NO2)的发散通量法观测数据,对分布在全球44个主要ogg盆地的年NOx排放量进行了量化。此外,我们使用星载可见光红外成像辐射计套件(VIIRS)进行天然气燃除检测,以进一步限制卫星产生的氮氧化物排放。散度通量方法解决了三维地形校正和氮氧化物的化学损失,同时考虑了风致通量涂布,为估计氮氧化物排放提供了一种可靠的方法。这种自上而下的方法解决了设施和流域尺度(0.01°x 0.01°)的排放问题,从而可以直接量化目前自下而上清单中的主要差距。我们的研究结果揭示了卫星观测与既定清单之间的显著差异,后者系统性地低估了OG部门的排放量。将tropomi衍生的氮氧化物排放量与现有清单进行直接比较表明,EDGARv6.1低估了陆上排放量61%,低估了海上排放量26%。CAMS-GLOB-ANT_v5.3清单的差异更为明显,它分别低估了78%和92%的陆上和海上排放量。这些发现对全球排放评估具有重要意义,表明目前的清单遗漏了氮氧化物污染的主要来源,特别是来自OG油田。此外,我们的方法提供了详细的空间排放图,通过误差分析(不确定性:32% - 54%)增强了描述氮氧化物分布的粒度,支持库存差异在统计上显着,代表结构缺陷而不是测量误差。我们进一步探讨了北美不同OG盆地中NOx排放量与OG产量和CH4浓度之间的相关性变化。观察到的共分布和相关性为甲烷和氮氧化物的共污染排放特征提供了重要的见解,这两种气体分别是一种强效温室气体和一种反应性空气质量污染物,与石油和天然气活动有关。这些发现对监管监测和核查具有重要意义,特别是对解决国际气候框架下的排放透明度要求。
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引用次数: 0
Bridging the thermal gap: Generating 10 m, 3-day land surface temperature via Landsat–Sentinel-2 fusion 弥合热差距:通过Landsat-Sentinel-2融合产生10米、3天的地表温度
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2026-01-02 DOI: 10.1016/j.rse.2025.115227
Yuan Qi , Bo Huang , Min Zhao , Xiaolu Jiang , Wenfei Mao
High spatiotemporal resolution land surface temperature (LST) is essential for climate-impact studies, particularly for urban thermal environment analyses and vegetation phenology tracking. However, current satellite sensors exhibit inherent hardware trade-offs: Sentinel-2 (S2) provides high-resolution (10 m/5 day) optical observations without thermal capability, whereas Landsat-8/9 (L8/9), equipped with both optical and thermal sensors, suffers from coarser resolution (30 m/16 day). This configuration fails to meet the demand for fine spatial and dense temporal surface thermal monitoring. To address this gap, we propose a novel fusion framework for high spatiotemporal resolution LST generation (fHiSTR-LST). It first applies a deep-learning-based spatiotemporal fusion to densify reflectance data, then performs a spatial-spectral fusion to generate high-resolution LST. By synergizing L8/9 and S2 data, our approach reliably produces 10 m spatial-resolution LST across three overpass scenarios (joint, L8/9-only, S2-only), thus achieving an effective ∼3-day temporal resolution. Cross-validations between upscaled LST predictions and native L8/9 LST demonstrate fHiSTR-LST's robust performance across eight study areas worldwide (mean R = 0.90, RMSE = 1.17 K). More significantly, ground-truth validation—previously unaddressed—confirms its satisfactory accuracy (mean R = 0.97, RMSE = 3.45 K). The combined validation shows that fHiSTR-LST outperforms the state-of-the-art by 13 % in R and reduces RMSE by 9 %. Finally, we illustrate two applications—small-area vegetation-phenology tracking and fine-scale urban thermal-pattern delineation—which collectively showcase fHiSTR-LST's capability to resolve subtle surface thermal variations. Our study bridges a critical gap in generating high spatiotemporal resolution LST from satellite imagery, a capability crucial for investigating the nuanced effects of global warming.
