You are currently viewing a new version of our website. To view the old version click .

1,104 Results Found

  • Communication
  • Open Access
2,573 Views
9 Pages

Kernel Density Estimators for Axisymmetric Particle Beams

  • Christopher M. Pierce and
  • Young-Kee Kim

Bright beams are commonly represented by sampled data in the numerical algorithms used to simulate their properties. However, in these calculations and the analyses of their outputs, the beam’s density is sometimes required and must be calculat...

  • Article
  • Open Access
8 Citations
2,271 Views
12 Pages

25 October 2021

Efficiency in the operation of distribution networks is one of the commonly recognised goals of the Smart Grid aspect. Novel approaches are needed to assess the level of energy loss and reliability in electricity distribution. Transmission of electri...

  • Article
  • Open Access
7 Citations
2,256 Views
17 Pages

21 February 2024

This paper introduces a new real-time method based on a combination of kernel density estimators and pyramid histogram of oriented gradients for identifying a point of interest along the stem of seedlings suitable for stem–stake coupling, also...

  • Article
  • Open Access
994 Views
9 Pages

Pointwise Sharp Moderate Deviations for a Kernel Density Estimator

  • Siyu Liu,
  • Xiequan Fan,
  • Haijuan Hu and
  • Paul Doukhan

10 October 2024

Let fn be the non-parametric kernel density estimator based on a kernel function K and a sequence of independent and identically distributed random vectors taking values in Rd. With some mild conditions, we establish sharp moderate deviations for the...

  • Article
  • Open Access
3 Citations
2,771 Views
24 Pages

30 August 2023

This paper develops a method to obtain multivariate kernel functions for density estimation problems in which the density function is defined on compact support. If domain-specific knowledge requires certain conditions to be satisfied at the boundary...

  • Article
  • Open Access
6 Citations
1,916 Views
20 Pages

The management of individual weights in broiler farming is not only crucial for increasing farm income but also directly linked to the revenue growth of integrated broiler companies, necessitating prompt resolution. This paper proposes a model to est...

  • Article
  • Open Access
23 Citations
11,628 Views
18 Pages

Kernel Density Estimation on the Siegel Space with an Application to Radar Processing

  • Emmanuel Chevallier,
  • Thibault Forget,
  • Frédéric Barbaresco and
  • Jesus Angulo

11 November 2016

This paper studies probability density estimation on the Siegel space. The Siegel space is a generalization of the hyperbolic space. Its Riemannian metric provides an interesting structure to the Toeplitz block Toeplitz matrices that appear in the co...

  • Article
  • Open Access
5 Citations
2,918 Views
29 Pages

Kernel Density Derivative Estimation of Euler Solutions

  • Shujin Cao,
  • Yihuai Deng,
  • Bo Yang,
  • Guangyin Lu,
  • Xiangyun Hu,
  • Yajing Mao,
  • Shuanggui Hu and
  • Ziqiang Zhu

30 January 2023

Conventional Euler deconvolution is widely used for interpreting profile, grid, and ungridded potential field data. The Tensor Euler deconvolution applies additional constraints to the Euler solution using all gravity vectors and the full gravity gra...

  • Article
  • Open Access
6 Citations
3,500 Views
15 Pages

8 July 2022

There are three main problems for classical kernel density estimation in its application: boundary problem, over-smoothing problem of high (low)-density region and low-efficiency problem of large samples. A new improved model of multivariate adaptive...

  • Article
  • Open Access
8 Citations
3,543 Views
12 Pages

21 August 2021

The nature of the kernel density estimator (KDE) is to find the underlying probability density function (p.d.f) for a given dataset. The key to training the KDE is to determine the optimal bandwidth or Parzen window. All the data points share a fixed...

  • Article
  • Open Access
10 Citations
5,297 Views
15 Pages

30 November 2020

We present an unsupervised method to detect anomalous time series among a collection of time series. To do so, we extend traditional Kernel Density Estimation for estimating probability distributions in Euclidean space to Hilbert spaces. The estimate...

  • Article
  • Open Access
14 Citations
5,475 Views
12 Pages

Kernel density estimation (KDE) is widely adopted to show the overall crime distribution and at the same time obscure exact crime locations due to the confidentiality of crime data in many countries. However, the confidential level of crime locationa...

