4.7 Article

Cyber-Resilient Smart Cities: Detection of Malicious Attacks in Smart Grids

Journal

SUSTAINABLE CITIES AND SOCIETY
Volume 75, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.scs.2021.103116

Keywords

Cyber-attacks; Deep learning; Dynamic behaviors; Contingency; Renewable energy resources; Smart grid; Smart cities; Uncertainties

Funding

  1. European Commission Horizon 2020 Marie Sklodowska-Curie Actions Cofund program
  2. TUBiTAK [120C080]

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Future cities face a challenge in achieving environmental sustainability while also defending against cyber threats. Ensuring the cybersecurity of smart grids is crucial, especially with growing uncertainties and the impact of renewable energy resources. The development of LSTM-based attack detection models shows promise in accurately capturing the dynamic behaviors of modern power grids and outperforming traditional methods in detecting real-time attacks.
A massive challenge for future cities is being environmentally sustainable by incorporating renewable energy resources (RES). At the same time, future smart cities need to support resilient environments against cyberthreats on their supported information and communication technologies (ICT). Therefore, the cybersecurity of future smart cities and their smart grids is of paramount importance, especially on how to detect cyber-attacks with growing uncertainties, such as frequent topological changes and RES of intermittent nature. Such raised uncertainties can cause a significant change in the underlying distribution of measurements and system states. In such an environment, historical measured data will not accurately exhibit the current network's operating point. Hence, future power grids' dynamic behaviors within smart cities are much more complicated than the conventional ones, leading to incorrect classification of the new instances by the current attack detectors. In this paper, to address this problem, a long short-term memory (LSTM) recurrent neural network (RNN) is carefully designed by embedding the dynamically time-evolving power system's characteristics to accurately model the dynamic behaviors of modern power grids that are influenced by RES or system reconfiguration to distinguish natural smart grid changes and real-time attacks. The proposed framework's performance is evaluated using the IEEE 14-bus system using real-world load data with multiple attack cases such as attacks to the network after a line outage and combination of RES. Results confirm that the developed LSTM-based attack detection model has a generalization ability to catch modern power grids' dynamic behaviors, excelling current traditional approaches in the designed case studies and achieves accuracy higher than 90% in all experiments.

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