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7,172 Results Found

  • Article
  • Open Access
41 Citations
4,553 Views
21 Pages

19 May 2021

The generalization error of conventional support vector machine (SVM) depends on the ratio of two factors; radius and margin. The traditional SVM aims to maximize margin but ignore minimization of radius, which decreases the overall performance of th...

  • Article
  • Open Access
132 Citations
10,791 Views
22 Pages

14 August 2014

A high penetration of wind energy into the electricity market requires a parallel development of efficient wind power forecasting models. Different hybrid forecasting methods were applied to wind power prediction, using historical data and numerical...

  • Article
  • Open Access
79 Citations
15,436 Views
16 Pages

7 February 2020

At present, in the mainstream sentiment analysis methods represented by the Support Vector Machine, the vocabulary and the latent semantic information involved in the text are not well considered, and sentiment analysis of text is dependent overly on...

  • Article
  • Open Access
93 Citations
7,343 Views
14 Pages

23 December 2017

As the main power source for aircrafts, the reliability of an aero engine is critical for ensuring the safety of aircrafts. Prognostics and health management (PHM) on an aero engine can not only improve its safety, maintenance strategy and availabili...

  • Article
  • Open Access
1 Citations
2,560 Views
23 Pages

The requirement for privacy-aware machine learning increases as we continue to use PII (personally identifiable information) within machine training. To overcome the existing privacy issues, we can apply fully homomorphic encryption (FHE) to encrypt...

  • Article
  • Open Access
22 Citations
4,700 Views
16 Pages

Machine learning (ML) as a powerful data-driven method is widely used for mineral prospectivity mapping. This study employs a hybrid of the genetic algorithm (GA) and support vector machine (SVM) model to map prospective areas for Au deposits in Kara...

  • Article
  • Open Access
122 Citations
12,154 Views
15 Pages

17 May 2017

Precipitation is a very important topic in weather forecasts. Weather forecasts, especially precipitation prediction, poses complex tasks because they depend on various parameters to predict the dependent variables like temperature, humidity, wind sp...

  • Article
  • Open Access
38 Citations
5,578 Views
25 Pages

26 February 2022

The need for accurate estimates of reference crop evapotranspiration (ETo) is important in irrigation planning and design, irrigation scheduling, reservoir management among other applications. ETo can be accurately determined using the internationall...

  • Article
  • Open Access
32 Citations
4,834 Views
13 Pages

Early Prediction of Dementia Using Feature Extraction Battery (FEB) and Optimized Support Vector Machine (SVM) for Classification

  • Ashir Javeed,
  • Ana Luiza Dallora,
  • Johan Sanmartin Berglund,
  • Alper Idrisoglu,
  • Liaqat Ali,
  • Hafiz Tayyab Rauf and
  • Peter Anderberg

Dementia is a cognitive disorder that mainly targets older adults. At present, dementia has no cure or prevention available. Scientists found that dementia symptoms might emerge as early as ten years before the onset of real disease. As a result, mac...

  • Article
  • Open Access
10 Citations
5,825 Views
17 Pages

Label Self-Advised Support Vector Machine (LSA-SVM)—Automated Classification of Foot Drop Rehabilitation Case Study

  • Sahar Adil Abboud,
  • Saba Al-Wais,
  • Salma Hameedi Abdullah,
  • Fady Alnajjar and
  • Adel Al-Jumaily

27 September 2019

Stroke represents a major health problem in our society. One of the effects of stroke is foot drop. Foot drop (FD) is a weakness that occurs in specific muscles in the ankle and foot such as the anterior tibialis, gastrocnemius, plantaris and soleus...

  • Article
  • Open Access
57 Citations
6,857 Views
11 Pages

Comparison between Regression Models, Support Vector Machine (SVM), and Artificial Neural Network (ANN) in River Water Quality Prediction

  • Nur Najwa Mohd Rizal,
  • Gasim Hayder,
  • Mohammed Mnzool,
  • Bushra M. E. Elnaim,
  • Adil Omer Yousif Mohammed and
  • Manal M. Khayyat

20 August 2022

Both anthropogenic and natural sources of pollution are regionally significant. Therefore, in order to monitor and protect the quality of Langat River from deterioration, we use Artificial Intelligence (AI) to model the river water quality. This stud...

