Ph.D. Dissertation Defense - Kavya Ashok

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Event Details
  • Date/Time:
    • Friday December 11, 2020 - Saturday December 12, 2020
      10:00 am - 11:59 am
  • Location: https://bluejeans.com/476114190
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  • Fee(s):
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Contact
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Summaries

Summary Sentence: Distribution Transformer Monitoring on the Grid Edge using Smart Sensor Data

Full Summary: No summary paragraph submitted.

TitleDistribution Transformer Monitoring on the Grid Edge using Smart Sensor Data

Committee:

Dr. Deepak Divan, ECE, Chair , Advisor

Dr. Nagi Gebraeel, ISyE

Dr. Santiago Grijalva, ECE

Dr. Lukas Graber, ECE

Dr. Matthew Reno, Sandia Energy

Abstract: As new loads such as rooftop photovoltaics, electric vehicles and other distributed energy resources become commonplace on the distribution grid, the stress on already aging assets begins to escalate. This increased loading and changing dynamics can exacerbate failure rates.  While traditional monitoring efforts focus on transmission and generation assets, utilities are now beginning to pay close attention to distribution assets in order to increase reliability indices and reduce cost from unexpected outages.  This research develops low-cost and scalable methods to monitoring the health of a critical distribution grid asset: the service transformer.  Existing methods in literature are either invasive and thus difficult to implement or require the device to be tested offline in an expensive lab setting. Data from the ubiquitous smart meter as well as a novel Bluetooth based transformer monitor are leveraged to automatically notify the utility of deteriorating or damaged transformers.  Voltage, temperature, and vibration are some of the signals measured and analyzed by the proposed algorithms to predict transformer failures. Furthermore, these algorithms are designed to keep the implementation and processing costs low by taking advantage of edge computing where possible. 

Additional Information

In Campus Calendar
No
Groups

ECE Ph.D. Dissertation Defenses

Invited Audience
Public
Categories
Other/Miscellaneous
Keywords
Phd Defense, graduate students
Status
  • Created By: Daniela Staiculescu
  • Workflow Status: Published
  • Created On: Nov 30, 2020 - 10:47am
  • Last Updated: Nov 30, 2020 - 10:47am