IEEE Webinar: Trustworthy Machine Learning for Power System Situational Awareness

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The IEEE PES Women in Power UK&I Chapter invites Dr Tabia Ahmad, Research Associate in Electrical &Electronic Engineering, The University of Manchester, to give a presentation about "Trustworthy Machine Learning for Power System Situational Awareness" from 3-4 pm (BST), 21st June 2024, online via Zoom.

 

 



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  • Date: 21 Jun 2024
  • Time: 03:00 PM to 04:00 PM
  • All times are (UTC+01:00) Edinburgh
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  • Contact Event Host
  • rosa.serrano@postgrad.manchester.ac.uk

  • Co-sponsored by IEEE PES Women in Power UK&I Chapter
  • Starts 22 May 2024 12:00 AM
  • Ends 21 June 2024 12:00 PM
  • All times are (UTC+01:00) Edinburgh
  • No Admission Charge


  Speakers

Tabia Ahmad

Topic:

Trustworthy ML for Power System Situational Awareness

The electric power system is witnessing significant transformations towards an integrated, active, and ubiquitously sensed cyber-physical system. An abundance of data from phasor measurement units (PMU), point on wave (POW) devices and digital disturbance recorders offers tremendous opportunities as well as scientific challenges for situational awareness of power systems. Also, to mitigate climate change, power systems worldwide are increasingly moving towards more and more renewable energy (RE) generation which might lead to complex and uncertain operations. Building on theoretical foundations, this talk aims to provide an overview of machine learning (ML) and data analytic tools for better monitoring of converter interfaced RE integrated power systems, especially in the event of catastrophic failures. The key highlights of this talk include revisiting the nature of field power system measurement data and discussing how this may affect the accuracy of downstream analytics such as power system dynamic stability. The potential of ML leveraging spatio-temporal data for specific problem of detecting cascading failures due to transient response of power systems in RE integrated power systems will also be discussed. The talk concludes on how trust can be built in ML based techniques to support operation of future power systems.

Biography:

Tabia Ahmad is working as a post-doctoral researcher with the Power and Energy division, EEE department of University of Manchester and has previous postdoctoral experience at the Institute of Energy and Environment, EEE, University of Strathclyde, Glasgow (2021-2023) working on, addressing the complexity of future power systems’ dynamic behavior. She earned her Ph.D. in electric power systems (2021) from the Indian Institute of Technology Delhi, India with a Distinction in Doctoral Thesis Award and POSOCO Award for best Doctoral Thesis relevant to power transmission utility. Prior to that, she received the B.Eng degree in Electrical Engineering and the M.Eng degree in Instrumentation and Control Engineering (with University Gold Medal) from AMU, India, in 2014 and 2016, respectively. Her research interests include power system dynamics, trustworthy ML for power systems, WAMS based analytics and signal processing techniques in power systems. She is also passionate about addressing climate change through her research on decarbonised power systems and engagement with the Climate Change AI Initiative.