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Nov 14, 2023 , This study builds on previous research focused on the application of artificial neural networks to achieve accurate electrical load forecasting.
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Aug 9, 2023 , This work proposes load forecasting models that rely on deep neural networks (DNNs). These models are applied to a demand-side load database for analysis.
Jun 1, 2023 , This paper proposes an electricity forecasting method based on empirical mode decomposition (EMD) and bidirectional LSTM.
The objective of the present work is to compare two Deep Learning models, namely the Long Short-Term Memory (LSTM) model, and the Bi-directional LSTM (BLSTM)
Dec 13, 2021 , In this paper, BiLSTM short term traffic forecasting models have been developed and evaluated using data from a calibrated micro-simulation model for a ...
Aug 4, 2021 , To enhance the forecasting accuracy of daily teleconsultation demand, this study proposes an ensemble hybrid deep learning model.
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In this study, the authors propose a prediction framework for electric load forecasting using a recurrent neural network (RNN) and a meta-heuristic algorithm.
Nov 30, 2020 , In this article, a deep neural network-based hybrid approach is proposed for short-term electricity price forecasting.
Electric load forecasting process plays an extensive role in forecasting future electric load demand and peak load by understanding the previous data.
The paper presents a multi-layer stacked bidirectional long short-term memory (LSTM)-based short-term load forecasting framework.