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Related Concept Videos

Multimachine Stability01:25

Multimachine Stability

153
Multimachine stability analysis is crucial for understanding the dynamics and stability of power systems with multiple synchronous machines. The objective is to solve the swing equations for a network of M machines connected to an N-bus power system.
In analyzing the system, the nodal equations represent the relationship between bus voltages, machine voltages, and machine currents. The nodal equation is given by:
153
Simplified Synchronous Machine Model01:30

Simplified Synchronous Machine Model

224
The Synchronous Machine Model is a fundamental tool in analyzing and ensuring the transient stability of power systems. This model simplifies the representation of a synchronous machine under balanced three-phase positive-sequence conditions, assuming constant excitation and ignoring losses and saturation. The model is pivotal for understanding the behavior of synchronous generators connected to a power grid, particularly during transient events.
In this model, each generator is connected to a...
224
Load-frequency control01:28

Load-frequency control

162
Load-frequency control (LFC) is vital for maintaining power system stability, ensuring that frequency and power flows remain within acceptable limits during load changes. Turbine-governor control eliminates rotor accelerations and decelerations following load changes. However, a steady-state frequency error persists when the change in the turbine-governor reference setting is zero. In an interconnected power system, each area agrees to export or import a scheduled amount of power through...
162
Three-Phase Short Circuit—Unloaded Synchronous Machine01:21

Three-Phase Short Circuit—Unloaded Synchronous Machine

143
Conducting a three-phase short circuit test on an unloaded synchronous machine helps understand its impact on the system. The AC fault current's oscillogram, with the DC offset removed, reveals that the waveform amplitude decreases from an initially high value to a steady-state level for one phase of the machine.
This behavior occurs due to the magnetic flux produced by the short-circuit armature currents. Initially, these currents follow high-reluctance paths but eventually shift to...
143
Bus Impedance Matrix01:24

Bus Impedance Matrix

120
Calculating subtransient fault currents for three-phase faults in an N-bus power system involves using the positive-sequence network. When a three-phase short circuit occurs at a specific bus, the analysis uses the superposition method to evaluate two separate circuits.
In the first circuit, all machine voltage sources are short-circuited, leaving only the prefault voltage source at the fault location. The positive-sequence bus impedance matrix can be determined by solving the nodal equations,...
120
Power System Three-Phase Short Circuits01:21

Power System Three-Phase Short Circuits

84
Determining the subtransient fault current in a power system involves representing transformers by their leakage reactances, transmission lines by their equivalent series reactances, and synchronous machines as constant voltage sources behind their subtransient reactances. In this analysis, certain elements are excluded, such as winding resistances, series resistances, shunt admittances, delta-Y phase shifts, armature resistance, saturation, saliency, non-rotating impedance loads, and small...
84

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BILSTM-SimAM: An improved algorithm for short-term electric load forecasting based on multi-feature.

Mingju Chen1,2, Fuhong Qiu1, Xingzhong Xiong1,2

  • 1School of Automation and Information Engineering, Sichuan University of Science & Engineering, Yibin 644002, China.

Mathematical Biosciences and Engineering : MBE
|March 8, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces a novel BILSTM-SimAM model for accurate short-term power load forecasting. The model enhances feature extraction and prediction accuracy, outperforming existing methods.

Keywords:
BILSTMVMDmulti-featureshort-term load forecastingsimple attention

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Area of Science:

  • Electrical Engineering
  • Artificial Intelligence
  • Signal Processing

Background:

  • Growing user-side resources in distribution systems cause imbalances, necessitating accurate short-term power load forecasting.
  • Existing forecasting methods struggle with multi-feature extraction and noise reduction in load data.

Purpose of the Study:

  • To develop an advanced deep learning model for improved electric load forecasting.
  • To enhance the extraction of multi-features from load data and emphasize key historical information.

Main Methods:

  • Variational Mode Decomposition (VMD) to denoise and decompose load data into Intrinsic Mode Functions (IMF).
  • Convolutional Neural Network (CNN) with Dropout for improved feature recognition and faster convergence.
  • Bidirectional Long Short-Term Memory (BILSTM) combined with a parameter-free attention mechanism (SimAM) for multi-feature extraction.

Main Results:

  • The BILSTM-SimAM model achieved an R² of 97.8%, exceeding Transformer, MLP, and Prophet models.
  • Demonstrated superior performance with reduced error metrics compared to mainstream forecasting models.
  • Validated the effectiveness of VMD, CNN, and BILSTM-SimAM integration for load forecasting.

Conclusions:

  • The proposed BILSTM-SimAM network offers a robust and accurate solution for short-term power load forecasting.
  • The novel approach effectively handles data noise and extracts critical features for enhanced prediction.
  • This method presents a significant advancement in smart grid load management and stability.