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Novel improved chaotic elephant herding optimization algorithm-based optimal defense resource allocation in cyber-physical systems

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Abstract

Presently, the vast digitalization in industries and the advancement of Cyber-Physical systems in manufacturing provide a wide scope for creating an industrial value. To provide an efficient engineering technique, several organizational and technological disputes are to be analyzed. In recent years, there occurs a gradual intervention in networks, and communication that leads to a rapid enhancement in economic potential. This paper aims to propose a vulnerability model that utilizes a dual-stage min–max game for the resource allocation process of CPS. Moreover, a novel Improved Chaotic Elephant Herding Optimization (ICEHO) Algorithm is employed in the allocation of resources, thereby minimizing the damaged cost value. In ICEHO, the random parameters are chaotically tuned to obtain the best optimal value, thereby reducing several computational and complexity issues. In addition to this, the ICEHO is implemented in solving the nonlinear problems that occur during resource allocation. Also, the simulation results describe that the performances of the ICEHO approach provide enhanced system efficiency by using various nine chaotic mapping functions and test functions.

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Acknowledgements

The authors are grateful to Raytheon Chair for Systems Engineering for funding.

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The authors extend their appreciation to the Raytheon Chair for Systems Engineering for funding.

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Correspondence to Mustufa Haider Abidi.

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Abidi, M.H., Alkhalefah, H., Moiduddin, K. et al. Novel improved chaotic elephant herding optimization algorithm-based optimal defense resource allocation in cyber-physical systems. Soft Comput 27, 2965–2980 (2023). https://doi.org/10.1007/s00500-022-07455-4

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