Abstract
With the increasing popularity of smart mobile terminals, smartphones, tablet computers and other mobile devices will gradually replace personal computers and become the most important computing platform for consumers. Mobile edge computing (MEC), as a key technology for the evolution of communication network architecture, can meet the requirements of the system for throughput, delay, network scalability and intelligence. Based on the MEC, the content and services provided by information system are closer to users to increase mobile network speed, reduce latency and improve connection reliability. In this paper, we propose an interactive data information system based on mobile edge detection, which is divided into client and server. The server mainly provides services such as content and user login and rights management for the client. The client needs to log into the server to run normally. Among them, the interactive data server is a favorable support and guarantee for the client. The experimental results show that the proposed method has higher efficiency and fault tolerance.










Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Yihe Bi, Haijun Liang (2012) Analysis of mobile phone learning in the perspective of communication science. China Educ Inf Technol 6:24–27
Gungor VC, Sahin D, Kocak T et al (2011) Smart grid technologies: communication technologies and standards. IEEE Trans Ind Inform 7(4):529–539
Lin Hsien-Tang (2011) Development of intelligent power consumption management assistants. Inf Technol J 10(7):1343–1350
Li W (2013) Design and development of mobile learning network course based on 3G smart phone. Jiangnan University
Tian J (2005) Research and implementation of visual knowledge modeling. Southeast University
Laudon Kenneth C, Laudon Jane P (2001) Management information system—organization and technology of networked enterprises, 6th edn. Higher Education Press, Beijing
Wei M, Zhang S (2000) Implementation of visualization technology in management information system. Comput Eng 5:93–94
Sun K (2009) Research on human machine interface design of web management information system. Dalian University of Technology
Ok K, Coskun V, Ozdenizcib et al (2010) Current benefits and future directions of NFC Services. In: 2010 international conference on education and management technology, vol 10. EEE, Cairo, pp 334–338
Zhang Xiaoshuan Wu, Qinghua Tian Dong (2008) Implementation of data-exchanging system based on message oriented middleware in agricultural website. WSEAS Trans Comput 7(6):620–629
Yuanqing Lin (2005) NFC mobile electronic payment enters the practical stage. Electron Technol 6:22–23
Lixia Tang, Huihua Wang, Ruifeng Liu (2010) Design and implementation of power Internet of Things information model and communication protocol. J Xi’an Polytech Univ 24(6):709–804
Jianxin Li, Bo Li, Tianyu Wo (2012) CyberGuarder: a visualization security assurance architecture for green cloud computing. Future Gener Comput Syst 28(2):379–390
Slavsia Aleksi (2009) Analysis of power consumption in future high-capacity network nodes. J Opt Commun Netw 1(3):245–258
Tingying Huang (2011) Application of advanced measurement and measurement system in intelligent network. Electr Times 13(7):58–62
Hollander A, Denna E, Cherrington JO (1999) Accounting, information technology, and business solutions
Pei D (2018) Realization of data visualization based on echards
Jianying Gao (2008) Study on the construction of multidimensional visual decision-making accounting information system. Friends Account 5:28–29
Teuvo K (1995) Self-organizing maps. Springer, New York
Tomas E, Barbro B, Hannu V et al (2002) Assessing the feasibility of self organizing maps for data mining financial information. In: Proceedings of the 10th European conference on information systems 2002. Eurographics Association Press, Aire-la-ville, pp 528–533
Brunno S, Nuno M (2010) Feature clustering with self organizing maps and an application to financial time-series portfolio selection. In: Proceedings of international conference on neural computation 2010. Eurographics Association Press, Aire-la-ville, pp 301–309
Mach P, Becvar Z (2017) Mobile edge computing: a survey on architecture and computation offloading. IEEE Commun Surv Tutor 19(3):1628–1656
Wang C, Haider F, Gao X et al (2014) Cellular architecture and key technologies for 5 g wireless communication networks. IEEE Commun Mag 52(2):122–130
Patel M, Naughton B, Chan C et al (2014) Mobile-edge computing introductory technical white paper. White Paper, Mobile-edge Computing (MEC) industry initiative
Dinh HT, Lee C, Niyato D et al (2013) A survey of mobile cloud computing: architecture, applications, and approaches. Wirel Commun Mobile Comput 13(18):1587–1611
Wang C, Li Y, Jin D (2014) Mobility-assisted opportunistic computation offloading. IEEE Commun Lett 18(10):1779–1782
Li B, Zhang H, Lu H (2016) User mobility prediction based on Lagrange’s interpolation in ultra-dense networks. In: 2016 IEEE 27th annual international symposium on Personal, Indoor, and Mobile Radio Communications (PIMRC), pp 1–6
Rossi M, Bui N, Zanca G et al (2010) Synapse ++: code dissemination in wireless sensor networks using fountain codes. IEEE Trans Mob Comput 9(12):1749–1765
Du W, Liando JC, Zhang H et al (2015) When pipelines meet fountain: fast data dissemination in wireless sensor networks. In: Proceedings of the 13th ACM conference on embedded networked sensor systems, pp 365–378
Cui Y, Wang L, Wang X et al (2015) Fmtcp: a fountain code-based multipath transmission control protocol. IEEE/ACM Trans Netw (ToN) 23(2):465–478
Hagedorn A, Starobinski D, Trachtenberg A (2008) Rateless deluge: over-the-air programming of wireless sensor networks using random linear codes. In: Proceedings of the 7th international conference on Information processing in sensor networks, pp 457–466
Cong S (1999) Self organizing competitive network is used to optimize the structure of fuzzy neural network. China Society of automation, pp 46–50
Feng Zhou, Xingmei Li, Fujiang Liu et al (2007) Application of self-organizing competitive neural network based on principal component analysis in multispectral remote sensing image classification. Opt Optoelectron Technol 03:43–46
Yiran Wang, Jimei Gao (1999) On the application of XOR operation. J Zhoukou Normal Univ 02:83–86
Acknowledgements
This research was supported by the National Natural Science Foundation of China under Grant No. 61802317.
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
There is no conflict of interest.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Zhang, Y., Li, Y. & Wang, H. Mobile neural intelligent information system based on edge computing with interactive data. Neural Comput & Applic 33, 4329–4341 (2021). https://doi.org/10.1007/s00521-020-05269-9
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00521-020-05269-9