Research Paper | Computer Science & Engineering | India | Volume 5 Issue 1, January 2016
A Survey on Knowledge Extraction from WSN
Priyanka Pandit, Swarupa Kamble
Recently, data management and processing for wireless sensor networks are become a topic of active research in several fields of computer science such as distributed system, database systems and data mining. WSN generates large amount of data streams. Extracting information from the data is the most important task in WSN. Many methods are available to extract the information from WSN. These methods generate the association rules using frequency patterns. It creates large number of rules most of which are non informative and fail to reflect true correlation among the sensor data. This paper presents new type of behavioral pattern called as an associated sensor pattern. Associated sensor pattern captures the co-occurrences and temporal correlation of the sensor data. To capture such patterns a compact tree structure., called associated sensor pattern tree (ASP-tree) and mining algorithm are proposed. When data streams flows through the network there is possibility of loss of significance for the current time of the old information. ASP tree is further enhanced to SWASP-tree to capture significance of recent data by adopting sliding observation window and updating tree structure accordingly.
Keywords: Recently, data management and processing for wireless sensor networks are become a topic of active research in several fields of computer science such as distributed system, database systems and data mining WSN generates large amount of data streams Extracting information from the data is the most important task in WSN Many methods are available to extract the information from WSN These methods generate the association rules using frequency patterns It creates large number of rules most of which are non informative and fail to reflect true correlation among the sensor data This paper presents new type of behavioral pattern called as an associated sensor pattern Associated sensor pattern captures the co-occurrences and temporal correlation of the sensor data To capture such patterns a compact tree structure, called associated sensor pattern tree ASP-tree and mining algorithm are proposed When data streams flows through the network there is possibility of loss of significance for the current time of the old information ASP tree is further enhanced to SWASP-tree to capture significance of recent data by adopting sliding observation window and updating tree structure accordingly
Edition: Volume 5 Issue 1, January 2016
Pages: 384 - 387
How to Cite this Article?
Priyanka Pandit, Swarupa Kamble, "A Survey on Knowledge Extraction from WSN", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=NOV152765, Volume 5 Issue 1, January 2016, 384 - 387
115 PDF Views | 96 PDF Downloads
Similar Articles with Keyword 'Recently'
Research Paper, Computer Science & Engineering, India, Volume 6 Issue 8, August 2017
Pages: 868 - 874Study of Power Management in Adhoc Networks
Anandhi Giri, S. K. Srivatsa
Research Paper, Computer Science & Engineering, China, Volume 9 Issue 4, April 2020
Pages: 1544 - 1554Recent Developments on Probabilistic Graphical Model Applied in Data Analysis
Kan'Sam Nadjak, Guisheng Yin
Research Paper, Computer Science & Engineering, India, Volume 4 Issue 3, March 2015
Pages: 1069 - 1073Energy Efficient and Trust Based Node Disjoint Multipath Routing Protocol for WSN
Rucha Agrawal, Simran Khiani
Survey Paper, Computer Science & Engineering, India, Volume 3 Issue 11, November 2014
Pages: 2081 - 2083Survey of Approximate Shortest Distance Computing Using Improved Shortest Path Tree
Sonali Malode, Mansi Bhonsle
Survey Paper, Computer Science & Engineering, India, Volume 3 Issue 9, September 2014
Pages: 1450 - 1456An Aerial View of Hierarchical Energy Efficient Protocols in Wireless Body Sensor Networks
M. Devapriya, R. Sudha