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A novel retrieval of global dust optical depth and effective diameter based on MODIS thermal infrared observations 基于MODIS热红外观测的全球尘埃光学深度和有效直径反演新方法
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-17 DOI: 10.1016/j.rse.2025.115083
Jianyu Zheng , Hongbin Yu , Yaping Zhou , Yingxi Shi , Zhibo Zhang , Claudia Di Biagio , Paola Formenti , Alexander Smirnov
Airborne mineral dust significantly influences Earth's climate through perturbing Earth's radiation budget, modulating cloud formation and microphysical properties, and fertilizing the biosphere. Recent field campaigns have revealed substantially more coarse-mode dust particles in the atmosphere than previously recognized, yet current satellite retrievals and climate models inadequately represent these particles. This study presents a novel retrieval algorithm for dust aerosol optical depth at 10 μm (AOD10μm) and effective diameter (Deff) using Moderate Resolution Imaging Spectroradiometer (MODIS) thermal infrared (TIR) observations over global land and ocean. Building upon the previous synergistic approach for MODIS and the Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP), we improve the retrieval from CALIOP-track-limited coverage to full-swath MODIS observations at 10-km resolution over both ocean and land surfaces. The retrieval improvements include: (1) application of climatological CALIOP dust vertical profiles (2007–2017) to constrain dust vertical distribution for off-CALIOP-track pixels; (2) the improved optimization method to effectively handle non-monotonic cost functions arising from temperature inversions within the Saharan Air Layer; and (3) extension to land surfaces through incorporation of MODIS-retrieved surface emissivity and ERA5 reanalysis data. Validation against coarse-mode AOD from global AERONET (N = 4703) and MAN (N = 1673) observations yields R = 0.82 and 0.85 for AOD10μm, with retrieval uncertainty characterized as ε = 15 % × AOD + 0.04. The retrieved Deff demonstrates excellent agreement with in-situ measurements collected from 24 field campaigns around the globe (R = 0.84, MBE = 0.23 μm, RMSE = 0.73 μm), capturing the particle size variation from near-source regions (Deff = 7–8 μm) to long-range transport (Deff = 3–5 μm). Case studies of dust events over the Namibian coast and trans-Atlantic corridor demonstrate the retrieval's capability to resolve episodic dust properties and size-dependent deposition during transport. This improved retrieval addresses the critical observational gap for coarse and super-coarse dust particles (D > 5 μm), providing essential constraints for dust life cycle studies and climate model evaluation.
空气中的矿物粉尘通过扰乱地球的辐射收支、调节云的形成和微物理特性以及给生物圈施肥,显著地影响着地球的气候。最近的野外活动表明,大气中的粗态尘埃颗粒比以前认识到的要多得多,但目前的卫星检索和气候模型还不能充分代表这些颗粒。本文提出了一种利用全球陆地和海洋的中分辨率成像光谱辐射计(MODIS)热红外(TIR)观测数据反演10μm气溶胶光学深度(AOD10μm)和有效直径(Deff)的新算法。基于先前MODIS与正交偏振云气溶胶激光雷达(CALIOP)的协同方法,我们改进了从CALIOP轨迹有限覆盖到海洋和陆地表面10公里分辨率的全幅MODIS观测数据的检索。反演改进包括:(1)利用CALIOP气象沙尘垂直剖面(2007-2017)约束离CALIOP轨道像元的沙尘垂直分布;(2)改进的优化方法有效处理撒哈拉空气层内温度逆温引起的非单调代价函数;(3)结合modis反演的地表发射率和ERA5再分析数据扩展到地表。对全球AERONET (N = 4703)和MAN (N = 1673)观测数据进行粗模AOD验证,AOD10μm的检索不确定度为ε = 15% × AOD + 0.04, R = 0.82和0.85。所获取的Deff与全球24个现场测量结果(R = 0.84, MBE = 0.23 μm, RMSE = 0.73 μm)非常吻合,捕获了从近源区域(Deff = 7-8 μm)到远程迁移区域(Deff = 3-5 μm)的粒径变化。纳米比亚海岸和跨大西洋走廊的沙尘事件的案例研究表明,检索能够解决运输过程中偶发性沙尘特性和大小相关的沉积。这种改进的检索解决了粗粒和超粗粒沙尘(D > 5 μm)的关键观测缺口,为沙尘生命周期研究和气候模式评估提供了必要的约束。
