Aggregating and Managing Big Realtime Data in the Cloud - Application to Intelligent Transport for Smart Cities

Gavin Kemp, Genoveva Vargas-Solar, Catarina Ferreira Da Silva, Parisa Ghodous, Christine Collet

2015

Abstract

The increasing power of computer hardware and the sophistication of computer software have brought many new possibilities to information world. On one side the possibility to analyse massive data sets has brought new insight, knowledge and information. On the other, it has enabled to massively distribute computing and has opened to a new programming paradigm called Service Oriented Computing particularly well adapted to cloud computing. Applying these new technologies to the transport industry can bring new understanding to town transport infrastructures. The objective of our work is to manage and aggregate cloud services for managing big data and assist decision making for transport systems. Thus this paper presents our approach for developing data storage, data cleaning and data integration services to make an efficient decision support system. Our services will implement algorithms and strategies that consume storage and computing resources of the cloud. For this reason, appropriate consumption models will guide their use. Proposing big data management strategies for data produced by transport infrastructures, whilst maintaining cost effective systems deployed on the cloud, is a promising approach.

References

  1. Amazon, 2015. Amazon Simple Storage Service (Amazon S3). Available at: http://aws.amazon.com/s3/.
  2. Artikis, A. et al., 2013. Self-Adaptive Event Recognition for Intelligent Transport Management. , pp.319-325.
  3. Buneman, P., Fernandez, M. & Suciu, D., 2000. UnQL: a query language and algebra for semistructured data based on structural recursion. The VLDB Journal, 9(1), p.76.
  4. Cattell, R., 2011. Scalable SQL and NoSQL data stores. ACM SIGMOD Record, 39(4), p.12.
  5. Chen, X. et al., 2014. High performance integrated spatial big data analytics. In Proceedings of the 3rd ACM SIGSPATIAL International Workshop on Analytics for Big Geospatial Data - BigSpatial 7814. New York, New York, USA: ACM Press, pp. 11-14.
  6. Demiryurek, U., Banaei-Kashani, F. & Shahabi, C., 2010. TransDec:A Spatiotemporal Query Processing Framework for Transportation Systems. IEEE, pp.1197-1200.
  7. Ge, Y. et al., 2010. An energy-efficient mobile recommender system. In Proceedings of the 16th ACM SIGKDD international conference on Knowledge discovery and data mining - KDD 7810. New York, New York, USA: ACM Press, p. 899.
  8. Grance, P.M. and T., 2008. The NIST Definition of Cloud Computing Recommendations of the National Institute of Standards and Technology.
  9. GrandLyon, 2015. Smart Data. Available at: http://data.grandlyon.com/.
  10. Gulisano, V. et al., 2012. StreamCloud: An elastic and scalable data streaming system. IEEE Transactions on Parallel and Distributed Systems, 23, pp.2351-2365.
  11. Jagadish, H.V. et al., 2014. Big Data and Its Technical Challenges,
  12. Jian, L. et al., 2008. Improved Design of Communication Platform of Distributed Traffic Information Systems Based on SOA. In 2008 International Symposium on Information Science and Engineering. IEEE, pp. 124- 128.
  13. Lecue, F. et al., 2014. STAR-CITY. In Proceedings of the 19th international conference on Intelligent User Interfaces - IUI 7814. New York, New York, USA: ACM Press, pp. 179-188.
  14. Lee, D.-H. et al., 2004. Taxi Dispatch System Based on Current Demands and Real-Time Traffic Conditions. Transportation Research Record, 1882, pp.193-200.
  15. Lin, J. & Ryaboy, D., 2013. Scaling big data mining infrastructure?: The twitter Experience. ACM SIGKDD Explorations Newsletter, 14(2), p.6.
  16. openstack, 2015. swift. Available at: http://docs.openstack.org/developer/swift/.
  17. Thompson, D., McHale, G. & Butler, R., 2014. RITA. Available at: http://www.its.dot.gov/data_capture/data_capture.htm.
  18. Yuan, N.J. et al., 2013. T-finder: A recommender system for finding passengers and vacant taxis. IEEE Transactions on Knowledge and Data Engineering, 25, pp.2390-2403.
  19. Zikopoulos, P., Eaton, C. & DeRoos, D., 2012. Understanding big data, Available at: http://www.lavoisier.fr/livre/notice.asp?ouvrage=2609 842.
Download


Paper Citation


in Harvard Style

Kemp G., Vargas-Solar G., Ferreira Da Silva C., Ghodous P. and Collet C. (2015). Aggregating and Managing Big Realtime Data in the Cloud - Application to Intelligent Transport for Smart Cities . In Proceedings of the 1st International Conference on Vehicle Technology and Intelligent Transport Systems - Volume 1: VEHITS, ISBN 978-989-758-109-0, pages 107-112. DOI: 10.5220/0005491001070112


in Bibtex Style

@conference{vehits15,
author={Gavin Kemp and Genoveva Vargas-Solar and Catarina Ferreira Da Silva and Parisa Ghodous and Christine Collet},
title={Aggregating and Managing Big Realtime Data in the Cloud - Application to Intelligent Transport for Smart Cities},
booktitle={Proceedings of the 1st International Conference on Vehicle Technology and Intelligent Transport Systems - Volume 1: VEHITS,},
year={2015},
pages={107-112},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0005491001070112},
isbn={978-989-758-109-0},
}


in EndNote Style

TY - CONF
JO - Proceedings of the 1st International Conference on Vehicle Technology and Intelligent Transport Systems - Volume 1: VEHITS,
TI - Aggregating and Managing Big Realtime Data in the Cloud - Application to Intelligent Transport for Smart Cities
SN - 978-989-758-109-0
AU - Kemp G.
AU - Vargas-Solar G.
AU - Ferreira Da Silva C.
AU - Ghodous P.
AU - Collet C.
PY - 2015
SP - 107
EP - 112
DO - 10.5220/0005491001070112