高时空分辨率地表温度(LST)对于气候影响研究,特别是城市热环境分析和植被物候追踪至关重要。然而,目前的卫星传感器表现出固有的硬件权衡:Sentinel-2 (S2)提供高分辨率(10米/5天)光学观测,但没有热能力,而Landsat-8/9 (L8/9)配备了光学和热传感器,分辨率较低(30米/16天)。这种配置不能满足精细空间、密集时间的地表热监测需求。为了解决这一问题,我们提出了一种新的高时空分辨率LST生成融合框架(fhstr -LST)。它首先将基于深度学习的时空融合应用于密度反射率数据,然后进行空间光谱融合以生成高分辨率LST。通过协同L8/9和S2数据,我们的方法可靠地产生了跨三种立交桥场景(联合、仅L8/9和仅S2)的10米空间分辨率的LST,从而实现了有效的~ 3天时间分辨率。升级后的LST预测和本地L8/9 LST之间的交叉验证表明,fHiSTR-LST在全球8个研究区域具有稳健的表现(平均R = 0.90, RMSE = 1.17 K)。更重要的是,地基真值验证(以前未解决)证实了其令人满意的准确性(平均R = 0.97, RMSE = 3.45 K)。综合验证表明,fhstr - lst在R方面优于最先进的13%,并将RMSE降低了9%。最后,我们举例说明了两种应用——小区域植被物候跟踪和精细尺度城市热格局描绘——它们共同展示了fHiSTR-LST解决细微地表热变化的能力。我们的研究填补了从卫星图像生成高时空分辨率地表温度的关键空白,这是研究全球变暖微妙影响的关键能力。
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引用次数: 0
A kernel-driven BRDF model by accounting for urban building structures: Model development and preliminary application with satellite data 考虑城市建筑结构的核驱动BRDF模型:模型开发与卫星数据的初步应用
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-31 DOI: 10.1016/j.rse.2025.115217
Tiejun Ye, Tao He, Hongxin Xu
The bidirectional reflectance distribution function (BRDF) is a fundamental variable in urban surface energy balance and is crucial for applications requiring surface anisotropy information, such as aerosol monitoring, land cover classification, and so on. However, challenges remain in obtaining accurate BRDF information over urban areas using remotely sensed data. While some existing kernel-driven models provide timely and efficient BRDF retrieval and have been widely used in deriving global products, they were primarily designed for vegetation-covered surfaces with reduced accuracy over urban surfaces. To address these limitations, this study developed the Urban Analytical Kernel-driven Model (UAKM), which incorporates urban structures to better capture illumination and shadow patterns. Comparative experiments were conducted using simulated data from the Discrete Anisotropic Radiative Transfer (DART) model and Landsat surface reflectance to evaluate UAKM's performance compared with RossThick-LiSparse Reciprocal (RTLSR) and RossThick–Roujean (RTROU) models. In DART-based experiments with dense angular sampling, UAKM achieved the lowest RMSEs (<0.008) and uniquely captured two key urban-specific BRDF characteristics: (1) a reduced growth rate in BRDF at the hotspot along the principal plane rather than a peak; and (2) a BRDF minimum displaced approximately 45° in azimuth from the forward-scattering principal plane. In satellite-based retrievals, UAKM also yielded the lowest RMSEs—below 0.016 in visible bands and below 0.026 in the near-infrared band—while exhibiting stronger robustness to uncertainties in solar viewing geometry. Overall, UAKM contributes to advancing BRDF modeling by integrating urban structural features, providing an efficient, accurate, and robust tool for urban monitoring with satellite data.