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引用次数: 0
Global uncertainty assessment of vegetation indices from NASA's Harmonized Landsat and Sentinel-2 Project 来自NASA协调陆地卫星和哨兵2号项目植被指数的全球不确定性评估
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-17 DOI: 10.1016/j.rse.2025.115084
Qiang Zhou , Christopher S.R. Neigh , Junchang Ju , Margaret Wooten , Zhe Zhu , Tomoaki Miura , Petya K.E. Campbell , Madhu K. Sridhar , Bradley W. Baker , Rodrigo V. Leite
<div><div>NASA's Harmonized Landsat and Sentinel-2 (HLS) project recently started to produce in forward production a total of nine Vegetation Index (VI) products from the HLS version 2.0 Landsat 8–9 30 m (L30) and Sentinel-2 30 m (S30) surface reflectance data. The HLS version 2.0 dataset provides revisit observations every 1.6 days globally and every 2.2 days in the tropics (the least frequently covered latitudes), when data from four satellites (Landsat 8–9 and Sentinel-2 A/B) are available. HLS-derived VIs can provide a valuable resource for studying vegetation dynamics, including crop growth, forest loss, and disturbance severity and recovery among others. To characterize the suitability of these VIs for scientific applications, we assessed the between-sensor uncertainties for the nine HLS VI products and 12 additional ones, using VIs derived from HLS V2.0 (L30 and S30) surface reflectance for the years 2021 and 2022. A random sample of over 136 million cloud-free observations from 545 same-day L30 and S30 image pairs were selected to represent different landscapes globally in subarctic, temperate, and tropical climates. First, we evaluated between-sensor consistency for each VI derived from L30 and S30 and found high consistency (R<sup>2</sup> > 0.94) for most VIs, except for chlorophyll vegetation index (CVI, R<sup>2</sup> = 0.5). Second, we quantified the impact of potential factors on VI uncertainties using the mean absolute difference (MAD) between L30 and S30. Large view azimuth angle differences (VAD) between observation pairs (> ∼ 125°) increased MAD by ≤0.01 in most VIs. The impact on the Root Mean Square Error Interquartile Range (RMSEIQR) for these VIs varied from a decrease of 0.029 to an increase of 0.017. High solar zenith angle (SZ) (> ∼ 60°), prevalent during winter, also increased MAD by <0.07 and RMSEIQR by <0.2 for most VIs. Furthermore, one of the largest discrepancies was found in the area of terrain shadow, with a relative difference of over 20 %. The findings showed the importance of continuing HLS algorithm refinement. Finally, we analyzed VI uncertainties across VI values and for the qualitative aerosol optical depth characterization at three levels. Using VIs derived from low-level aerosols as a baseline, we assessed the impact of aerosol levels. VIs derived from moderate-level aerosol conditions closely aligned with the baseline. However, high aerosol levels introduced evident discrepancies, highlighting increased uncertainty in VIs under these conditions. Notably, even for low-level aerosol observations, uncertainties increased at VI tail values. For robust application of HLS V2.0 VIs in scientific studies, we recommend VI value ranges associated with low uncertainty. Additionally, we reported standard deviations of discrepancies, stratified by aerosol level and VI value, enabling users to account for uncertainties in their analyses, especially for VIs derived from high aerosol levels or beyond recom
