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Not just a pretty picture: Mapping Leaf Area Index at 10 m resolution using Sentinel-2 不仅仅是一幅美丽的图画利用 Sentinel-2 绘制 10 米分辨率的叶面积指数图
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-28 DOI: 10.1016/j.rse.2024.114269
Richard Fernandes , Gang Hong , Luke A. Brown , Jadu Dash , Kate Harvey , Simha Kalimipalli , Camryn MacDougall , Courtney Meier , Harry Morris , Hemit Shah , Abhay Sharma , Lixin Sun

Achieving the Global Climate Observing System goal of 10 m resolution leaf area index (LAI) maps is critical for applications related to climate adaptation, sustainable agriculture, and ecosystem monitoring. Five strategies for producing 10 m LAI maps from Sentinel-2 (S2) imagery are evaluated: i. bi-cubic interpolation of 20 m resolution S2 LAI maps from the Simplified Level 2 Prototype Processor Version 1 (SL2PV1) as currently performed by the Sentinel Applications Platform (SNAP), ii. applying SL2PV1 to S2 reflectance bands spatially downscaled to 10 m using bi-cubic interpolation (BICUBIC), iii. Applying SL2PV1 to S2 reflectance bands spatially downscaled to 10 m using Area to Point Regression Kriging (ATPRK), iv. using a recalibrated version of SL2PV1 (SL2PV2) requiring only three S2 10m bands, and iv) a novel use of the previously developed Active Learning Regularization (ALR) approach to locally approximate the SL2PV1 algorithm using only 10 m bands.

Algorithms were assessed in terms of per-pixel accuracy and spatial metrics when comparing 10 m LAI maps produced using either actual S2 imagery or S2 imagery synthesized from airborne hyperspectral imagery to reference 10 m LAI maps traceable to in-situ fiducial reference measurements at 10 sites across the continental US. ATPRK and ALR algorithms had the lowest precision error of ∼0.15 LAI, compared to 0.19 LAI for SNAP and BICUBIC and 0.35 LAI for SL2PV2, and ranked highest in terms of local correlation and Structural Similarity Index measure as well as qualitative agreement with reference maps. SL2PV2 LAI showed evidence of saturation over forests related to decreased sensitivity of input visible reflectance. All algorithms had a similar uncertainty of ∼0.55 LAI compared to traceable reference maps, due to the trade-off between bias and precision. However, ATPRK and ALR uncertainty reduced to 0.11 LAI and 0.16 LAI, respectively, when compared to reference maps that ignored canopy clumping. These results suggest that both ATPRK and ALR are suitable for producing 10 m S2 LAI maps assuming bias due to local clumping can be corrected in the underlying SL2PV1 algorithm.

实现全球气候观测系统 10 米分辨率叶面积指数(LAI)地图的目标对于气候适应、可持续农业和生态系统监测等相关应用至关重要。本文评估了利用哨兵-2(S2)图像绘制 10 米分辨率叶面积指数图的五种策略:i. 对目前由哨兵应用平台(SNAP)执行的简化二级原型处理器版本 1(SL2PV1)绘制的 20 米分辨率 S2 叶面积指数图进行双立方插值;ii. 利用双立方插值(BICUBIC)将 SL2PV1 应用于空间缩减为 10 米的 S2 反射带;iii. 将 SL2PV1 应用于 S2 反射带。使用面积到点回归克里金(ATPRK)将 SL2PV1 应用于空间缩减为 10 米的 S2 反射率波段,iv. 使用 SL2PV1 的重新校准版本(SL2PV2),仅需要三个 S2 10 米波段,以及 iv) 新颖地使用之前开发的主动学习正则化(ALR)方法,仅使用 10 米波段对 SL2PV1 算法进行局部近似。
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引用次数: 0
On the shoreline monitoring via earth observation: An isoradiometric method 通过地球观测进行海岸线监测:等辐射测量法
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-28 DOI: 10.1016/j.rse.2024.114286
F. Caldareri , A. Sulli , N. Parrino , G. Dardanelli , S. Todaro , A. Maltese

Shoreline variations, triggered by climate change, eustatism, and tectonic, drive the coastal landscape evolution over multiple spatial and temporal scales. Among the many different existing coast types, sandy coasts are the most sensitive to coastal erosion and accretion processes and, at the same time, often host valuable anthropogenic assets. The rapid and ongoing evolution of these coastal environments poses challenges for their management, necessitating cost-effective and highly reliable methods for measuring these changes. Many remotely sensed shoreline extraction methods have been proposed in the literature, providing valuable tools for improving coastal management. Even if these methodologies allow the demarcation of the shoreline, its pixelated shape usually requires refinement through subsequent smoothing or vector generalization processes. It is important to note that the position of the thus extracted coastline is not a direct result of a measured physical quantity but rather a product of these refinement techniques. To address this problem, we developed a sub-pixel resolution method for extracting shorelines from remotely sensed images of sandy beaches, leveraging the radiometric signature of the shoreline. Validated through precise Global Navigation Satellite System field surveys for positioning the beach foreshore, this method was successfully applied to three beaches in Sicily, in the central Mediterranean, all exhibiting similar microtidal conditions. Its robust design allows for application across various satellite images, employing a straightforward radiometric interpolation method adaptable to different spatial resolutions. This method would be a valuable tool for coastal managers in detecting and mitigating coastal erosion and developing and maintaining anthropogenic coastal assets.

