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6,274 Results Found

  • Article
  • Open Access
6 Citations
1,708 Views
15 Pages

28 August 2023

Short-term load forecasting (STLF) plays an important role in facilitating efficient and reliable operations of power systems and optimizing energy planning in the electricity market. To improve the accuracy of power load prediction, an adaptive clus...

  • Article
  • Open Access
31 Citations
4,644 Views
23 Pages

10 August 2020

Short-term load forecasting (STLF) plays an important role in the economic dispatch of power systems. Obtaining accurate short-term load can greatly improve the safety and economy of a power grid operation. In recent years, a large number of short-te...

  • Article
  • Open Access
7 Citations
1,324 Views
18 Pages

23 August 2024

In order to balance power supply and demand, which is crucial for the safe and effective functioning of power systems, short-term power load forecasting is a crucial component of power system planning and operation. This paper aims to address the iss...

  • Article
  • Open Access
351 Citations
13,326 Views
13 Pages

14 December 2018

Accurate electrical load forecasting is of great significance to help power companies in better scheduling and efficient management. Since high levels of uncertainties exist in the load time series, it is a challenging task to make accurate short-ter...

  • Article
  • Open Access
13 Citations
2,768 Views
25 Pages

16 June 2024

The precision of short-term photovoltaic power forecasts is of utmost importance for the planning and operation of the electrical grid system. To enhance the precision of short-term output power prediction in photovoltaic systems, this paper proposes...

  • Article
  • Open Access
22 Citations
6,767 Views
18 Pages

Rational use of urban underground space (UUS) and public transportation transfer underground can solve urban traffic problems. Accurate short-term prediction of passenger flow can ensure the efficient, safe, and comfortable operation of subway statio...

  • Article
  • Open Access
5 Citations
2,100 Views
20 Pages

22 June 2024

Accurate short-term forecasting of power load is essential for the reliable operation of the comprehensive energy systems of ports and for effectively reducing energy consumption. Owing to the complexity of port systems, traditional load forecasting...

  • Article
  • Open Access
60 Citations
5,012 Views
20 Pages

A Long Short-Term Memory Network-Based Radio Resource Management for 5G Network

  • Kavitha Rani Balmuri,
  • Srinivas Konda,
  • Wen-Cheng Lai,
  • Parameshachari Bidare Divakarachari,
  • Kavitha Malali Vishveshwarappa Gowda and
  • Hemalatha Kivudujogappa Lingappa

Nowadays, the Long-Term Evolution-Advanced system is widely used to provide 5G communication due to its improved network capacity and less delay during communication. The main issues in the 5G network are insufficient user resources and burst errors,...

  • Feature Paper
  • Article
  • Open Access
7 Citations
2,192 Views
14 Pages

26 January 2023

Artificial intelligence models have been widely applied for natural gas consumption forecasting over the past decades, especially for short-term consumption forecasting. This paper proposes a three-layer neural network forecasting model that can extr...

  • Article
  • Open Access
18 Citations
3,299 Views
22 Pages

22 June 2022

This research presents a new method based on a combined temporal convolutional neural network and long-short term memory neural network for the real-time assessment of short-term voltage stability to keep the electric grid in a secure state. The asse...

  • Article
  • Open Access
22 Citations
4,773 Views
21 Pages

16 August 2019

The automatic train operation system is a significant component of the intelligent railway transportation. As a fundamental problem, the construction of the train dynamic model has been extensively researched using parametric approaches. The parametr...

  • Article
  • Open Access
14 Citations
3,352 Views
16 Pages

21 March 2024

Sentiment analysis aims to study, analyse and identify the sentiment polarity contained in subjective documents. In the realm of natural language processing (NLP), the study of sentiment analysis and its subtask research is a hot topic, which has ver...

  • Article
  • Open Access
19 Citations
6,843 Views
21 Pages

Bidirectional Long Short-Term Memory Network for Vehicle Behavior Recognition

  • Jiasong Zhu,
  • Ke Sun,
  • Sen Jia,
  • Weidong Lin,
  • Xianxu Hou,
  • Bozhi Liu and
  • Guoping Qiu

6 June 2018

Vehicle behavior recognition is an attractive research field which is useful for many computer vision and intelligent traffic analysis tasks. This paper presents an all-in-one behavior recognition framework for moving vehicles based on the latest dee...

