2021
DOI: 10.3390/s21134466
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A Data-Driven Long Time-Series Electrical Line Trip Fault Prediction Method Using an Improved Stacked-Informer Network

Abstract: The monitoring of electrical equipment and power grid systems is very essential and important for power transmission and distribution. It has great significances for predicting faults based on monitoring a long sequence in advance, so as to ensure the safe operation of the power system. Many studies such as recurrent neural network (RNN) and long short-term memory (LSTM) network have shown an outstanding ability in increasing the prediction accuracy. However, there still exist some limitations preventing those… Show more

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Cited by 18 publications
(6 citation statements)
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“…As shown in Figure 4, a Bayesian optimisation algorithm was introduced in this study to optimise the hyperparameters of the neural network model within a pre-set range. The setting range of each hyperparameter is as follows: historical data length (S-len) is (12,24), Initial Learning Rate is (0.001, 0.01), Dropout Rate is (0.1, 0.5), and Batch size is (12,24,36,64 ). The experimental environment for this study was Windows 11 64-bit operating system with i5-10400F CPU,16GB RAM, and GTX-3060 graphics card.The experimental code used scikit-learn library and pytorch library in Python and compilation was done using PyCharm software.…”
Section: Forecasting Methodology and Settingsmentioning
confidence: 99%
See 1 more Smart Citation
“…As shown in Figure 4, a Bayesian optimisation algorithm was introduced in this study to optimise the hyperparameters of the neural network model within a pre-set range. The setting range of each hyperparameter is as follows: historical data length (S-len) is (12,24), Initial Learning Rate is (0.001, 0.01), Dropout Rate is (0.1, 0.5), and Batch size is (12,24,36,64 ). The experimental environment for this study was Windows 11 64-bit operating system with i5-10400F CPU,16GB RAM, and GTX-3060 graphics card.The experimental code used scikit-learn library and pytorch library in Python and compilation was done using PyCharm software.…”
Section: Forecasting Methodology and Settingsmentioning
confidence: 99%
“…Therefore, it has been successfully applied in fields such as long time series electrical line trip fault prediction and wind power prediction. [36][37] .Based on previous successes, this study applies the Informer model for the first time to the prediction of voltage anomalies in energy storage batteries. The model consists of an encoder and a decoder, where the encoder processes the time series and reduces the time complexity and memory usage through a probabilistic sparse self-attention mechanism.…”
Section: The Neural Network Structure Of Informermentioning
confidence: 99%
“…This work utilizes an enhanced Informer model to predict time series data for the grid connection of new energy sources. The improved Informer DL architecture primarily involves adjustments to the original Informer model's probsparse self-attention mechanism, employing a method based on Wasserstein distance to replace the original KL divergence calculation [44], [45], [46]. Figure 6 illustrates the improvement process of the Informer model.…”
Section: Cost Management Of New Energy Grid Connection Based On DLmentioning
confidence: 99%
“…The architecture of the Informer prediction model is shown in Figure 6. The Informer model to overcome the shortcomings of Transformer in long input/output series, complexity [28]. This study uses the Informer model to predict the non-linear series and the variance of the non-stationary series, respectively.…”
Section: Informer Prediction Modelmentioning
confidence: 99%