由气候变化、地壳运动和构造作用引起的海岸线变化,在多个时空尺度上推动着沿岸景观 的演变。在现有的多种海岸类型中,沙质海岸对海岸侵蚀和增生过程最为敏感,同时也往往承载 着宝贵的人类活动资产。这些海岸环境的快速和持续演变对其管理提出了挑战,需要有成本效益高和高度可靠 的方法来测量这些变化。文献中提出了许多遥感海岸线提取方法,为改进海岸管理提供了宝贵的工具。即使这些方法可以确定海岸线,但其像素化的形状通常需要通过后续的平滑或矢量概 化过程来完善。需要注意的是,这样提取的海岸线位置并不是测量物理量的直接结果,而是这些细化技术的产物。为了解决这个问题,我们开发了一种亚像素分辨率方法,利用海岸线的辐射特征,从沙质海滩的遥感图像中提取海岸线。通过精确的全球导航卫星系统实地勘测对海滩前滩进行定位,该方法得到了验证,并成功应用于地中海中部西西里岛的三个海滩,这些海滩都呈现出类似的微潮汐条件。该方法设计稳健,可应用于各种卫星图像,采用直接的辐射插值方法,可适应不同的空间分辨率。这种方法将成为沿海管理人员检测和减缓海岸侵蚀以及开发和维护人为沿海资产的宝贵工具。
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引用次数: 0
Multitemporal airborne imaging spectrometry and fluorometry reveal contrasting photoprotective responses of trees 多时段机载成像光谱仪和荧光测定法揭示了树木截然不同的光保护反应
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-28 DOI: 10.1016/j.rse.2024.114295
Ran Wang , John A. Gamon , Sabrina E. Russo , Aime Valentin Nishimwe , Hugh Ellerman , Brian Wardlow

The Photochemical Reflectance Index (PRI) and solar induced fluorescence (SIF) provide information on plant photosynthetic activity. PRI and SIF are both strongly influenced by irradiance, but uncertainties related to the interpretation of these light responses at large spatial scales remain, partly due to a shortage of suitable data from aircraft or satellite platforms. The goal of this study was to explore interpretations of the PRI- and SIF-light responses of trees owing to species, functional types (evergreen and deciduous) and season. Using airborne hyperspectral and ultraspectral imagery in a North American urban forest, we derived PRI, SIF, and albedo (an indicator of illumination) at the 1-m pixel level. We then quantified crown-level PRI and SIF light responses of ten different tree species at three time points from late-summer to autumnal senescence using hierarchical models. Our results confirmed that both PRI and SIF were strongly influenced by illumination with PRI decreasing and SIF increasing with illumination. Both slope and intercept of the PRI-albedo relationship changed with season, but the pattern varied among species and functional types. SIF values decreased during autumnal senescence for all species, but evergreen species exhibited less seasonal decline in the slope of SIF-albedo relationship compared to deciduous species. The PRI and SIF light responses derived from the airborne imagery offer complementary information on dynamic photosynthesis responses presumably due to varying canopy structure, pigmentation and photoprotection among species and functional types. From airborne platforms, PRI- and SIF-light responses can be used to explore the contrasting physiological responses of individual tree crowns, providing a spatially and temporally explicit view of dynamic plant traits related to photoregulation and a novel view of functional diversity for entire landscapes.

光化学反射指数(PRI)和太阳诱导荧光(SIF)提供了有关植物光合作用活动的信息。PRI 和 SIF 均受辐照度的强烈影响,但在大空间尺度上对这些光反应的解释仍存在不确定性,部分原因是缺乏来自飞机或卫星平台的合适数据。本研究的目的是探讨如何解释树木因物种、功能类型(常绿和落叶)和季节而产生的 PRI 和 SIF 光响应。利用北美城市森林的机载高光谱和超光谱图像,我们得出了 1 米像素级的 PRI、SIF 和反照率(光照指标)。然后,我们使用层次模型量化了十种不同树种在从夏末到秋季衰老的三个时间点上的树冠级 PRI 和 SIF 光响应。我们的结果证实,PRI 和 SIF 都受到光照的强烈影响,PRI 随光照降低,SIF 随光照增加。PRI-albedo 关系的斜率和截距都随季节变化,但其模式因物种和功能类型而异。所有物种的 SIF 值在秋季衰老期都会下降,但与落叶物种相比,常绿物种的 SIF-albedo 关系斜率的季节性下降幅度较小。机载图像得出的 PRI 和 SIF 光响应提供了有关动态光合作用响应的互补信息,这可能是由于不同物种和功能类型的树冠结构、色素沉积和光保护不同造成的。在机载平台上,PRI 和 SIF 光响应可用于探索单个树冠的对比性生理响应,提供与光调节相关的动态植物特征的明确时空视图,以及整个景观功能多样性的新视图。
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引用次数: 0
Uncertainty estimates in the NISAR high-resolution soil moisture retrievals from multi-scale algorithm 多尺度算法对 NISAR 高分辨率土壤水分检索的不确定性估计
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-27 DOI: 10.1016/j.rse.2024.114288
Preet Lal , Gurjeet Singh , Narendra N. Das , Dara Entekhabi , Rowena B. Lohman , Andreas Colliander

