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Analysis of Existing Technologies Used to Process Streams of Spatio-Temporal Data for Modern Information Measurement Systems

  • MEASUREMENTS IN INFORMATION TECHNOLOGIES
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Measurement Techniques Aims and scope

Existing technologies used to process streams of spatio-temporal data from a system of sensors for the purpose of selecting the most appropriate technologies for practical realization of different information measurement systems are investigated. Typical technologies for processing streams of spatio-temporal data from sensors are analyzed. Criteria for selecting a required technology for implementation in a concrete information measurement system are proposed.

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Correspondence to A. A. Maiorov.

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Translated from Izmeritel’naya Tekhnika, No. 4, pp. 31–34, April, 2017.

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Maiorov, A.A., Materukhin, A.V. Analysis of Existing Technologies Used to Process Streams of Spatio-Temporal Data for Modern Information Measurement Systems. Meas Tech 60, 350–354 (2017). https://doi.org/10.1007/s11018-017-1200-9

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  • DOI: https://doi.org/10.1007/s11018-017-1200-9

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