美国宇航局的协调Landsat和Sentinel-2 (HLS)项目最近开始利用HLS 2.0版Landsat 8-9 30米(L30)和Sentinel-2 30米(S30)地表反射率数据生产共9个植被指数(VI)产品。当有四颗卫星(Landsat 8-9和Sentinel-2 A/B)的数据可用时,HLS 2.0版本数据集在全球每1.6天提供一次重访观测,在热带地区每2.2天提供一次(覆盖频率最低的纬度)。hls衍生的VIs可以为研究植被动态提供宝贵的资源,包括作物生长、森林损失、干扰严重程度和恢复等。为了表征这些VIs对科学应用的适用性,我们使用2021年和2022年HLS V2.0 (L30和S30)表面反射率衍生的VIs,评估了9个HLS VI产品和12个其他产品的传感器间不确定性。从545对同日L30和S30图像对中随机抽取超过1.36亿无云观测样本,以代表全球亚北极、温带和热带气候的不同景观。首先,我们评估了L30和S30衍生出的每个VI的传感器间一致性,发现除了叶绿素植被指数(CVI, R2 = 0.5)外,大多数VI的一致性很高(R2 > 0.94)。其次,我们使用L30和S30之间的平均绝对差(MAD)来量化潜在因素对VI不确定性的影响。观测对之间的大视角方位角差(VAD) (> ~ 125°)在大多数VIs中使MAD增加≤0.01。对这些VIs的均方根误差四分位数范围(RMSEIQR)的影响从减少0.029到增加0.017不等。冬季普遍存在的高太阳天顶角(SZ) (> ~ 60°)也使大多数VIs的MAD增加了<;0.07, RMSEIQR增加了<;0.2。此外,地形阴影区域的差异最大,相对差异超过20%。研究结果显示了持续改进HLS算法的重要性。最后,我们分析了不同VI值的VI不确定性,并在三个水平上对气溶胶光学深度进行了定性表征。我们使用从低层气溶胶中获得的能见度作为基线,评估了气溶胶水平的影响。从与基线密切一致的中等水平气溶胶条件中获得的能见度。然而,高气溶胶水平引起了明显的差异,突出了在这些条件下VIs的不确定性增加。值得注意的是,即使对于低层气溶胶观测,不确定性在VI尾值处也有所增加。为了在科学研究中稳健地应用HLS V2.0 VI,我们推荐与低不确定性相关的VI值范围。此外,我们报告了差异的标准偏差,按气溶胶水平和VI值分层,使用户能够解释其分析中的不确定性,特别是来自高气溶胶水平或超出推荐范围的VIs。
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引用次数: 0
The next Landsat: Mission turning point? 地球资源卫星任务的下一个转折点?
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-16 DOI: 10.1016/j.rse.2025.115087
David P. Roy , Michael A. Wulder , Noel Gorelick , Matthew Hansen , Sean Healey , Patrick Hostert , Justin Huntington , Volker C. Radeloff , Ted Scambos , Crystal Schaaf , Curtis E. Woodcock , Zhe Zhu
For over fifty years, the Landsat satellite series has provided continuous and comprehensive data for monitoring changes on the Earth's terrestrial surface. Eight successive missions, carrying progressively more sophisticated sensors, with improved radiometric, geometric, and spatial characteristics, have provided an unbroken series of optical and thermal imagery, unparalleled globally. With limited lifetimes for each Landsat satellite, planning of each mission typically overlaps to ensure continuity. Commencing in 2021, planning of a Landsat-9 successor gathered user needs from across the Earth Observation (EO) community, resulting in the Landsat Next (LNext) mission design of three sun-synchronous satellites to acquire reflective and thermal wavelength observations with two to three times the temporal, spatial, and spectral resolution of previous missions. Proposed 2026 U.S. budgets have significantly reduced NASA Earth Science funding. Alternate architectures are now being investigated for Landsat Next that would only meet Landsat-9 design requirements. While this would provide observation continuity, this implies a revised Landsat Next program launched in the early 2030s with nearly 30 year old capabilities, that may acquire data with lower radiometric quality than the current on-orbit Landsat-8 and 9 missions, and that will not support the new capabilities advocated for by the EO user community. This correspondence serves to raise community awareness that the decision is pending, and outlines the observation requirements originally envisioned for LNext and how they were derived to provide context for evaluating the restructured and descoped capability now being considered.
