A Modified Sequence-to-point HVAC Load Disaggregation Algorithm
This paper presents a modified sequence-to-point (S2P) algorithm for disaggregating the heat, ventilation, and air conditioning (HVAC) load from the total building electricity consumption. The original S2P model is convolutional neural network (CNN) based, which uses load profiles as inputs. We prop...
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Zusammenfassung: | This paper presents a modified sequence-to-point (S2P) algorithm for
disaggregating the heat, ventilation, and air conditioning (HVAC) load from the
total building electricity consumption. The original S2P model is convolutional
neural network (CNN) based, which uses load profiles as inputs. We propose
three modifications. First, the input convolution layer is changed from 1D to
2D so that normalized temperature profiles are also used as inputs to the S2P
model. Second, a drop-out layer is added to improve adaptability and
generalizability so that the model trained in one area can be transferred to
other geographical areas without labelled HVAC data. Third, a fine-tuning
process is proposed for areas with a small amount of labelled HVAC data so that
the pre-trained S2P model can be fine-tuned to achieve higher disaggregation
accuracy (i.e., better transferability) in other areas. The model is first
trained and tested using smart meter and sub-metered HVAC data collected in
Austin, Texas. Then, the trained model is tested on two other areas: Boulder,
Colorado and San Diego, California. Simulation results show that the proposed
modified S2P algorithm outperforms the original S2P model and the
support-vector machine based approach in accuracy, adaptability, and
transferability. |
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DOI: | 10.48550/arxiv.2212.04886 |