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Spatial variability and convergence of the coupled relationship between agricultural carbon emission reduction and rural revitalization in China
Published 2025-08-01“…IntroductionPromoting the coupled and coordinated development of agricultural carbon emission reduction and rural revitalization is a key link and an inevitable choice to achieve the goal of “double carbon” and sustainable rural development.MethodsThis study takes 31 provinces (cities) in China (excluding Hong Kong, Macao and Taiwan) from 2010 to 2022 as the research object, and adopts the entropy value method, the coupling coordination degree model, the Gini coefficient and its decomposition, and the convergence degree model, etc., to analyze the level of coupling coordination between agricultural carbon emission reduction and rural revitalization in terms of spatial and temporal development characteristics, regional differences and convergence.Results and discussionThe study found that: (1) the coupling and coordination level of agricultural carbon emission reduction and rural revitalization at the national level and in the four major regions continues to improve, and the type of coupled coordination in the provinces is dominated by “primary coordination” in 2022; (2) inter-regional differences are the main source of differences in the coupling and coordination level of agricultural carbon emission reduction and rural revitalization in China; (3) There is no σ-convergence in the coupled coordination level of agricultural carbon emission reduction and rural revitalization at the national level, but there are significant absolute β-convergence and conditional β-convergence, and there are some differences in the regional convergence characteristics, and there is obvious regional heterogeneity in the development of external factors on the coupled coordination level in different regions. …”
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122
Analysis of Spatial Differences and Influencing Factors of Carbon-Emission Reduction Efficiency of New-Energy Vehicles in China
Published 2025-01-01“…This study evaluates the carbon-reduction efficiency of NEVs in 21 Chinese provinces using an improved three-stage DEA model, analyzes spatial disparities with the Dagum Gini coefficient, and decomposes carbon-emission factors using the LMDI method. …”
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Spatial and Temporal Characteristics of Land Use Changes in the Yellow River Basin from 1990 to 2021 and Future Predictions
Published 2024-09-01“…Additionally, the study predicts land use types in the study area for the year of 2030 by using the Future Land Use Simulation (FLUS) model. …”
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Revisiting the "satisfaction of spatial restraints" approach of MODELLER for protein homology modeling.
Published 2019-12-01“…The most frequently used approach for protein structure prediction is currently homology modeling. The 3D model building phase of this methodology is critical for obtaining an accurate and biologically useful prediction. …”
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127
Spatial Autoregressive Modeling on Linear Mixed Models for Dependency Between Regions
Published 2023-04-01“…In this study, we are concerned with the spatial lag or SAR models because dependency between variables of interest is easier to predict. …”
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128
Combining habitat selection, behavioural states, and individual variation to predict fish spatial usage near a barrier
Published 2025-03-01“…Model results were explored to assess the benefits of including behavioural state and understand state-specific habitat preferences, then cross-validated and used to develop an individual based model to predict fish spatial usage. …”
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Spatial Simulation and Optimization of Cropping Structure Under Climate and Land Use Change Conditions Considering Synergistic Economic Benefits and Carbon Reduction in Crop Growth...
Published 2024-10-01“…This approach is based on climate change conditions and it accurately simulates future land use changes and crop growth processes, establishes a carbon emission intensity optimization model, and generates a spatial planting structure optimization and regulation scheme based on intelligent optimization algorithms under changing scenarios. …”
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131
Optimizing the Portuguese wildfire fuel reduction program
Published 2025-03-01“…In this study, we employed a scenario planning model to optimize the implementation of a national fuel management plan in Portugal and to understand tradeoffs among specific risk reduction objectives. …”
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132
I.S.G.E.: An Integrated Spatial Geotechnical and Geophysical Evaluation Methodology for Subsurface Investigations
Published 2025-07-01“…The automatically derived 3D models, depicting the spatial distribution of specific geotechnical parameters, provide engineers with an additional interpretation tool for better understanding the subsurface conditions of a survey area.…”
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133
Spatial analysis and prediction of psittacosis in Zhejiang Province, China, 2019–2024
Published 2025-07-01“…This study aimed to characterize the epidemiological patterns and spatiotemporal distribution of psittacosis in Zhejiang Province, China, and to identify high-risk clusters through predictive modeling.MethodsWe conducted a comprehensive analysis of reported psittacosis cases in Zhejiang Province from January 2019 to June 2024. …”
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Prediction Modeling and Driving Factor Analysis of Spatial Distribution of CO<sub>2</sub> Emissions from Urban Land in the Yangtze River Economic Belt, China
Published 2024-09-01“…Based on socioeconomic grid data, such as nighttime lights and the population, this study proposes a spatial prediction method for CO<sub>2</sub> emissions from urban land using a Long Short-Term Memory (LSTM) model with added fully connected layers. …”
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STGAT: Spatial–Temporal Graph Attention Neural Network for Stock Prediction
Published 2025-04-01“…Additionally, deep learning methods, especially temporal convolution networks and graph attention networks, have been introduced in this area and have achieved significant improvements in both stock price prediction and portfolio optimization. Therefore, this study proposes a Spatial–Temporal Graph Attention Network (STGAT) that integrates STL decomposition components and graph structures to model both temporal patterns and asset correlations. …”
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New multifactor spatial prediction method based on Bayesian maximum entropy
Published 2013-11-01“…Currently, the spatial distribution of soil properties is usually predicted with classical geostatistics or environmental correlation. …”
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Enhancing land use planning through integrating landscape analysis and flood inundation prediction Bekasi City’s in 2030
Published 2024-12-01Subjects: Get full text
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A reliability model to predict failure behaviour of overlying strata in groundwater-rich coal mine
Published 2025-06-01“…In this study, a reliability model with consideration of spatial variability and uncertainty of strength parameters was proposed to predict the failure behaviour of overlying strata during coal mining in groundwater-rich coalfields. …”
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139
Spatiotemporal patterns and prediction of multi-region house prices via functional mixed effects model
Published 2025-04-01Subjects: “…house price prediction…”
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Assessing the spatial-temporal performance of machine learning in predicting grapevine water status from Landsat 8 imagery via block-out and date-out cross-validation
Published 2024-12-01“…The results of the study demonstrate that machine learning is accurate in predicting vine water status spatially within the training measurement dates with low errors (NRMSEΨstem = 2.7 %, NRMSEgs = 16.2 %, NRMSEAN = 11.2 %) and a high degree of accuracy (R2 greater than 0.8 in the prediction of all three measurements) as assessed by block-out cross-validation. …”
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