50多年来,陆地卫星系列为监测地球表面的变化提供了连续和全面的数据。8个连续的任务,携带了越来越复杂的传感器,改进了辐射测量、几何和空间特性,提供了一系列连续的光学和热图像,这在全球是无与伦比的。由于每颗地球资源卫星的使用寿命有限,每次任务的规划通常是重叠的,以确保连续性。从2021年开始,Landsat-9继任者的规划收集了来自整个地球观测(EO)社区的用户需求,导致了Landsat Next (LNext)任务设计,该任务由三颗太阳同步卫星组成,以两到三倍于以前任务的时间、空间和光谱分辨率获取反射和热波长观测。拟议的2026年美国预算大大减少了美国宇航局地球科学基金。Landsat Next的替代架构目前正在研究中,它只能满足Landsat-9的设计要求。虽然这将提供观测的连续性,但这意味着在本世纪30年代初启动的修订后的Landsat Next计划将具有近30年的旧能力,可能会获得比当前在轨Landsat-8和9任务更低的辐射质量数据,并且将不支持EO用户社区所倡导的新能力。这种通信有助于提高社区对决策悬而未决的认识,并概述了最初为LNext设想的观察需求,以及如何推导出这些需求,以便为评估现在正在考虑的重组和分析的能力提供背景。
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引用次数: 0
Monthly monitoring of urban development and renewal at the block-level in China using Sentinel-2 time series 基于Sentinel-2时间序列的中国街区级城市发展与更新月度监测
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-16 DOI: 10.1016/j.rse.2025.115070
Haixu He , Jining Yan , Lirong Liu , Xu Long , Runyu Fan , Zhongchang Sun
Urban renewal has been elevated to a national strategy in China, leading to rapid development and transformation of street blocks. However, monitoring construction events at high temporal resolution remains challenging due to the limitations of existing methods, which often struggle with noise interference and lack continuous monitoring capabilities. To address this, we propose Semantic Similarity Contrast-based Street Block Monitoring (SSC-SB), a method that leverages Sentinel-2 time series imagery for automated, high-frequency detection of street block development and renewal. By extracting deep semantic features with a pretrained encoder, SSC-SB analyzes similarity curves to identify development and demolition construction events. Applied to the Middle Yangtze River Basin (MYRB) urban agglomeration shows that SSC-SB achieves 90.4% spatial domain accuracy, with construction start and end date detection accuracies of 68.8% and 54.9%, respectively. Results indicate an increasing emphasis on urban renewal, as demolished street blocks outnumbered new developments for the first time in 2023, with Hunan Province leading in renewal efforts, where renewal blocks accounted for 41.5% of all changed street blocks, reflecting a balanced focus on expansion and infrastructure renewal. Transfer experiments in Xi’an further demonstrate that SSC-SB retains up to 80% of the performance of a locally trained model when applied across regions without fine-tuning, indicating a decent level of generalizability. By providing fine-grained, continuous monitoring, SSC-SB presents a scalable solution for tracking urban transformation.
在中国,城市更新已经上升为国家战略,导致街区的快速发展和转型。然而,由于现有方法的局限性,在高时间分辨率下监测施工事件仍然具有挑战性,这些方法经常与噪声干扰作斗争,并且缺乏连续监测能力。为了解决这个问题,我们提出了基于语义相似度对比的街道街区监测(SSC-SB),这是一种利用Sentinel-2时间序列图像自动高频检测街道街区发展和更新的方法。SSC-SB通过预训练编码器提取深层语义特征,分析相似曲线来识别开发和拆除建设事件。应用于长江中游城市群的结果表明,SSC-SB空间域精度达到90.4%,施工开工日期和施工结束日期检测精度分别为68.8%和54.9%。结果表明,城市更新越来越受到重视,因为拆除的街道街区数量在2023年首次超过了新开发项目,其中湖南省的更新工作处于领先地位,其中更新街区占所有更改街道街区的41.5%,反映了对扩建和基础设施更新的平衡关注。西安的迁移实验进一步表明,在不进行微调的情况下,SSC-SB在跨区域应用时保留了高达80%的本地训练模型的性能,表明了良好的泛化水平。通过提供细粒度、连续的监控,SSC-SB为跟踪城市转型提供了一个可扩展的解决方案。
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引用次数: 0
Aerosol-cloud layer detection algorithm of the DQ-1/ACDL DQ-1/ACDL的气溶胶-云层检测算法
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-15 DOI: 10.1016/j.rse.2025.115068
Feiyue Mao , Weiwei Xu , Zengxin Pan , Lin Zang , Ge Han , Linxin Dai , Xiuqing Hu , Weibiao Chen , Wei Gong