  • Article
  • Open Access
46 Citations
14,494 Views
17 Pages

12 June 2022

There are significant controversies surrounding the detection of precursors that may precede earthquakes. Natural hazard signatures associated with strong earthquakes can appear in the lithosphere, troposphere, and ionosphere, where current remote se...

  • Article
  • Open Access
28 Citations
3,421 Views
19 Pages

6 July 2021

Cutting tool wear reduces the quality of the product in production processes. The optimization of both the machining parameters and tool life reliability is an increasing research trend to save manufacturing resources. In the present work, we introdu...

  • Article
  • Open Access
19 Citations
5,680 Views
28 Pages

Image Processing and Support Vector Machine (SVM) for Classifying Environmental Stress Symptoms of Pepper Seedlings Grown in a Plant Factory

  • Sumaiya Islam,
  • Samsuzzaman,
  • Md Nasim Reza,
  • Kyu-Ho Lee,
  • Shahriar Ahmed,
  • Yeon Jin Cho,
  • Dong Hee Noh and
  • Sun-Ok Chung

6 September 2024

Environmental factors such as temperature, humidity, light, and CO2 influence plant growth, and unfavorable environmental conditions cause stress in plants, producing symptoms in their early growth stages. The increasing importance of optimizing crop...

  • Article
  • Open Access
73 Citations
5,792 Views
14 Pages

Support Vector Machine (SVM) Application for Uniaxial Compression Strength (UCS) Prediction: A Case Study for Maragheh Limestone

  • Ahmed Cemiloglu,
  • Licai Zhu,
  • Sibel Arslan,
  • Jinxia Xu,
  • Xiaofeng Yuan,
  • Mohammad Azarafza and
  • Reza Derakhshani

9 February 2023

The geomechanical properties of rock materials, such as uniaxial compression strength (UCS), are the main requirements for geo-engineering design and construction. A proper understanding of UCS has a significant impression on the safe design of diffe...

  • Article
  • Open Access
46 Citations
7,480 Views
18 Pages

5 September 2012

Many models have been developed to forecast wind farm power output. It is generally difficult to determine whether the performance of one model is consistently better than that of another model under all circumstances. Motivated by this finding, we a...

  • Article
  • Open Access
75 Citations
7,581 Views
25 Pages

10 January 2018

Daily peak load forecasting is an important part of power load forecasting. The accuracy of its prediction has great influence on the formulation of power generation plan, power grid dispatching, power grid operation and power supply reliability of p...

  • Article
  • Open Access
8 Citations
3,399 Views
17 Pages

A Novel Hybrid Model Combining the Support Vector Machine (SVM) and Boosted Regression Trees (BRT) Technique in Predicting PM10 Concentration

  • Wan Nur Shaziayani,
  • Hasfazilah Ahmat,
  • Tajul Rosli Razak,
  • Aida Wati Zainan Abidin,
  • Saiful Nizam Warris,
  • Arnis Asmat,
  • Norazian Mohamed Noor and
  • Ahmad Zia Ul-Saufie

7 December 2022

The PM10 concentration is subject to significant changes brought on by both gaseous and meteorological variables. The aim of this research was to explore the performance of a hybrid model combining the support vector machine (SVM) and the boosted reg...

  • Article
  • Open Access
1 Citations
2,378 Views
14 Pages

20 April 2023

Generator fault diagnosis has a great impact on power networks. With the coupling effects, some uncertain factors, and all the complexities of generator design, fault diagnosis is difficult using any theoretical analysis or mathematical model. This p...

  • Article
  • Open Access
60 Citations
5,833 Views
18 Pages

27 September 2019

Mechanical waves, such as ultrasonic waves, have shown promise for use in non-destructive methods used in the evaluation of concrete properties, such as strength and elasticity. However, accurate estimation of the concrete compressive strength is dif...

  • Article
  • Open Access
24 Citations
5,868 Views
11 Pages

Generalization of Parameter Selection of SVM and LS-SVM for Regression

  • Jiye Zeng,
  • Zheng-Hong Tan,
  • Tsuneo Matsunaga and
  • Tomoko Shirai

A Support Vector Machine (SVM) for regression is a popular machine learning model that aims to solve nonlinear function approximation problems wherein explicit model equations are difficult to formulate. The performance of an SVM depends largely on t...

