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X-WR-CALNAME;VALUE=TEXT:Risk-Aware Multi-Agent Reinforcement Learning for Modern Energy Networks
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SUMMARY:Risk-Aware Multi-Agent Reinforcement Learning for Modern Energy Networks
DESCRIPTION:<p><span><strong>Speaker:&nbsp;</strong>Sarah Keren&nbsp;(Assistant Professor) at The Taub Faculty of Computer Science at Technion)</span></p><p><br><span><strong>Title:&nbsp;</strong>Risk-Aware Multi-Agent Reinforcement Learning for Modern Energy Networks&nbsp;</span></p><p><span>The rapidly changing architecture of electrical networks, coupled with the rising integration of renewable and distributed energy resources, introduces various operational challenges and new&nbsp;sources of uncertainty. These have&nbsp;rendered&nbsp;traditional centralized energy-market paradigms insufficient due to their inability to support the constantly evolving nature of the network and the presence of&nbsp;non-regulated agents that dynamically respond to market signals.&nbsp;In this talk, I will first specify&nbsp;key computational challenges in managing energy networks and markets and then present how multi-agent reinforcement learning can mitigate the associated challenges.&nbsp;Specifically, I will explore our development of risk-aware reinforcement learning&nbsp;strategies that account for the&nbsp;objectives&nbsp;and constraints of both the grid-edge agents and the system operator and our&nbsp;integration of robust optimization techniques to enhance stability and efficiency.</span></p>
LOCATION:SEC LL 2.221
STATUS:CONFIRMED
DTSTART:20250221T183000Z
DTEND:20250221T193000Z
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