Satellite lidar plays a unique role in observing the global vertical distribution of aerosols and clouds. CALIPSO (Apr 2006–Aug 2023) pioneered such observations, and China's Aerosol and Carbon Detection Lidar (ACDL) on board the DQ-1 satellite (Apr 2022-) continues this mission. Consequently, it is crucial to develop aerosol and cloud products of ACDL. Particularly, detecting the vertical and horizontal extent of aerosol and cloud layers is one of the most challenging tasks. In this study, we developed an ACDL layer detection algorithm based on the Two-Dimensional Multiscale Hypothesis Testing (2D-MHT) methodology. Notably, we proposed an approach for the uncertainty estimation in lidar return signals from the background atmosphere, enabling successful layer detection for ACDL. The results demonstrate that our algorithm not only accurately identifies layers within ACDL measurements, but also provides the probability that a specific signal bin belongs to a layer. This probability enables users to customize layer definitions, a feature not available in other lidar products that typically rely on threshold-based methods. Furthermore, the ACDL layer products offer higher horizontal resolution and detect 53.0 % more layers globally compared to the CALIPSO V4.51 merged layer product in June 2022. These findings underscore the significant potential of our algorithm and ACDL layer products for advancing atmospheric and climate research.
卫星激光雷达在观测全球气溶胶和云的垂直分布方面起着独特的作用。CALIPSO(2006年4月- 2023年8月)是此类观测的先驱,中国DQ-1卫星上的气溶胶和碳探测激光雷达(ACDL)(2022年4月-)继续这项任务。因此,开发ACDL的气溶胶和云产品至关重要。特别是,探测气溶胶和云层的垂直和水平范围是最具挑战性的任务之一。在本研究中,我们开发了一种基于二维多尺度假设检验(2D-MHT)方法的ACDL层检测算法。值得注意的是,我们提出了一种基于背景大气的激光雷达返回信号的不确定性估计方法,使ACDL的层探测成功。结果表明,该算法不仅可以准确地识别ACDL测量中的层,而且可以提供特定信号盒属于某一层的概率。这种可能性使用户能够自定义层定义,这是其他通常依赖于基于阈值方法的激光雷达产品所不具备的功能。此外,与2022年6月发布的CALIPSO V4.51合并层产品相比,ACDL层产品提供了更高的水平分辨率,在全球范围内检测的层数增加了53.0%。这些发现强调了我们的算法和ACDL层产品在推进大气和气候研究方面的巨大潜力。
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引用次数: 0
Emerging remote sensing techniques for hydrological applications 水文应用的新兴遥感技术
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-15 DOI: 10.1016/j.rse.2025.115060
Jiangyuan Zeng , Di Long , Yongqiang Zhang , Dongryeol Ryu , Jean-Pierre Wigneron , Qi Huang
In light of the rapid advancements in hydrological science research facilitated by cutting-edge remote sensing technologies, such as synthetic aperture radar (SAR), hyperspectral imaging, and Light Detection and Ranging (LiDAR), we have curated a special issue in Remote Sensing of Environment entitled “Emerging remote sensing techniques for hydrological applications”, spanning from October 2022 to April 2024. This special issue comprises 31 publications that highlight methodologies leveraging multi-sensor satellite platforms, unmanned aerial vehicles (UAVs), and advanced physical models and machine learning approaches to improve the monitoring and modeling of key hydrological flux and state variables. These remote sensing retrievals (e.g., river discharge and soil moisture) have been applied to various operational hydrological applications such as real-time flood monitoring and drought risk assessment. To provide a systematic overview, we categorize these publications based upon hydrological themes and the number of publications, covering topics such as water body, soil moisture, river discharge, water level, drought, water storage, and other related areas. Finally, we provide an outlook that envisages how the emerging trends (e.g., multi-sensor integration and machine learning-driven approaches) identified from the published studies will evolve and shape future research directions in hydrological remote sensing.
