Visible to the public Dynamic data compression algorithm for wireless sensor networks based on grid deduplication

TitleDynamic data compression algorithm for wireless sensor networks based on grid deduplication
Publication TypeConference Paper
Year of Publication2021
AuthorsZheng, Donghua
Conference Name2021 International Conference on Communications, Information System and Computer Engineering (CISCE)
Keywordscomponent, Data, data compression, data mining, Data models, Distributed databases, dynamic compression, feature extraction, grid de-duplication, Heuristic algorithms, Human Behavior, named data networking, pubcrawl, Resiliency, Scalability, Wireless Sensor Network, Wireless sensor networks
AbstractIn order to improve the status monitoring and management ability of wireless sensor networks, a dynamic data compression method based on grid deduplication is proposed. Grid-based sensor node spatial positioning and big data fusion method are adopted to realize dynamic feature mining of wireless sensor network data, extract feature sequence points of wireless sensor network data, reconstruct wireless sensor network data feature space by adopting spatial grid node recombination, build a statistical detection model of dynamic feature mining of wireless sensor network data by combining grid area grouping compression method, and realize embedded fuzzy control and joint feature distributed adaptive learning. The association matching degree of wireless sensor network data is analyzed. Combining fuzzy subspace compression and big data fusion clustering, the quantitative regression analysis model of wireless sensor network data is established. The time series reorganization of wireless sensor network database is realized by index table name, index column and other information. Compressed sensing method is used in linear fusion subspace to realize data compression and adaptive detection of wireless sensor network. Constraint feature points of wireless sensor network data compression are constructed, and dynamic compression and clustering processing of wireless sensor network data are realized at constraint points. Simulation results show that the feature clustering of data compression in wireless sensor networks is better and the storage space of data is reduced.
DOI10.1109/CISCE52179.2021.9445966
Citation Keyzheng_dynamic_2021