CORE
CO
nnecting
RE
positories
Services
Services overview
Explore all CORE services
Access to raw data
API
Dataset
FastSync
Content discovery
Recommender
Discovery
OAI identifiers
OAI Resolver
Managing content
Dashboard
Bespoke contracts
Consultancy services
Support us
Support us
Membership
Sponsorship
Research partnership
About
About
About us
Our mission
Team
Blog
FAQs
Contact us
Community governance
Governance
Advisory Board
Board of supporters
Research network
Innovations
Our research
Labs
Machine Learning Enabled Cluster Grouping of Varistors in Parallel-Structured DC Circuit Breakers
Authors
Reza Kheirollahi
Fei Lu
+4 more
Yao Wang
Hua Zhang
Shuyan Zhao
Zilon Zheng
Publication date
1 January 2023
Publisher
Rowan Digital Works
Doi
Abstract
This letter presents the first ever trial of machine learning enabled cluster grouping of varistors for DC circuit breakers (DCCBs). It reveals that the manufacturing discrepancy of varistors is a main challenge in their parallel connection. The proposed cluster grouping concept is introduced to classify varistors according to the interruption characteristic, in which the K-means algorithm is adopted to learn the clamping voltage curves. 70 420 V/50 A V420LA20 varistors are measured in a 120 A transient current interruption platform individually to acquire 70 sets of testing data to train the machine learning engine. Then, 28 new varistors are further tested to verify the trained algorithm, which are classified into 7 clusters using the proposed machine learning method. A 500 V/520 A solid-state circuit breaker (SSCB) is implemented with four parallel varistors in the same cluster. Experiments validate that the current is evenly distributed in varistors, and the difference is limited to 3.1%, which improves parallel varistors lifetime significantly. © 2020 IEEE
Similar works
Full text
Open in the Core reader
Download PDF
Available Versions
Rowan University
See this paper in CORE
Go to the repository landing page
Download from data provider
oai:rdw.rowan.edu:engineering_...
Last time updated on 09/09/2024
Directory of Open Access Journals
See this paper in CORE
Go to the repository landing page
Download from data provider
oai:doaj.org/article:cb0d8f59f...
Last time updated on 08/01/2024