鉴于尖端遥感技术(如合成孔径雷达(SAR)、高光谱成像和激光探测与测距(LiDAR))推动了水文科学研究的快速发展,我们在《环境遥感》杂志上策划了一期特刊,题为“水文应用的新兴遥感技术”,时间跨度为2022年10月至2024年4月。本期特刊包括31篇出版物,重点介绍了利用多传感器卫星平台、无人机(uav)、先进的物理模型和机器学习方法来改进关键水文通量和状态变量的监测和建模的方法。这些遥感检索(例如河流流量和土壤湿度)已应用于各种业务水文应用,例如实时洪水监测和干旱风险评估。为了提供一个系统的概述,我们根据水文主题和出版物数量对这些出版物进行分类,包括水体、土壤湿度、河流流量、水位、干旱、储水和其他相关领域。最后,我们提供了一个展望,设想从已发表的研究中确定的新兴趋势(例如,多传感器集成和机器学习驱动的方法)将如何发展并塑造未来水文遥感的研究方向。
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引用次数: 0
Enhancing nighttime cloud detection for moderate resolution imagers using a transformer based deep learning network 使用基于变压器的深度学习网络增强中等分辨率成像仪的夜间云检测
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-13 DOI: 10.1016/j.rse.2025.115067
Yuhao Wu , Bin Li , Jun Li , Yonglou Liang , Naiqiang Zhang , Anlai Sun
Accurate cloud detection is essential for the quantitative applications of satellite imager observations, but nighttime cloud detection has challenges due to limited spectral bands, for example, physical methods using only infrared (IR) bands without using spatial textures as input for cloud detection often result in high uncertainties, especially in some situations such as cryosphere surface. Although numerous segmentation-style deep learning cloud detection algorithms have proposed in previous studies, they are inadequate for nighttime due to the difficulty in acquiring two-dimensional truth data for training and validation. To overcome these challenges, the Transformer based Nighttime Cloud Detection (TNCD) framework, which integrates spatial features and utilizes an advanced Transformer architecture with relative position encoding, layer scaling, and channel attention mechanisms, is proposed and investigated for nighttime cloud detection. The model was trained on labels derived from CALIOP data, utilizing a dataset comprising nearly one hundred million segments from MODIS. Independent validation indicates that TNCD achieves robust and consistent performance across various scenarios, with an overall accuracy (OA) of 93.26 % and over 90 % in cryosphere regions. The proposed algorithm avoids the pattern noise appeared in the traditional physical methodology due to the utilization of auxiliary data at coarser resolutions, it also mitigates the negative impact of stripes in IR images for cloud detection. Moreover, TNCD shows high transferable practicability across sensors, with over 90 % OA for MERSI. More importantly, our research underscores the importance of water vapor absorption bands for nighttime cloud detection over the cryosphere. TNCD's high accuracy and robustness provide unique methodology that could be used operationally for nighttime cloud detection.
准确的云探测对于卫星成像仪观测的定量应用至关重要,但由于光谱波段有限,夜间云探测面临挑战,例如,仅使用红外(IR)波段而不使用空间纹理作为云探测输入的物理方法往往导致高度不确定性,特别是在冰冻圈表面等某些情况下。虽然在之前的研究中提出了许多分段式深度学习云检测算法,但由于难以获取用于训练和验证的二维真值数据,这些算法不适用于夜间。为了克服这些挑战,本文提出并研究了基于Transformer的夜间云检测(TNCD)框架,该框架集成了空间特征,并利用了具有相对位置编码、层缩放和通道关注机制的先进Transformer架构,用于夜间云检测。该模型使用来自CALIOP数据的标签进行训练,使用的数据集包括来自MODIS的近1亿个片段。独立验证表明,TNCD在不同情景下均具有稳定的一致性,总体精度(OA)为93.26%,冰冻圈区域的OA超过90%。该算法避免了传统物理方法中由于使用较粗分辨率的辅助数据而产生的模式噪声,减轻了红外图像中条纹对云检测的负面影响。此外,TNCD显示出跨传感器的高可转移实用性,MERSI的OA超过90%。更重要的是,我们的研究强调了水蒸气吸收带对冰冻圈夜间云层探测的重要性。TNCD的高精度和鲁棒性为夜间云探测提供了独特的方法。
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引用次数: 0
