The Aitken Accelerated Gradient Algorithm for a Class of Dual‐Rate Volterra Nonlinear Systems Utilizing the Self‐Organizing Map Technique DOI
Junwei Wang, Weili Xiong, Feng Ding

et al.

International Journal of Robust and Nonlinear Control, Journal Year: 2025, Volume and Issue: unknown

Published: April 22, 2025

ABSTRACT This article focuses on the parameter estimation issues for dual‐rate Volterra fractional‐order autoregressive moving average models. In case of sampling, we derive a identification model system and implement intersample output with help an auxiliary method. Then, combined self‐organizing map technique, propose Aitken multi‐innovation gradient‐based iterative algorithm. The parameters are estimated using algorithm, whereas differential orders determined Moreover, computational cost proposed algorithm is analyzed floating point operation. Finally, convergence analysis simulation examples show effectiveness

Language: Английский

Least squares parameter estimation and multi-innovation least squares methods for linear fitting problems from noisy data DOI
Feng Ding

Journal of Computational and Applied Mathematics, Journal Year: 2023, Volume and Issue: 426, P. 115107 - 115107

Published: Feb. 10, 2023

Language: Английский

Citations

184

Filtered auxiliary model recursive generalized extended parameter estimation methods for Box–Jenkins systems by means of the filtering identification idea DOI
Feng Ding, Ling Xu, Xiao Zhang

et al.

International Journal of Robust and Nonlinear Control, Journal Year: 2023, Volume and Issue: 33(10), P. 5510 - 5535

Published: March 30, 2023

Abstract For equation‐error autoregressive moving average systems, that is, Box–Jenkins this paper presents a filtered auxiliary model generalized extended stochastic gradient identification method, multi‐innovation recursive least squares and method by using the filtering idea idea. The proposed methods can be to other linear nonlinear multivariable systems with colored noises.

Language: Английский

Citations

136

Separable synthesis gradient estimation methods and convergence analysis for multivariable systems DOI
Ling Xu, Feng Ding

Journal of Computational and Applied Mathematics, Journal Year: 2023, Volume and Issue: 427, P. 115104 - 115104

Published: Feb. 10, 2023

Language: Английский

Citations

93

Recursive identification methods for general stochastic systems with colored noises by using the hierarchical identification principle and the filtering identification idea DOI
Feng Ding, Ling Xu, Xiao Zhang

et al.

Annual Reviews in Control, Journal Year: 2024, Volume and Issue: 57, P. 100942 - 100942

Published: Jan. 1, 2024

Language: Английский

Citations

70

State of art on state estimation: Kalman filter driven by machine learning DOI
Yuting Bai, Bin Yan, Chenguang Zhou

et al.

Annual Reviews in Control, Journal Year: 2023, Volume and Issue: 56, P. 100909 - 100909

Published: Jan. 1, 2023

Language: Английский

Citations

57

Multi‐innovation gradient‐based iterative identification methods for feedback nonlinear systems by using the decomposition technique DOI
Dan Yang, Feng Ding

International Journal of Robust and Nonlinear Control, Journal Year: 2023, Volume and Issue: 33(13), P. 7755 - 7773

Published: June 3, 2023

Summary This paper studies the parameter estimation problems of feedback nonlinear systems. Combining multi‐innovation identification theory with negative gradient search, we derive a gradient‐based iterative algorithm. In order to reduce computational burden and further improve accuracy, decomposition algorithm is proposed by using technique. The key transform an original system into two subsystems estimate parameters each subsystem, respectively. A simulation example provided demonstrate effectiveness algorithms.

Language: Английский

Citations

54

Unbiased recursive least squares identification methods for a class of nonlinear systems with irregularly missing data DOI
Wenxuan Liu, Meihang Li

International Journal of Adaptive Control and Signal Processing, Journal Year: 2023, Volume and Issue: 37(8), P. 2247 - 2275

Published: June 6, 2023

Summary Missing data often occur in industrial processes. In order to solve this problem, an auxiliary model and a particle filter are adopted estimate the missing outputs, two unbiased parameter estimation methods developed for class of nonlinear systems (e.g., bilinear systems) with irregularly data. Firstly, is constructed unknown output, model‐based multi‐innovation recursive least squares algorithm presented by expanding scalar innovation vector. Secondly, according bias compensation principle, proposed compensate caused colored noise. Thirdly, further improving accuracy, true output estimated filter, filtering‐based developed. Finally, numerical example selected validate effectiveness algorithms. The simulation results indicate that algorithms have good performance identifying

Language: Английский

Citations

53

The filtering-based recursive least squares identification and convergence analysis for nonlinear feedback control systems with coloured noises DOI
Ling Xu, Huan Xu, Chun Wei

et al.

International Journal of Systems Science, Journal Year: 2024, Volume and Issue: 55(16), P. 3461 - 3484

Published: July 7, 2024

Language: Английский

Citations

16

Building Energy Prediction Models and Related Uncertainties: A Review DOI Creative Commons
Jiaqi Yu, Wen‐Shao Chang, Yu Dong

et al.

Buildings, Journal Year: 2022, Volume and Issue: 12(8), P. 1284 - 1284

Published: Aug. 21, 2022

Building energy usage has been an important issue in recent decades, and prediction models are tools for analysing this problem. This study provides a comprehensive review of building uncertainties the models. First, paper introduces three types methods: white-box models, black-box grey-box The principles, strengths, shortcomings, applications every model discussed systematically. Second, analyses terms human, building, weather factors. Finally, research gaps predicting consumption summarised order to guide optimisation methods.

Language: Английский

Citations

48

Detection of non‐suicidal self‐injury based on spatiotemporal features of indoor activities DOI Creative Commons
Guanci Yang, Siyuan Yang, Kexin Luo

et al.

IET Biometrics, Journal Year: 2023, Volume and Issue: 12(2), P. 91 - 101

Published: March 1, 2023

Abstract Non‐suicide self‐injury (NSSI) can be dangerous and difficult for guardians or caregivers to detect in time. NSSI refers when people hurt themselves even though they have no wish cause critical long‐lasting hurt. To timely identify effectively prevent order reduce the suicide rates of patients with a potential risk, detection based on spatiotemporal features indoor activities is proposed. Firstly, an behaviour dataset provided, it includes four categories that used scientific research evaluation. Secondly, algorithm (NssiDetection) NssiDetection calculates human bounding box by using object model employs extract temporal spatial behaviour. Thirdly, optimal combination schemes investigated checking its performance different methods training strategies. Lastly, case study performed implementing prototype system. The system has recognition accuracy 84.18% actions new backgrounds, persons, camera angles.

Language: Английский

Citations

35