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Related Concept Videos

Energy Losses in Transformers01:21

Energy Losses in Transformers

1.3K
In an ideal transformer, it is assumed that there are no energy losses, and, hence, all the power at the primary winding is transferred to the secondary winding. However, in reality,  the transformers always have some energy losses, and, hence, the output power obtained at the secondary winding is less than the input power at the primary winding due to energy losses.
There are four main reasons for energy losses in transformers.
The first cause can be  the high resistance of the...
1.3K
Reducing Line Loss01:18

Reducing Line Loss

349
In a three-phase circuit, line loss is an indicator of energy dissipated as heat due to the resistance of transmission lines. To address this, incorporating transformers into the system—a step-up transformer at the source and a step-down transformer at the load—is a strategic solution. Two three-phase transformers are introduced to improve this.
With a step-up transformer at the source, the voltage is increased, thereby reducing the current in the transmission lines since power loss in...
349
Transformers with Off-Nominal Turns Ratios01:25

Transformers with Off-Nominal Turns Ratios

493
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...
493
Equivalent Circuits for Practical Transformers01:28

Equivalent Circuits for Practical Transformers

1.3K
The practical equivalent circuits of single-phase two-winding transformers exhibit significant deviations from their idealized versions due to the inherent properties of winding resistance and finite core permeability. These properties result in real and reactive power losses, affecting the transformer's performance. Understanding these deviations is crucial for designing more efficient transformers.
In a practical transformer, each winding exhibits resistance and leakage reactance. The...
1.3K
Linear Approximation in Time Domain01:21

Linear Approximation in Time Domain

323
Nonlinear systems often require sophisticated approaches for accurate modeling and analysis, with state-space representation being particularly effective. This method is especially useful for systems where variables and parameters vary with time or operating conditions, such as in a simple pendulum or a translational mechanical system with nonlinear springs.
For a simple pendulum with a mass evenly distributed along its length and the center of mass located at half the pendulum's length,...
323
Per-Unit Sequence Models01:26

Per-Unit Sequence Models

407
An ideal Y-Y transformer, grounded through neutral impedances, displays per-unit sequence networks akin to those of a single-phase ideal transformer when subjected to balanced positive- or negative-sequence currents. These currents do not produce neutral currents, and their associated voltage drops.
Zero-sequence currents, which are identical in magnitude and phase, generate a neutral current, resulting in voltage drops across the neutral impedance and the low-voltage winding. If the...
407

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Related Experiment Videos

Longitudinal Targeted Minimum Loss-based Estimation with Temporal-Difference Heterogeneous Transformer.

Toru Shirakawa1,2, Yi Li2, Yulun Wu2

  • 1Osaka University Graduate School of Medicine, Suita, Japan.

Proceedings of Machine Learning Research
|December 8, 2025
PubMed
Summary
This summary is machine-generated.

Deep Longitudinal Targeted Minimum Loss-based Estimation (Deep LTMLE) offers a novel way to estimate outcomes under dynamic treatment policies. This machine learning approach provides accurate results and confidence intervals, outperforming existing methods in complex scenarios.

Related Experiment Videos

Area of Science:

  • Causal inference
  • Machine learning
  • Longitudinal data analysis

Background:

  • Estimating counterfactual outcomes under dynamic treatment policies is crucial in longitudinal studies.
  • Existing methods often struggle with complex, long-term treatment strategies and potential biases from machine learning algorithms.

Purpose of the Study:

  • To introduce Deep Longitudinal Targeted Minimum Loss-based Estimation (Deep LTMLE), a novel approach for estimating counterfactual means in longitudinal settings.
  • To address biases in machine learning estimates and enable statistical inference with confidence intervals.

Main Methods:

  • Utilized a transformer architecture with heterogeneous type embedding trained via temporal-difference learning.
  • Applied the Targeted Minimum Loss-based Likelihood Estimation (TMLE) framework for statistical bias correction.
  • Incorporated asymptotic statistical theory for generating 95% confidence intervals.

Main Results:

  • Deep LTMLE demonstrated superior performance compared to existing methods in complex, long time-horizon scenarios.
  • The method maintained effectiveness in small-sample, short-duration contexts, matching asymptotically efficient estimators.
  • Successfully applied to estimate counterfactual mean outcomes for blood pressure management strategies in a cardiovascular epidemiology study.

Conclusions:

  • Deep LTMLE provides a robust and statistically sound method for causal inference in longitudinal studies with dynamic treatments.
  • The approach effectively handles complex scenarios and offers reliable statistical inference.
  • Demonstrated practical utility in a real-world cardiovascular epidemiology application.