  • Article
  • Open Access
4 Citations
2,707 Views
26 Pages

14 October 2021

Kernel smoothers are often used in Lagrangian particle dispersion simulations to estimate the concentration distribution of tracer gasses, pollutants etc. Their main disadvantage is that they suffer from the curse of dimensionality, i.e., they conver...

  • Article
  • Open Access
15 Citations
3,330 Views
20 Pages

A comprehensive and accurate wind power forecast assists in reducing the operational risk of wind power generation, improves the safety and stability of the power system, and maintains the balance of wind power generation. Herein, a hybrid wind power...

  • Feature Paper
  • Article
  • Open Access
554 Views
17 Pages

30 June 2025

Randomized response models aim to protect respondent privacy when sampling sensitive variables but consequently compromise estimator efficiency. We propose a new sampling method, titled joint scrambling, which preserves all true responses while prote...

  • Article
  • Open Access
11 Citations
4,217 Views
14 Pages

4 November 2022

At present, the total length of accident blackspot accounts for 0.25% of the total length of the road network, while the total number of accidents that occurred at accident black spots accounts for 25% of the total number of accidents on the road net...

  • Article
  • Open Access
5 Citations
2,430 Views
17 Pages

13 December 2022

This paper proposes a wind power probabilistic model (WPPM) using the reflection method and multi-kernel function kernel density estimation (KDE). With the increasing penetration of renewable energy sources (RESs) into power systems, several probabil...

  • Short Note
  • Open Access
3 Citations
5,661 Views
16 Pages

This paper studies the asymptotic normality for the kernel deconvolution estimator when the noise distribution is logarithmic chi-square; both identical and independently distributed observations and strong mixing observations are considered. The dep...

  • Article
  • Open Access
42 Citations
4,266 Views
15 Pages

9 April 2019

The uncertainty of wind power brings many challenges to the operation and control of power systems, especially for the joint operation of multiple wind farms. Therefore, the study of the joint probability density function (JPDF) of multiple wind farm...

  • Article
  • Open Access
51 Citations
9,303 Views
22 Pages

7 September 2012

In this paper, a pixel-based background modeling method, which uses nonparametric kernel density estimation, is proposed. To reduce the burden of image storage, we modify the original KDE method by using the first frame to initialize it and update it...

  • Article
  • Open Access
16 Citations
2,618 Views
11 Pages

17 July 2022

This paper presents a development of a statistical model of typhoon genesis, tracks based on kernel density estimation and a generalized additive model (GAM). Modeling of typhoon activity is ultimately beneficial to the people living in coastal zones...

  • Article
  • Open Access
5 Citations
2,285 Views
27 Pages

Ship Anomalous Behavior Detection in Port Waterways Based on Text Similarity and Kernel Density Estimation

  • Gaocai Li,
  • Xinyu Zhang,
  • Yaqing Shu,
  • Chengbo Wang,
  • Wenqiang Guo and
  • Jiawei Wang

The navigational safety of ships on waterways plays a crucial role in ensuring the operational efficiency of ports. Ship anomalous behavior detection is an important method of water traffic surveillance that can effectively identify abnormal ship beh...

  • Article
  • Open Access
16 Citations
3,463 Views
25 Pages

15 March 2022

Fault monitoring is often employed for the secure functioning of industrial systems. To assess performance and enhance product quality, statistical process control (SPC) charts such as Shewhart, CUSUM, and EWMA statistics have historically been utili...

  • Article
  • Open Access
2 Citations
1,935 Views
17 Pages

13 September 2023

Bipolar disorder is a severe mood disorder and is one of the top 20 causes of disability in the world. Although there have been numerous studies based on machine learning models for the detection of bipolar disorder patients, these works have limitat...

  • Article
  • Open Access
1,521 Views
19 Pages

13 February 2024

With the development of civil aviation in China, airspace congestion has become more and more serious and has gradually spread from airport terminal areas to en route networks. Traditionally, most prediction methods that obtain traffic flow data are...

  • Article
  • Open Access
37 Citations
3,816 Views
24 Pages

22 November 2020

Based on quantile regression (QR) and kernel density estimation (KDE), a framework for probability density forecasting of short-term wind speed is proposed in this study. The empirical mode decomposition (EMD) technique is implemented to reduce the n...

  • Article
  • Open Access
49 Citations
8,643 Views
25 Pages

An urban, commercial central district is often regarded as the heart of a city. Therefore, quantitative research on commercial central districts plays an important role when studying the development and evaluation of urban spatial layouts. However, c...

