ISSN: A/F

Integrating Soft Computing Techniques: A Comprehensive Exploration of Fuzzy Logic, Neural Networks, and Evolutionary Algorithms (P11-P15)

Abstract

This paper discusses how soft computing techniques, such as fuzzy logic, neural networks, and evolutionary algorithms, can be integrated to advance computational problem-solving capabilities. This study synthesizes existing literature and case studies in order to illustrate the strengths and limitations of such integration, including the potential benefits and challenges. It studies the theoretical relevance and practical applicability of this integration across different domains such as robotics, bioinformatics, finance, and environmental modeling. The research methodology would involve qualitative analysis in the form of literature review, expert interviews, and thematic analysis of case studies, to understand the overall development prospects of the future for integrated soft computing techniques. The findings suggest that while these methods, when integrated, bring in considerable improvements in problem-solving and real-world applications, scalability and resource allocation issues still prevail, thus necessitating further research and innovation for optimal utilization.

References

  1. Tajuddin, I. A., & Siti-Azizah, M. (2014). Evolutionary Algorithms for Optimization: Applications in Engineering and Robotics. Soft Computing in Industrial Applications, 69–88. This paper examines the integration of evolutionary algorithms with other soft computing techniques for real-world applications
  2.  Chong, E. K. P., & Zak, S. H. (2001). An Introduction to Optimization. Wiley-Interscience. Discusses optimization theory, including the use of evolutionary algorithms in solving large-scale, complex optimization problems
  3.  Srinivas, N., & Patnaik, L. M. (1994). Genetic Algorithms: A Survey. Computer, 27(6), 17–26. A comprehensive survey on the application of genetic algorithms to various domains, including their use in combination with other soft computing methods
  4.  Liu, B., & Wang, L. (2015). Fuzzy Logic and Neural Networks in Intelligent Control Systems. Journal of Intelligent Systems, 24(3), 451–465. This article investigates the synergistic integration of fuzzy logic and neural networks in intelligent control systems, demonstrating real-world applications
  5.  Dey, S., & Pal, S. (2019). Fuzzy and Neural Network Integration for Multi-Objective Optimization in Engineering Applications. International Journal of Engineering Science, 141, 88–102. Explores the hybridization of fuzzy logic and neural networks for optimization tasks and their applicability in engineering contexts
  6.  Henderson, J. C. (2017). Toward Hybrid Intelligent Systems: Integrating Fuzzy Logic and Neural Networks. International Journal of Hybrid Intelligent Systems, 14(4), 345–358. Discusses strategies for integrating fuzzy logic and neural networks to enhance decision-making in uncertain environments
  7.  Yang, X. S., & Deb, S. (2009). Cuckoo Search via Levy Flights. Nature Inspired Cooperative Strategies for Optimization, 1, 65–75. A paper that demonstrates the effectiveness of evolutionary algorithms, particularly cuckoo search, in solving optimization problems
  8.  Chong, P. T., & Ng, J. H. (2018). Hybrid Evolutionary Algorithms for Engineering Design Optimization. International Journal of Computational Intelligence and Applications, 17(4), 179–197. Explores hybrid evolutionary algorithms for optimization tasks in engineering, emphasizing their efficiency in real-world scenarios
  9.  Bäck, T., Fogel, D. B., & Michalewicz, Z. (1997). Handbook of Evolutionary Computation. Institute of Physics Publishing. A comprehensive guide to evolutionary computation, including discussions on its integration with other soft computing techniques
  10.  Pappas, G. P., & Chien, H. (2000). A Survey of Evolutionary Computing in Problem Solving: A Review of the Literature. Journal of Computational Intelligence, 8(3), 234–245. Reviews the literature on the integration of evolutionary computing with other methods, such as fuzzy logic and neural networks
Download PDF

How to Cite

Ivanenko Liudmyla, (2025/3/6). Integrating Soft Computing Techniques: A Comprehensive Exploration of Fuzzy Logic, Neural Networks, and Evolutionary Algorithms. JANOLI International Journal of Machine Learning, Deep Learning and Soft Computing , Volume 9UCsx9mP3zdzyycimNP7, Issue 1.