  • Article
  • Open Access
53 Citations
5,803 Views
17 Pages

Learning Wireless Sensor Networks for Source Localization

  • S. Hamed Javadi,
  • Hossein Moosaei and
  • Domenico Ciuonzo

2 February 2019

Source localization and target tracking are among the most challenging problems in wireless sensor networks (WSN). Most of the state-of-the-art solutions are complicated and do not meet the processing and memory limitations of the existing low-cost s...

  • Article
  • Open Access
17 Citations
3,621 Views
15 Pages

Realizing an Integrated Multistage Support Vector Machine Model for Augmented Recognition of Unipolar Depression

  • Kathiravan Srinivasan,
  • Nivedhitha Mahendran,
  • Durai Raj Vincent,
  • Chuan-Yu Chang and
  • Shabbir Syed-Abdul

Unipolar depression (UD), also referred to as clinical depression, appears to be a widespread mental disorder around the world. Further, this is a vital state related to a person’s health that influences his/her daily routine. Besides, this sta...

  • Article
  • Open Access
6 Citations
2,767 Views
11 Pages

16 October 2024

Removing fat from whole milk and adding water to milk to increase its volume are among the most common food fraud practices that alter the characteristics of milk. Usually, deviations from the expected fat content can indicate adulteration. Infrared...

  • Article
  • Open Access
15 Citations
5,051 Views
20 Pages

28 November 2022

Artificial intelligence (AI)-based multispectral remote sensing has been the best supporting tool using limited resources to enhance the lithological mapping abilities with accuracy, supported by ground truthing through traditional mapping techniques...

  • Article
  • Open Access
5 Citations
1,551 Views
17 Pages

13 July 2023

To improve the accuracy of coal and gas prominence prediction, an improved sparrow search algorithm (ISSA) and an optimized support vector machine (SVM) based on the Markov chain Monte Carlo (MCMC) filling algorithm prediction model were proposed. Th...

  • Article
  • Open Access
13 Citations
3,331 Views
19 Pages

Rotor Faults Diagnosis in PMSMs Based on Branch Current Analysis and Machine Learning

  • Yinquan Yu,
  • Haixi Gao,
  • Shaowei Zhou,
  • Yue Pan,
  • Kunpeng Zhang,
  • Peng Liu,
  • Hui Yang,
  • Zhao Zhao and
  • Daniel Makundwaneyi Madyira

28 March 2023

To solve the problem that it is difficult to accurately identify the rotor eccentric fault, demagnetization fault and hybrid fault of a permanent magnet synchronous motor (PMSM) with a slot pole ratio of 3/2 and several times of it, this paper propos...

  • Proceeding Paper
  • Open Access
14 Citations
1,721 Views
8 Pages

Enhancing Flood Resilience: Streamflow Forecasting and Inundation Modeling in Pakistan

  • Maham Shehzadi,
  • Raja Hashim Ali,
  • Zain ul Abideen,
  • Ali Zeeshan Ijaz and
  • Talha Ali Khan

7 December 2023

Climatic changes have increased the frequency of natural disasters, and Pakistan, as a developing nation, is facing severe challenges in coping with floods, which have devastatingly impacted people’s livelihoods. In 2022, floods affected over 3...

  • Article
  • Open Access
22 Citations
3,984 Views
20 Pages

9 February 2023

Existing studies have attempted to determine the tool chipping condition using the indirect method of data capture and intelligent analysis techniques considering machine parameters, and tool conditions using signal processing techniques. Due to the...

  • Article
  • Open Access
69 Citations
7,583 Views
17 Pages

Predicting crash injury severity is a crucial constituent of reducing the consequences of traffic crashes. This study developed machine learning (ML) models to predict crash injury severity using 15 crash-related parameters. Separate ML models for ea...

  • Article
  • Open Access
4 Citations
2,746 Views
13 Pages

3 December 2021

Canonical correlation analysis (CCA) has been used for the steady-state visual evoked potential (SSVEP) based brain-computer interface (BCI) for a long time. However, the reference signal of CCA is relatively simple and lacks subject-specific informa...