  • Article
  • Open Access
4 Citations
1,860 Views
13 Pages

Ultrasound Entropy Imaging Based on the Kernel Density Estimation: A New Approach to Hepatic Steatosis Characterization

  • Ruiyang Gao,
  • Po-Hsiang Tsui,
  • Shuicai Wu,
  • Dar-In Tai,
  • Guangyu Bin and
  • Zhuhuang Zhou

12 December 2023

In this paper, we present the kernel density estimation (KDE)-based parallelized ultrasound entropy imaging and apply it for hepatic steatosis characterization. A KDE technique was used to estimate the probability density function (PDF) of ultrasound...

  • Article
  • Open Access
19 Citations
3,092 Views
24 Pages

Automatic Clustering and Classification of Coffee Leaf Diseases Based on an Extended Kernel Density Estimation Approach

  • Reem Ibrahim Hasan,
  • Suhaila Mohd Yusuf,
  • Mohd Shafry Mohd Rahim and
  • Laith Alzubaidi

10 April 2023

The current methods of classifying plant disease images are mainly affected by the training phase and the characteristics of the target dataset. Collecting plant samples during different leaf life cycle infection stages is time-consuming. However, th...

  • Article
  • Open Access
9 Citations
2,363 Views
28 Pages

A Water Shortage Risk Assessment Model Based on Kernel Density Estimation and Copulas

  • Tanghui Qian,
  • Zhengtao Shi,
  • Shixiang Gu,
  • Wenfei Xi,
  • Jing Chen,
  • Jinming Chen,
  • Shihan Bai and
  • Lei Wu

21 May 2024

Accurate assessment and prediction of water shortage risk are essential prerequisites for the rational allocation and risk management of water resources. However, previous water shortage risk assessment models based on copulas have strict requirement...

  • Article
  • Open Access
61 Citations
15,812 Views
14 Pages

Concentrations of four heavy metals (Cr, Cu, Ni, and Zn) were measured at 1,082 sampling sites in Changhua county of central Taiwan. A hazard zone is defined in the study as a place where the content of each heavy metal exceeds the corresponding cont...

  • Article
  • Open Access
4 Citations
2,787 Views
23 Pages

16 October 2024

Numerous studies have utilized remote sensing techniques to analyze seismic data in active areas. Point density techniques, widely used in remote sensing, examine the spatial distribution of point clouds related to specific variables. Applying these...

  • Article
  • Open Access
868 Views
20 Pages

28 January 2025

The weathered bedrock aquifer in the Jurassic coalfield of northern Shaanxi Province is a direct water-bearing aquifer, and accurately predicting its water-bearing properties is essential for preventing and controlling water hazards in mining operati...

  • Article
  • Open Access
20 Citations
3,226 Views
17 Pages

26 March 2020

The accurate modeling of the charging behaviors for electric vehicles (EVs) is the basis for the charging load modeling, the charging impact on the power grid, orderly charging strategy, and planning of charging facilities. Therefore, an accurate joi...

  • Article
  • Open Access
9 Citations
4,283 Views
20 Pages

Kernel density estimation (KDE) is a commonly used method for spatial point pattern analysis, but it is computationally demanding when analyzing large datasets. GPU-based parallel computing has been adopted to address such computational challenges. T...

  • Article
  • Open Access
671 Views
28 Pages

Training-Free Few-Shot Image Classification via Kernel Density Estimation with CLIP Embeddings

  • Marcos Sergio Pacheco dos Santos Lima Junior,
  • Juan Miguel Ortiz-de-Lazcano-Lobato and
  • Ezequiel López-Rubio

11 November 2025

Few-shot image classification aims to recognize novel classes from only a handful of labeled examples, a challenge in domains where data collection is costly or impractical. Existing solutions often rely on meta learning, fine tuning, or data augment...

  • Article
  • Open Access
2 Citations
2,185 Views
23 Pages

13 November 2023

Reliable and accurate daily runoff predictions are critical to water resource management and planning. Probability density predictions of daily runoff can provide decision-makers with comprehensive information by quantifying the uncertainty of foreca...

  • Article
  • Open Access
7 Citations
3,588 Views
22 Pages

Taxi mobility data plays an important role in understanding urban mobility in the context of urban traffic. Specifically, the taxi is an important part of urban transportation, and taxi trips reflect human behaviors and mobility patterns, allowing us...

