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Chunquan Fan
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A physics-guided deep learning model for 10-h dead fuel moisture content estimation
C Fan, B He
Forests 12 (7), 933, 2021
152021
Regional estimation of dead fuel moisture content in southwest China based on a practical process-based model
C Fan, B He, J Yin, R Chen
International Journal of Wildland Fire 32 (7), 1148-1161, 2023
82023
Improving wildfire probability modeling by integrating dynamic-step weather variables over Northwestern Sichuan, China
R Chen, B He, X Quan, X Lai, C Fan
International Journal of Disaster Risk Science 14 (2), 313-325, 2023
82023
Improving Wildfire Danger Assessment Using Time Series Features of Weather and Fuel in the Great Xing’an Mountain Region, China
Z Wang, B He, R Chen, C Fan
Forests 14 (5), 986, 2023
42023
Estimation of potential wildfire behavior characteristics to assess wildfire danger in southwest China using deep learning schemes
R Chen, B He, Y Li, C Fan, J Yin, H Zhang, Y Zhang
Journal of environmental management 351, 120005, 2024
22024
Predicting 1-H Dead Fuel Moisture Content at Regional Scales Using Machine Learning from Himawari-8 Data
C Fan, B He, P Kong, H Xu, Q Zhang, X Quan
2021 IEEE International Geoscience and Remote Sensing Symposium IGARSS, 1222 …, 2021
22021
Drought-related wildfire accounts for one-third of the forest wildfires in subtropical China
J Yin, B He, C Fan, R Chen, H Zhang, Y Zhang
Agricultural and Forest Meteorology 346, 109893, 2024
12024
Global Live Fuel Moisture Content Dynamic Monitoring Based on Modis Data Observation
M Li, M Jiao, W Wang, R Chen, C Fan
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
12023
The potential of optical and SAR time-series data for the improvement of aboveground biomass carbon estimation in Southwestern China’s evergreen coniferous forests
Y Zhang, B He, R Chen, H Zhang, C Fan, J Yin, Y Li
GIScience & Remote Sensing 61 (1), 2345438, 2024
2024
Process-based and geostationary meteorological satellite-enhanced dead fuel moisture content estimation
C Fan, B He, J Yin, R Chen, H Zhang
GIScience & Remote Sensing 61 (1), 2324556, 2024
2024
Fire has become a major disturbance agent in the forests of Southwest China
J Yin, B He, C Fan, R Chen
Ecological Indicators 160, 111885, 2024
2024
Quantification of Climate-Wildfire Relationships Taking Into of Spatiotemporal Heterogeneity at Regional Scale: The Subtropical China Case
J Yin, R Chen, C Fan, Y Zhang, B He
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Forecasting Dead Fuel Moisture Content at Spatial Scales Using a Process-Based Model with Global Forecast System Data
C Fan, B He, J Yin, R Chen, H Zhang, Y Zhang
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Estimation of Probability Density of Potential Fire Intensity Using Quantile Regression and Bi-Directional Long Short-Term Memory
R Chen, Y Li, J Yin, C Fan, Y Zhang, B He, C Liu
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Extraction of Row Centerline at the Early Stage of Corn Growth Based on UAV Images
L Xue, M Xing, R Chen, J Yin, C Fan
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Modeling Potential Wildfire Behavior Characteristics Using Multi-Source Remotely Sensed Data: Towards Wildfire Hazard Assessment
R Chen, Y Li, C Fan, J Yin, Y Zhang, B He, Q Zhang
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Rice False Smut Extraction Based on the Combination of Instability Index Between Classes and Correlation Coefficient of UAV Hyperspectral Band Selection
Y Wang, M Xing, L Xue, R Chen, J Yin, C Fan
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
Estimation of Live Fuel Moisture Content Based on A Machine Learning Approach
W Wang, R Chen, M Li, C Fan, M Jiao
IGARSS 2023-2023 IEEE International Geoscience and Remote Sensing Symposium …, 2023
2023
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