Spider Monkey Metaheuristic Tuning of Model Predictive Control with Perched Landing Stabilities for Novel Auxetic Landing Foot in Drones

Magesh M, P.K. Jawahar, Saranya S.N., Raj Jawahar R
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Abstract

The study focuses on improving drone landing gear dynamics through an innovative auxetic foot design, leveraging Spider Monkey Optimization for Model Predictive Control adjustment, facilitated by an Arduino-MATLAB interface. The auxetic foot design incorporates materials with a negative Poisson ratio, which allows the foot to expand and enhance energy absorption during landings. This design improves stability and safety during the perched landing process. The SMO-MPC approach is used to optimise the control of the perched landing gear. SMO, inspired by spider monkey search behaviour, optimises auxetic foot control input sequences with the limits of rotational displacement (theta = 30 deg to -30 deg) on the prediction horizon to improve landing gear performance. The real-time implementation of SMO-MPC is achieved through an Arduino-MATLAB interface on quadcopter drone. A comparative analysis is conducted to evaluate the benefits of SMO-MPC compared to conventional MPC methods. The results show that the SMO-MPC approach with auxetic foot design surpasses conventional MPC methods in terms of landing performance with 14.6 % improvement in damping force control and control of aerodynamic stability with pitch of 34.16 %, yaw of 16.87 %, and roll of 31.74 %.
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蜘蛛猴元启发式调整模型预测控制与无人机新型辅助着陆脚的着陆稳定性
这项研究的重点是通过创新的辅助脚设计改进无人机起落架动力学,利用蜘蛛猴优化进行模型预测控制调整,并通过 Arduino-MATLAB 界面进行辅助。辅助脚设计采用了负泊松比材料,可使脚在着陆时膨胀并增强能量吸收。这种设计提高了栖息着陆过程中的稳定性和安全性。SMO-MPC 方法用于优化栖式起落架的控制。SMO 受蜘蛛猴搜索行为的启发,优化了辅助脚控制输入序列与预测范围内的旋转位移限制(θ = 30 度至 -30 度),以提高起落架性能。通过 Arduino-MATLAB 界面在四旋翼无人机上实现了 SMO-MPC 的实时执行。通过对比分析,评估了 SMO-MPC 与传统 MPC 方法相比的优势。结果表明,采用辅助脚设计的 SMO-MPC 方法在着陆性能方面超过了传统的 MPC 方法,阻尼力控制和气动稳定性控制分别提高了 14.6%、34.16%、16.87% 和 31.74%。
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