-
141
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. …”
Get full text
Article -
142
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. …”
Get full text
Article -
143
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. …”
Get full text
Article -
144
Enhancing land use planning through integrating landscape analysis and flood inundation prediction Bekasi City’s in 2030
Published 2024-12-01Subjects: Get full text
Article -
145
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. …”
Get full text
Article -
146
Spatiotemporal patterns and prediction of multi-region house prices via functional mixed effects model
Published 2025-04-01Subjects: “…house price prediction…”
Get full text
Article -
147
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. …”
Get full text
Article -
148
-
149
Predicting urban landslides in the hilly regions of Bangladesh leveraging a hybrid machine learning model and CMIP6 climate projections
Published 2025-05-01“…The model was trained using diverse geospatial parameters including topographical, hydrological, soil, and geological parameters, along with an updated landslide inventory, enabling spatially explicit predictions of landslide susceptibility. …”
Get full text
Article -
150
From Domain Decomposition to Model Reduction for Large Nonlinear Structures
Published 2023-05-01“…The numerical simulation of multiscale and multiphysics problems requires efficient tools for spatial localization and model reduction. A general strategy combining Domain Decomposition and Nonuniform Transformation Field Analysis (NTFA) is proposed herein for the simulation of nuclear fuel assemblies at the scale of a full nuclear reactor. …”
Get full text
Article -
151
Modeling robustness tradeoffs in yeast cell polarization induced by spatial gradients.
Published 2008-09-01“…In this work, we investigated the tradeoffs among these performance objectives using a generic model that captures the basic spatial dynamics of polarization in yeast cells, which are small. …”
Get full text
Article -
152
-
153
Predictive quality of census-based socio-economic indicators on Covid-19 infection risk at a fine spatial scale in France
Published 2025-07-01“…Ten census-based ecological covariates were evaluated as predictors of case incidence using a Poisson regression with conditional autoregressive (CAR) spatial effects. Benefits of CAR effects and covariates on model predictive ability was assessed comparing posterior predictive distribution of case incidence with the observed value for each statistical unit. …”
Get full text
Article -
154
Modeling the Effects of Spatial Heterogeneity and Seasonality on Guinea Worm Disease Transmission
Published 2018-01-01“…The model incorporates seasonal variations, educational campaigns, and spatial heterogeneity. …”
Get full text
Article -
155
Event Prediction Using Spatial–Temporal Data for a Predictive Traffic Accident Approach Through Categorical Logic
Published 2025-06-01“…Finally, we implement the traffic accident prediction model using the Prolog language with the corresponding Queries in JPL.…”
Get full text
Article -
156
-
157
Digital agriculture drives carbon emission reduction in China
Published 2025-05-01Get full text
Article -
158
Characterizing, predicting, and mapping of soil spatial variability in Gharb El-Mawhoub area of Dakhla Oasis using geostatistics and GIS approaches
Published 2022-09-01“…The current study was undertaken in the Gharb El-Mawhoub area of Dakhla Oasis to determine, predict, map, and assess the spatial variation of physicochemical attributes. …”
Get full text
Article -
159
Interpretable machine learning unveils threshold responses and spatial patterns of global soil respiration
Published 2025-08-01“…Additionally, we found significant biases in the annual Rs calculated by area weighting based on climate and ecosystem classifications because these factors characterise spatial heterogeneity differently. Such dynamics should be considered when modelling global Rs and analysing the results because they can help improve the estimation accuracy of global Rs prediction models.…”
Get full text
Article -
160
Assessment and Prediction of Carbon Storage Based on Land Use/Land Cover Dynamics in the Gonghe Basin
Published 2024-12-01“…Based on the land use data of the Gonghe Basin from 1990 to 2020, the InVEST model was applied to analyze the spatiotemporal changes in carbon storage, and the PLUS model was used to predict the changes in carbon storage under three different development scenarios in 2030. …”
Get full text
Article