2021 29th Mediterranean Conference on Control and Automation (MED) | 2021

Data-Driven Control and Data-Poisoning attacks in Buildings: the KTH Live-In Lab case study

 
 
 

Abstract


This work investigates the feasibility of using input-output data-driven control techniques for building control and their susceptibility to data-poisoning techniques. The analysis is performed on a digital replica of the KTH Live- in Lab, a non-linear validated model representing one of the KTH Live-in Lab building testbeds. This work is motivated by recent trends showing a surge of interest in using data- based techniques to control cyber-physical systems. We also analyze the susceptibility of these controllers to data poisoning methods, a particular type of machine learning threat geared towards finding imperceptible attacks that can undermine the performance of the system under consideration. We consider the Virtual Reference Feedback Tuning (VRFT), a popular data- driven control technique, and show its performance on the KTH Live-In Lab digital replica. We then demonstrate how poisoning attacks can be crafted and illustrate the impact of such attacks. Numerical experiments reveal the feasibility of using data-driven control methods for finding efficient control laws. However, a subtle change in the datasets can significantly deteriorate the performance of VRFT.

Volume None
Pages 53-58
DOI 10.1109/MED51440.2021.9480238
Language English
Journal 2021 29th Mediterranean Conference on Control and Automation (MED)

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