1,313
Views
3
CrossRef citations to date
0
Altmetric
Research Articles

Universal workflow-based high performance geo-computation service chain platform

ORCID Icon, , ORCID Icon &
Pages 409-434 | Received 13 Feb 2020, Accepted 25 May 2020, Published online: 16 Jul 2020

References

  • Barry, D. K. (2003). Service-oriented architecture overview. Web Services and Service-Oriented Architectures, 3–4. San Francisco: Morgan Kaufmann.
  • Broomhall, M., Chedzey, H., Garcia, R., Lynch, M., Fearns, P., King, E., & Wang, Z. (2011). Ensemble dust detection techniques utilizing a web-based workflow environment linked to a high performance computing system. Proceedings of the 34th International Symposium on Remote Sensing of Environment, 713–716.
  • Chen, Z. Y., Yang, Y., Chen, L. J., & Wang, C. X. (2010). Design and realization of high-performance computing platform accounting system. Proceedings of the International Conference on Future Computer and Communication, Shanghai, China, V2-702-V2-705.
  • Cholia, S., Skinner, D., & Boverhof, J. (2010). NEWT: A RESTful service for building high performance computing web applications. Proceedings of the Gateway Computing Environments Workshop (GCE), 1–11.
  • Costa, A., Becciani, U., Miocchi, P., Antonuccio, V., Capuzzo Dolcetta, R., Di Matteo, P., & Rosato, V. (2005). Astrocomp: Web technologies for high performance computing on a network of supercomputers. Computer Physics Communications, 166(1), 17–25.
  • Deelman, E., Vahi, K., Juve, G., Rynge, M., Callaghan, S., Maechling, P. J., … Wenger, K. (2015). Pegasus, a workflow management system for science automation. Future Generation Computer Systems, 46, 17–35.
  • Deng, B. L., & Wang, Y. L. (2014). An improved algorithm for workflow scheduling in Cloud environment based on graph cut. Computer & Modernization, 2014(2), 55–58.
  • Deng, M., Di, L., Han, W., Yagci, A. L., Peng, C., & Heo, G. (2015). Web-service-based monitoring and analysis of global agricultural drought. Photogrammetric Engineering and Remote Sensing, 79(10), 929–943.
  • Diego, A. N. L. (2007). OSWorkflow: A guide for java developers and architects to integrating open-source business process management. Birmingham: Packt Publishing.
  • Ding, J. Y., Li, Q., & Zhou, M. L. (2006). A model for grid resource management and workflow scheduling based on virtual organization. Computer Applications & Software, 23(2), 22–24.
  • Du, W., Davis, J. W., & Pfeifer, C. (2000). System and method for performing flexible workflow process execution in a distributed workflow management system. Google Patents. U.S. Patent No. 6,041,306. Washington, DC: U.S. Patent and Trademark Office.
  • Essic, J. (2008). Digital elevation models (DEMs). Alphascript Publishing, 89(7), 240–240.
  • Georgakopoulos, D., Hornick, M., & Sheth, A. (1995). An overview of workflow management: From process modeling to workflow automation infrastructure. Distributed and Parallel Databases, 3(2), 119–153.
  • Grossman, M., & Sarkar, V. (2016). SWAT: A programmable, in-memory, distributed, high-performance computing platform. Proceedings of the ACM International Symposium on High-Performance Parallel and Distributed Computing, Kyoto, Japan, 81–92.
  • Guo, H. (2017). Big Earth data: A new frontier in Earth and information sciences. Big Earth Data, 1(1–2), 4–20.
  • Hababeh, I., Khalil, I., & Khreishah, A. (2015). Designing high performance Web-based computing services to promote telemedicine database management system. IEEE Transactions on Services Computing, 8(1), 47–64.
  • Huang, F., Bu, S. S., Tao, J., & Tan, X. C. (2016). OpenCL implementation of a parallel universal Kriging algorithm for massive spatial data interpolation on heterogeneous systems. International Journal of Geo-Information, 5(6), 96.
  • Huang, F., Liu, D. S., Li, X. W., Wang, L. Z., & Xu, W. B. (2011). Preliminary study of a cluster-based open-source parallel GIS based on the GRASS GIS. International Journal of Digital Earth, 4(5), 402–420.
  • Huang, F., Tao, J., Xiang, Y., Liu, P., Dong, L., & Wang, L. Z. (2017). Parallel compressive sampling matching pursuit algorithm for compressed sensing signal reconstruction with OpenCL. Journal of Systems Architecture, 72, 51–60.
