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

Kitsune Optimiser Algorithm

View through CrossRef
The Kitsune Optimization Algorithm (KOA), inspired by the mythical Kitsune, introduces a transformative approach in the realm of metaheuristic optimization. This paper presents an in-depth analysis of KOA, underlining its exceptional capabilities in terms of enhanced convergence speed, accuracy, and robustness. Empirical results from 12 benchmark functions along with optimizing power output in Photovoltaic (PV) systems reveal KOA’s rapid convergence capabilities, significantly reducing computational time. In comparison to established algorithms, KOA shows a marked improvement in convergence speed, reaching optimal solutions faster by an average of first 5 iterations. In terms of accuracy, KOA demonstrates an impressive ability to locate global optima with a lower average error margin of 98 %, indicating a substantial increase in solution precision over traditional methods. This level of accuracy is particularly evident in complex multi-modal landscapes, where KOA consistently outperforms its counterparts. Furthermore, KOA exhibits exceptional robustness across various test scenarios, maintaining consistent performance and exhibiting a high level of stability. This robustness is further evidenced in real-world applications, such as the optimization of power output in Photovoltaic (PV) systems, where KOA adapts effectively to dynamic environmental conditions, showcasing its practical applicability and reliability. Overall, the Kitsune Optimization Algorithm sets a new benchmark in the field of metaheuristic algorithms with its enhanced convergence speed, superior accuracy, and robustness, making it a promising tool for tackling complex optimization problems in diverse domains.
Title: Kitsune Optimiser Algorithm
Description:
The Kitsune Optimization Algorithm (KOA), inspired by the mythical Kitsune, introduces a transformative approach in the realm of metaheuristic optimization.
This paper presents an in-depth analysis of KOA, underlining its exceptional capabilities in terms of enhanced convergence speed, accuracy, and robustness.
Empirical results from 12 benchmark functions along with optimizing power output in Photovoltaic (PV) systems reveal KOA’s rapid convergence capabilities, significantly reducing computational time.
In comparison to established algorithms, KOA shows a marked improvement in convergence speed, reaching optimal solutions faster by an average of first 5 iterations.
In terms of accuracy, KOA demonstrates an impressive ability to locate global optima with a lower average error margin of 98 %, indicating a substantial increase in solution precision over traditional methods.
This level of accuracy is particularly evident in complex multi-modal landscapes, where KOA consistently outperforms its counterparts.
Furthermore, KOA exhibits exceptional robustness across various test scenarios, maintaining consistent performance and exhibiting a high level of stability.
This robustness is further evidenced in real-world applications, such as the optimization of power output in Photovoltaic (PV) systems, where KOA adapts effectively to dynamic environmental conditions, showcasing its practical applicability and reliability.
Overall, the Kitsune Optimization Algorithm sets a new benchmark in the field of metaheuristic algorithms with its enhanced convergence speed, superior accuracy, and robustness, making it a promising tool for tackling complex optimization problems in diverse domains.

Related Results

Optimiser™: The next generation of microplates (144.18)
Optimiser™: The next generation of microplates (144.18)
Abstract The Optimiser™ microplates combine the power of microfluidics with the 96-well architecture to offer unparalleled performance. The Optimiser consists of an ...
Improving the performance of 3D image model compression based on optimized DEFLATE algorithm
Improving the performance of 3D image model compression based on optimized DEFLATE algorithm
AbstractThis study focuses on optimizing and designing the Delayed-Fix-Later Awaiting Transmission Encoding (DEFLATE) algorithm to enhance its compression performance and reduce th...
Three Steps to Improve Jellyfish Search Optimiser
Three Steps to Improve Jellyfish Search Optimiser
This paper describes three different mechanisms used in Jellyfish Search (JS) optimiser. At first, an archive of good old solutions is used to prevent getting stuck in the local-op...
An Adaptive Genetic Algorithm-based Background Elimination Model for English Text
An Adaptive Genetic Algorithm-based Background Elimination Model for English Text
Abstract In this paper, an adaptive genetic algorithm is used to conduct an in-depth study and analysis of English text background elimination, and a corresponding model is...
A Sparse CoSaMP Channel Estimation Algorithm With Adaptive Variable Step Size for an OFDM System
A Sparse CoSaMP Channel Estimation Algorithm With Adaptive Variable Step Size for an OFDM System
Compressive sampling matching pursuit (CoSaMP), as a conventional algorithm requiring system sparsity and sensitive to step size, was improved in this paper by approximating the sp...
An improved Coati Optimization Algorithm with multiple strategies for engineering design optimization problems
An improved Coati Optimization Algorithm with multiple strategies for engineering design optimization problems
AbstractAiming at the problems of insufficient ability of artificial COA in the late optimization search period, loss of population diversity, easy to fall into local extreme value...
Optimization design based on hierarchic genetic algorithm and particles swarm algorithm
Optimization design based on hierarchic genetic algorithm and particles swarm algorithm
For a lot of data, it is time-consuming and unpractical to get the best combination by manual tests. The genetic algorithm can make up for this shortcoming through the optimization...
Improved Artificial Bee Colony Algorithm Based on Harris Hawks Optimization
Improved Artificial Bee Colony Algorithm Based on Harris Hawks Optimization
<p>Artificial bee colony algorithm, as a kind of bio-like intelligent algorithm, used by various optimization problems because of its few parameters and simple structure. How...

Back to Top