• Corpus ID: 44221241

Single Home Electricity Power Consumption Forecast Using Neural Networks Model

@inproceedings{Abed2016SingleHE,
  title={Single Home Electricity Power Consumption Forecast Using Neural Networks Model},
  author={Naser Farag Abed and Milan Milosavljevi{\'c}},
  year={2016}
}
This work analyzes an electricity power consumption forecast for a single home using a multi-layer perceptron (MLP) artificial neural network (ANN). The predictor composes of parallel banks of MLP (PBMLP) for each hour within a day. Training PBMLP is performed separately for each day of the week using appropriate training sets of past electricity power consumption. The performance of the predictor was evaluated using real data which represents power consumption per minute measured over almost 4… 

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