Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

PowerPM: Foundation Model for Power Systems

About

The emergence of abundant electricity time series (ETS) data provides ample opportunities for various applications in the power systems, including demand-side management, grid stability, and consumer behavior analysis. Deep learning models have advanced ETS modeling by effectively capturing sequence dependence. Nevertheless, learning a generic representation of ETS data for various applications remains challenging due to the inherently complex hierarchical structure of ETS data. Moreover, ETS data exhibits intricate temporal dependencies and is suscepti ble to the influence of exogenous variables. Furthermore, different instances exhibit diverse electricity consumption behavior. In this paper, we propose a foundation model PowerPM to model ETS data, providing a large-scale, off-the-shelf model for power systems. PowerPM consists of a temporal encoder and a hierarchical encoder. The temporal encoder captures both temporal dependencies in ETS data, considering exogenous variables. The hierarchical encoder models the correlation between hierarchy. Furthermore, PowerPM leverages a novel self-supervised pretraining framework consisting of masked ETS modeling and dual-view contrastive learning, which enable PowerPM to capture temporal dependency within ETS windows and aware the discrepancy across ETS windows, providing two different perspectives to learn generic representation. Our experiments involve five real world scenario datasets, comprising private and public data. Through pre-training on massive ETS data, PowerPM achieves SOTA performance on diverse downstream tasks within the private dataset. Impressively, when transferred to the public datasets, PowerPM maintains its superiority, showcasing its remarkable generalization ability across various tasks and domains. Moreover, ablation studies, few-shot experiments provide additional evidence of the effectiveness of our model.

Shihao Tu, Yupeng Zhang, Jing Zhang, Zhendong Fu, Yin Zhang, Yang Yang• 2024

Related benchmarks

TaskDatasetResultRank
State ForecastingCAISO
MSE0.2968
40
Energy usage predictionCA California
MAE0.337
14
Electricity consumption predictionFlorida (FL) electricity consumption data 2018 (test)
MAE50.25
14
Energy usage predictionNY New York
MAE0.298
14
Area ForecastingCAISO
MSE0.1877
12
ForecastingPrivate Dataset Exclusive User (test)
MAE0.3638
12
ImputationPrivate Dataset City (test)
MAE0.0876
5
State ForecastingNYISO
MSE0.0975
5
ClassificationPrivate Dataset Gender (test)
Accuracy75.71
4
DetectionPrivate Dataset (Electricity Theft) (test)
Precision37.93
4
Showing 10 of 18 rows

Other info

Follow for update