Implementing Billing as a Service by an IPDR Aggregator System
详细信息    查看全文
  • 作者:Jenq-Shiou Leu ; Wen-Bin Hsieh ; Yun-Sun Yee
  • 关键词:Internet Protocol Detail Record ; Cloud computing ; Aggregated bill ; Billing as a Service ; Cellular operators
  • 刊名:Wireless Personal Communications
  • 出版年:2016
  • 出版时间:April 2016
  • 年:2016
  • 卷:87
  • 期:4
  • 页码:1223-1240
  • 全文大小:1,419 KB
  • 参考文献:1.Leu, J.-S., & Chen, S.-F. (2011). TRASS: A transmission rate-adapted streaming server in a wireless environment. International Journal of Communication Systems, 24, 852–871.CrossRef
    2.Leu, J.-S. (2008). A lightweight brokering system for content/service charging in a cellular network centric business model. Computer Communications, 31(10), 2078–2085.CrossRef
    3.IPDR. https://​www.​tmforum.​org/​IPDR/​ .
    4.Gupta, B. M., & Sarkar, M. Business integration architecture for next generation OSS (NGOSS). http://​www.​infosys.​com/​industries/​communication-services/​white-papers/​documents/​business-integration.​pdf .
    5.Rimal, B. P., & Choi, E. (2012). A service-oriented taxonomical spectrum, cloudy challenges and opportunities of cloud computing. International Journal of Communication Systems, 25, 796–819.CrossRef
    6.Hsu, I.-C. (2011). Multilayer context cloud framework for mobile Web 2.0: A proposed infrastructure. International Journal of Communication Systems, 26, 610–625.CrossRef
    7.Tseng, Y.-M., Yang, C.-C., & Su, J.-H. (2004). Authentication and billing protocols for the integration of WLAN and 3G networks. Wireless Personal Communications, 29(3–4), 351–366.CrossRef
    8.Jeffrey, D., & Sanjay, G. (2008). MapReduce: Simplified data processing on large clusters. Communications of the ACM, 51, 107–113.
    9.Johnson, J. L. (2009). SQL in the clouds. Computing in Science & Engineering, 11, 12–28.CrossRef
    10.Wei, J., Ravi, V. T., & Agrawal, G. (2009). Comparing map-reduce and FREERIDE for data-intensive applications. In IEEE International conference on cluster computing and workshops, 2009. CLUSTER ‘09 (pp. 1–10).
    11.Mackey, G., Sehrish, S., Bent, J., Lopez, J., Habib, S., & Wang, J. (2008). Introducing map-reduce to high end computing. In 3rd petascale data storage workshop, 2008. PDSW ‘08 (pp. 1–6).
    12.Xia, T. (2008). Large-scale SMS messages mining based on map-reduce. In International symposium on computational intelligence and design, 2008. ISCID ‘08 (pp. 7–12).
    13.Pan, J., Magoulès, F., Biannic, Y. L., & Favart, C. (2013). Parallelizing multiple group-by queries using MapReduce: Optimization and cost estimation. Telecommunication Systems, 52(2), 635–645.CrossRef
    14.ipdr.org. Network data management—Usage(NDM-U) for IP-based services, version 3.1.1, October, 2002.
    15. Parallel MapReduce in Python in ten minutes. http://​mikecvet.​wordpress.​com/​2010/​07/​02/​parallel-mapreduce-in-python/​ .
    16. HDFS architecture guide. http://​hadoop.​apache.​org/​docs/​r1.​0.​4/​hdfs_​design.​html .
    17. The NIST definition of cloud computing. NIST definition ver. 15, October 7, 2009.
    18. Simple Object Access Protocol (SOAP), W3C SOAP 1.1, May 8, 2000.
    19.Ryan C., Rousseau, B., O’Riordan, C., & Vejgaard-Nielsen, S. Flexible billing for a personalised mobile services environment. http://​www.​tssg.​org . Accessed on February 21, 2005.
    20.Leu, J.-S., Yee, Y.-S., & Chen, W.-L. (2013). Comparison of Map-Reduce and SQL on large-scale data processing. Journal of the Chinese Institute of Engineers, 36(1), 27–34.CrossRef
  • 作者单位:Jenq-Shiou Leu (1)
    Wen-Bin Hsieh (1)
    Yun-Sun Yee (1)

    1. Department of Electronic and Computer Engineering, National Taiwan University of Science and Technology, Taipei, Taiwan
  • 刊物类别:Engineering
  • 刊物主题:Electronic and Computer Engineering
    Signal,Image and Speech Processing
    Processor Architectures
  • 出版者:Springer Netherlands
  • ISSN:1572-834X
文摘
In the past decade, mobile Internet applications provided by cellular operators have been shifted from an emphasis on one-way content delivery to attention to two-way multimedia interaction. IP-based multimedia application development is booming in the recent years. Without systematical integration among these business support systems, subscribers may receive several different bills from different service providers periodically so as to makes them bedazzled. Meanwhile, cloud computing typically involves provisioning of dynamically scalable resources to provide a powerful computation. Motivated by the aforementioned facts, we propose an Internet Protocol Detail Record based architecture, which can combine different service bills and utilize cloud computing to calculate collectively aggregated bill, to establish a Billing as a Service for cellular operators. In order to validate the efficiency of clouding computing for the aggregated billing calculation, we also conduct performance evaluations for the billing computation over the traditional relational database and our proposed system.
NGLC 2004-2010.National Geological Library of China All Rights Reserved.
Add:29 Xueyuan Rd,Haidian District,Beijing,PRC. Mail Add: 8324 mailbox 100083
For exchange or info please contact us via email.