Non-restricted Winter 2026 convocation theses and dissertations will be discoverable in ERA on March 16. Congratulations to all our graduates!

Processing Spatiotemporal Data Map Queries with Redundancy Removal in Sensor Networks

Loading...
Thumbnail Image

Date

Citation for Previous Publication

Link to Related Item

Abstract

Description

Technical report TR05-23. Wireless sensor networks are made of autonomous devices that are able to collect information, store it, process it and share it with other devices. Such framework can be used to efficiently query spatiotemporal data, e.g., for monitoring humidity and temperature levels across a wide geographical region. Typical spatiotemporal region queries require the answers of only the subset of the network nodes that fall into the spatial area of the query. If the network is redundant in the sense that nodes' measurements can be substituted by those of other nodes with a certain degree of confidence, then only a much smaller subset of nodes may be sufficient to answer the query at a much lower energy cost. In this paper we investigate how to take advantage of such data redundancy, and we propose three techniques to process spatiotemporal region queries under these conditions. We show, through extensive experimentation, that taking advantage of the data redundancy reduces up to twenty times the energy-cost of query processing, thus prolonging the sensor networks lifetime. | TRID-ID TR05-23

Item Type

http://purl.org/coar/resource_type/c_93fc

Alternative

Other License Text / Link

Language

en

Location

Time Period

Source