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Types Of Transformers01:16

Types Of Transformers

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Transformers can provide desired voltages to a circuit by modifying the number of turns in the secondary windings.
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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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A Y-connected synchronous generator, grounded through a neutral impedance, is designed to produce balanced internal phase voltages with only positive-sequence components. The generator's sequence networks include a source voltage that is exclusively in the positive-sequence network. The sequence components of line-to-ground voltages at the generator terminals illustrate this configuration.
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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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Albert Bandura's observational learning, also known as imitation or modeling, occurs when a person observes and imitates another's behavior. It is a quicker process than operant conditioning. A well-known example is the Bobo doll study, where children who saw an adult acting aggressively towards the doll were more likely to act aggressively when left alone, compared to those who observed a nonaggressive adult. Many psychologists view observational learning as a form of latent learning...
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Unsupervised Learning of Temporal Abstractions With Slot-Based Transformers.

Anand Gopalakrishnan1,2,3, Kazuki Irie1,2,4, Jürgen Schmidhuber1,2,5,6

  • 1The Swiss AI Lab, Lugano 6962, Switzerland.

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|February 6, 2023
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Summary
This summary is machine-generated.

This study introduces a new method for reinforcement learning that discovers reusable subroutines faster and more accurately. The slot-based transformer for temporal abstraction (SloTTAr) improves decision-making in complex tasks.

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Area of Science:

  • Artificial Intelligence
  • Machine Learning
  • Reinforcement Learning

Background:

  • Reusable subroutines simplify complex decision-making and planning in reinforcement learning.
  • Existing unsupervised methods for learning temporal abstractions process trajectories sequentially, limiting revision of subroutine boundaries with new information.

Purpose of the Study:

  • To develop a novel, parallel approach for unsupervised discovery of temporal abstractions (subroutines) in reinforcement learning.
  • To overcome the limitations of sequential processing in prior methods for subroutine discovery.

Main Methods:

  • Proposed the slot-based transformer for temporal abstraction (SloTTAr), integrating sequence processing transformers with a slot attention module.
  • Employed adaptive computation for learning the number of subroutines based on their empirical distribution.
  • Developed a fully parallel approach for processing trajectories.

Main Results:

  • SloTTAr outperforms strong baselines in discovering subroutine boundary points.
  • The method effectively handles sequences with variable numbers of subroutines.
  • Achieved up to a seven-fold increase in training speed compared to existing benchmarks.

Conclusions:

  • SloTTAr offers a more efficient and effective solution for unsupervised subroutine discovery in reinforcement learning.
  • The parallel and adaptive nature of SloTTAr enables faster learning and improved performance in complex planning tasks.