Literature DB >> 35002013

Development of High Performance Computing Tools for Estimation of High-Resolution Surface Energy Balance Products Using sUAS Information.

Ayman Nassar1,2, Alfonso Torres1,2, Venkatesh Merwade3, Sayan Dey3, Lan Zhao3, I Luk Kim3, William P Kustas4, Hector Nieto5, Lawrence Hipps6, Rui Gao1,2, Joseph Alfieri4, John Prueger7, Maria Mar Alsina8, Lynn McKee4, Calvin Coopmans9, Luis Sanchez8, Nick Dokoozlian8, Nicolas Bambach Ortiz10, Andrew J Mcelrone10.   

Abstract

sUAS (small-Unmanned Aircraft System) and advanced surface energy balance models allow detailed assessment and monitoring (at plant scale) of different (agricultural, urban, and natural) environments. Significant progress has been made in the understanding and modeling of atmosphere-plant-soil interactions and numerical quantification of the internal processes at plant scale. Similarly, progress has been made in ground truth information comparison and validation models. An example of this progress is the application of sUAS information using the Two-Source Surface Energy Balance (TSEB) model in commercial vineyards by the Grape Remote sensing Atmospheric Profile and Evapotranspiration eXperiment - GRAPEX Project in California. With advances in frequent sUAS data collection for larger areas, sUAS information processing becomes computationally expensive on local computers. Additionally, fragmentation of different models and tools necessary to process the data and validate the results is a limiting factor. For example, in the referred GRAPEX project, commercial software (ArcGIS and MS Excel) and Python and Matlab code are needed to complete the analysis. There is a need to assess and integrate research conducted with sUAS and surface energy balance models in a sharing platform to be easily migrated to high performance computing (HPC) resources. This research, sponsored by the National Science Foundation FAIR Cyber Training Fellowships, is integrating disparate software and code under a unified language (Python). The Python code for estimating the surface energy fluxes using TSEB2T model as well as the EC footprint analysis code for ground truth information comparison were hosted in myGeoHub site https://mygeohub.org/ to be reproducible and replicable.

Entities:  

Keywords:  FAIR; HPC; Python; TSEB2T; cyberinfrastructure; myGeoHub; remote sensing; sUAS; surface energy balance

Year:  2021        PMID: 35002013      PMCID: PMC8739179          DOI: 10.1117/12.2587763

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  3 in total

1.  Implications of Soil and Canopy Temperature Uncertainty in the Estimation of Surface Energy Fluxes Using TSEB2T and High-resolution Imagery in Commercial Vineyards.

Authors:  Ayman Nassar; Alfonso Torres-Rua; William Kustas; Hector Nieto; Mac McKee; Lawrence Hipps; Joseph Alfieri; John Prueger; Maria Mar Alsina; Lynn McKee; Calvin Coopmans; Luis Sanchez; Nick Dokoozlian
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2020-05-26

2.  Evaluation of TSEB turbulent fluxes using different methods for the retrieval of soil and canopy component temperatures from UAV thermal and multispectral imagery.

Authors:  Héctor Nieto; William P Kustas; Alfonso Torres-Rúa; Joseph G Alfieri; Feng Gao; Martha C Anderson; W Alex White; Lisheng Song; María Del Mar Alsina; John H Prueger; Mac McKee; Manal Elarab; Lynn G McKee
Journal:  Irrig Sci       Date:  2019       Impact factor: 2.940

3.  Influence of Model Grid Size on the Estimation of Surface Fluxes Using the Two Source Energy Balance Model and sUAS Imagery in Vineyards.

Authors:  Ayman Nassar; Alfonso Torres-Rua; William Kustas; Hector Nieto; Mac McKee; Lawrence Hipps; David Stevens; Joseph Alfieri; John Prueger; Maria Mar Alsina; Lynn McKee; Calvin Coopmans; Luis Sanchez; Nick Dokoozlian
Journal:  Remote Sens (Basel)       Date:  2020       Impact factor: 4.848

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.