Spider monkey based metaheuristic tuning of PID controllers for stability landing of UAV'S with SMP-Auxetic landing gears

M. Magesh, P. K. Jawahar, S. Saranya
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Abstract

The proposed work deals with the study of automatic tuning of PID controllers for perched landing of UAV'S with shape memory This modeling considerably enhanced the range of feasible structures for perch and rest compared with avian-inspired influencers. Though not nature-inspired, and far easier than a foot from a bird, stiff fingers and contact modules were easier to create than avian-inspired gripers with several joint joints per finger and stronger and more durable. Start and landing in flight phases are critical phases.polymer based auxetic landing gears. A metaheuristic tuning is implemented through spider monkey approach for PID controllers in drone perching mechanism. Trials were conducted with open loop for drone perching conditions in measuring the error rates pitch, yaw and roll moment. Fitness function is calculated through regression analysis for the observed experiments. Spider monkey based optimization algorithm is implemented for the fitness function to find the optimal data of Kp, Ki and Kd for minimal error rate of pitch, yaw and roll moment to balance the drone at various perching angles. The provided results have been compared with model predictive controller (MPC) and Generic model control (GMC). It has been noted that SM based PID controller reduces the maximum error rates with 34.6% when compared with MPC and 24.8% when compared with GMC.
基于蜘蛛猴的smp -辅助起落架无人机稳定降落PID控制器元启发式整定
本文研究了具有形状记忆的无人机悬停着陆PID控制器的自动整定,与鸟类影响器相比,该建模大大增加了悬停和休息结构的可行范围。虽然不是大自然的灵感,也比鸟的脚容易得多,但僵硬的手指和接触模块比鸟的灵感更容易制造,每个手指有几个关节,更坚固,更耐用。起飞和着陆是飞行阶段的关键阶段。基于聚合物的辅助起落架。采用蜘蛛猴方法对无人机悬停机构中的PID控制器进行了元启发式整定。在无人机悬停条件下进行了开环试验,测量了俯仰、偏航和滚转力矩的错误率。通过对观察到的实验进行回归分析,计算出适应度函数。对适应度函数采用基于蜘蛛猴的优化算法,求出俯仰、偏航和滚转力矩错误率最小的Kp、Ki和Kd的最优数据,以平衡无人机在不同的栖息角度。并与模型预测控制器(MPC)和通用模型控制(GMC)进行了比较。结果表明,基于SM的PID控制器与MPC相比,最大错误率降低34.6%,与GMC相比,最大错误率降低24.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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