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A surrogate-aided approach for accelerated Bayesian calibration of hydrologic models 水文模型加速贝叶斯定标的代理辅助方法
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-24 DOI: 10.1016/j.envsoft.2026.106894
Rezgar Arabzadeh, Jonathan Romero-Cuellar, James Craig, Bryan Tolson, Robert Chlumsky
Bayesian calibration of hydrologic models effectively addresses parameter uncertainties and improves predictions, but the joint inference of hydrologic and error model parameters often suffers from slow convergence due to high-dimensional interactions. To overcome this, a surrogate-aided error model is introduced that decouples their inference. This method uses support vector regression (SVR) as a surrogate, to estimate error model parameters conditioned on hydrologic parameters. This approach accelerates convergence (requiring 50 % fewer samples) and improves predictive accuracy, consistently improving or maintaining Continuous Ranked Probability Scores across a range of test models. These advantages are demonstrated through an application to the GR4J model across 12 MOPEX watersheds. The reduced computational demand makes this particularly valuable for large-scale hydrologic modeling when computational resources are limited.
水文模型贝叶斯校正有效地解决了参数的不确定性,提高了预测精度,但水文模型参数与误差模型参数的联合推断往往由于高维相互作用而收敛缓慢。为了克服这个问题,引入了一个代理辅助误差模型来解耦它们的推理。该方法采用支持向量回归(SVR)作为替代方法,估计以水文参数为条件的误差模型参数。这种方法加速了收敛(需要减少50%的样本)并提高了预测准确性,在一系列测试模型中持续改进或维持连续的排名概率分数。通过对GR4J模型在12个MOPEX流域的应用程序展示了这些优势。当计算资源有限时,减少的计算需求使得这种方法对大规模水文建模特别有价值。
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引用次数: 0
Operational digital twin for multi-hazard coastal flood prediction with adaptive learning: Real-time performance in the Chesapeake Bay 基于自适应学习的多灾种海岸洪水预报的可操作数字孪生:切萨皮克湾的实时性能
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-23 DOI: 10.1016/j.envsoft.2026.106891
Paul Magoulick
Coastal flooding threatens growing populations where compound hazards amplify risks. This study presents a proof-of-concept operational digital twin for single-location flood prediction at Annapolis in the Chesapeake Bay, integrating real-time NOAA and USGS data. An ensemble of Random Forest, XGBoost, Gradient Boosting, and LSTM models achieves RMSE = 0.043 ft with R2 = 0.997 for short-term predictions, validated across 508,000 records and 369 extreme events over six years. Strong short-term accuracy largely reflects tidal autocorrelation in this semi-enclosed estuarine system. Feature importance shows 98.9% of predictive power derives from three water-level persistence variables, enabling efficient deployment. An empirical correction factor (0.87) calibrates predictions to local conditions. Key limitations include single-site validation without spatial inundation capability and no major hurricane landfall during the study period. The system complements physics-based models such as NOAA’s STOFS, which provide essential spatial detail and process understanding. The open-source implementation enables replication and community evaluation.
沿海洪水威胁着不断增长的人口,在那里,复合灾害放大了风险。该研究为切萨皮克湾安纳波利斯的单地点洪水预测提供了一个概念验证操作数字孪生,整合了NOAA和USGS的实时数据。随机森林、XGBoost、梯度增强和LSTM模型的集合在短期预测中实现了RMSE = 0.043 ft, R2 = 0.997,验证了6年内508,000条记录和369个极端事件。较强的短期精度在很大程度上反映了该半封闭河口系统的潮汐自相关性。特征重要性表明,98.9%的预测能力来自三个水位持续变量,从而实现高效部署。经验校正因子(0.87)使预测符合当地条件。主要的限制包括在研究期间没有空间淹没能力和没有大飓风登陆的单站点验证。该系统补充了基于物理的模型,如NOAA的STOFS,后者提供了基本的空间细节和过程理解。开源实现支持复制和社区评估。
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引用次数: 0
ADAPT: A novel IoT-driven analytical data assimilation method based on phase-space tuning for long-sequence water quality forecasting ADAPT:一种基于相空间调整的物联网驱动的分析数据同化方法,用于长序列水质预测
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-20 DOI: 10.1016/j.envsoft.2026.106882
Mingzhuang Sun , Zhili Li , Guangtao Fu , Haifeng Jia
Water quality models often suffer from performance degradation due to parameter obsolescence caused by external environmental changes. To address this, this study proposes a novel framework named Analytical Data Assimilation via Phase-space Tuning (ADAPT). Unlike traditional data assimilation methods that directly update state variables, ADAPT dynamically calibrates model parameters by establishing a robust link between parameters and water quality dynamics using Aquaformer, a Transformer-based deep learning model driven by phase-space reconstruction. The method was validated through digital-twin and real-world experiments on the Diannong River, China. Results demonstrate that ADAPT significantly outperforms the Ensemble Kalman Filter, reducing prediction errors by 36.26 % at monitored sites and 54.66 % at unmonitored sites. ADAPT exhibits superior transferability and stable error control, effectively overcoming the limitations of traditional methods in spatial generalization. This study provides a reliable, physics-informed solution for high-frequency auto-calibration in smart water management systems.