  • Article
  • Open Access
41 Citations
5,097 Views
21 Pages

17 September 2020

Forecasting domestic and foreign power demand is crucial for planning the operation and expansion of facilities. Power demand patterns are very complex owing to energy market deregulation. Therefore, developing an appropriate power forecasting model...

  • Article
  • Open Access
29 Citations
5,328 Views
22 Pages

Sea Clutter Amplitude Prediction Using a Long Short-Term Memory Neural Network

  • Liwen Ma,
  • Jiaji Wu,
  • Jinpeng Zhang,
  • Zhensen Wu,
  • Gwanggil Jeon,
  • Mingzhou Tan and
  • Yushi Zhang

28 November 2019

In the marine environment, shore-based radars play an important role in military surveillance and sensing. Sea clutter is one of the main factors affecting the performance of shore-based radar. Affected by marine environmental factors and radar param...

  • Article
  • Open Access
732 Citations
40,447 Views
19 Pages

5 July 2019

Flood forecasting is an essential requirement in integrated water resource management. This paper suggests a Long Short-Term Memory (LSTM) neural network model for flood forecasting, where the daily discharge and rainfall were used as input data. Mor...

  • Article
  • Open Access
7 Citations
2,202 Views
16 Pages

15 March 2024

Shear wave velocity (VS) is a vital prerequisite for rock geophysics. However, due to historical, cost, and technical reasons, the shear wave velocity of some wells is missing. To reduce the deviation of the description of underground oil and gas dis...

  • Article
  • Open Access
57 Citations
4,915 Views
27 Pages

Failure Mechanism and Long Short-Term Memory Neural Network Model for Landslide Risk Prediction

  • Xuan Zhang,
  • Chun Zhu,
  • Manchao He,
  • Menglong Dong,
  • Guangcheng Zhang and
  • Faming Zhang

31 December 2021

Rockslides along a stepped failure surface have characteristics of stepped deformation characteristic and it is difficult to predict the failure time. In this study, the deformation characteristics and disaster prediction model of the Fengning granit...

  • Article
  • Open Access
268 Citations
16,915 Views
18 Pages

18 October 2018

With recent advances in computing technology, massive amounts of data and information are being constantly accumulated. Especially in the field of finance, we have great opportunities to create useful insights by analyzing that information, because t...

  • Article
  • Open Access
11 Citations
3,152 Views
15 Pages

10 December 2020

Owing to the importance of coalbed methane (CBM) as a source of energy, it is necessary to predict its future production. However, the production process of CBM is the result of the interaction of many factors, making it difficult to perform accurate...

  • Article
  • Open Access
47 Citations
5,038 Views
16 Pages

16 December 2021

Photovoltaic power generation is highly valued and has developed rapidly throughout the world. However, the fluctuation of solar irradiance affects the stability of the photovoltaic power system and endangers the safety of the power grid. Therefore,...

  • Article
  • Open Access
36 Citations
5,591 Views
16 Pages

Storm Surge Prediction Based on Long Short-Term Memory Neural Network in the East China Sea

  • Kuo Chen,
  • Cuiping Kuang,
  • Lei Wang,
  • Ke Chen,
  • Xuejian Han and
  • Jiadong Fan

24 December 2021

As an area frequently suffering from storm surge, the Yangtze River Estuary in the East China Sea requires fast and accurate prediction of water level for disaster prevention and mitigation. Due to storm surge process being affected by the long-term...

  • Feature Paper
  • Article
  • Open Access
70 Citations
6,283 Views
18 Pages

25 June 2022

State of charge (SOC) is the most important parameter in battery management systems (BMSs), but since the SOC is not a directly measurable state quantity, it is particularly important to use advanced strategies for accurate SOC estimation. In this pa...

  • Article
  • Open Access
37 Citations
5,067 Views
20 Pages

8 June 2021

The shallow features extracted by the traditional artificial intelligence algorithm-based damage identification methods pose low sensitivity and ignore the timing characteristics of vibration signals. Thus, this study uses the high-dimensional featur...

  • Article
  • Open Access
45 Citations
6,102 Views
15 Pages

In recent years, the development of adaptive models to tailor instructional content to learners by measuring their cognitive load has become a topic of active research. Brain fog, also known as confusion, is a common cause of poor performance, and re...

