Abstract

Accurate sag source location and precise sag type recognition are both essential to verifying the responsible party for the sag and taking countermeasures to improve power quality. In this paper, an attention-based independently recurrent neural network (IndRNN) for sag source location and sag type recognition in sparsely monitored power system is proposed. Specially, the given inputs are voltage waveforms collected by limited meters in sparsely monitored power system, and the desired outputs simultaneously contain the following information: the located lines where sag occurs; the corresponding sag types, including motor starting, transformer energizing and short circuit; and the fault phase for short circuit. In essence, the responsibility of the proposed method is to automatically establish a nonlinear function that relates the given inputs to the desired outputs with categorization labels as few as possible. A favorable feature of the proposed method is that it can be realized without system parameters or models. The proposed method is validated by IEEE 30-bus system and a real 134-bus system. Experimental results demonstrate that the accuracy of sag source location is higher than 99% for all lines, and the accuracy of sag type recognition is also higher than 99% for various sag sources including motor starting, transformer energizing and 7 different types of short circuits. Furthermore, a comparison among different monitor placements for the proposed method is conducted, which illustrates that the observability of power networks should be ensured to achieve satisfactory performance.

Highlights

  • VOLTAGE sag, as one of the most critical power quality issues, is attracting extensive attention from both indus‐ try and academia [1], [2]

  • Voltage sags bring significant econom‐ ic losses, and adverse social impacts [4]-[6]. Both accu‐ rate sag source location and precise sag type recognition are essential to verifying the responsible party for the sag and taking corresponding countermeasures to improve power quality

  • An analysis on the existing research dealing with sag source locations shows that most of the existing methods can be divided into two categories

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Summary

INTRODUCTION

VOLTAGE sag, as one of the most critical power quality issues, is attracting extensive attention from both indus‐ try and academia [1], [2]. A deep learning architecture using attentionbased IndRNN is proposed to simultaneously realize sag source location and type recognition. 1) A deep learning architecture based on IndRNN, which can process longer sequences and construct deeper network, is designed to fully learn the deep and multi-aspect features from measured voltage in sparsely monitored power sys‐ tems. This is beneficial to improving accuracy and prevent‐ ing the vanishing or exploding gradients.

MODEL CONSTRUCTION AND SOLUTION
Problem Formulation
Brief Introduction of IndRNN
Attention Mechanism
Attention-based IndRNN Model
Dataset Description
Design of Parameters and Hyper-parameters
Verification of Effectiveness of Proposed Method
Comparison Among Different Monitor Placements
Comparison Between Proposed Model and GRU-based Model
56 Sag type
Performance Verification for Large-scale Power Grid
CONCLUSION

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