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Seamless hourly PM2.5 mapping across China with a graph spatiotemporal deep neural network 利用图时空深度神经网络无缝绘制中国每小时PM2.5地图
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-14 DOI: 10.1016/j.envsoft.2026.106915
Mengfan Teng , Miaomiao Liang , Shuo Wang , Yu Ding
Fine particulate matter (PM2.5) poses serious threats to public health and the environment. Current satellite-based PM2.5 estimates often lack nighttime data, leading to significant temporal discontinuities. To overcome this, this study developed a novel graph-based spatiotemporal deep neural network (G-STDNN) that generates seamless hourly PM2.5 concentrations across China. We first produced continuous daytime and nighttime aerosol optical depth (AOD) by filling missing Himawari-8 AHI data with MERRA-2 AOD. This improved AOD, combined with ERA5 meteorology, TROPOMI NO2, nighttime light, and geographical data, served as model input. The G-STDNN effectively captures complex spatiotemporal patterns of air pollution. For 2019–2020, the model demonstrated high accuracy in sample-based (R2 = 0.942, RMSE = 10.81 μg/m3). Using the filled AOD significantly improved estimation performance (R2value increased from 0.74 to 0.85). Nighttime estimates remained robust (R2 ≈ 0.84). This study provides a continuous, high-accuracy hourly PM2.5 dataset essential for exposure assessment and air quality management in China.
细颗粒物(PM2.5)对公众健康和环境构成严重威胁。目前基于卫星的PM2.5估算往往缺乏夜间数据,导致显著的时间不连续性。为了克服这一问题,本研究开发了一种新的基于图形的时空深度神经网络(G-STDNN),该网络可以无缝生成中国各地的每小时PM2.5浓度。我们首先用MERRA-2 AOD填充缺失的Himawari-8 AHI数据,生成了连续的日间和夜间气溶胶光学深度(AOD)。改进后的AOD,结合ERA5气象学、TROPOMI NO2、夜间灯光和地理数据,作为模型输入。G-STDNN有效捕获空气污染的复杂时空格局。2019-2020年,基于样本的模型具有较高的准确率(R2=0.942, RMSE=10.81μg/m3)。使用填充AOD显著提高了估计性能(r2值从0.74增加到0.85)。夜间估计保持稳健(R2≈0.84)。该研究为中国的暴露评估和空气质量管理提供了连续、高精度的每小时PM2.5数据。
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引用次数: 0
Improved river transmission loss modelling for environmental flow releases during droughts 改进了干旱期间环境流量释放的河流传输损失模型
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-01-20 DOI: 10.1016/j.envsoft.2026.106880
Shaun S.H. Kim , Russell S. Crosbie , Warrick Dawes , Jai Vaze , Bill Wang , Cherry Mateo , Rebekah May , Sudeep Nair , Jahangir Alam
Basin-scale water resources models lack key physical factors such as antecedent conditions, that strongly influence transmission losses under dry conditions. This study presents the development and evaluation of two river transmission loss models for integration into river systems models: dynamic maximum alluvium as river storage (DMAARS) and DMAARS coupled with river dead storage (DMAARSDS). The models were applied to environmental flow events during the 2018/2019 drought in the northern Murray-Darling Basin and compared with a benchmark piecewise linear loss model. They provided significantly improved performance in 8 out of 12 fit metrics and more realistic estimates of environmental flow metrics. Scenario testing revealed that model choice significantly influences predictions, especially of baseline conditions and ecological benefits, e.g., peak water height, flow extent. Analyses also showed strong potential for use in long-term water resource planning. To enable adoption, the new models have been integrated into eWater Source as a community plugin.
