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901
Characterizing US Spatial Connectivity and Implications for Geographical Disease Dynamics and Metapopulation Modeling: Longitudinal Observational Study
Published 2025-02-01“…ObjectiveThis study aimed to address the questions that are critical for developing accurate transmission models, predicting the spatial propagation of disease across scales, and understanding the optimal geographical and temporal scale for the implementation of control policies. …”
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902
Comprehensive prediction of potential spatiotemporal distribution patterns, priority planting regions, and introduction adaptability of Elymus sibiricus in the Chinese region
Published 2025-01-01“…In this study, the geographical distribution and environmental data of E. sibiricus in China were collected, and the potential spatiotemporal distribution pattern, planting pattern, and introduction adaptability of E. sibiricus were comprehensively predicted by using ensembled ecological niche model and Marxan model. …”
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903
Prediction method of gas content in deep coal seams based on logging parameters: A case study of the Baijiahai region in the Junggar Basin
Published 2025-08-01“…Notably, the gas enrichment areas are predominantly distributed in well blocks adjacent to fault systems, such as wells C31 and BJ8, etc., which align with the favorable geological conditions for deep CBM accumulation in the Baijiahai region. These spatial distribution patterns not only corroborate existing geological insights but also further validate the reliability of the MAML model in predicting gas content within deep coal seams.…”
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904
GL-ST: A Data-Driven Prediction Model for Sea Surface Temperature in the Coastal Waters of China Based on Interactive Fusion of Global and Local Spatiotemporal Information
Published 2025-01-01“…The spatiotemporal multimodal variations in sea surface temperature refer to its diverse changes across different temporal and spatial scales. Understanding and predicting these variations are crucial for climate research and marine ecosystem conservation. …”
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905
Taxi origin and destination demand prediction based on deep learning: a review
Published 2023-09-01“…These findings offer valuable insights for model selection in OD demand prediction. Finally, we provide public datasets and open-source code, along with suggestions for future research directions.…”
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906
MaxEnt Modeling of Future Habitat Shifts of <i>Itea yunnanensis</i> in China Under Climate Change Scenarios
Published 2025-07-01“…The optimized model (RM = 3.0, FC = QHPT) significantly reduced overfitting risk (ΔAICc = 0) and achieved high prediction accuracy (AUC = 0.968). …”
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907
High-resolution soil temperature and soil moisture patterns in space, depth and time: An interpretable machine learning modelling approach
Published 2024-11-01“…We trained random forest models that were able to predict soil temperature with a mean absolute error of 0.93 °C and soil moisture with a mean absolute error of 4.64 % volumetric water content. …”
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908
Characteristics of Flux Footprint over Typical Underlying Surface of Qinghai-Xizang Plateau
Published 2023-10-01“…The heterogeneity of the underlying surface affects the accuracy and representativeness of the land-atmosphere flux observation.The study on the flux footprint distribution of complex underlying surface over Qinghai-Xizang Plateau (QXP) is of great significance to the observation and simulation of land-atmosphere interaction and its influence on weather and climate.Flux footprint analysis plays a pivotal role in investigating the spatial representativeness of flux observation information.The Flux Footprint Prediction (FFP) model represents a proficient methodology for computing the flux footprint.Based on the observation data from multiple research stations, including the Qomolangma Atmospheric and Environmental Observation and Research Station, the Ngari Desert Observation and Research Station, the Nam Co Monitoring and Research Station for Multisphere Interactions, the Muztagh Ata Westerly Observation and Research Station, the Southeast Tibet Observation and Research Station for the Alpine Environment in 2013, the FFP model was utilized to investigate the sensitivity of model parameters concerning flux footprint distribution.Additionally, the spatiotemporal characteristics and specific influencing factors of flux footprint distribution at different stations were discussed, thereby providing valuable insights for the erection of future observing stations.The results reveal that the primary determinants of flux footprint are measurement height, wind speed and wind direction.Characterized by an underlying surface of evergreen coniferous forest, flux footprint at Linzhi station exhibits greater sensitivity to measurement height and planetary boundary layer depth compared to the other stations.In the QXP, the spatial extent of the flux footprint derived from the ultrasonic anemometer measurements ranges from approximately 250 m to 500 m.Among the five stations, Qomo station exhibited the lowest frequency of stable stratification times during