Approaching Proactive Self-Adaptation in Nonlinear Cyber-Physical Systems
SHORT
Cyber-physical systems (CPS) are challenging to control due to the complex uncertainties arising from physical and virtual sources. Enhancing CPS with self-adaptation is beneficial in addressing these uncertainties. While reactive adaptation often struggles with reliability, proactive adaptation could be more advantageous by preparing systems to make informed decisions considering the consequences of changes before they occur. CPS and their execution environment usually exhibit time-varying or nonlinear dynamics, which are more complex to predict than linear systems, while recent proposals of proactive self-adaptation methods have focused on linear systems. This work bridges this gap by proposing a method for Proactive self-adaptation for Nonlinear Cyber-physical Systems (PANCS). PANCS is developed and evaluated through a robotic running example. The results demonstrate its applicability and effectiveness in mitigating uncertainties and maintaining safety, performance, and accuracy during robot operation, compared to a baseline method.
Tue 29 AprDisplayed time zone: Eastern Time (US & Canada) change
11:00 - 12:30 | |||
11:00 25mTalk | Self-Adaptive Dual-Layer DDoS Mitigation using Autoencoder and Reinforcement LearningFULL Research Track Qi Duan Carnegie Mellon University, Ehab Al-Shaer Carnegie Mellon University, USA, David Garlan Carnegie Mellon University | ||
11:25 25mTalk | Analysis of Autonomous Driving Software to Low-Level Sensor Cyber AttacksFULL Research Track Andrew Roberts Tallinn University of Technology, Mohsen Malayjerdi Tallinn University of Technology, Mauro Bellone FinEst Smart City Centre, Raivo Sell Tallinn University of Technology, Olaf Maennel University of Adelaide, Mohammad Hamad Technical University of Munich, Sebastian Steinhorst Technical University of Munich | ||
11:50 15mTalk | Approaching Proactive Self-Adaptation in Nonlinear Cyber-Physical SystemsSHORT Research Track Farid Edrisi Linnaeus University, Diego Perez-Palacin Linnaeus University, Mauro Caporuscio Linnaeus University, Raffaela Mirandola Karlsruhe Institute of Technology (KIT) | ||
12:05 15mTalk | Towards Using Inductive Learning to Adapt Security Controls in Smart HomesSHORT Research Track Kushal Ramkumar Lero@University College Dublin, Wanling Cai Lero@Trinity College Dublin, John McCarthy Lero@University College Cork, Gavin Doherty Lero@Trinity College Dublin, Bashar Nuseibeh The Open University, UK; Lero, University of Limerick, Ireland, Liliana Pasquale University College Dublin & Lero File Attached | ||
12:20 10mOther | Discussion Session 6 Research Track |