Estimation of canopy fAPAR using optical reflectance and airborne LiDAR data 利用光学反射率和机载激光雷达数据估算冠层fAPAR
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-11 DOI: 10.1016/j.rse.2025.115065
Dalei Han , Jing Liu , Shan Xu , Tiangang Yin , Siya Liu , Runfei Zhang , Peiqi Yang
The fraction of absorbed photosynthetically active radiation (fAPAR) of vegetation canopies is a crucial variable for understanding the ecosystem carbon cycle and assessing vegetation responses to climate change. Light absorption of the vegetation canopy is mainly determined by canopy structure and leaf optical properties. Traditional remote sensing methods typically estimate fAPAR from reflectance signals using radiative transfer models or empirical relationships with vegetation indices (VIs) and fAPAR. However, reflectance-based estimates often show moderate accuracy due to the complex relationship between reflected and absorbed fluxes. Airborne LiDAR provides direct information on canopy structural attributes relevant to radiation interception, such as fractional vegetation cover (fCover), which has been used to estimate fAPAR. However, the shortcomings of LiDAR in capturing the role of leaf optical properties introduce some uncertainty in fAPAR estimation. Combining reflectance with LiDAR data offers a promising pathway for improving fAPAR estimation. In this study, we adapted a physically-based model (fAPARRL) to integrate reflectance and LiDAR observations for fAPAR estimation. This model is grounded in spectral invariant theory and represents fAPAR as a function of visible and near-infrared reflectance and a LiDAR-derived canopy structural parameter. The model was evaluated against both VI- and LiDAR-based methods using NEON field datasets and synthetic datasets generated by the one-dimensional SCOPE and three-dimensional LESS radiative transfer models. Across these datasets, the combination of LiDAR and reflectance through the fAPARRL model consistently outperformed VI- and LiDAR-based approaches, with respective maximum improvements in R2 of 0.47 and 0.09. Sensitivity analyses on the simulated datasets further indicated that fAPARRL exhibited higher robustness to variations in chlorophyll content and leaf area index (LAI) than other conventional methods. The proposed fAPARRL model effectively integrates reflectance and LiDAR data through a physically-based scheme, offering improved accuracy and robustness for large-scale fAPAR estimation and ecosystem monitoring.
植被冠层吸收光合有效辐射(fAPAR)是了解生态系统碳循环和评估植被对气候变化响应的重要变量。植被冠层的光吸收主要由冠层结构和叶片光学特性决定。传统的遥感方法通常利用辐射转移模型或与植被指数(VIs)和fAPAR的经验关系从反射信号中估计fAPAR。然而,由于反射通量和吸收通量之间的复杂关系,基于反射率的估计往往显示出中等的准确性。机载激光雷达提供与辐射拦截相关的冠层结构属性的直接信息,例如植被覆盖度(fCover),该数据已被用于估算fAPAR。然而,激光雷达在捕捉叶片光学特性的作用方面的缺点给fAPAR估计带来了一些不确定性。将反射率与LiDAR数据相结合为改进fAPAR估计提供了一条有希望的途径。在这项研究中,我们采用了一个基于物理的模型(fAPARRLfAPARRL)来整合反射率和激光雷达观测数据来估计fAPAR。该模型以光谱不变性理论为基础,将fAPAR表示为可见光和近红外反射率以及激光雷达衍生的冠层结构参数的函数。利用NEON现场数据集和由一维SCOPE和三维LESS辐射传输模型生成的合成数据集,对基于VI和lidar的方法进行了评估。在这些数据集中,通过fAPARRLfAPARRL模型结合LiDAR和反射率的方法始终优于基于VI和基于LiDAR的方法,各自的最大改进R2分别为0.47和0.09。对模拟数据集的敏感性分析进一步表明,fAPARRLfAPARRL对叶绿素含量和叶面积指数(LAI)变化的鲁棒性优于其他常规方法。提出的fAPARRLfAPARRL模型通过基于物理的方案有效地集成了反射率和LiDAR数据,为大规模fAPAR估计和生态系统监测提供了更高的准确性和鲁棒性。