由于外部环境变化引起的参数过时,水质模型的性能往往会下降。为了解决这个问题,本研究提出了一个新的框架,名为通过相空间调谐的分析数据同化(ADAPT)。与直接更新状态变量的传统数据同化方法不同,ADAPT通过使用Aquaformer(一种基于transformer的深度学习模型,由相空间重建驱动)在参数和水质动态之间建立鲁棒联系,从而动态校准模型参数。该方法通过数字孪生和实际实验在中国滇农河进行了验证。结果表明,ADAPT显著优于Ensemble Kalman Filter,在监测站点和非监测站点的预测误差分别降低了36.26%和54.66%。ADAPT具有良好的可转移性和稳定的误差控制,有效克服了传统空间泛化方法的局限性。该研究为智能水管理系统中的高频自动校准提供了可靠的物理信息解决方案。
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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 : 2026-01-20 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
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 : 2026-01-20 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
Provincial policy simulation for steel decarbonization in China: a modular CGE-3E3S coupling framework 中国钢铁脱碳省级政策模拟:模块化CGE-3E3S耦合框架
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-19 DOI: 10.1016/j.envsoft.2026.106868
Yibo Li, Juan Li, Simin Guo, Mei Sun
This article has developed a modular framework that integrates a provincial-level computable general equilibrium (CGE) model with a 3E3S (Energy, Economy, Environment, Sustainability, Strategy, Socio-Economic Stability) assessment to quantify the policy-driven low-carbon transition in Chinas iron and steel industry. The architecture of the framework separates data, scenarios, and solvers, incorporates mechanisms such as learning-by-doing, carbon tax, and tax-rebate instruments, and supports reproducible scenario management. When applied to policy shocks, the framework generates a composite, multi-dimensional transition impact at the provincial level. The results reveal significant spatial heterogeneity, with Hebei exhibiting the largest aggregate impact across all dimensions. In a carbon-tax and global-slowdown scenario, the transition impact reaches 0.852. This study presents detailed descriptions of the model components, I/O schemas, and workflow to facilitate reuse and adaptation for other regions or sectors. This approach demonstrates how integrated economy-wide modeling and indicator analytics can guide region-specific decarbonization strategies.