流域尺度的水资源模型缺乏关键的物理因素,如先决条件,这些因素在干旱条件下强烈影响传输损失。本文提出了两种河流传输损失模型:动态最大冲积作为河流蓄积(DMAARS)和DMAARS耦合河流死蓄积(DMAARSDS),并对其进行了开发和评价。这些模型应用于墨累-达令盆地北部2018/2019年干旱期间的环境流量事件,并与基准分段线性损失模型进行了比较。它们在12个拟合指标中的8个方面提供了显着改善的性能,并对环境流量指标进行了更现实的估计。情景测试表明,模型选择显著影响预测,特别是基线条件和生态效益,如峰值水位、流量。分析还显示了在长期水资源规划中使用的巨大潜力。为了便于采用,新模型已作为社区插件集成到eWater Source中。
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引用次数: 0
Data-driven approach to robust spatio-temporal assessment of carbon fluxes using Earth observation and ground-based data 利用地球观测和地面数据对碳通量进行稳健时空评估的数据驱动方法
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-01-20 DOI: 10.1016/j.envsoft.2026.106881
Artem Gorbarenko , Mikhail Gasanov , Elizaveta Gorbarenko , Polina Tregubova , Anna Petrovskaia , Usman Tasuev , Svetlana Illarionova , Dmitrii Shardrin , Evgeny Burnaev
Effective spatial monitoring of carbon fluxes is crucial for implementing climate change mitigation and adaptation measures. This study develops an advanced machine learning (ML) pipeline to assess integral carbon fluxes at regional scales using Earth observation data and ground-based measurements. We aimed to address main limitations of spatial ML assessments associated with ignorance of environmental processes’ physical nature. We propose a training pipeline ensuring prediction robustness and model generalization, introducing influential features and ground truth data selection strategy. This results in a robust mapping tool with uncertainty estimations, supported by Shapley values-based feature importance analysis for interpretability and physical meaning. Our approach utilizes data from 168 FLUXNET stations, NASA POWER meteorological reanalysis, and MODIS satellite observations to train a CatBoost gradient boosting model. The model achieves R2 of 0.76 predicting monthly NEE values with high spatial–temporal coherence, opening possibilities for comprehensive terrestrial ecosystem carbon dynamics assessments.
有效的碳通量空间监测对于实施气候变化减缓和适应措施至关重要。本研究开发了一种先进的机器学习(ML)管道,利用地球观测数据和地面测量来评估区域尺度上的整体碳通量。我们的目标是解决空间机器学习评估的主要局限性,这些局限性与忽视环境过程的物理性质有关。我们提出了一种保证预测鲁棒性和模型泛化的训练管道,引入了影响特征和ground truth数据选择策略。这产生了一个具有不确定性估计的健壮的映射工具,由基于Shapley值的特征重要性分析来支持可解释性和物理意义。我们的方法利用来自168个FLUXNET站点、NASA POWER气象再分析和MODIS卫星观测的数据来训练CatBoost梯度增强模型。该模型预测月NEE值的R2为0.76,具有较高的时空相干性,为陆地生态系统碳动态综合评价提供了可能。
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引用次数: 0
THU-Wildfire: A multitemporal, multimodal observation dataset for wildfire behavior dynamics THU-Wildfire:野火行为动态的多时相、多模态观测数据集
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-01-14 DOI: 10.1016/j.envsoft.2026.106872
Jiahao Zhou , Sen He , Shanjunxia Wu , Jia Zhang , Qiuhua Wang , Fei Wang
High-quality observational data capturing the complete wildfire lifecycle are essential for validating and enhancing prediction models, yet such integrated datasets remain scarce. This study presents a modelling framework based on multitemporal data acquired through UAV sensing, including high-precision LiDAR, photogrammetry, and synchronous environmental monitoring. A multi-UAV relay observation strategy was developed to continuously record sub-second wildfire propagation dynamics. We demonstrate the utility of this framework through benchmark modelling experiments in fuel mapping, fire spread prediction, and burn severity assessment. The high-resolution data provide a valuable and comprehensive basis for evaluating model behavior across temporal scales, particularly in capturing early fire progression and fire-atmosphere interactions. It also reveals limitations in current modelling approaches. This work offers a robust resource for advancing wildfire environmental modelling.
