The need for accurate time-series results is badly demanding. LSTM has been applied for forecasting time series, which is generated when variables are observed at discrete and equal time intervals. Nevertheless, the problem of determining hyperparameters with a relatively high random rate will reduce the accuracy of the prediction results. This paper aims to promote LSTM with tuned-PSO and Bifold-Attention mechanism. PSO optimizes LSTM hyperparameters, and Bifold-attention mechanism selects the optimal input for LSTM. An accurate, adaptive, and robust time-series forecasting model is the main contribution, compared with ARIMA, MLP, LSTM, PSO-LSTM, A-LSTM, and PSO-A-LSTM. The model comparison is based on the accuracy of each model in forecas...
Multi-variable time series (MTS) information is a typical type of data inference in the real world. ...
The time-series forecasting is a vital area that motivates continuous investigate areas of intrigued...
Deep learning is playing an increasingly important role in time series analysis. We focused on time ...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
Multivariate time series with missing data is ubiquitous when the streaming data is collected by sen...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
Time series analysis is the analysis of a collection of data over a certain period of time in the pa...
Long Short-Term Memory (LSTM) has shown significant performance on many real-world applications due ...
Time series forecasting is essential for various engineering applications in finance, geology, and i...
In recent years, deep learning has rapidly developed and been widely applied across different fields...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
This model has been trained and tested on air quality data - 2983 day(s) of data. The mo...
This research paper proposes a novel method, Exponential Moving Average Long Short-Term Memory (EMA ...
The problem of learning and forecasting underlying trends in time series data arises in a variety of...
Nowadays, the impacts of climate change are harming many countries around the world. For this reason...
Multi-variable time series (MTS) information is a typical type of data inference in the real world. ...
The time-series forecasting is a vital area that motivates continuous investigate areas of intrigued...
Deep learning is playing an increasingly important role in time series analysis. We focused on time ...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
Multivariate time series with missing data is ubiquitous when the streaming data is collected by sen...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
Time series analysis is the analysis of a collection of data over a certain period of time in the pa...
Long Short-Term Memory (LSTM) has shown significant performance on many real-world applications due ...
Time series forecasting is essential for various engineering applications in finance, geology, and i...
In recent years, deep learning has rapidly developed and been widely applied across different fields...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
This model has been trained and tested on air quality data - 2983 day(s) of data. The mo...
This research paper proposes a novel method, Exponential Moving Average Long Short-Term Memory (EMA ...
The problem of learning and forecasting underlying trends in time series data arises in a variety of...
Nowadays, the impacts of climate change are harming many countries around the world. For this reason...
Multi-variable time series (MTS) information is a typical type of data inference in the real world. ...
The time-series forecasting is a vital area that motivates continuous investigate areas of intrigued...
Deep learning is playing an increasingly important role in time series analysis. We focused on time ...