Robust, Deep, and Reinforcement Learning for Management of Communication
and Power Networks
- URL: http://arxiv.org/abs/2202.05395v1
- Date: Tue, 8 Feb 2022 05:49:06 GMT
- Title: Robust, Deep, and Reinforcement Learning for Management of Communication
and Power Networks
- Authors: Alireza Sadeghi
- Abstract summary: The present thesis first develops principled methods to make generic machine learning models robust against distributional uncertainties and adversarial data.
We then build on this robust framework to design robust semi-supervised learning over graph methods.
The second part of this thesis aspires to fully unleash the potential of next-generation wired and wireless networks.
- Score: 6.09170287691728
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This thesis develops data-driven machine learning algorithms to managing and
optimizing the next-generation highly complex cyberphysical systems, which
desperately need ground-breaking control, monitoring, and decision making
schemes that can guarantee robustness, scalability, and situational awareness.
The present thesis first develops principled methods to make generic machine
learning models robust against distributional uncertainties and adversarial
data. Particular focus will be on parametric models where some training data
are being used to learn a parametric model. The developed framework is of high
interest especially when training and testing data are drawn from "slightly"
different distribution. We then introduce distributionally robust learning
frameworks to minimize the worst-case expected loss over a prescribed ambiguity
set of training distributions quantified via Wasserstein distance. Later, we
build on this robust framework to design robust semi-supervised learning over
graph methods. The second part of this thesis aspires to fully unleash the
potential of next-generation wired and wireless networks, where we design
"smart" network entities using (deep) reinforcement learning approaches.
Finally, this thesis enhances the power system operation and control. Our
contribution is on sustainable distribution grids with high penetration of
renewable sources and demand response programs. To account for unanticipated
and rapidly changing renewable generation and load consumption scenarios, we
specifically delegate reactive power compensation to both utility-owned control
devices (e.g., capacitor banks), as well as smart inverters of distributed
generation units with cyber-capabilities.
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