  • Article
  • Open Access
3 Citations
1,229 Views
11 Pages

Kolmogorov–Arnold and Long Short-Term Memory Convolutional Network Models for Supervised Quality Recognition of Photoplethysmogram Signals

  • Aneeqa Mehrab,
  • Michela Lapenna,
  • Ferdinando Zanchetta,
  • Angelica Simonetti,
  • Giovanni Faglioni,
  • Andrea Malagoli and
  • Rita Fioresi

21 March 2025

Photoplethysmogram (PPG) signals recover key physiological parameters as pulse, oximetry, and ECG. In this paper, we first employ a hybrid architecture combining the Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) for the analysi...

  • Article
  • Open Access
39 Citations
3,496 Views
12 Pages

24 July 2019

In recent decades, landslide displacement forecasting has received increasing attention due to its ability to reduce landslide hazards. To improve the forecast accuracy of landslide displacement, a dynamic forecasting model based on variational mode...

  • Article
  • Open Access
34 Citations
6,147 Views
14 Pages

Traffic flow prediction is an important part of the intelligent transportation system. Accurate traffic flow prediction is of great significance for strengthening urban management and facilitating people’s travel. In this paper, we propose a mo...

  • Article
  • Open Access
1,957 Views
15 Pages

A reliable prediction of the remaining useful life of critical electronic components, such as insulated gate bipolar transistors, is necessary for preventing failures in many industrial applications. Recently, diverse machine-learning techniques have...

  • Article
  • Open Access
3 Citations
2,905 Views
20 Pages

Raindrop Size Distribution Prediction by an Improved Long Short-Term Memory Network

  • Yongjie Zhu,
  • Zhiqun Hu,
  • Shujie Yuan,
  • Jiafeng Zheng,
  • Dejin Lu and
  • Fujiang Huang

7 October 2022

The observation of and research on raindrop size distribution (DSD) is important for mastering and understanding the mutual restriction relationship between cloud dynamics and cloud microphysics in a process of precipitation; it also plays an irrepla...

  • Article
  • Open Access
34 Citations
3,603 Views
19 Pages

Detecting Wind Turbine Blade Icing with a Multiscale Long Short-Term Memory Network

  • Xiao Wang,
  • Zheng Zheng,
  • Guoqian Jiang,
  • Qun He and
  • Ping Xie

14 April 2022

Blade icing is one of the main problems of wind turbines installed in cold climate regions, resulting in increasing power generation loss and maintenance costs. Traditional blade icing detection methods greatly rely on dedicated sensors, such as vibr...

  • Article
  • Open Access
16 Citations
4,101 Views
18 Pages

24 December 2021

Load forecasting (LF) is essential in enabling modern power systems’ safety and economical transportation and energy management systems. The dynamic balance between power generation and load in the optimization of power systems is receiving inc...

  • Article
  • Open Access
117 Citations
13,819 Views
21 Pages

Using a Long Short-Term Memory Recurrent Neural Network (LSTM-RNN) to Classify Network Attacks

  • Pramita Sree Muhuri,
  • Prosenjit Chatterjee,
  • Xiaohong Yuan,
  • Kaushik Roy and
  • Albert Esterline

An intrusion detection system (IDS) identifies whether the network traffic behavior is normal or abnormal or identifies the attack types. Recently, deep learning has emerged as a successful approach in IDSs, having a high accuracy rate with its disti...

  • Article
  • Open Access
2 Citations
1,290 Views
16 Pages

Transient Emissions Forecasting of Off-Road Construction Machinery Based on Long Short-Term Memory Network

  • Tengteng Li,
  • Xiaojun Jing,
  • Fengbin Wang,
  • Xiaowei Wang,
  • Dongzhi Gao,
  • Xianyang Cai and
  • Bin Tang

9 July 2024

Off-road machinery is one of the significant contributors to air pollution due to its large quantity. In this study, a deep learning model was developed to predict the transient engine emissions of CO, NO, NO2, and NOx, which are the main pollutants...

  • Article
  • Open Access
197 Citations
4,302 Views
19 Pages

Long Short-Term Memory Network-Based Metaheuristic for Effective Electric Energy Consumption Prediction

  • Simran Kaur Hora,
  • Rachana Poongodan,
  • Rocío Pérez de Prado,
  • Marcin Wozniak and
  • Parameshachari Bidare Divakarachari

27 November 2021

The Electric Energy Consumption Prediction (EECP) is a complex and important process in an intelligent energy management system and its importance has been increasing rapidly due to technological developments and human population growth. A reliable a...