It is important to know the amount of systematic and random uncertainties in any state variable to improve its geophysical application potential. The expected high-resolution (200 [m]) soil moisture product from the NASA-ISRO Synthetic Aperture Radar (NISAR) mission is no exception. Thus, knowing the quality of the soil moisture retrievals through the estimation of various error sources is imperative. The estimation error sources in soil moisture retrievals can be obtained by various methods. In situ measurements provide a reliable estimate of the uncertainty of soil moisture retrievals. However, in situ measurements are available only for limited locations, as they are typically very tedious and expensive to obtain. Thus, an analytical approach has been developed to obtain an estimate of the uncertainty in the soil moisture retrievals that vary in space and time across grid-cells. This uncertainty estimation is specifically developed for the multi-scale algorithm of the upcoming NISAR mission, which will provide soil moisture retrievals at 200 [m] resolution. The multi-scale algorithm for the NISAR mission disaggregates the coarser resolution soil moisture (∼9 [km]) to high-resolution (∼200 [m]) using NISAR L-band SAR measurements. However, uncertainty in high-resolution soil moisture retrievals might be introduced due to errors in input datasets (e.g., coarse resolution soil moisture, instrument error of SAR, etc.) and multi-scale algorithm parameters. Therefore, this study carried out a detailed sensitivity analysis of input datasets and algorithm parameters using the proposed approach. The sensitivity analysis shows that error in the input coarse resolution soil moisture is one of the primary drivers of uncertainty in the high-resolution soil moisture retrievals. The other portion of the uncertainty comes from errors in the algorithm parameters, and noise in SAR co-pol and cross-pol backscatter observations. Furthermore, the approach was tested on the UAVSAR L-band data time-series that had been simulated to closely match the expected characteristics of NISAR (e.g., spatial resolution and noise). The uncertainty estimates in UAVSAR-based high-resolution retrievals were compared with the SMAPVEX-12 in situ measurements. The uncertainties estimated for different crops were found to be close to the ubRMSE metric, which is also lower than the NISAR mission accuracy goal (0.06 [m3/m3]).

了解任何状态变量的系统不确定性和随机不确定性对提高其地球物理应用潜力都非常重要。来自 NASA-ISRO 合成孔径雷达(NISAR)任务的预期高分辨率(200 [m])土壤水分产品也不例外。因此,通过估计各种误差源来了解土壤水分检索的质量势在必行。土壤水分检索中的估算误差源可通过各种方法获得。原位测量可以可靠地估计土壤水分检索的不确定性。然而,原位测量只能在有限的地点进行,因为获取这些数据通常非常繁琐且昂贵。因此,我们开发了一种分析方法,用于估算不同网格单元中随时间和空间变化的土壤水分检索的不确定性。这种不确定性估算是专门为即将进行的 NISAR 任务的多尺度算法开发的,该任务将提供 200 [m] 分辨率的土壤水分检索。NISAR 任务的多尺度算法利用 NISAR L 波段合成孔径雷达测量数据,将较粗分辨率(∼9 [公里])的土壤水分分解为高分辨率(∼200 [米])的土壤水分。然而,由于输入数据集(如粗分辨率土壤水分、合成孔径雷达仪器误差等)和多尺度算法参数的误差,可能会给高分辨率土壤水分检索带来不确定性。因此,本研究利用所提出的方法对输入数据集和算法参数进行了详细的灵敏度分析。灵敏度分析表明,输入的粗分辨率土壤水分误差是造成高分辨率土壤水分检索不确定性的主要原因之一。另一部分不确定性来自算法参数的误差以及合成孔径雷达同向和跨向后向散射观测数据的噪声。此外,还对 UAVSAR L 波段数据时间序列进行了测试,模拟结果与 NISAR 的预期特征(如空间分辨率和噪声)非常接近。基于 UAVSAR 的高分辨率检索的不确定性估计值与 SMAPVEX-12 实地测量值进行了比较。发现不同作物的不确定性估计值接近于 ubRMSE 指标,也低于 NISAR 的任务精度目标(0.06 [m/m])。
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引用次数: 0
Intercomparison of global foliar trait maps reveals fundamental differences and limitations of upscaling approaches 全球叶片性状图的相互比较揭示了放大方法的根本差异和局限性
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-27 DOI: 10.1016/j.rse.2024.114276
Benjamin Dechant , Jens Kattge , Ryan Pavlick , Fabian D. Schneider , Francesco M. Sabatini , Álvaro Moreno-Martínez , Ethan E. Butler , Peter M. van Bodegom , Helena Vallicrosa , Teja Kattenborn , Coline C.F. Boonman , Nima Madani , Ian J. Wright , Ning Dong , Hannes Feilhauer , Josep Peñuelas , Jordi Sardans , Jesús Aguirre-Gutiérrez , Peter B. Reich , Pedro J. Leitão , Philip A. Townsend

