Visible to the public Online Testbed for Evaluating Vulnerability of Deep Learning Based Power Grid Load ForecastersConflict Detection Enabled

TitleOnline Testbed for Evaluating Vulnerability of Deep Learning Based Power Grid Load Forecasters
Publication TypeConference Paper
Year of Publication2020
AuthorsHimanshu Neema, Peter Volgyesi, Xenofon Koutsoukos, Thomas Roth, Cuong Nguyen
Conference NameModeling and Simulation of Cyber-Physical Energy Systems
Date Published07/07/2020
PublisherNIST
Conference LocationSydney, Australia
Abstract

Modern electric grids that integrate smart grid technologies require different approaches to grid operations. There has been a shift towards increased reliance on distributed sensors to monitor bidirectional power flows and machine learning based load forecasting methods (e.g., using deep learning). These methods are fairly accurate under normal circumstances, but become highly vulnerable to stealthy adversarial attacks that could be deployed on the load forecasters. This paper provides a novel model-based Testbed for Simulation-based Evaluation of Resilience (TeSER) that enables evaluating deep learning based load forecasters against stealthy adversarial attacks. The testbed leverages three existing technologies, viz. DeepForge: for designing neural networks and machine learning pipelines, GridLAB-D: for electric grid distribution system simulation, and WebGME: for creating web-based collaborative metamodeling environments. The testbed architecture is described, and a case study to demonstrate its capabilities for evaluating load forecasters is provided.

URLhttps://doi.org/10.1109/MSCPES49613.2020.9133701
DOI10.1109/MSCPES49613.2020.9133701
Citation Keynode-71039