捕获完整野火生命周期的高质量观测数据对于验证和增强预测模型至关重要,但此类综合数据集仍然稀缺。本研究提出了一个基于无人机遥感获取的多时相数据的建模框架,包括高精度激光雷达、摄影测量和同步环境监测。提出了一种多无人机中继观测策略,用于连续记录亚秒级野火传播动态。我们通过在燃料映射、火灾蔓延预测和燃烧严重程度评估方面的基准建模实验证明了该框架的实用性。高分辨率数据为评估模型跨时间尺度的行为提供了有价值和全面的基础,特别是在捕捉早期火灾进展和火-大气相互作用方面。它还揭示了当前建模方法的局限性。这项工作为推进野火环境建模提供了强大的资源。
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引用次数: 0
STPredict: A Python package automating spatio-temporal predictions STPredict:一个自动化时空预测的python包
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-05 DOI: 10.1016/j.envsoft.2026.106901
Arash Mari Oriyad , Arezoo Haratian , Mahdi Naderi , Nasrin Rafiei , Maryam Meghdadi , Zeinab Maleki , Pouria Ramazi
Spatiotemporal prediction of ecological events informs management and mitigates negative impacts. However, the process is complex, requiring extensive data preprocessing, model selection, and evaluation. We introduce an automated spatio-temporal prediction package (STPredict) in Python that receives the raw data in various acceptable formats from the user, performs the preprocessing, including data imputation, selects from the covariates, chooses systematically from several default or user-defined predictive models, evaluates the performance of the final model, and makes a future prediction. As a case study, we demonstrate its use in predicting Mountain Pine Beetle infestations in Cypress Hills Park, Canada. Researchers can use STPredict to apply diverse types of models, including user-defined models, for predicting the time and location of ecological events with minimal effort. This automation not only reduces human error, but also allows ecologists to spend more time on improving, rather than implementing, the existing models.
生态事件的时空预测为管理提供信息并减轻负面影响。然而,这个过程是复杂的,需要大量的数据预处理、模型选择和评估。我们在Python中引入了一个自动时空预测包(STPredict),它从用户那里以各种可接受的格式接收原始数据,执行预处理,包括数据输入,从协变量中选择,系统地从几个默认或用户自定义的预测模型中选择,评估最终模型的性能,并做出未来预测。以加拿大柏树山公园为例,介绍了该方法在预测山松甲虫侵染情况中的应用。研究人员可以使用STPredict应用不同类型的模型,包括用户自定义模型,以最小的努力预测生态事件的时间和地点。这种自动化不仅减少了人为错误,而且允许生态学家花更多的时间来改进,而不是实施现有的模型。
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引用次数: 0
Development of a hybrid Bayesian-Hyperband optimization procedure: GeoAI-driven hyperparameter tuning of AdaBoost for enhancing Mineral Prospectivity Mapping 混合贝叶斯-超带优化程序的开发:geoai驱动的AdaBoost超参数调优,用于增强矿产远景图
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-04 DOI: 10.1016/j.envsoft.2026.106883
Mahsa Hajihosseinlou , Abbas Maghsoudi , Reza Ghezelbash
Selecting appropriate hyperparameters is essential for achieving stable and reliable results in machine learning–based mineral prospectivity mapping (MPM). In this study, the AdaBoost algorithm was used to predict Pb–Zn mineral potential. AdaBoost was chosen for its ability to integrate multiple weak learners and enhance the recognition of underrepresented mineralization patterns within imbalanced datasets. Nevertheless, its performance may decrease in the presence of spatial heterogeneity and noisy data. To mitigate these issues, a hybrid Bayesian-Hyperband optimization strategy was applied to tune both the AdaBoost and its base learners. Bayesian optimization explores the hyperparameter space using probabilistic modeling, whereas Hyperband improves efficiency by allocating resources to promising configurations. The optimized model, trained on geological, geochemical, tectonic, and remote sensing data, demonstrated high predictive stability and spatial consistency, supporting its applicability in complex mineral systems.
选择合适的超参数是实现基于机器学习的矿产找矿远景图(MPM)结果稳定可靠的关键。本研究采用AdaBoost算法对铅锌矿位进行预测。AdaBoost之所以被选中,是因为它能够整合多个弱学习器,并增强对不平衡数据集中代表性不足的矿化模式的识别。然而,它的性能可能会在空间异质性和噪声数据的存在下下降。为了缓解这些问题,采用了混合贝叶斯-超带优化策略来调整AdaBoost及其基础学习器。贝叶斯优化利用概率建模探索超参数空间,而Hyperband通过将资源分配给有希望的配置来提高效率。该模型经过地质、地球化学、构造和遥感数据的训练,具有较高的预测稳定性和空间一致性,适用于复杂的矿物系统。
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引用次数: 0
The ODE (Overview, Data, and Execution) protocol for a standardized use of machine learning in environmental, social and related interdisciplinary sciences ODE(概述,数据和执行)协议,用于在环境,社会和相关跨学科科学中标准化使用机器学习。
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-11 DOI: 10.1016/j.envsoft.2026.106912
Samuel Seuru , Volker Grimm , Michael Barton , Liliana Perez , Navid Mahdizadeh Gharakhanlou , Raja Sengupta , Alejandro Miguel Dagnino
Machine Learning (ML) is increasingly applied across environmental, social and interdisciplinary sciences to analyze complex systems and inform decision-making. Yet, this rapid growth has exposed significant gaps in methodological consistency, documentation, and reproducibility. The lack of standardized frameworks often leads to fragmented workflows and difficulties in interpreting or reproducing results across disciplines. To address these challenges, we introduce the ODE (Overview, Data, and Execution) protocol: a structured, accessible framework to support transparent documentation of ML workflows. Inspired by established standards such as ODD (Overview, Design concepts, Details), ODD + D (adding human Decision-making) for agent-based modeling, ODMAP (Overview, Data, Model, Assessment, Prediction) for species distribution models and FAIR (Findable, Accessible, Interoperable and Reusable) principles, ODE's novelty is to translate ML workflows into a standardized reporting format, specifying what must be described for transparency, reuse, and reproducibility. In practice, ODE is a reporting checklist, typically provided as supplementary material, supporting authors and reviewers.