Foliar traits such as specific leaf area (SLA), leaf nitrogen (N), and phosphorus (P) concentrations play important roles in plant economic strategies and ecosystem functioning. Various global maps of these foliar traits have been generated using statistical upscaling approaches based on in-situ trait observations. Here, we intercompare such global upscaled foliar trait maps at 0.5° spatial resolution (six maps for SLA, five for N, three for P), categorize the upscaling approaches used to generate them, and evaluate the maps with trait estimates from a global database of vegetation plots (sPlotOpen). We disentangled the contributions from different plant functional types (PFTs) to the upscaled maps and quantified the impacts of using different plot-level trait metrics on the evaluation with sPlotOpen: community weighted mean (CWM) and top-of-canopy weighted mean (TWM). We found that the global foliar trait maps of SLA and N differ drastically and fall into two groups that are almost uncorrelated (for P only maps from one group were available). The primary factor explaining the differences between these groups is the use of PFT information combined with remote sensing-derived land cover products in one group while the other group mostly relied on environmental predictors alone. The maps that used PFT and corresponding land cover information exhibit considerable similarities in spatial patterns that are strongly driven by land cover. The maps not using PFTs show a lower level of similarity and tend to be strongly driven by individual environmental variables. Upscaled maps of both groups were moderately correlated to sPlotOpen data aggregated to the grid-cell level (R = 0.2–0.6) when processing sPlotOpen in a way that is consistent with the respective trait upscaling approaches, including the plot-level trait metric (CWM or TWM) and the scaling to the grid cells with or without accounting for fractional land cover. The impact of using TWM or CWM was relevant, but considerably smaller than that of the PFT and land cover information. The maps using PFT and land cover information better reproduce the between-PFT trait differences of sPlotOpen data, while the two groups performed similarly in capturing within-PFT trait variation.

Our findings highlight the importance of explicitly accounting for within-grid-cell trait variation, which has important implications for applications using existing maps and future upscaling efforts. Remote sensing information has great potential to reduce uncertainties related to scaling from in-situ observations to grid cells and the regression-based mapping steps involved in the upscaling.

比叶面积(SLA)、叶片氮(N)和磷(P)浓度等叶片性状在植物经济战略和生态系统功能中发挥着重要作用。根据现场性状观测结果,采用统计放大方法生成了这些叶片性状的各种全球地图。在此,我们比较了这些空间分辨率为 0.5°的全球叶片性状地图(SLA 六张、N 五张、P 三张),对生成这些地图所使用的放大方法进行了分类,并用全球植被地块数据库(sPlotOpen)中的性状估计值对这些地图进行了评估。我们区分了不同植物功能类型(PFTs)对放大地图的贡献,并量化了使用不同地块级性状指标对 sPlotOpen 评估的影响:群落加权平均值(CWM)和冠顶加权平均值(TWM)。我们发现,SLA 和 N 的全球叶面性状图差别很大,分为几乎不相关的两组(P 只有一组的图)。造成这两组之间差异的主要原因是,一组使用了结合遥感衍生土地覆被产品的叶面性状信息,而另一组则主要依靠环境预测因子。使用 PFT 和相应土地覆被信息的地图在空间模式上表现出相当大的相似性,而这些空间模式主要由土地覆被驱动。未使用 PFT 的地图显示出较低程度的相似性,并倾向于受个别环境变量的强烈驱动。在处理 sPlotOpen 时,两组的放大地图与汇总到网格单元水平的 sPlotOpen 数据具有适度的相关性(= 0.2-0.6),这与各自的性状放大方法一致,包括地块级性状度量(CWM 或 TWM)以及在考虑或不考虑部分土地覆被的情况下放大到网格单元。使用 TWM 或 CWM 的影响是相关的,但要比使用 PFT 和土地覆被信息的影响小得多。使用 PFT 和土地覆被信息的地图更好地再现了 sPlotOpen 数据的不同地块之间的性状差异,而两组地图在捕捉不同地块内部性状差异方面的表现相似。
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引用次数: 0
Unveiling the hidden dynamics of intermittent surface water: A remote sensing framework 揭示间歇性地表水的隐藏动态:遥感框架
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-27 DOI: 10.1016/j.rse.2024.114285
Zhen Xiao , Runkui Li , Mingjun Ding , Panli Cai , Jingxian Guo , Haiyu Fu , Xiaoping Zhang , Xianfeng Song

