35 results on '"Fang, Hongliang"'
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2. Seasonal and vertical variation in canopy structure and leaf spectral properties determine the canopy reflectance of a rice field
3. Validation of the vertical canopy cover profile products derived from GEDI over selected forest sites
4. Examining indicators and methods for quantifying ozone exposure to vegetation
5. Photon recollision probability and the spectral invariant theory: Principles, methods, and applications
6. A novel similar-day based probability density forecasting framework for residential loads
7. Self-training convolutional autoencoder for consumer characteristics identification with imbalance datasets
8. Joint load prediction of multiple buildings using multi-task learning with selected-shared-private mechanism
9. A machine learning-based detection framework against intermittent electricity theft attack
10. A new deep clustering method with application to customer selection for demand response program
11. Estimation of daily FAPAR from MODIS instantaneous observations at forest sites
12. GSV-L: A general spectral vector model for hyperspectral leaf spectra simulation
13. Comprehensive evaluation of global CI, FVC, and LAI products and their relationships using high-resolution reference data
14. New insights of global vegetation structural properties through an analysis of canopy clumping index, fractional vegetation cover, and leaf area index
15. A new mining framework with piecewise symbolic spatial clustering
16. Variation of intra-daily instantaneous FAPAR estimated from the geostationary Himawari-8 AHI data
17. Canopy clumping index (CI): A review of methods, characteristics, and applications
18. Critical analysis of methods to estimate the fraction of absorbed or intercepted photosynthetically active radiation from ground measurements: Application to rice crops
19. GSV: a general model for hyperspectral soil reflectance simulation
20. Validation of global moderate resolution leaf area index (LAI) products over croplands in northeastern China
21. Global 500 m clumping index product derived from MODIS BRDF data (2001–2017)
22. Fabrication and characterization of mesoporous Si/SiC derived from diatomite via magnesiothermic reduction
23. Estimation of the directional and whole apparent clumping index (ACI) from indirect optical measurements
24. Continuous estimation of canopy leaf area index (LAI) and clumping index over broadleaf crop fields: An investigation of the PASTIS-57 instrument and smartphone applications
25. Impact of water background on canopy reflectance anisotropy of a paddy rice field from multi-angle measurements
26. Estimation of canopy clumping index from MISR and MODIS sensors using the normalized difference hotspot and darkspot (NDHD) method: The influence of BRDF models and solar zenith angle
27. Intercomparison of clumping index estimates from POLDER, MODIS, and MISR satellite data over reference sites
28. Seasonal variation of leaf area index (LAI) over paddy rice fields in NE China: Intercomparison of destructive sampling, LAI-2200, digital hemispherical photography (DHP), and AccuPAR methods
29. Retrieval of leaf area index using temporal, spectral, and angular information from multiple satellite data
30. The immunotoxicity of graphene oxides and the effect of PVP-coating
31. Theoretical uncertainty analysis of global MODIS, CYCLOPES, and GLOBCARBON LAI products using a triple collocation method
32. Contributors of the second edition
33. Efficacy and Safety of CAR-T Therapy with Safety Switch Targeting Bcma for Patients with Relapsed/Refractory Multiple Myeloma in a Phase 1 Clinical Study
34. Corrigendum to “Seasonal variation of leaf area index (LAI) over paddy rice fields in NE China: Intercomparison of destructive sampling, LAI-2200, digital hemispherical photography (DHP), and AccuPAR methods” Agricultural and Forest Meteorology, Volume 198–199(2014), 126–41
35. List of Contributors
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