机器学习(ML)越来越多地应用于环境、社会和跨学科科学,以分析复杂的系统并为决策提供信息。然而,这种快速增长暴露了在方法一致性、文档和可重复性方面的重大差距。缺乏标准化框架常常导致工作流程的碎片化,以及在解释或跨学科重现结果方面的困难。为了应对这些挑战,我们引入了ODE(概述、数据和执行)协议:一个结构化的、可访问的框架,用于支持ML工作流的透明文档。受现有标准的启发,如基于agent的建模的ODD(概述、设计概念、细节)、基于agent的建模的ODD + D(添加人类决策)、物种分布模型的ODMAP(概述、数据、模型、评估、预测)和FAIR(可查找、可访问、可互操作和可重用)原则,ODE的新颖之处是将ML工作流转换为标准化的报告格式,指定为透明度、重用性和可重复性必须描述的内容。在实践中,ODE是一个报告清单,通常作为补充材料提供,支持作者和审阅者。
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引用次数: 0
Compact bioretention cell for urban stormwater management: Assessment of hydrologic, hydraulic, and water quality performance via laboratory and SWMM modelling 城市雨水管理的紧凑型生物滞留电池:通过实验室和SWMM模型评估水文、水力和水质性能
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-01-13 DOI: 10.1016/j.envsoft.2026.106877
Shaahin Nazarpour Tameh , Jennifer Drake , Anna Palla , Ilaria Gnecco
Bioretention cells (BRCs) are widely implemented to restore undeveloped hydrologic cycle; however, conventional BRCs need considerable surface area, limiting their applicability in densely populated areas. Compact BRCs like Filterra® have been designed to provide comparable hydrologic and pollutant removal effectiveness with a smaller footprint. The hydraulic characteristics of Filterra's engineered media were assessed through laboratory testing using KSAT and HYPROP devices and these results were integrated with field monitoring to implement a field-validated storm water management model (SWMM). Laboratory results showed a hydraulic conductivity of 1750 mm/h. The validated SWMM model replicated the outflow dynamics with satisfactory accuracy (KGE >0.35, R2 > 0.47), and the total suspended solids (TSS) removal was suitably predicted (R2 = 0.83). Results demonstrate that the field-validated SWMM model can be used to evaluate both hydrologic performance and pollutant TSS removal efficiency of compact BRCs, while noting its limitations in representing complex TSS dynamics.
生物滞留细胞(BRCs)被广泛应用于恢复未开发的水文循环;然而,传统的BRCs需要相当大的表面积,限制了它们在人口稠密地区的适用性。像Filterra®这样的紧凑型brc设计用于提供类似的水文和污染物去除效果,占地面积更小。通过KSAT和HYPROP设备对Filterra工程介质的水力特性进行了实验室测试,并将这些结果与现场监测相结合,实现了现场验证的雨水管理模型(SWMM)。实验室结果显示其水力传导率为1750 mm/h。经过验证的SWMM模型以令人满意的精度(KGE >0.35, R2 > 0.47)复制了流出动态,并且预测了总悬浮物(TSS)去除(R2 = 0.83)。结果表明,现场验证的SWMM模型可用于评估致密BRCs的水文性能和污染物TSS去除效率,同时指出其在表示复杂TSS动态方面的局限性。
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引用次数: 0
Computer vision in flash flood forecasting: A narrative review of applications, integration pathways, and future directions 计算机视觉在山洪预报中的应用综述、集成途径和未来发展方向
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-10 DOI: 10.1016/j.envsoft.2026.106910
Hasitha Adikari , Christian O’Leary , Joe Harrington , Conor Lynch
Flash floods are among the most destructive hydrometeorological hazards, requiring forecasting approaches that balance accuracy, timeliness and scalability. Computer vision (CV) has become a key enabler, providing near-real-time information from unmanned aerial vehicles (UAVs), satellites and ground-based imagery. This structured narrative review synthesises advances across six domains relevant to forecasting workflows: flood extent mapping, debris and water-level detection, land use and land cover (LULC) classification, change detection, impact assessment, and image compression. Integration pathways between CV outputs and hydrological or hydraulic models are examined, revealing that such coupling remains limited in current literature. It also highlights the future areas of research in this domain. The systematic assessment shows that convolutional neural network (CNN)-based segmentation remains the most practical approach for extracting real-time information from image data, while transformers and lightweight models show promise for real-time use. Persistent challenges include the scarcity of UAV benchmarks, reproducibility gaps and weak operational integration.
