Multistep Multiappliance Load Prediction
- URL: http://arxiv.org/abs/2212.09426v1
- Date: Mon, 19 Dec 2022 13:01:51 GMT
- Title: Multistep Multiappliance Load Prediction
- Authors: Alona Zharova and Antonia Scherz
- Abstract summary: We develop a robust and accurate model for the appliance-level load prediction based on four datasets from four different regions.
The empirical results show that cyclical encoding of time features and weather indicators alongside a long-short term memory (LSTM) model offer the optimal performance.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: A well-performing prediction model is vital for a recommendation system
suggesting actions for energy-efficient consumer behavior. However, reliable
and accurate predictions depend on informative features and a suitable model
design to perform well and robustly across different households and appliances.
Moreover, customers' unjustifiably high expectations of accurate predictions
may discourage them from using the system in the long term. In this paper, we
design a three-step forecasting framework to assess predictability, engineering
features, and deep learning architectures to forecast 24 hourly load values.
First, our predictability analysis provides a tool for expectation management
to cushion customers' anticipations. Second, we design several new weather-,
time- and appliance-related parameters for the modeling procedure and test
their contribution to the model's prediction performance. Third, we examine six
deep learning techniques and compare them to tree- and support vector
regression benchmarks. We develop a robust and accurate model for the
appliance-level load prediction based on four datasets from four different
regions (US, UK, Austria, and Canada) with an equal set of appliances. The
empirical results show that cyclical encoding of time features and weather
indicators alongside a long-short term memory (LSTM) model offer the optimal
performance.
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