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引用次数: 0
Corrigendum to “Substantial increases in burned area in circumboreal forests from 1983 to 2020 captured by the AVHRR record and a new autoregressive burned area detection algorithm” [Remote Sensing of Environment 325(2025) 114789] “AVHRR记录和一种新的自回归烧毁面积检测算法捕获的1983 - 2020年环缘森林烧毁面积大幅增加”的勘误表[遥感环境325(2025)114789]
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-11 DOI: 10.1016/j.rse.2025.115069
Connor W. Stephens , Anthony R. Ives , Volker C. Radeloff
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引用次数: 0
Assessment of EOS-07 MHS satellite observations and retrieval of specific humidity profiles using a random forest-based algorithm 基于随机森林算法的EOS-07 MHS卫星观测评估和特定湿度剖面的检索
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-10-10 DOI: 10.1016/j.rse.2025.115066
Manoj Kumar Mishra, Rishi Kumar Gangwar, Munn Vinayak Shukla, Prashant Kumar, Pradeep Kumar Thapliyal
An in-house-developed millimeter-wave humidity sounder onboard EOS-07 (EOS-07 MHS), launched in February 2023, operates at six frequencies around the 183.3 GHz water vapor absorption band. This study presents a preliminary performance assessment of EOS-07 MHS, including brightness temperature validation, humidity profile retrieval methodology and its validation.
Under clear-sky conditions, the biases in brightness temperature measured by EOS-07 MHS, relative to RTTOV simulations were within ±1 K, except for channels 1 and 6. Similarly, intercomparisons with ATMS observations showed biases within ±1 K and a standard deviation of 2–3 K.
A random forest-based method was employed to retrieve specific humidity profiles from EOS-07 MHS observations demonstrated agreement with ERA5 reanalysis and radiosonde observations. Compared with radiosonde data, the mean bias and standard deviation of retrieved specific humidity were approximately 0.78 g/kg and 2.3 g/kg, respectively. The mean percentage bias was within ±20 % below the 800 hPa pressure level, and ranged between ±20 % and ± 40 % above the 800 hPa pressure level. Relative to ERA5, the mean bias and root-mean-square deviation (RMSD) were under 30 % and 50 %, respectively. The estimated total precipitable water vapor showed a mean bias of 1.7–3.1 mm and a standard deviation of 5.2–5.7 mm compared to ERA5. Additionally, the EOS-07 MHS data were assimilated into the WRF model, resulting in improved atmospheric analyses and forecasts. A month-long cyclic assimilation experiment demonstrated consistent enhancements in moisture representation across the lower and middle atmosphere.
在2023年2月发射的EOS-07 (EOS-07 MHS)上搭载的自主开发的毫米波湿度测深仪在183.3 GHz水蒸汽吸收波段附近的6个频率上工作。本文对EOS-07 MHS进行了初步的性能评估,包括亮度温度验证、湿度廓线检索方法及其验证。晴空条件下,除了通道1和通道6外,EOS-07 MHS测量的亮度温度相对于RTTOV模拟的偏差在±1 K以内。同样,与ATMS观察结果的相互比较显示偏差在±1 K以内,标准差为2-3 K。采用基于随机森林的方法从EOS-07 MHS观测数据中检索特定湿度曲线,结果与ERA5再分析和探空观测结果一致。与探空数据相比,反演比湿度的平均偏差约为0.78 g/kg,标准差约为2.3 g/kg。在800 hPa压力水平以下,平均百分比偏差在±20%以内,在800 hPa压力水平以上,平均百分比偏差在±20%至±40%之间。相对于ERA5,平均偏倚和均方根偏差(RMSD)分别低于30%和50%。与ERA5相比,估算的总可降水量平均偏差为1.7 ~ 3.1 mm,标准差为5.2 ~ 5.7 mm。此外,EOS-07 MHS数据被吸收到WRF模式中,从而改进了大气分析和预报。一个月的循环同化实验表明,低层和中层大气的湿度表现一致增强。
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Remote Sensing of Environment
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