Wireless Body Area Network Data Storage Method Based on HBase

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With the further development of cloud computing and wireless body area network (WBAN), uploading the massive body signs parameters to the Internet for storage in real time has become possible. For the requirement of how to store the massive WBAN data, this thesis proposes the WBAN data storage method based on HBase, and elaborates how to design the storage architecture, the storage system and data query client by using HBase, a kind of tool in Hadoop platform. The WBAN data storage method based on HBase is important to efficiently manage the massive WBAN data.

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2273-2277

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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