DEVELOPMENT AND EVALUATION OF HIGH PERFORMANCE HYBRID OPTIMIZATION MECHANISM FOR MICROSTRIP ANTENNA DESIGN CONFIGURATION

Susheel Kumar Singh, Shailendra Singh, Mukesh Kumar
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Abstract

An efficient and high degree of resolution must be achieved by integrating optimization solutions into the design of high-performance antennas, which has become a prominent consideration in recent years. To achieve the best results when making decisions, optimization procedures like particle swarm optimization (PSO), ant colony optimization (ACO), and mean variance optimization (MVO) have been widely used. However, these optimization algorithms have a number of drawbacks. For example, the ACO-based solution does not support application complexity, while PSO exhibits a low rate of convergence throughout the course of the process cycles. In this work, a hybrid approach for the design of microstrip antennas has been suggested by integrating PSO and MVO techniques, which greatly improves the outcomes, taking into account the limits of existing optimization processes. The proposed hybrid approach is capable of combining the PSO-MVO with multiple parameters like iteration, upper bond, lower bond, and objective function. Finally, research work evaluates the time consumption and error rate with respect to conventional techniques. Results show an improvement of 61% and 50% in the time consumed by the hybrid PSO-MVO approach as compared to the PSO and MVO approach respectively. The hybrid PSO-MVO achieves an accuracy of 87.15 which is 3% better than individual optimization techniques. Simulation work has been made in a Matlab environment in order to get the best solution using a hybrid optimization technique.
开发和评估微带天线设计配置的高性能混合优化机制
要实现高效和高分辨率,就必须将优化方案融入高性能天线的设计中,这已成为近年来的一个突出考虑因素。为了在决策时取得最佳结果,粒子群优化(PSO)、蚁群优化(ACO)和均方差优化(MVO)等优化程序已被广泛使用。不过,这些优化算法也有不少缺点。例如,基于 ACO 的解决方案不支持应用复杂性,而 PSO 在整个流程循环过程中收敛率较低。在这项工作中,通过整合 PSO 和 MVO 技术,提出了一种设计微带天线的混合方法,在考虑到现有优化过程的局限性的同时,极大地改进了结果。所提出的混合方法能够将 PSO-MVO 与迭代、上键、下键和目标函数等多个参数相结合。最后,研究工作评估了与传统技术相比的时间消耗和错误率。结果表明,与 PSO 和 MVO 方法相比,混合 PSO-MVO 方法的耗时分别减少了 61% 和 50%。混合 PSO-MVO 的精确度达到 87.15,比单独的优化技术高出 3%。仿真工作是在 Matlab 环境下进行的,目的是利用混合优化技术获得最佳解决方案。
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