Journal of Digital Information Management


Vol No. 21 ,Issue No. 1 2023

How Much Difference in Earthquake Risk among China’s Areas: A Study based on Pricing a Seismic Catastrophe Bond-
Yong Zhang, Wei Liu
School of Information and Engineering Huzhou Teachers College Huzhou, China
Abstract: Firstly, this paper gives a data aggregation algorithm based on learning automata to solve the problem that the existing data aggregation algorithm can’t solve, the uneven energy cost, and the existing algorithm can’t change the gathering path dynamically existing the overhead environment. In the proposed method, nodes can change its gathering path to adjust the overhead environment. All the nodes of WSN equipped with a learning automata. These leaning automata learn all the gathering path of the nodes. In the process of transmit information two kinds of data are transmitted, including data packet, knowledge packet .When the information of the nodes changes, according to the feedback of the nods, the learning automata gives the reward or punish to the current gathering path, which help to find the best gathering path. Secondly, this paper improved the wavelet data compression algorithm, which was brought out as the correlation between different data. The algorithm do not reduce much of the data relate to the original data. After the wavelet data compression, Huffman coding compression algorithm will improve the data compression ratio.
Keywords: Learning Automata, Gathering Path, Data Compression; Wavelet Transform; Hot Node How Much Difference in Earthquake Risk among China’s Areas: A Study based on Pricing a Seismic Catastrophe Bond-
DOI:https://doi.org/10.6025/jdim/2023/21/1/18-23
Full_Text   PDF 1.73 MB   Download:   75  times
References:

[1] Kasirajan, P, Larsen, C. A New Adaptive Compression Scheme for Data Aggregation in Wireless Sensor Networks. Wireless Communications and Networking Conference, 2010. 1-6P
[2] Sun LM, Li JZ, Chen Y, Zhu HS. Wireless Sensor Network. Beijing: Tsinghua University Press, 2005.422-431P
[3] DARPA Sensor Information Technology Program [D/ OL]: http://www.Darpa.mil/ito/ research/sensit/index. Html
[4] Savarese C, Rabaey J. Robust positioning algorithms for distributed ad-hoc wireless sensor networks. In: Park Y, ed. Proceedings of the USENIX Technical Annual Conference. Monterey: USENIX, 2001. 317-328P
[5] Ratnasamy S, Karp B. GHT: A geographic hash table for data-centric storage. In: ReghavendrvCS, ed. Proceedings of the 1st ACM International Workshop on Wireless Sensor Networks and Applications. New York: ACM Press, 2002. 94-103P
[6] University of California at Los Angeles. WINS: Wireless integrated network sensors. http:// www.janet.ucla.edu/WINS/biblio.htm
[7] Ganesan D, Govindan R, Shenker S, Estrin D. Highly- Resilient, energy-efficient multipath routing in wireless sensor networks. Mobile Computing and Communications Review, 2002,1(2): 295-298P
[8] Girod L, Bychkovskiy V, Elson J, Estrin D. Locating tiny sensors in time and space: A case study. In: Manoli Y, Kim KS, eds. Proceedings of the International Conference on Computer Design. Piscataway: IEEE Press, 2002. 195-204P
[9] Cerpa A, Estrin D. ASCENT: Adaptive self-configuring sensor networks topologies. In: Kermani P, ed. Proceedings of the 21st International Annual Joint Conference of the IEEE Computer and Communications Societies Piscataway: IEEE Press, 2002.101-111P
[10] Heidemann J, Silva F, Intanagonwiwat C. Building efficient wireless sensor networks with low level naming. In: Marzullo K, ed. Proceedings of the 18th ACM Symposium on Operating System Principles. New York: ACM Press, 2001. 146-159P
[11] Intanagonwiwat C, Govindan R, Estrin D, Heidemann J, Silva F. Directed diffusion for wireless sensor networking. ACM/IEEE Transactions on Networking, 2002, 11(1) 2-16P
[12] Liu J, Cheung P, Guibas L, Zhao F. A dual-space approach to tracking and sensor management in wireless sensor networks. In: ReghavendrvCS, ed. Proceedings of the ACM International Workshop on Wireless Sensor Networks and Applications. New York: ACM Press, 2002. 162-173P
[13] Guibas LJ. Sensing, tracking, and reasoning with relations. IEEE Signal Processing Magazine, 2002, 19(2):73-85P
[14] Xie M.D, The Survey of Latest Researches on Online Code Dissemination in Wireless Sensor Networks, IEIT Journal of Adaptive & Dynamic Computing, 2011(1), Jan 2011, pp:23-28. DOI=10.5813/www.ieit-web.org/IJADC/ 2011.1.4
[15] Wu C.C, A Study of Synchronous and Bucket Trading Behavior of Institutional Investors, IEIT Journal of Adaptive & Dynamic Computing, 2011(2), Apr 2011, pp:14- 25. DOI=10.5813/www.ieit-web.org/IJADC/2011.2.3