  • Article
  • Open Access
9 Citations
3,745 Views
19 Pages

Landslide Susceptibility Assessment Based on Different MaChine Learning Methods in Zhaoping County of Eastern Guangxi

  • Chunfang Kong,
  • Yiping Tian,
  • Xiaogang Ma,
  • Zhengping Weng,
  • Zhiting Zhang and
  • Kai Xu

8 September 2021

Regarding the ever increasing and frequent occurrence of serious landslide disaster in eastern Guangxi, the current study was implemented to adopt support vector machines (SVM), particle swarm optimization support vector machines (PSO-SVM), random fo...

  • Article
  • Open Access
21 Citations
3,683 Views
21 Pages

ViT-PSO-SVM: Cervical Cancer Predication Based on Integrating Vision Transformer with Particle Swarm Optimization and Support Vector Machine

  • Abdulaziz AlMohimeed,
  • Mohamed Shehata,
  • Nora El-Rashidy,
  • Sherif Mostafa,
  • Amira Samy Talaat and
  • Hager Saleh

Cervical cancer (CCa) is the fourth most prevalent and common cancer affecting women worldwide, with increasing incidence and mortality rates. Hence, early detection of CCa plays a crucial role in improving outcomes. Non-invasive imaging procedures w...

  • Article
  • Open Access
51 Citations
6,181 Views
14 Pages

Online Remaining Useful Life Prediction for Lithium-Ion Batteries Using Partial Discharge Data Features

  • Muhammad Umair Ali,
  • Amad Zafar,
  • Sarvar Hussain Nengroo,
  • Sadam Hussain,
  • Gwan-Soo Park and
  • Hee-Je Kim

15 November 2019

Online accurate estimation of remaining useful life (RUL) of lithium-ion batteries is a necessary feature of any smart battery management system (BMS). In this paper, a novel partial discharge data (PDD)-based support vector machine (SVM) model is pr...

  • Article
  • Open Access
10 Citations
1,869 Views
17 Pages

16 November 2024

The accuracy of data perception in Internet of Things (IoT) systems is fundamental to achieving scientific decision-making and intelligent control. Given the frequent occurrence of sensor failures in complex environments, a rapid and accurate fault d...

  • Article
  • Open Access
2 Citations
2,087 Views
20 Pages

31 August 2024

This study proposes a novel approach that utilizes Convolutional Neural Networks (CNNs) and Support Vector Machines (SVMs) to tackle a critical challenge: detecting defects in wrapped film products. With their delicate and reflective film wound aroun...

  • Article
  • Open Access
10 Citations
1,969 Views
28 Pages

OPT-RNN-DBSVM: OPTimal Recurrent Neural Network and Density-Based Support Vector Machine

  • Karim El Moutaouakil,
  • Abdellatif El Ouissari,
  • Adrian Olaru,
  • Vasile Palade and
  • Mihaela Ciorei

17 August 2023

When implementing SVMs, two major problems are encountered: (a) the number of local minima of dual-SVM increases exponentially with the number of samples and (b) the computer storage memory required for a regular quadratic programming solver increase...

  • Article
  • Open Access
16 Citations
6,186 Views
15 Pages

15 June 2017

Short-term wind power forecasting is a technique which tells system operators how much wind power can be expected at a specific time. Due to the increasing penetration of wind generating resources into the power grids, short-term wind power forecasti...

  • Article
  • Open Access
27 Citations
3,721 Views
24 Pages

29 September 2021

The world has witnessed recently a global outbreak of coronavirus disease (COVID-19). This pandemic has affected many countries and has resulted in worldwide health concerns, thus governments are attempting to reduce its spread and impact on differen...

  • Article
  • Open Access
1,871 Views
15 Pages

For an underwater Strapdown Inertial Navigation System/Doppler velocity log (SINS/DVL) integrated navigation system, the short-term failure of DVL may lead to the loss of reliable external velocity information from DVL, which will cause the SINS erro...

