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141
Exploration of geo-spatial data and machine learning algorithms for robust wildfire occurrence prediction
Published 2025-03-01“…The goal of this study is to explore the potential of predicting wildfire occurrences using various available environmental parameters - meteorological, geo-spatial, and anthropogenic - and machine learning (ML) algorithms. …”
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142
Predicting spatial spread of rabies in skunk populations using surveillance data reported by the public.
Published 2017-07-01“…We developed a dynamic patch-occupancy model which predicts spatio-temporal spreading while accounting for heterogeneous sampling. …”
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143
Transformer based spatially resolved prediction of mechanical properties in wire arc additive manufacturing
Published 2025-07-01“…The results demonstrate that the framework achieves good prediction capabilities using a small dataset. It provides a state-of-the-art methodology for predicting the spatial and temporal evolution of mechanical properties leveraging the transformer architecture. …”
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144
A Hybrid Long Short-Term Memory-Graph Convolutional Network Model for Enhanced Stock Return Prediction: Integrating Temporal and Spatial Dependencies
Published 2025-03-01“…This study proposes a hybrid model integrating long short-term memory (LSTM) networks and graph convolutional networks (GCNs) to enhance accuracy by capturing both temporal dynamics and spatial inter-stock relationships. …”
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145
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. …”
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146
Predicting the effect of landscape structure on epidemic invasion using an analytical estimate for infection rate
Published 2025-01-01“…We explore the potential of using an analytical approximation for the rate, [Formula: see text], at which susceptible crop fields become infected at the start of an epidemic to predict the effect that the spatial structure of a host landscape will have on an epidemic. …”
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147
Exploring suicidal thoughts among prospective university students: a study with applications of machine learning and GIS techniques
Published 2025-08-01Subjects: Get full text
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148
Temporal-Spatial Redundancy Reduction in Video Sequences: A Motion-Based Entropy-Driven Attention Approach
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149
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151
Vers une nouvelle classification des modèles d'évaluation et de prédiction de l'érosion hydrique
Published 2023-10-01“…However, these models contrast considerably regarding to the studied phenomena, their nature and their complexity in the field, and to the implemented approach, through the variety and the quality of used data, the spatial and temporal scales of application and the information obtained as output, types and uncertainties.An attempt to classify water erosion assessment models (129 models are considered) is presented based on their most critical geospatial attributes for water erosion modeling. …”
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152
Predictive modeling of building energy consumption and thermal comfort for decarbonization in construction and retrofitting
Published 2025-06-01“…This study introduces an integrated predictive modeling framework for assessing building energy consumption and indoor thermal comfort, with a focus on supporting decarbonization efforts in both new construction and retrofit scenarios. …”
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153
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Spatial-temporal evolution characteristics and driving factors of carbon emission prediction in China-research on ARIMA-BP neural network algorithm
Published 2024-11-01“…Therefore, it is of great significance to analyze the characteristics and driving factors of temporal and spatial evolution on the basis of effective calculation and prediction of carbon emissions in various provinces for promoting high-quality economic development and realizing carbon emission reduction. …”
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155
Genetic Programming-Based Prediction Model for Microseismic Data
Published 2022-01-01“…Therefore, we collected a large amount of microseismic data obtained from the working faces of Shoushan Mine of Pingdingshan Coal Group in China and filtered the data, then we constructed a prediction model of microseismic data based on underground spatial three-dimensional coordinates using genetic programming (GP), which can realize real-time monitoring and disaster warning of microseismic signals. …”
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156
Research on rock burst prediction based on an integrated model
Published 2025-05-01“…Additionally, the sparrow search algorithm (SSA) is employed to optimize hyperparameters, further improving the model’s performance. Unlike traditional approaches that rely on time-axis-based analysis, this study uses the working face advancement distance as the basis for prediction, which better reveals the potential spatial correlations of rockburst occurrences, aligning with engineering practice needs.Validation using microseismic monitoring data from a coal mine demonstrates that the proposed model achieves a prediction accuracy of 93.62% and an F1-score of 93.54%. …”
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157
A spatiotemporal model for urban taxi Origin–Destination prediction based on Multi-hop GCN and Hierarchical LSTM
Published 2025-09-01“…On the PEMS08, the single-path version of DBSTNet outperforms state-of-the-art demand prediction models with an 8.29% increase in SMAPE, underscoring the scalability of the proposed MS-HT for spatial–temporal computation. …”
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158
Modelling the Current and Future Pollutant Emission from Non-Road Machinery: A Case Study in Shanghai
Published 2023-06-01Get full text
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159
MDA-MIM: a radar echo map prediction model integrating multi-scale feature fusion and dual attention mechanism
Published 2025-03-01“…Experiments conducted on real-world datasets demonstrate that MDA-MIM achieves state-of-the-art predictive performance, consistently outperforming baseline models across multiple evaluation metrics, including MSE, MAE, SSIM, and PSNR.…”
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160
Ada-GCNLSTM: An adaptive urban crime spatiotemporal prediction model
Published 2025-06-01“…In this paper, we introduce a novel deep learning-based model, adaptive-GCNLSTM (Ada-GCNLSTM). Specifically, in the spatial feature extraction module, we enhance the model's ability to capture crime spatial distributions by leveraging graph convolutional networks to model spatial dependencies in conjunction with the maximum mean discrepancy to extract the universal features of crime data. …”
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