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681
Performance Evaluation of CMIP6-GCMs Using Three Spatial Interpolation Methods Over Catchment Area of Koyna Reservoir, India
Published 2024-01-01“…The present study evaluates the performance of general circulation models (GCMs) from the Coupled Model Intercomparison Project Phase 6 (CMIP6) and spatial interpolation methods over the catchment area of the Koyna reservoir in Maharashtra, India. …”
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682
Temporal and Spatial Evolution and Driving Force Analysis of Water Conservation Function in Yunnan Province Based on Climate and Land Use Change
Published 2024-10-01“…[Methods] Taking Yunnan Province as an example, this paper combined the system dynamics model, patch-level land use change simulation model (PLUS model), and InVEST model to build a water conservation evaluation framework under the impact of future climate and land use change. …”
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683
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684
The spatial resolution of epidemic peaks.
Published 2014-04-01“…Here, we used a spatially-explicit stochastic meta-population model of arbitrary spatial resolution to determine the effect of resolution on model-derived epidemic trajectories. …”
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685
Spatial Association Network of Land-Use Carbon Emissions in Hubei Province: Network Characteristics, Carbon Balance Zoning, and Influencing Factors
Published 2025-06-01“…This study constructs a LUCE spatial association network for Hubei Province using a modified gravity model to uncover the spatial linkages in carbon emissions. …”
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686
GeNetFormer: Transformer-Based Framework for Gene Expression Prediction in Breast Cancer
Published 2025-02-01“…<i>Background:</i> Histopathological images are often used to diagnose breast cancer and have shown high accuracy in classifying cancer subtypes. Prediction of gene expression from whole-slide images and spatial transcriptomics data is important for cancer treatment in general and breast cancer in particular. …”
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687
Exploring the Structure of Spatial Representations.
Published 2016-01-01“…We show that these learned metrics, together with a probabilistic model of clustering based on the Bayesian cognition paradigm, allow prediction of participants' cognitive map structures in advance. …”
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688
DBSCAN-PCA-INFORMER-Based Droplet Motion Time Prediction Model for Digital Microfluidic Systems
Published 2025-05-01“…Subsequently, principal component analysis (PCA) is applied for dimensionality reduction on the clustered data. Using the INFORMER model, we predict changes in droplet motion time and conduct correlation analysis, comparing results with traditional long short-term memory (LSTM), frequency-enhanced decomposed transformer (FEDformer), inverted transformer (iTransformer), INFORMER, and DBSCAN-INFORMER prediction models. …”
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689
Predicting changes in land use and land cover using remote sensing and land change modeler
Published 2025-06-01“…The integration of geo-spatial and remote sensing technologies is pivotal in comprehending these dynamics and formulating strategies for future natural resource management. …”
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690
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691
Research on permanent magnet reduction gear for trams
Published 2022-07-01“…Therefore, it is proposed to install a permanent magnet reduction device on the tram. In this paper, a permanent magnet deceleration device was designed without changing the original brake control system of the tram and its associated mechanism. …”
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692
Parameter-Efficient Vehicle Trajectory Prediction Based on Attention-Enhanced Liquid Structural Neural Model
Published 2024-12-01“…In this paper, we propose a parameter-efficient trajectory prediction model that integrates Liquid Time-Constant (LTC) networks with attention mechanisms, termed the Attn-LTC model. …”
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693
Evaluating the Accuracy of Land-Use Change Models for Predicting Vegetation Loss Across Brazilian Biomes
Published 2025-03-01“…Land-use change models are used to predict future land-use scenarios. …”
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694
Spatiotemporal Deformation Prediction Model for Retaining Structures Integrating ConvGRU and Cross-Attention Mechanism
Published 2025-07-01“…However, existing models often overlook the spatial deflection correlations among monitoring points. …”
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695
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696
Active travel modelling: a methodological approach to networks for walking and cycling commuting analysis
Published 2025-01-01Get full text
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697
Influences of Sampling Design and Model Selection on Predictions of Chemical Compounds in Petroferric Formations in the Brazilian Amazon
Published 2025-05-01“…Relatively, RF, GLMET, and KNN performed better, compared to other models. The terrain attributes were significantly more successful as to the spatial predictions of the elements contained in laterites than were the remote sensing spectral indices, likely due to the fact that the underlying spatial structures of the two formations (laterite and talus) occur at different elevations.…”
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698
Real-Time Adaptive Traffic Flow Prediction Based on a GE-GRU-KNN Model
Published 2025-06-01“…The results show that compared with traditional methods, the prediction error of this method is reduced by 1.08%–14.71%, indicating that the hybrid GE-GRU-KNN model exhibits good performance.…”
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699
A Deep Learning Model with Conv-LSTM Networks for Subway Passenger Congestion Delay Prediction
Published 2021-01-01“…Experimental results show that Conv-LSTM is better than the benchmark models in capturing spatial and temporal correlation.…”
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700
Improved digital mapping of soil texture using the kernel temperature–vegetation dryness index and adaptive boosting
Published 2025-07-01“…In this study, we collected 399 soil samples collected from Mingguang City in southeast China and made spatial predictions of soil texture based on remote sensing indices such as the kernel normalized difference vegetation index computed from Landsat8 data and topographic attributes computed via digital elevation model as environmental covariates. …”
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