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Transformers in Distribution System01:27

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Transformers in distribution systems can be broadly categorized into distribution substation transformers and other distribution transformers. They are crucial for stepping down high transmission voltages to levels suitable for distribution and end-user applications.
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Instrument transformers, comprising voltage transformers (VTs) and current transformers (CTs), play crucial roles in power substations by providing isolated replicas of current or voltage for measurement and protection purposes. Voltage transformers reduce the primary voltage to levels suitable for relay operation and measurement, while current transformers scale down the primary current. The primary winding of a current transformer often consists of a single turn, achieved by threading the...
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In scenarios involving parallel transformers with disparate ratings, developing per-unit models requires accommodating off-nominal turns ratios. This situation arises when the selected base voltages are not proportional to the transformer’s voltage ratings. Consider a transformer where the rated voltages are related by the term a. If the chosen voltage bases satisfy a relationship involving term b, term c is defined as the ratio of these bases. This ratio is then substituted into the...
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TransNet: Transformer-Based Point Cloud Sampling Network.

Hookyung Lee1, Jaeseung Jeon1, Seokjin Hong1

  • 1Graduate School of Automotive Engineering, Kookmin University, Seoul 02707, Republic of Korea.

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Summary

This study introduces TransNet, a novel transformer-based network for efficient point cloud downsampling. TransNet improves deep learning performance by learning task-specific sampling, especially for sparse data at high sampling ratios.

Keywords:
classificationdeep learningdown samplingmulti-head attentionnetworkpoint cloudself-attentiontransformer

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Area of Science:

  • Computer Vision
  • Machine Learning
  • Geometric Deep Learning

Background:

  • Point cloud processing is crucial for deep learning, but computational complexity is a challenge.
  • Conventional downsampling methods are task-agnostic, limiting performance, especially at high sampling ratios.
  • Efficient and precise point cloud sampling is needed for practical applications.

Purpose of the Study:

  • To propose a novel transformer-based point cloud sampling network (TransNet) for efficient downsampling.
  • To develop a task-oriented sampling methodology that improves precision and handles sparse data.
  • To enhance the performance of deep learning networks dealing with point cloud data.

Main Methods:

  • Developed TransNet, a transformer-based network utilizing self-attention and fully connected layers.
  • Implemented attention mechanisms to extract meaningful features and understand point cloud relationships.
  • Designed a task-oriented sampling approach for downsampling point clouds.

Main Results:

  • TransNet demonstrates superior accuracy compared to state-of-the-art models.
  • The proposed network excels in generating points from sparse data, particularly at high sampling ratios.
  • Achieved efficient downsampling with improved precision.

Conclusions:

  • TransNet offers a promising solution for point cloud downsampling tasks.
  • The task-oriented approach significantly enhances sampling performance.
  • Transformer-based methods can effectively address computational complexity in point cloud processing.