Big Data Computing and Communications

The smart grid is an important emerging area that is rich with big data. There are massive amounts of demand data from consumers and real-time price data. There are also data from potentially thousands of phasor measurement units measuring voltage, current, and frequency variables, several times each second, and generating hundreds of gigabytes of data every day. There is interest in preserving the privacy of data from consumers as novel arrangements are made between them and aggregators or load-serving entities. All these data are dynamic in nature, representing variables that are the outputs of dynamic systems, and hence changing with time. We explore several issues concerning such big dynamic data.

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