  • Huang, F., Tie, B., Tao, J., Tan, X., & Ma, Y. 2019. Methodology and optimization for implementing cluster-based parallel geospatial algorithms with a case study. Cluster Computing. doi:10.1007/s10586-019-02944-y.
  • Huang, F., Zhou, J., Tao, J., Tan, X., Liang, S., & Cheng, J. (2016). PMODTRAN: A parallel implementation based on MODTRAN for massive remote sensing data processing. International Journal of Digital Earth, 9(9), 819–834.
  • Lindholm, E., Nickolls, J., Oberman, S., & Montrym, J. (2008). NVIDIA Tesla: A unified graphics and computing architecture. IEEE Micro, 28(2), 39–55.
  • Liu, F. (2010). Research on Grid computing platform and resource scheduling algorithm based on WSRF.NET and CONDOR [Master dissertation]. Beijing Normal University.
  • Liu, J. C., Huang, R. F., Yang, B., & Li, J. (2010). Workflow-based meteorological user environment for high performance computing. Computer Engineering, 36(8), 278–280.
  • Lu, M., Wang, J. Y., Lu, G., Tao W. D., & Wang, J. C. (2017). Research of raster data spatial analysis under CPU/GPU heterogeneous hybrid parallel environment——Take terrain factors analysis as an example. Computer Engineering & Applications, 53(1), 172–177.
  • Luo, H., Fan, Y., & Wu, C. (2000). Overview of workflow technology. Journal of Software, 11(7), 899–907.
  • Plaza, A., Du, Q., & Chang, Y. L. (2011). High performance computing for hyperspectral remote sensing. IEEE Journal of Selected Topics in Applied Earth Observations & Remote Sensing, 4(3), 528–544.
  • Salatino, M. (2009). jBPM developer guide. Cleveland Clinic Journal of Medicine, 70(2), 141–146.
  • Tang, Y. Y., Zhou, H. F., Fang, M. Q., & Shen, X. L. (2016). Hyperspectral remote sensing image data processing research and realization based on CPU/GPU heterogeneous model. Computer Science, 43(2), 47–50+77.
  • Thomas, M., Mock, S., & Boisseau, J. (2000). Development of Web toolkits for computational science portals: The NPACI hotpage. Proceedings of the High-Performance Distributed Computing, Proceedings of the Ninth International Symposium on, Pittsburgh, PA, USA, 308–309.
  • Tracey, J. B., Mackinlay, B., Tagupa, J., Lauffenburger, P., Exline, I. D., & LeachJr, H. T. (2004). Workflow management system. Google Patents. U.S. Patent No. 6,798,413. Washington, DC: U.S. Patent and Trademark Office.
  • Xie, S., Zhang, H. W., & Zhao, L. (2002). Basic features of web service and its application to supply chain management system. Journal of Chengdu Institute of Meteorology, 02, 82–87.
  • Xu, L. M., & Yao, Y. W. (2008). Research and implementation of SOA developing framework. Journal of Computer Applications, 28(S1), 307–309.
  • Xue, Y., Liu, D., Ai, J., & Wan, W. (2008). High performance geocomputation—Preface, Proceedings in: ICCS 2008, 8th International Conference of Computational Science, Kraków, Poland, June 23-25, 2008. Part II, pp. 603–604. Springer.
  • Xue, Y., Wan, W., & Ai, J. W. (2008). High performance geocomputation developments. World Scientific Research and Development, 30(3), 314–319.
  • Yang, S. L., & Hu, J. P. (2015). Design of task workflow based on Activiti technology. Applied Mechanics & Materials, 740, 802–805.
  • Yu, X. Q., Zhang, W. C., Zhang, T., & Liu, X. (2006). Web service technique and its application to the conversion of spatial data. Journal of Jilin Architectural & Civil Engineering Institute, 23(3), 51–53.
  • Zeng, H. (2011). The comparative analysis between Java frame and .NET frame. Science Education Article Collects, 9, 106–109.
  • Zhan, L., Miao, F., & Leng, X. P. (2014). Research of sharing spatial data in WebGIS with spatial information web services. Geomatics & Spatial Information Technology, 37(3), 65–68.
  • Zhou, K., & Lin, M. (2014). Research on a new job scheduling policy based on Torque. Microcomputer & Its Applications, 33(22), 63–66.
  • Zwieflhofer, W., & Mozdzynski, G. (2005). Realizing teracomputing, Proceedings of the Tenth ECMWF Workshop on the Use of High Performance Computers in Meteorology. World Scientific, Reading, UK.