  • Article
  • Open Access
39 Citations
5,182 Views
19 Pages

A Novel Ensemble Algorithm for Solar Power Forecasting Based on Kernel Density Estimation

  • Mohamed Lotfi,
  • Mohammad Javadi,
  • Gerardo J. Osório,
  • Cláudio Monteiro and
  • João P. S. Catalão

2 January 2020

A novel ensemble algorithm based on kernel density estimation (KDE) is proposed to forecast distributed generation (DG) from renewable energy sources (RES). The proposed method relies solely on publicly available historical input variables (e.g., met...

  • Article
  • Open Access
3 Citations
1,627 Views
16 Pages

26 September 2023

Incipient fault detection in a hydraulic system is a challenge in the condition monitoring community. Existing research mainly monitors abnormal working conditions in hydraulic systems by separately detecting the key working parameter, which often ca...

  • Article
  • Open Access
28 Citations
4,843 Views
20 Pages

A maritime route is used by sea transportation vessels to access the trading ports, and route design standards for the safety of maritime traffic have been established in various countries and organizations. However, no quantitative safety verificati...

  • Article
  • Open Access
13 Citations
6,475 Views
17 Pages

25 October 2016

With the continued social and economic development of northern China, landscape fragmentation has placed increasing pressure on the ecological system of the Beijing-Tianjin-Hebei (BTH) region. To maintain the integrity of ecological processes under t...

  • Article
  • Open Access
5 Citations
5,341 Views
15 Pages

19 September 2018

In the cities of post-industrialized countries, renovation is the main part of building construction activity and has a major urban impact. Measuring this ongoing phenomenon and its distribution is of great usefulness for municipality urban planning...

  • Article
  • Open Access
2 Citations
989 Views
30 Pages

TCN–Transformer Spatio-Temporal Feature Decoupling and Dynamic Kernel Density Estimation for Gas Concentration Fluctuation Warning

  • Yanping Wang,
  • Longcheng Zhang,
  • Zhenguo Yan,
  • Jun Deng,
  • Yuxin Huang,
  • Zhixin Qin,
  • Yuqi Cao and
  • Yiyang Wang

30 April 2025

This study addresses the problems of multi-source data redundancy, insufficient feature capture timing, and delayed risk warning in the prediction of gas concentration in fully mechanized coal-mining operations by constructing a three-pronged technic...

  • Article
  • Open Access
5 Citations
2,764 Views
17 Pages

3 November 2022

Optical music recognition (OMR) refers to converting musical scores into digitized information using electronics. In recent years, few types of OMR research have involved numbered musical notation (NMN). The existing NMN recognition algorithm is diff...

  • Article
  • Open Access
8 Citations
2,704 Views
19 Pages

Current research on automated driving systems focuses on Level 4 automated driving (AD) in specific operational design Domains (ODD). Measurement data from customer fleet operation are commonly used to extract scenarios and ODD features (road infrast...

  • Article
  • Open Access
35 Citations
10,718 Views
13 Pages

23 June 2019

Convolutional neural networks (CNN) have achieved excellent results in the field of image recognition that classifies objects in images. A typical CNN consists of a deep architecture that uses a large number of weights and layers to achieve high perf...

  • Article
  • Open Access
14 Citations
4,536 Views
15 Pages

Volunteer-contributed geographic data (VGI) is an important source of geospatial big data that support research and applications. A major concern on VGI data quality is that the underlying observation processes are inherently biased. Detecting observ...

  • Article
  • Open Access
2 Citations
2,082 Views
26 Pages

24 January 2025

The structure learning of a Bayesian network (BN) is a crucial process that aims to unravel the complex dependencies relationships among variables using a given dataset. This paper proposes a new BN structure learning method for data with continuous...

  • Feature Paper
  • Article
  • Open Access
2 Citations
1,226 Views
19 Pages

Enhanced 3D Outdoor Positioning Method Based on Adaptive Kalman Filter and Kernel Density Estimation for 6G Wireless System

  • Kyounghun Kim,
  • Seongwoo Lee,
  • Byungsun Hwang,
  • Jinwook Kim,
  • Joonho Seon,
  • Soohyun Kim,
  • Youngghyu Sun and
  • Jinyoung Kim

23 November 2024

The implementation of accurate positioning methods in both line-of-sight (LOS) and non-line-of-sight (NLOS) environments has been emphasized for seamless 6G application services. In LOS environments with unobstructed paths between the transmitter and...

of 23