  • Article
  • Open Access
12 Citations
3,739 Views
22 Pages

Predicting Benzene Concentration Using Machine Learning and Time Series Algorithms

  • Luis Alfonso Menéndez García,
  • Fernando Sánchez Lasheras,
  • Paulino José García Nieto,
  • Laura Álvarez de Prado and
  • Antonio Bernardo Sánchez

11 December 2020

Benzene is a pollutant which is very harmful to our health, so models are necessary to predict its concentration and relationship with other air pollutants. The data collected by eight stations in Madrid (Spain) over nine years were analyzed using th...

  • Communication
  • Open Access
34 Citations
11,601 Views
20 Pages

Intelligent Gearbox Diagnosis Methods Based on SVM, Wavelet Lifting and RBR

  • Lixin Gao,
  • Zhiqiang Ren,
  • Wenliang Tang,
  • Huaqing Wang and
  • Peng Chen

4 May 2010

Given the problems in intelligent gearbox diagnosis methods, it is difficult to obtain the desired information and a large enough sample size to study; therefore, we propose the application of various methods for gearbox fault diagnosis, including wa...

  • Proceeding Paper
  • Open Access
716 Views
11 Pages

Revolutionizing Prenatal Care: Harnessing Machine Learning for Gestational Diabetes Anticipation

  • Sanmugasundaram Ravichandran,
  • Hui-Kai Su,
  • Wen-Kai Kuo,
  • Manikandan Mahalingam,
  • Kanimozhi Janarthanan,
  • Bruhathi Sathyanarayanan and
  • Kabilan Saravanan

We implemented a robust framework for diabetes prediction, leveraging a diverse array of machine learning algorithms. Through an analysis of diabetes-related characteristics, we identified the most accurate classifier. Diverse algorithms were tested...

  • Article
  • Open Access
12 Citations
3,764 Views
11 Pages

Hybrid CNN-SVM Inference Accelerator on FPGA Using HLS

  • Bing Liu,
  • Yanzhen Zhou,
  • Lei Feng,
  • Hongshuo Fu and
  • Ping Fu

Convolution neural networks (CNN), support vector machine (SVM) and hybrid CNN-SVM algorithms are widely applied in many fields, including image processing and fault diagnosis. Although many dedicated FPGA accelerators have been proposed for specific...

  • Article
  • Open Access
27 Citations
3,878 Views
17 Pages

6 May 2019

As is well known, the correct diagnosis for cancer is critical to save patients’ lives. Support vector machine (SVM) has already made an important contribution to the field of cancer classification. However, different kernel function configurat...

  • Article
  • Open Access
29 Citations
3,159 Views
17 Pages

A Hybrid Multi-Objective Optimizer-Based SVM Model for Enhancing Numerical Weather Prediction: A Study for the Seoul Metropolitan Area

  • Mohanad A. Deif,
  • Ahmed A. A. Solyman,
  • Mohammed H. Alsharif,
  • Seungwon Jung and
  • Eenjun Hwang

28 December 2021

Temperature forecasting is an area of ongoing research because of its importance in all life aspects. However, because a variety of climate factors controls the temperature, it is a never-ending challenge. The numerical weather prediction (NWP) model...

  • Article
  • Open Access
5 Citations
2,862 Views
19 Pages

25 August 2022

To address the problem of low prediction accuracy of precipitation time series data, an improved overall mean empirical modal decomposition–prediction–reconstruction model (MDPRM) is constructed in this paper. First, the non-stationary pr...

  • Article
  • Open Access
4 Citations
4,544 Views
15 Pages

15 November 2020

A novel method for recognizing the phases in bicycling of lower limb amputees using support vector machine (SVM) optimized by particle swarm optimization (PSO) is proposed in this paper. The method is essential for enhanced prosthetic knee joint cont...

  • Article
  • Open Access
99 Citations
8,783 Views
18 Pages

24 January 2013

The objective of this research is to investigate the feasibility of utilizing the multi-scale analysis and support vector machine (SVM) classification scheme to diagnose the bearing faults in rotating machinery. For complicated signals, the characte...

  • Article
  • Open Access
53 Citations
7,358 Views
15 Pages

7 December 2021

The malfunctioning of the heating, ventilating, and air conditioning (HVAC) system is considered to be one of the main challenges in modern buildings. Due to the complexity of the building management system (BMS) with operational data input from a la...

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