本文开发了一个模块化框架,将省级可计算一般均衡(CGE)模型与3E3S(能源、经济、环境、可持续性、战略、社会经济稳定性)评估相结合,量化中国钢铁行业政策驱动的低碳转型。该框架的体系结构分离了数据、场景和求解器,结合了边做边学、碳税和退税工具等机制,并支持可重复的场景管理。当应用于政策冲击时,该框架会在省一级产生复合的、多维的过渡影响。结果表明,河北省在各维度上的综合影响最大。在碳税和全球经济放缓的情景下,转型影响达到0.852。本研究提供了模型组件、I/O模式和工作流的详细描述,以促进其他区域或部门的重用和调整。这种方法展示了综合的全经济建模和指标分析如何指导特定区域的脱碳战略。
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引用次数: 0
Multi-scale feature fusion and uncertainty quantification in streamflow prediction: A temporal convolutional network approach with hybrid denoising 流量预测中的多尺度特征融合与不确定性量化:一种混合去噪的时间卷积网络方法
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-19 DOI: 10.1016/j.envsoft.2026.106879
Yiping He , Zhaocai Wang , Heqin Cheng , Weijie Ding
Streamflow prediction, as a critical component of flood prevention and water resource management, plays a vital role in safeguarding lives, property, and socio-economic stability. However, the streamflow process is influenced by complex interactions among meteorological variability, topographic conditions, and human activities, exhibiting pronounced nonlinearity, non-stationarity, and spatiotemporal heterogeneity, which pose significant challenges to accurate prediction. This study proposes a novel hybrid streamflow prediction model, NRBO-VMD-Wavelet-TCN (NVWT), which integrates multi-source data with deep learning. The model adaptively optimizes Variational Mode Decomposition (VMD) using the Newton-Raphson-based optimizer (NRBO); it is also combined with Wavelet Thresholding Denoising (WTD), effectively suppressing noise while preserving critical hydrological signatures. A multidimensional feature system incorporating lagged, periodic, and cumulative features is constructed, after which Maximum Information Coefficient (MIC)-based feature selection is applied to enhance input efficiency. The Temporal Convolutional Network (TCN), which leverages dilated convolutions and residual connections, effectively captures long- and short-term dependencies. Experimental results across nine hydrological stations in the Hanjiang River Basin demonstrate the NVWT model's superiority in short-term prediction (1–5 days), with Nash-Sutcliffe Efficiency (NSE) exceeding 0.82 at all stations and peaking at 0.982 for the downstream Xiantao Station, significantly outperforming benchmarks (e.g., Gated Recurrent Unit (GRU), Transformer). Ablation studies confirm the efficacy of the hybrid denoising module and multidimensional features, especially during flood peaks and low-flow periods. Interval prediction metrics further validate the model's ability to quantify uncertainty. The Shapley Additive Explanation (SHAP) method reveals differential contributions of upstream lagged streamflow and meteorological factors, enhancing the model's interpretability. This study provides a methodological reference for streamflow prediction in complex watersheds, which has significant practical implications for enhancing the scientific basis of flood control decision-making under extreme climatic conditions.
河流流量预测作为防洪和水资源管理的重要组成部分,在保障生命财产安全和社会经济稳定方面发挥着至关重要的作用。然而,径流过程受气象变率、地形条件和人类活动的复杂相互作用影响,表现出明显的非线性、非平稳性和时空异质性,这给准确预测带来了重大挑战。本文提出了一种新的混合流预测模型NRBO-VMD-Wavelet-TCN (NVWT),该模型将多源数据与深度学习相结合。该模型利用基于newton - raphson的优化器(NRBO)自适应优化变分模态分解(VMD);它还与小波阈值去噪(WTD)相结合,在保留关键水文特征的同时有效地抑制噪声。构建了一个包含滞后特征、周期特征和累积特征的多维特征系统,然后采用基于最大信息系数(MIC)的特征选择来提高输入效率。利用扩展卷积和剩余连接的时间卷积网络(TCN)可以有效地捕获长期和短期依赖关系。汉江流域9个水文站点的试验结果表明,NVWT模型在短期(1 ~ 5天)预测上具有优势,所有站点的NSE均超过0.82,下游仙桃站的NSE最高达到0.982,显著优于门控循环单元(GRU)、变压器等基准。消融研究证实了混合去噪模块和多维特征的有效性,特别是在洪峰和低流量期间。区间预测指标进一步验证了模型量化不确定性的能力。Shapley加性解释(Shapley Additive Explanation, SHAP)方法揭示了上游滞后流量和气象因子的差异贡献,提高了模式的可解释性。该研究为复杂流域流量预测提供了方法参考,对提高极端气候条件下防洪决策的科学依据具有重要的现实意义。
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引用次数: 0
Exploring the spatiotemporal evolution and driving mechanism of ecological resilience in main urban area of Xi'an based on the “Resistance-Elasticity-Adaptability” model 基于“阻力-弹性-适应性”模型的西安主城区生态弹性时空演化及驱动机制研究
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-17 DOI: 10.1016/j.envsoft.2026.106875
Yanan Dong, Fei Wang
Enhancing ecological resilience is essential for sustainable urban development under climate and urbanization pressures. This study focuses on Xi'an's main urban area, where ecological resilience remains relatively weak. Based on the conceptual framework of resistance, elasticity, and adaptability, we construct a comprehensive evaluation model, innovatively incorporating disaster adaptability factors, and assess ecological resilience from 2000 to 2023 using a differentiated weighting method. Land Use Transition Matrices and Geographic Detectors Model (GDM) are applied to analyze spatiotemporal patterns and driving forces. Results show: (1) Ecological resilience first declined and then stabilized, mainly due to large-scale farmland conversion (273.9 km2, 32.9 %) and insufficient restoration (only 13.93 km2 added). A “weak center–strong periphery” spatial pattern emerged. (2) Resistance shifted outward (Baqiao-centered), elasticity declined, and adaptability peaked in 2023 (0.088), reflecting a transition to a society–infrastructure coupling model but constrained by central overload and peripheral deficits. (3) Driving mechanisms evolved from natural dominance to multi-factor synergy, with Landscape Shape Index (LSI)-population interaction (q = 0.22447) becoming key. The framework supports data-driven ecological resilience assessment and spatial planning in China's rapidly urbanizing regions.