Intermittent surface water frequently transitioning between water and land over months and years, plays a crucial and increasingly significant role in both social and ecological systems. However, their vital and dramatic dynamics have mainly remained invisible due to monitoring limitations. We present a new remote sensing framework to capture the long-term monthly dynamics of surface water bodies, applying it to Poyang Lake, the largest freshwater lake in China. This framework employed a random forest classifier on all available Landsat data to identify monthly surface water bodies. Additionally, we developed a Spatial and Temporal Neighborhood Similarity-based Gap Filling method to restore water bodies obscured by clouds and ensure spatial integrity. Furthermore, we introduced an index to quantify the intermittency of surface water bodies on a scale from 0 to 1, allowing for the classification of water bodies into three categories: perennial, wet intermittent, and dry intermittent. Employing this framework, we reconstructed the most complete monthly 30-m surface water dataset for cloudy regions to date, covering April 1986 to September 2023, demonstrating a strong correlation (Spearman's rank correlation coefficient of 0.909) with observed water levels. The results reveal a landscape dominantly composed of intermittent water bodies (91.2%), with a rapidly shrinking trend of perennial water bodies at 1303.58 ha per year. Notably, 162,685 ha (21.9%) of water bodies transitioned toward drier and more intermittent statuses. Dry intermittent water bodies exhibited the most pronounced land-water transitions, with the highest water-to-land (82.5%) and land-to-water (89.9%) proportions among the three categories. By uncovering the hidden dynamics of intermittent surface water, and highlighting its prevalence, expansion, and vulnerability, this framework paves the way for a better understanding of these critical water dynamics across the globe.

间歇性地表水在数月或数年中经常在水与陆地之间转换,在社会和生态系统中发挥着至关重要且日益重要的作用。然而,由于监测的局限性,它们的生命力和戏剧性的动态主要还是被忽视了。我们提出了一种新的遥感框架,用于捕捉地表水体的长期月度动态,并将其应用于中国最大的淡水湖--鄱阳湖。该框架在所有可用的 Landsat 数据上使用随机森林分类器来识别月度地表水体。此外,我们还开发了一种基于时空邻域相似性的间隙填充方法,用于恢复被云层遮挡的水体,确保空间完整性。此外,我们还引入了一个指数来量化地表水体的间歇性,指数范围从 0 到 1,可将水体分为三类:常年水体、湿间歇水体和干间歇水体。利用这一框架,我们重建了迄今为止最完整的多云地区月度 30 米地表水数据集,涵盖时间为 1986 年 4 月至 2023 年 9 月,结果表明该数据集与观测水位具有很强的相关性(斯皮尔曼等级相关系数为 0.909)。结果表明,景观主要由间歇性水体组成(91.2%),常年性水体呈快速缩减趋势,每年缩减 1303.58 公顷。值得注意的是,162,685 公顷(21.9%)的水体向更干燥、更间歇的状态过渡。干旱间歇性水体的水陆过渡最为明显,水到陆地(82.5%)和陆到水(89.9%)的比例在三类水体中最高。通过揭示间歇性地表水的隐性动态,并强调其普遍性、扩展性和脆弱性,该框架为更好地了解全球这些关键的水动态铺平了道路。
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引用次数: 0
Estimates of the global ocean surface dissolved oxygen and macronutrients from satellite data 利用卫星数据估算全球海洋表层溶解氧和宏量营养素含量
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-26 DOI: 10.1016/j.rse.2024.114243
Harish Kumar Kashtan Sundararaman, Palanisamy Shanmugam

Marine ecosystems are complex and dynamic in nature and influenced by various environmental factors such as temperature, salinity, ocean currents, nutrient availability, light penetration, and anthropogenic activities. Macronutrients (nitrate, phosphate, and silicate) and dissolved oxygen (DO) are crucial properties for determining the health, function, and dynamics of marine ecosystems. There are known limitations with the in-situ measurements that emphasize the importance of satellite-based models for estimating these properties on the required space and time scales. In this study, we present a number of robust Gaussian Process Regression (GPR) models comprising of 16 DO models and 24 macronutrients models for estimating the concentrations of global-scale ocean surface DO and macronutrients. These models were rigorously trained and tested using the large in-situ datasets. Model performance was assessed using independent in-situ data and it was found that the proposed models yielded high accuracies (Root Mean Square Difference (RMSD) in μmol kg−1, Mean Absolute Difference (MAD) in μmol kg−1, and coefficient of determination (R2)): DO: 8.276, 3.802, and 0.984; Nitrate: 0.827, 0.329, and 0.987; Phosphate: 0.068, 0.034, and 0.983; and Silicate: 1.921, 0.757, and 0.982. The optimal input parameters and kernel combinations for GPR models were identified as (i) sea surface temperature (SST), sea surface salinity (SSS), and latitude/longitude for DO, and (ii) SST, SSS, DO, and latitude/longitude for macronutrients. The satellite estimates based on the exponential kernel functions showed good agreement with in-situ data (RMSD, MAD, R2, Slope, and Intercept: 9.794, 4.850, 0.948, 0.986, and 4.206 for the DO products, 1.711, 0.652, 0.824, 0.884, and 0.249 for the nitrate products, 0.127, 0.064, 0.805, 0.869, and 0.033 for the phosphate products, and 2.809, 1.067, 0.533, 0.622, and 1.117 for the silicate products). Further tests on World Ocean Atlas (WOA) 2018 SST and SSS data yielded similar results for the DO and macronutrients contents. To realize the importance of this study, we investigated the early and substantial spring bloom occurrences in the Gulf of Alaska in response to the DO and macronutrients contents as well as the monthly and interannual variations and anomalies of SST, SSS, DO, nitrate, phosphate, and silicate caused by the Pacific Decadal Oscillation (PDO) in the California Current System (CCS) and Oceanic Niño Index (ONI) in the Niño-3.4 region using climatological data (2002−2023). The proposed models will have important implications for remote sensing of regional and global biogeochemical properties and marine ecosystem dynamics.