daytime, representing 15.69% of the daytime data points, whereas Ali station had the lowest occurrence of unstable stratification times during nighttime, comprising for 13.32% of the nighttime data points.At these five stations on the TP, the nocturnal flux footprints demonstrate greater width and extent compared to their daytime counterparts.In summer, due to the influence of monsoon, the axis of flux footprint tends to be more consistent.Lake-land breeze at Nam Co station is the main factor affecting flux footprint, whereas glacier wind at Qomo station is the dominant factor.Linzhi station possesses the smallest footprint due to the smallest mean wind speed, thus demonstrating the highest level of representativeness among these five stations.Lowering the height of observation instruments at Qomo and Nam Co stations could potentially enhance the representativeness of in situ measurements.…”
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909
Ecological and temporal drivers of human-gaur conflict in Tamil Nadu, India
Published 2025-07-01“…This study offers critical insights into the spatial ecology of HGC and demonstrates the utility of predictive modeling for identifying high-risk areas, informing proactive mitigation strategies for conservation managers.…”
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910
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911
Predictive Mathematical Emergency Information System (EIS) Using GIS, GPS and Digital Photogrammetry (DP)
Published 2008-01-01“…Predictive Traffic Response Emergency Information System (PTREIS) was developed based on proven mathematical models. …”
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912
Immunophenotype-guided interpretable radiomics model for predicting neoadjuvant anti-PD-1 response in stage III–IV d-MMR/MSI-H colorectal cancer
Published 2025-08-01“…This study aimed to develop an interpretable radiomics model guided by immunophenotypes to predict response to preoperative immunotherapy in CRC, with the goal of enabling more precise and personalized treatment strategies.Methods First, we retrospectively collected 108 patients with CRC from the center who underwent preoperative CT and RNA sequencing. …”
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913
Machine learning approach for water quality predictions based on multispectral satellite imageries
Published 2024-12-01“…The main objective of this study to retrieve and map the water quality parameters from Sentinel-2 and ResourceSat-2 [Linear Imaging Self-Scanning Sensor (LISS)–IV] multi-spectral satellite data, using Support Vector Machines (SVM), Random Forests (RF), and Multi-Linear regression (MLR) models. This study represents the first attempt to demonstrate the applicability and performance of high-spatial resolution ResourceSat-2 remote sensing satellite's LISS-4 sensor, which operates in three spectral bands in the Visible and Near Infrared Region (VNIR), to predict water quality. …”
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914
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915
Temporal–Spatial Partial Differential Equation Modeling of Land Cover Dynamics via Satellite Image Time Series and Sparse Regression
Published 2025-03-01“…Land cover dynamics play a critical role in understanding environmental changes, but accurately modeling these dynamics remains a challenge due to the complex interactions between temporal and spatial factors. …”
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916
Pedestrian Trajectory Prediction Based on Transformer and Multi-relation Graph Convolutional Networks
Published 2025-05-01“…To address this, a pedestrian trajectory prediction model combining Transformer and multi-relation graph convolutional network (GCN) is proposed. …”
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917
Spatial Analysis of Rural Architecture Structure in Passive Defense by VIKOR Modeling; Case study: Yaseh Chai Village
Published 2023-03-01“…Based on the results obtained from the VIKOR modeling, the spatial analysis of the architectural and urban structure of Yaseh Chai village is based on non-operational defense criteria, such as "hiding the village's appearance with local materials" and "predicting the stair-shaped form of houses to reduce damage caused by the destruction of houses" as well as "suitable village location based on suitable and fertile soil for agriculture, horticulture and farming to provide for the economic needs of the inhabitants." …”
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918
Global Ionospheric TEC Map Prediction Based on Multichannel ED-PredRNN
Published 2025-04-01“…These models may result in fuzzy prediction results due to neglecting spatial memory, as spatial memory is crucial for capturing the correlations of TEC within the TEC neighborhood. …”
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919
Short term prediction of photovoltaic power with time embedding temporal convolutional networks
Published 2025-07-01“…Abstract The incorporation of both spatial and temporal characteristics is vital for improving the predictive accuracy of photovoltaic (PV) power generation forecasting. …”
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920
Scenario-based validation and prediction of land use changes in Birjand watershed in 1404
Published 2019-06-01“…Then, using the CA-Markov Model, land use changes in 2014 were predicted and modeled. …”
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