Poster Abstract: Real-time load prediction with high velocity smart home data stream

This poster addresses the use of smart home data to continuously predict the aggregated energy consumption of individual households. We introduce a device level energy consumption dataset recorded over 3 years wich includes high resolution energy measurements from electrical devices collected within a pilot program. Using data from that pilot, we analyze the performance of various machine learning mechanisms for continuous short-term load prediction.

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