在气候和城市化压力下,增强生态韧性对城市可持续发展至关重要。本研究以西安主城区为研究对象,主城区生态弹性相对较弱。在抵抗力、弹性和适应性概念框架的基础上,创新性地引入灾害适应性因子,构建了综合评价模型,并采用差分加权法对2000 - 2023年的生态恢复力进行了评价。利用土地利用过渡矩阵和地理探测器模型(GDM)分析了土地利用变化的时空格局和驱动力。结果表明:①生态恢复力先下降后稳定,主要原因是大规模退耕(273.9 km2, 32.9%)和恢复不足(仅新增13.93 km2);“中心弱-外围强”的空间格局逐渐形成。(2)阻力向外转移(以巴桥为中心),弹性下降,适应性在2023年达到峰值(0.088),反映了向社会-基础设施耦合模式的过渡,但受到中心超载和外围赤字的制约。(3)驱动机制由自然优势向多因素协同演化,景观形态指数(LSI)-人口交互作用(q = 0.22447)成为驱动机制的关键。该框架支持数据驱动的中国快速城市化地区生态弹性评估和空间规划。
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引用次数: 0
A novel interpretable ozone forecasting approach based on deep learning with masked residual connections 一种基于深度学习的残差连接可解释臭氧预测方法
IF 4.6 2区 环境科学与生态学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-01-15 DOI: 10.1016/j.envsoft.2026.106878
P. Reina-Jiménez , M.J. Jiménez-Navarro , G. Asencio-Cortés , F. Martínez-Álvarez , M. Martínez-Ballesteros
Air pollution is a growing threat, especially in low- and middle-income countries, causing over 4 million premature deaths annually. Ground-level ozone is a major concern, demanding accurate and interpretable prediction systems for effective public health management. However, existing time-series forecasting methods struggle to capture both linear and nonlinear dependencies in atmospheric data. This study introduces ResSelNet, a novel Residual Selection Network that integrates masked residual connections and embedded feature selection within a unified deep learning architecture. The model dynamically determines the optimal processing depth for each feature, allowing linear relationships to bypass nonlinear transformations while capturing complex patterns when necessary. Applied to five monitoring stations across Andalusia (Spain), ResSelNet consistently outperformed state-of-the-art baselines, achieving 8%–12% lower RMSE and MAE than LSTM and Transformer models. Beyond accuracy, the framework improves interpretability and robustness, revealing the hierarchical relevance of meteorological and pollutant variables. ResSelNet therefore offers an effective and explainable solution for multi-horizon environmental time-series forecasting.
空气污染是一个日益严重的威胁,特别是在低收入和中等收入国家,每年造成400多万人过早死亡。地面臭氧是一个主要问题,需要准确和可解释的预测系统,以便进行有效的公共卫生管理。然而,现有的时间序列预报方法难以捕捉大气数据中的线性和非线性依赖关系。本研究介绍了一种新的残差选择网络ResSelNet,它在统一的深度学习架构中集成了屏蔽残差连接和嵌入式特征选择。该模型动态确定每个特征的最佳处理深度,允许线性关系绕过非线性转换,同时在必要时捕获复杂模式。ResSelNet应用于安达卢西亚(西班牙)的五个监测站,始终优于最先进的基线,与LSTM和Transformer模型相比,RMSE和MAE降低了8%-12%。除了准确性之外,该框架还提高了可解释性和鲁棒性,揭示了气象和污染物变量的层次相关性。因此,ResSelNet为多水平环境时间序列预测提供了一个有效且可解释的解决方案。
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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 : 2026-01-14 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
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Environmental Modelling & Software
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