Data acquisition solutions for electricity consumers connected to smart grids

More and more devices are nowadays connected all over the world creating a complex grid that generates large volume of data. This is enhanced by various smart metering applications that collect, process, analyze heterogeneous data sets and extract valuable information to their owners. Apart from conventional energy meters that provides only monthly feedback regarding the total consumption, smart meters allow shorter time intervals readings, implementation of advanced tariff scheme, less effort regarding physical reading and other benefits for grid operators and electricity consumers.

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