双向反射分布函数(BRDF)是城市地表能量平衡的一个基本变量,对于需要地表各向异性信息的应用(如气溶胶监测、土地覆盖分类等)至关重要。然而,在利用遥感数据获取城市地区准确的BRDF信息方面仍然存在挑战。虽然现有的一些核驱动模型提供了及时有效的BRDF检索,并广泛应用于全球产品的派生,但它们主要是针对植被覆盖的表面设计的,与城市表面相比精度较低。为了解决这些限制,本研究开发了城市分析核驱动模型(UAKM),该模型结合了城市结构,以更好地捕捉光照和阴影模式。利用离散各向异性辐射传输(DART)模型和Landsat表面反射率的模拟数据进行对比实验,以评估UAKM与RossThick-LiSparse互反(RTLSR)和RossThick-Roujean (RTROU)模型的性能。在基于dart的密集角度采样实验中,UAKM获得了最低的均方根误差(<0.008),并独特地捕获了两个关键的城市特异性BRDF特征:(1)热点区域BRDF沿主平面而不是峰值的增长率降低;(2) BRDF最小值在方位角上偏离前向散射主平面约45°。在基于卫星的检索中,UAKM也产生了最低的rmse -在可见光波段低于0.016,在近红外波段低于0.026,同时对太阳观测几何形状的不确定性表现出更强的鲁棒性。总体而言,UAKM通过整合城市结构特征,为城市卫星数据监测提供高效、准确和强大的工具,有助于推进BRDF建模。
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引用次数: 0
Assessment and intercomparison of 23 global satellite and model-based soil moisture products using cosmic ray neutron sensing observations over Europe 利用欧洲上空宇宙射线中子遥感观测对23个全球卫星和基于模式的土壤湿度产品进行评估和相互比较
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-30 DOI: 10.1016/j.rse.2025.115207
Pariha Helili , Xiaojun Li , Jean-Pierre Wigneron , Gabrielle De Lannoy , Jian Peng , Frédéric Frappart , Jiangyuan Zeng , Yao Xiao , L. Karthikeyan , Patricia de Rosnay , Zanpin Xing , Ardeshir Ebtehaj , Andreas Colliander , Preethi Konkathi , Ke Zhang , Lei Fan
Comprehensive evaluation of satellite and model-based soil moisture (SM) products is essential for their further development and application. With the advent of Cosmic Ray Neutron Sensing (CRNS), which has an observation radius of 130–240 m, the spatial representativeness mismatch between these grid-based SM products and ground single-point observations during the evaluation process can be feasibly relieved. In this study, we systematically evaluated 23 gridded SM products, including single-sensor satellite, multi-sensor merged, and model-based products, using 68 CRNS measurement sites across the Europe. Our evaluation revealed that the SMAP-INRAE-BORDEAUX (SMAP-IB) SM retrievals showed the superior consistency with CRNS measurements among all analyzed products, demonstrating both high correlation (R = 0.80) and low unbiased root mean square error (ubRMSE = 0.050 m3/m3). The CCI/C3S combined active-passive SM products ranked second in performance (R > 0.75, ubRMSE <0.060 m3/m3). In the bias analysis, 17 products had negative bias (−0.003 m3/m3 to −0.190 m3/m3) against CRNS measurements, while AMSR2-LPRM at C1 and C2 bands and CCI/C3S at active and passive products had positive bias (0.011 m3/m3 to 0.161 m3/m3). It was also found that the capabilities of all SM products retrievals degraded in terms of R and ubRMSE with increasing vegetation density, topographic complexity and soil wetness. Most products showed the lowest ubRMSE and highest R values in cropland compared to other land cover types. Our study emphasizes the substantial potential of cosmic field-scale SM observations for the validation of satellite- and model-based SM products, and our findings have the potential to advance algorithm refinement, product improvement, and hydrometeorological applications.
基于卫星和模型的土壤湿度产品的综合评价对其进一步开发和应用至关重要。随着观测半径为130 ~ 240 m的宇宙射线中子传感(CRNS)的出现,这些基于网格的SM产品在评价过程中与地面单点观测的空间代表性不匹配可以得到切实缓解。在这项研究中,我们系统地评估了23个网格化的SM产品,包括单传感器卫星、多传感器合并和基于模型的产品,使用了欧洲68个CRNS测量站点。我们的评估显示,SMAP-INRAE-BORDEAUX (SMAP-IB) SM检索结果与所有分析产品的CRNS测量结果具有优异的一致性,具有高相关性(R = 0.80)和低无偏均方根误差(ubRMSE = 0.050 m3/m3)。CCI/C3S主-被动式复合SM产品性能排名第二(R > 0.75, ubRMSE <0.060 m3/m3)。在偏倚分析中,17个产品对CRNS测量值的偏倚为负(- 0.003 m3/m3 ~ - 0.190 m3/m3),而C1和C2波段的AMSR2-LPRM和主动和被动波段的CCI/C3S对CRNS测量值的偏倚为正(0.011 m3/m3 ~ 0.161 m3/m3)。随着植被密度、地形复杂性和土壤湿度的增加,所有SM产品在R和ubRMSE方面的检索能力都有所下降。与其他土地覆被类型相比,大多数产品的ubRMSE最低,R值最高。我们的研究强调了宇宙场尺度SM观测在验证基于卫星和模型的SM产品方面的巨大潜力,我们的发现有可能推进算法改进、产品改进和水文气象应用。
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Remote Sensing of Environment
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