  • Article
  • Open Access
3 Citations
4,268 Views
20 Pages

Bottleneck Based Gridlock Prediction in an Urban Road Network Using Long Short-Term Memory

  • Ei Ei Mon,
  • Hideya Ochiai,
  • Chaiyachet Saivichit and
  • Chaodit Aswakul

1 September 2020

The traffic bottlenecks in urban road networks are more challenging to investigate and discover than in freeways or simple arterial networks. A bottleneck indicates the congestion evolution and queue formation, which consequently disturb travel delay...

  • Article
  • Open Access
7 Citations
2,385 Views
17 Pages

29 August 2022

It is of great significance to estimate the interaction force of upper limbs accurately for improving the control performance of human–computer interaction. However, due to the randomness of the input biological signals and the influence of env...

  • Article
  • Open Access
4 Citations
1,800 Views
23 Pages

27 November 2024

In the realm of water resource management, meticulous monitoring and control methodologies are quintessential to the refinement of wastewater treatment processes. This research elucidates an avant-garde methodology for forecasting the Chemical Oxygen...

  • Article
  • Open Access
9 Citations
2,979 Views
15 Pages

13 January 2023

High heat load on diesel engines is a main cause of ship failure, which can lead to ship downtime and pose a risk to personal safety and the environment. As such, predictive detection and maintenance measures are highly important. During the operatio...

  • Article
  • Open Access
2 Citations
1,631 Views
18 Pages

16 November 2023

Amidst the evolving landscape of non-cooperative communication, automatic modulation classification (AMC) stands as an essential pillar, enabling adaptive and reliable signal processing. Due to the advancement of deep learning (DL) technology, neural...

  • Article
  • Open Access
10 Citations
4,103 Views
14 Pages

In this article, we propose an end-to-end deep network for the classification of multi-spectral time series and apply them to crop type mapping. Long short-term memory networks (LSTMs) are well established in this regard, thanks to their capacity to...

  • Article
  • Open Access
90 Citations
11,159 Views
19 Pages

26 December 2019

This paper proposes two deep learning methods for remaining useful life (RUL) prediction of bearings. The methods have the advantageous end-to-end property that they take raw data as input and generate the predicted RUL directly. They are TSMC-CNN, w...

  • Article
  • Open Access
12 Citations
3,234 Views
15 Pages

Many countries are concerned about high particulate matter (PM) concentrations caused by rapid industrial development, which can harm both human health and the environment. To manage PM, the prediction of PM concentrations based on historical data is...

  • Feature Paper
  • Article
  • Open Access
7 Citations
2,696 Views
15 Pages

The use of an inertial measurement unit (IMU) to measure the motion data of the upper limb is a mature method, and the IMU has gradually become an important device for obtaining information sources to control assistive prosthetic hands. However, the...

  • Article
  • Open Access
5 Citations
2,448 Views
15 Pages

2 October 2024

In the development of decarbonization technologies and renewable energy, water electrolysis has emerged as a key technology. The efficiency of hydrogen production and its applications are significantly affected by power stability. Enhancing power sta...

  • Article
  • Open Access

2 February 2026

Lithium-ion batteries are extensively employed in new energy vehicles, where accurate State of Charge (SOC) estimation is fundamental for optimal battery management. However, existing methods often rely on single-model approaches and fail to leverage...

  • Article
  • Open Access
31 Citations
6,761 Views
18 Pages

29 October 2020

Anomaly detection is of great significance in condition-based maintenance of power plant equipment. The conventional fixed threshold detection method is not able to perform early detection of equipment abnormalities. In this study, a general anomaly...

  • Article
  • Open Access
5 Citations
1,990 Views
16 Pages

6 December 2024

In this study, a ship-route prediction model based on a long short-term memory network using port-to-port trajectory data is presented. Data from a traditional automatic identification system—often used for ship-route prediction—are limit...

  • Article
  • Open Access
1 Citations
1,753 Views
18 Pages

23 February 2025

In recent years, the application of artificial neural network models has become increasingly widespread in the automotive industry; however, the sensitivity analysis of these models is often neglected. This shortfall poses significant risks in safety...

  • Article
  • Open Access
6 Citations
3,339 Views
19 Pages

17 January 2024

The hydraulic pump plays a pivotal role in engineering machinery, and it is essential to continuously monitor its operating status. However, many vital signals for monitoring cannot be directly obtained in practical applications. To address this, we...

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