Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Unraveling the Complexity with Applications of Nonlinear Analysis in Signal Processing, Social Science, and Communication Engineering

View through CrossRef
As a result of its power, nonlinear analysis has prevailed as a significant tool for the treatment of complex systems in signal processing, social science, and communication engineering. In this research, four key algorithms in Nonlinear methodologies are analyzed to see what is the better approach: Nonlinear Kalman Filtering, Chaos Based Neural Networks, Fractal Dimension Analysis and Nonlinear Entangled Networks. Experimental results demonstrate that nonlinear models have higher predictive accuracy and ability to detect patterns compared to traditional linear models. For example, the Nonlinear Kalman Filter was able to reduce the amount of signal noise by 18% over other filtering methods, as well as 22% improvement in classification using Chaos-Based Neural Networks. Network clustering efficiency was enhanced 15% by Fractal Dimension Analysis; and Nonlinear Entanglement Networks indicated an improvement of 20% in the detection of key nodes in complex networks. This results document the robustness and versatility of such nonlinear techniques for dynamic uncertain environments. The proposed nonlinear methods are more adaptable and computationally efficient than the studied research. Nevertheless, algorithm complexity and real-time implementation are still to be looked at. The approached in this study should be extended to improve nonlinear frameworks and hybrid models to incorporate a wider spectrum of applications. Finally, this study confirms the existence of the peculiar power of nonlinear analysis in various disciplines and leading to unprecedented advances in data driven decision making and models of systems.
Title: Unraveling the Complexity with Applications of Nonlinear Analysis in Signal Processing, Social Science, and Communication Engineering
Description:
As a result of its power, nonlinear analysis has prevailed as a significant tool for the treatment of complex systems in signal processing, social science, and communication engineering.
In this research, four key algorithms in Nonlinear methodologies are analyzed to see what is the better approach: Nonlinear Kalman Filtering, Chaos Based Neural Networks, Fractal Dimension Analysis and Nonlinear Entangled Networks.
Experimental results demonstrate that nonlinear models have higher predictive accuracy and ability to detect patterns compared to traditional linear models.
For example, the Nonlinear Kalman Filter was able to reduce the amount of signal noise by 18% over other filtering methods, as well as 22% improvement in classification using Chaos-Based Neural Networks.
Network clustering efficiency was enhanced 15% by Fractal Dimension Analysis; and Nonlinear Entanglement Networks indicated an improvement of 20% in the detection of key nodes in complex networks.
This results document the robustness and versatility of such nonlinear techniques for dynamic uncertain environments.
The proposed nonlinear methods are more adaptable and computationally efficient than the studied research.
Nevertheless, algorithm complexity and real-time implementation are still to be looked at.
The approached in this study should be extended to improve nonlinear frameworks and hybrid models to incorporate a wider spectrum of applications.
Finally, this study confirms the existence of the peculiar power of nonlinear analysis in various disciplines and leading to unprecedented advances in data driven decision making and models of systems.

Related Results

DAMPAK TEKNOLOGI TERHADAP PROSES BELAJAR MENGAJAR
DAMPAK TEKNOLOGI TERHADAP PROSES BELAJAR MENGAJAR
DAFTAR PUSTAKAAditama, M. H. R., & Selfiardy, S. (2022). Kehidupan Mahasiswa Kuliah Sambil Bekerja di Masa Pandemi Covid-19. Kidspedia: Jurnal Pendidikan Anak Usia Dini, 3(...
Applied Nonlinear Analysis for Efficient Communication Signal Processing and Network Management
Applied Nonlinear Analysis for Efficient Communication Signal Processing and Network Management
The use of nonlinear analysis in network management and communication signal processing is a revolutionary strategy that is redefining contemporary networking paradigms. The goal o...
Public engagement of scientists (Science Communication)
Public engagement of scientists (Science Communication)
Public engagement of scientists is defined as “all kinds of publicly accessible communication carried out by people presenting themselves as scientists. This includes scholarly com...
Nonlinear optimal control for robotic exoskeletons with electropneumatic actuators
Nonlinear optimal control for robotic exoskeletons with electropneumatic actuators
Purpose To provide high torques needed to move a robot’s links, electric actuators are followed by a transmission system with a high transmission rate. For instance, gear ratios of...
Complexity Theory
Complexity Theory
The workshop Complexity Theory was organised by Joachim von zur Gathen (Bonn), Oded Goldreich (Rehovot), Claus-Peter Schnorr (Frankfurt), an...
Linguistic Complexity
Linguistic Complexity
Linguistic complexity (or: language complexity, complexity in language) is a multifaceted and multidimensional research area that has been booming since the early 2000s. The curren...
Nonlinear geometric multivariable control for unmanned aircraft flight system
Nonlinear geometric multivariable control for unmanned aircraft flight system
Purpose Due to the important role of unmanned aircraft in military and human’s normal practical application, this paper aims to extend the interesting research ...
Analysis of Types in Business Communication using the TOPSIS Method
Analysis of Types in Business Communication using the TOPSIS Method
Information interchange between employees and others outside the corporation is referred to as business communication. To accomplish organizational objectives, managers and staff i...

Back to Top