海洋生态系统复杂多变,受温度、盐度、洋流、营养供应、光穿透和人为活动等各种环境因素的影响。宏量营养元素(硝酸盐、磷酸盐和硅酸盐)和溶解氧(DO)是决定海洋生态系统健康、功能和动态的关键属性。众所周知,原位测量存在局限性,这就强调了基于卫星的模型在所需的空间和时间尺度上估算这些属性的重要性。在本研究中,我们提出了一系列稳健的高斯过程回归(GPR)模型,包括 16 个溶解氧模型和 24 个常量营养素模型,用于估算全球尺度海洋表面溶解氧和常量营养素的浓度。这些模型经过了严格的训练,并利用大型原位数据集进行了测试。利用独立的原位数据对模型的性能进行了评估,发现所提出的模型具有很高的精度(以微摩尔千克为单位的均方根差(RMSD)、以微摩尔千克为单位的平均绝对差(MAD)和决定系数()):溶解氧:8.276、3.802 和 0.984;硝酸盐:0.827、0.329 和 0.987;磷酸盐:0.068、0.034 和 0.983;以及硅酸盐:1.921、0.757 和 0.982。GPR 模型的最佳输入参数和内核组合为:(i) 海洋表面温度(SST)、海洋表面盐度 (SSS)和溶解氧的纬度/经度;(ii) 海洋表面温度、SSS、溶解氧和常量营养元素的纬度/经 度。基于指数核函数的卫星估算结果与原位数据显示出良好的一致性(溶解氧产品的 RMSD、MAD、斜率和截距分别为 9.794、4.850、0.948、0.986 和 4.206,溶解氧产品的 RMSD、MAD、斜率和截距分别为 1.711、0.652、0.652 和 4.206)。硝酸盐产物分别为 1.711、0.652、0.824、0.884 和 0.249,磷酸盐产物分别为 0.127、0.064、0.805、0.869 和 0.033,硅酸盐产物分别为 2.809、1.067、0.533、0.622 和 1.117)。对世界海洋图集(WOA)2018 SST 和 SSS 数据的进一步测试也得出了类似的溶解氧和宏量营养元素含量结果。为了认识这项研究的重要性,我们利用气候学数据(2002-2023 年)研究了阿拉斯加湾早期和大量春季水华发生与溶解氧和大量营养元素含量的响应,以及由加州洋流系统太平洋十年涛动(PDO)和尼诺-3.4 区域海洋尼诺指数(ONI)引起的 SST、SSS、溶解氧、硝酸盐、磷酸盐和硅酸盐的月度和年际变化及异常。拟议的模型将对遥感区域和全球生物地球化学特性和海洋生态系统动态产生重要影响。
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引用次数: 0
Assessment of Sentinel-6 SAR mode and reprocessed Jason-3 sea level measurements over global coastal oceans 评估哨兵 6 号合成孔径雷达模式和经过再处理的 Jason-3 对全球沿岸海洋的海平面测量结果
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-26 DOI: 10.1016/j.rse.2024.114287
Fukai Peng , Xiaoli Deng , Yunzhong Shen

With dedicated coastal processing strategies and advanced Delay-Doppler technique, the quality of altimeter data from Low-Resolution Mode (LRM) and Synthetic Aperture Radar (SAR) mode altimeters in coastal areas have been greatly improved. In this study, we present a new 20-Hz along-track sea level anomaly (SLA) dataset of Jason-3 within 100 km to the global coastlines using the modified SCMR (Seamless Combination of Multiple Retrackers) processing strategy. The new reprocessed Jason-3 dataset, along with Sentinel-6 Michael Freilich (MF) SAR mode data, are evaluated and validated over global coastal oceans. The evaluation results show that the modified SCMR has significantly increases the data availability by 16%–67% for Jason-3 when compared to the official SGDR MLE4 dataset, especially in the last 5 km to the coast. The resultant data availability retains >90% beyond 5 km to the coast and 80% within 5 km to the coast, which is slightly higher (2%–10%) than that obtained by the Sentinel-6 MF. Most importantly, the modified SCMR mitigates the hump artifacts observed for the SLA spectrums of LRM altimeters, which makes the noise level of 20-Hz SLA estimates from Jason-3 (5.52 cm) comparable with that from Sentinel-6 MF (5.42 cm). This result demonstrates that the modified SCMR strategy would improve the LRM altimeters' capability of monitoring the mesoscale eddies. The evaluation results also show that the Sentinel-6 MF SAR mode data obtain higher data precision but lower data availability than reprocessed Jason-3 LRM data, especially in the 0–5 km coastal strip and mid-to-high latitude (>40°N or < 40°S) regions. Although the quality of altimeter data in the 0–5 km coastal strip has been significantly improved, the validation results against tide gauges demonstrate that the degraded performance still occurs when compared to the results beyond 5 km offshore. The significant discrepancy between tide gauge records and altimeter data is found in places such as sheltered bays and archipelagos where the land contamination is severe, and thus the development of dedicated coastal retrackers and corrections for SAR mode altimeters is still of great importance. Finally, the good consistency between reprocessed Jason-3 LRM and Sentinel-6 MF SAR mode altimeter datasets has been found by examining the inter-mission SLA biases (−0.12 ± 0.01 m).

