About 18,800,000 results
Open links in new tab
  1. RNN-LSTM: From applications to modeling techniques and …

    Jun 1, 2024 · Long Short-Term Memory (LSTM) is a popular Recurrent Neural Network (RNN) algorithm known for its ability to effectively analyze and process sequential data with long-term …

  2. Long Short-Term Memory Network - an overview - ScienceDirect

    Network LSTM refers to a type of Long Short-Term Memory (LSTM) network architecture that is particularly effective for learning from sequences of data, utilizing specialized structures and …

  3. LSTM-ARIMA as a hybrid approach in algorithmic investment …

    Jun 23, 2025 · This study makes a significant contribution to the growing field of hybrid financial forecasting models by integrating LSTM and ARIMA into a novel algorithmic investment …

  4. A survey on long short-term memory networks for time series …

    Jan 1, 2021 · Recurrent neural networks and exceedingly Long short-term memory (LSTM) have been investigated intensively in recent years due to their ability to model and predict nonlinear …

  5. Long Short-Term Memory - an overview | ScienceDirect Topics

    LSTM, or long short-term memory, is defined as a type of recurrent neural network (RNN) that utilizes a loop structure to process sequential data and retain long-term information through a …

  6. Fundamentals of Recurrent Neural Network (RNN) and Long Short …

    Mar 1, 2020 · All major open source machine learning frameworks offer efficient, production-ready implementations of a number of RNN and LSTM network architectures. Naturally, some …

  7. PI-LSTM: Physics-informed long short-term memory

    Oct 1, 2023 · The PI-LSTM network, inspired by and compared with existing physics-informed deep learning models (PhyCNN and PhyLSTM), was validated using the numerical simulation …

  8. Enhancing streamflow forecasting using an LSTM hybrid model …

    Consequently, LSTM attracts considerable attention and has been rigorously validated in hydrological forecasting. Chen et al. (2020) compared an artificial neural network (ANN) with …

  9. Improving streamflow prediction in the WRF-Hydro model with …

    Feb 1, 2022 · In this approach, LSTM was employed to predict the residual errors of WRF-Hydro; in contrast, the conventional approach with LSTM predicts streamflow directly. Here, we …

  10. Model Predictive Control when utilizing LSTM as dynamic models

    Aug 1, 2023 · The prediction model is the most important part of an MPC strategy. The accuracy of such a model influences the quality of predictions and control per…