Abstract
The massive sensor data streams multi-dimensional analysis in the monitoring application of internet of things is very important, especially in the environments where supporting such kind of real time streaming data storage and management. Cloud computing can provide a powerful, scalable storage and the massive data processing infrastructure to perform both online and offline analysis and mining of the heterogeneous sensor data streams. In order to support high-volume and real-time sensor data streams processing, in this paper, we propose a massive sensor data streams multi-dimensional analysis strategy using progressive logarithmic tilted time frame for cloud based monitoring application. The proposed strategy is sufficient for many high-dimensional streams analysis tasks using map-reduce platform of cloud computing. Finally, the simulation results show that proposed strategy achieves the enhancing storage performance and also can ensures that the total amount of data to retain in memory or to be stored on disk is small for achieving the performance improvement of the massive sensor data streams analysis.
This is a preview of subscription content, log in via an institution.
Buying options
Tax calculation will be finalised at checkout
Purchases are for personal use only
Learn about institutional subscriptionsPreview
Unable to display preview. Download preview PDF.
References
McDaniel, P., Smith, S.W.: Outlook: Cloud Computing With a Chance of Security Challenges and Improvements. In: Proceeding of the IEEE Computer and Reliability Societies, pp. 77–80 (2010)
Yu, B., Sen, R., Jeong, D.H.: An Integrated Framework for Managing Sensor Data Uncertainty Using Cloud Computing. Information Systems 38(8), 1252–1268 (2013)
Wang, M., Holub, V., Murphy, J., Sullivan, P.O.: High Volumes of Event Stream Indexing and Efficient Multi-keyword Searching for Cloud Monitoring. Future Generation Computer Systems 29(8), 1943–1962 (2013)
Smit, M., Simmons, B., Litoiu, M.: Distributed, Application-level Monitoring for Hetero- geneous Clouds Using Stream Processing. Future Generation Computer Systems 29(8), 2103–2114 (2013)
Kaiser, C., Pozdnoukhov, A.: Enabling Real-time City Sensing with Kernel Stream Oracles and MapReduce. Pervasive and Mobile Computing 9, 708–721 (2013)
Zhang, F., Cao, J.W., Khan, S.U., Li, K.Q., Hwang, K.: A Task-level Adaptive MapReduce Framework for Real-time Streaming Data in Healthcare Applications. Future Generation Computer Systems (in press, July 5, 2014)
Misra, S., Chatterjee, S.: Social Choice Considerations in Cloud-assisted WBAN Architect- ure for Post-disaster Healthcare: Data Aggregation and Channelization. Information Sciences 284, 95–117 (2014)
Sultan, N.: Making Use of Cloud Computing for Healthcare Provision: Opportunities and Challenges. International Journal of Information Management 34(2), 177–184 (2014)
Chen, M.: NDNC-BAN: Supporting Rich Media Healthcare Services via Named Data Networking in Cloud-assisted Wireless Body Area Networks. Information Sciences 284, 142–156 (2014)
Thilakanathan, D., Chen, S., Nepal, S., Calvo, R., Alem, L.: A Platform for Secure Monitoring and Sharing of Generic Health Data in the Cloud. Future Generation Computer Systems 35, 102–113 (2014)
Castiglione, A., Pizzolante, R., Santis, A.D., et al.: Cloud-based Adaptive Compression and Secure Management Services for 3D Healthcare Data. Future Generation Computer Systems (in press, July 16, 2014)
Markovicn, D.S., Zivkovic, D., Branovic, I., et al.: Smart Power Grid and Cloud Computing. Renewable and Sustainable Energy Reviews 24, 566–577 (2013)
Yigit, M., Gungor, V.C., Baktir, S.: Cloud Computing for Smart Grid applications. Computer Networks 70, 312–329 (2014)
Qi, K.Y., Zhao, Z.F., Fang, J., Ma, Q.: Real-Time Processing for High Speed Data Stream over Large Scale Data. Chinese Journal of Computers 35(3), 477–490 (2012)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2014 Springer International Publishing Switzerland
About this paper
Cite this paper
Song, X., Wang, C., Chen, Y., Gao, J. (2014). A Massive Sensor Data Streams Multi-dimensional Analysis Strategy Using Progressive Logarithmic Tilted Time Frame for Cloud-Based Monitoring Application. In: Zeng, Z., Li, Y., King, I. (eds) Advances in Neural Networks – ISNN 2014. ISNN 2014. Lecture Notes in Computer Science(), vol 8866. Springer, Cham. https://doi.org/10.1007/978-3-319-12436-0_61
Download citation
DOI: https://doi.org/10.1007/978-3-319-12436-0_61
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-12435-3
Online ISBN: 978-3-319-12436-0
eBook Packages: Computer ScienceComputer Science (R0)