通过专门的沿岸处理策略和先进的延迟多普勒技术,低分辨率模式(LRM)和合成孔径雷达 (SAR)模式测高仪在沿岸地区的测高数据质量得到了极大改善。在这项研究中,我们采用改进的 SCMR(无缝组合多个重跟踪器)处理策略,提出了新的 20Hz Jason-3 沿轨海平面异常(SLA)数据集,该数据集距离全球海岸线 100 公里以内。新的再处理 Jason-3 数据集和 Sentinel-6 Michael Freilich(MF)合成孔径雷达模式数据在全球沿岸海洋上空进行了评估和验证。评估结果表明,与官方的 SGDR MLE4 数据集相比,修改后的 SCMR 使 Jason-3 的数据可用性显著提高了 16%-67%,特别是在距海岸最后 5 公里处。因此,距海岸 5 公里以外的数据可用性保持在 90% 以上,距海岸 5 公里以内的数据可用性保持在 80%,比 Sentinel-6 MF 获得的数据可用性略高(2%-10%)。最重要的是,修改后的 SCMR 减少了在 LRM 高度计 SLA 频谱中观察到的驼峰伪影,这使得 Jason-3 的 20Hz SLA 估计值(5.52 厘米)的噪声水平与哨兵-6 MF 的噪声水平(5.42 厘米)相当。这一结果表明,修改后的 SCMR 策略将提高 LRM 高度计对中尺度涡的监测能力。评估结果还表明,与经过再处理的 Jason-3 LRM 数据相比,哨兵-6 MF SAR 模式数据的数据精度更高,但数据可用性更低,特别是在 0-5 公里沿岸带和中高纬度(>40°N 或 <40°S)区域。虽然 0-5 公里沿岸带的高度计数据质量有了明显改善,但与验潮仪对比的验证结果表明,与离岸 5 公里以外的结果相比,性能仍有下降。在避风海湾和群岛等陆地污染严重的地方,验潮仪记录和高度计数据之间的差异 很大,因此,为合成孔径雷达模式高度计开发专用的沿岸重跟踪器和校正器仍然非常重 要。最后,通过研究各次飞行任务之间的 SLA 偏差(-0.12 ± 0.01 米),发现经过后处理的 Jason-3 LRM 和 Sentinel-6 MF SAR 模式高度计数据集之间具有良好的一致性。
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引用次数: 0
Comparing the quantum use efficiency of red and far-red sun-induced fluorescence at leaf and canopy under heat-drought stress 比较热干旱胁迫下叶片和冠层红光和远红外太阳诱导荧光的量子利用效率
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-26 DOI: 10.1016/j.rse.2024.114294
Sebastian Wieneke , Javier Pacheco-Labrador , Miguel D. Mahecha , Sílvia Poblador , Sara Vicca , Ivan A. Janssens

Sun-Induced chlorophyll Fluorescence (SIF) is the most promising remote sensing signal to monitor photosynthesis in space and time. However, under stress conditions its interpretation is often complicated by factors such as light absorption and plant morphological and physiological adaptations. To ultimately derive the quantum yield of fluorescence (ΦF) at the photosystem from canopy measurements, the so-called escape probability (fesc) needs to be accounted for.

In this study, we aim to compare ΦF measured at leaf- and canopy-scale to evaluate the influence of stress responses on the two signals based on a potato mesocosm heat-drought experiment. First, we compared the performance of recently proposed reflectance-based approaches to estimate leaf and canopy red fesc using data-supported simulations of the radiative transfer model SCOPE. While the leaf red fesc showed a strong correlation (r2 ≥ 0.76), the canopy red fesc exhibited no relationship with the SCOPE retrieved red fesc in our experiment. We therefore propose modifications to the canopy model to address this limitation.

We then used the modified models of red fesc, along with an existing model for far-red fesc to analyse the dynamics of leaf and canopy red and far-red fluorescence under increasing drought and heat stress conditions. By incorporating fesc, we obtained a closer agreement between leaf and canopy measurements. Specifically, for red fesc, the r2 of the two variables increased from 0.3 to 0.50, and for far-red fesc, from 0.36 to 0.48.

