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Efficient Implementation of Rotation Operations for High Performance QRD-RLS Filtering
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ICAI'08 Proceedings of the 9th WSEAS International Conference on International Conference on Automation and Information
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WSEAS TRANSACTIONS on SYSTEMS
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Interpolation Processes: Basic Theory and Applications
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ICS'08 Proceedings of the 12th WSEAS international conference on Systems
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WSEAS Transactions on Computers
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Wireless sensor networks being a collection of numerous sensor nodes, each with sensing (temperature, humidity, sound level, light intensity, magnetism, etc.) and wireless communication capabilities, provide huge opportunities for monitoring and mathematical modeling of the time-evolution of the physical quantities under investigation. Starting from the measurements collected by the sensor nodes inside an investigated spatial distributed system, this paper offers an efficient methodology to identify time series.