Verification of Electrical Energy Meterings Using the State Estimation Theory

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Abstract:

Energy metering complexes are included in the measuring part of the automatic meter reading (AMR) systems. Data distortion may occur at information level of AMR system as well as at measuring level. Errors that occur at the information level can be monitored programmatically. Measurement distortion occurred at the level of measurements is difficult to discover using technical methods. The trend in AMR systems is toward at improving their technical component, as well as increasing the amount of energy metering complexes which form AMR system. Still the mathematical modeling of the processes associated with energy measurements remains significantly low.

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Advanced Materials Research (Volumes 1092-1093)

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455-458

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March 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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