When comparing the dynamics of the quantum yield of red and far-red fluorescence (ΦF,687 and ΦF,760) under increasing stress, we observed a statistically significant decrease of both leaf and canopy ΦF,687 as well as leaf ΦF,760, as drought and heat conditions intensified. Canopy ΦF,760, on the contrary, did not exhibit the same trend, since measurements under low stress conditions showed a wider spread and lower median than under high stress conditions. Finally, we analysed the sensitivity of ΦF,687 and ΦF,760 to changing solar incidence angle, by comparing the variability of the measurements without and with mesocosm rotation. Our results suggest that the variation in ΦF,760 strongly increased with changing solar incidence angle. These findings highlight the need for further research to understand the causes of discrepancies between leaf and canopy scale ΦF,760. On the contrary, the underutilised and understudied ΦF,687 showed great potential in assessing

太阳诱导叶绿素荧光(SIF)是最有希望在空间和时间上监测光合作用的遥感信号。然而,在胁迫条件下,由于光吸收、植物形态和生理适应性等因素,对它的解释往往比较复杂。要从冠层测量中最终得出光合系统的荧光量子产率(),需要考虑所谓的逃逸概率()。
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引用次数: 0
A novel physics-based cloud retrieval algorithm based on neural networks (CRANN) from hyperspectral measurements in the O2-O2 band 基于神经网络(CRANN)的新型物理云检索算法,源自 O2-O2 波段的高光谱测量结果
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-06-25 DOI: 10.1016/j.rse.2024.114267
Wenwu Wang , Husi Letu , Huazhe Shang , Jian Xu , Huanhuan Yan , Lianru Gao , Chao Yu , Jianbin Gu , Jinhua Tao , Na Xu , Lin Chen , Liangfu Chen

Clouds play a crucial role in the Earth's climate system and their properties can be detected by hyperspectral measurements from space. With the increasing spectral resolution, traditional retrieval methods based on look-up tables (LUT) and optimal estimation are limited in both efficiency and accuracy compared with machine learning methods. However, the machine learning techniques used to establish the relationships between spectral measurements and cloud properties often lack physical explainability and universality. Additionally, traditional physical retrieval methods based on oxygen A-band are not applicable to instruments without the O2-A band like the ozone monitoring instrument (OMI). Therefore, we have proposed a novel physics-based deep neural networks (DNN) retrieval method––the cloud retrieval algorithm based on neural networks (CRANN)––which incorporates a deep neural network model with radiative transfer model to retrieve cloud fraction and cloud-top pressure from the oxygen–oxygen collision-induced (O4) absorption band. Validation using simulated test data supported the superior accuracy of CRANN, with the correlation coefficients for cloud fraction and cloud-top pressure are 0.989 and 0.993, respectively, whereas the correlation coefficients for cloud fraction and cloud-top pressure of the LUT method are 0.928 and 0.865, respectively. In comparison with the OMCLDO2 cloud product from the OMI, the CRANN results retrieved from OMI observations exhibit substantial consistency, boasting correlation coefficients surpassing 0.95 for cloud fraction and 0.83 for cloud pressure. As compared with the tropospheric monitoring instrument (TROPOMI) official products, the CRANN retrieval results from TROPOMI exhibit a high level of consistency with correlation coefficients exceeding 0.8 for cloud fraction and 0.73 for cloud pressure. Additionally, a promising agreement is observed between the CRANN retrievals from TROPOMI and Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) data, yielding RMSEs of 127.3, 134.6 and 106.4 hPa for the validation dataset, respectively.

云在地球气候系统中发挥着至关重要的作用,其特性可通过来自太空的高光谱测量进行探测。随着光谱分辨率的不断提高,与机器学习方法相比,基于查找表(LUT)和最优估计的传统检索方法在效率和准确性方面都受到了限制。然而,用于建立光谱测量和云特性之间关系的机器学习技术往往缺乏物理可解释性和普遍性。此外,基于氧气 A 波段的传统物理检索方法不适用于没有 O-A 波段的仪器,如臭氧监测仪器(OMI)。因此,我们提出了一种新颖的基于物理的深度神经网络(DNN)检索方法--基于神经网络的云检索算法(CRANN)--它将深度神经网络模型与辐射传递模型相结合,从氧-氧碰撞诱导(O)吸收波段检索云分数和云顶气压。利用模拟测试数据进行的验证支持了 CRANN 的卓越精度,其云分数和云顶气压的相关系数分别为 0.989 和 0.993,而 LUT 方法的云分数和云顶气压的相关系数分别为 0.928 和 0.865。与 OMI 的 OMCLDO2 云产品相比,从 OMI 观测中获取的 CRANN 结果具有很强的一致性,云分数的相关系数超过 0.95,云压的相关系数超过 0.83。与对流层监测仪器(TROPOMI)的官方产品相比,TROPOMI的CRANN检索结果具有很高的一致性,云分相关系数超过0.8,云压相关系数超过0.73。此外,从 TROPOMI 和正交极化云-气溶胶激光雷达(CALIOP)数据中获取的 CRANN 结果之间也有很好的一致性,验证数据集的均方根误差分别为 127.3、134.6 和 106.4 hPa。
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Remote Sensing of Environment
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