Treffer: Filling time-series gaps using image techniques: Multidimensional context autoencoder approach for building energy data imputation.

Title:
Filling time-series gaps using image techniques: Multidimensional context autoencoder approach for building energy data imputation.
Authors:
Fu, Chun1 (AUTHOR), Quintana, Matias1 (AUTHOR), Nagy, Zoltan2 (AUTHOR), Miller, Clayton1 (AUTHOR) clayton@nus.edu.sg
Source:
Applied Thermal Engineering. Jan2024:Part B, Vol. 236, pN.PAG-N.PAG. 1p.
Database:
Business Source Premier

Weitere Informationen

Building energy prediction and management has become increasingly important in recent decades, driven by the growth of Internet of Things (IoT) devices and the availability of more energy data. However, energy data is often collected from multiple sources and can be incomplete or inconsistent, which can hinder accurate predictions and management of energy systems and limit the usefulness of the data for decision-making and research. To address this issue, past studies have focused on imputing missing gaps in energy data, including random and continuous gaps. One of the main challenges in this area is the lack of validation on a benchmark dataset with various building and meter types, making it difficult to accurately evaluate the performance of different imputation methods. Another challenge is the lack of application of state-of-the-art imputation methods for missing gaps in energy data. Contemporary image-inpainting methods, such as Partial Convolution (PConv), have been widely used in the computer vision domain and have demonstrated their effectiveness in dealing with complex missing patterns. Given that energy data often exhibits regular daily or weekly patterns, such methods could be leveraged to exploit the regularity of the data to learn underlying patterns and generate more accurate predictions for missing values. To study whether energy data imputation can benefit from the image-based deep learning method, this study compared PConv, Convolutional neural networks (CNNs), and weekly persistence method using one of the biggest publicly available whole building energy datasets, consisting of 1479 power meters worldwide, as the benchmark. The results show that, compared to the CNN with the raw time series (1D-CNN) and the weekly persistence method, neural network models with reshaped energy data with two dimensions reduced the Mean Squared Error (MSE) by 10% to 30%. The advanced deep learning method, Partial convolution (PConv), has further reduced the MSE by 20%–30% than 2D-CNN and stands out among all models. Based on these results, this study demonstrates the potential applicability of time-series imaging in imputing energy data. The proposed imputation model has also been tested on a benchmark dataset with a range of meter types and sources, demonstrating its generalizability to include additional accessible energy datasets. This offers a scalable and effective solution for filling in missing energy data in both academic and industrial contexts. • Apply image-based deep learning to fill energy data gaps. • Assess reshaped data's impact on missing gap reconstruction. • Identify 10% as a critical missing rate affecting imputation model performance. • Test model on 1479 global energy meters to validate its broad applicability. • PConv, a deep learning method, outperformed other models by 20%–30% in MSE. [ABSTRACT FROM AUTHOR]

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