山洪是最具破坏性的水文气象灾害之一,需要平衡准确性、及时性和可扩展性的预报方法。计算机视觉(CV)已经成为一个关键的推动者,提供来自无人机(uav)、卫星和地面图像的近实时信息。这篇结构化的叙述性综述综合了与预测工作流程相关的六个领域的进展:洪水范围测绘、碎片和水位检测、土地利用和土地覆盖(LULC)分类、变化检测、影响评估和图像压缩。研究了CV输出与水文或水力模型之间的整合途径,揭示了这种耦合在当前文献中仍然有限。它还强调了该领域未来的研究领域。系统评估表明,基于卷积神经网络(CNN)的分割仍然是从图像数据中提取实时信息的最实用方法,而变压器和轻量级模型则有望实时使用。持续的挑战包括无人机基准的稀缺性、可再现性差距和薄弱的作战集成。
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引用次数: 0
Parallelization of the estuarine saltwater intrusion numerical forecast model UFDECOM-i using Fortran DO CONCURRENT 用Fortran DO CONCURRENT并行化河口盐水入侵数值预报模型ufdecomi
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-03-01 Epub Date: 2026-02-10 DOI: 10.1016/j.envsoft.2026.106911
Hongyuan Guo , Bingrui Chen , Rui Ma , Yihe Wang , Jianrong Zhu
High-resolution simulations of estuarine saltwater intrusion are computationally demanding and require efficient execution on heterogeneous computing platforms. In this study, the use of standard Fortran parallelization—DO CONCURRENT—to accelerate the unstructured quadrilateral grid finite-differencing estuarine and coastal ocean model (UFDECOM-i) within a unified codebase for both multicore CPUs and GPUs was investigated. Using the NVFORTRAN compiler, three versions were implemented: MC-UFDECOM-i on multicore CPUs, GPU-UFDECOM-i using automatic data migration, and GPUA-UFDECOM-i using lightweight OpenACC directives for explicit data management. The results show that DO CONCURRENT enables scalable shared-memory parallelism on CPUs, with speedups of up to 16.32 × , and provides functional portability to GPUs without code modification. However, optimal GPU performance requires explicit data management, with GPUA-UFDECOM-i reaching a maximum speedup of 21.48 × . These results demonstrate that DO CONCURRENT ensures portability and maintainability, whereas explicit data control remains essential for high GPU efficiency.
河口盐水入侵的高分辨率模拟计算要求很高,需要在异构计算平台上高效执行。在本研究中,研究了在统一的多核cpu和gpu代码库中,使用标准的Fortran并行化- do concurrent来加速非结构化四边形网格有限差分河口和沿海海洋模型(ufcomo -i)。使用NVFORTRAN编译器,实现了三个版本:mc - ufdec -i在多核cpu上,gpu - ufdec -i使用自动数据迁移,gpu - ufdec -i使用轻量级OpenACC指令进行显式数据管理。结果表明,DO CONCURRENT在cpu上实现了可扩展的共享内存并行性,速度高达16.32 x,并且在不修改代码的情况下为gpu提供了功能可移植性。然而,最优的GPU性能需要明确的数据管理,GPU - ufdec -i的最大加速达到21.48倍。这些结果表明,DO CONCURRENT保证了可移植性和可维护性,而显式的数据控制仍然是高GPU效率的必要条件。
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引用次数: 0
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Environmental Modelling & Software
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