集成二阶滑模控制和自编码器异常检测提高四旋翼无人机的安全性和可靠性

Saman Yazdannik, Shamime Sanisales, Morteza Tayefi, R. Esmaelzadeh, M. Khazaee
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引用次数: 0

摘要

本文提出了一种集成二阶滑模控制(2-SMC)和基于机器学习和人工智能的先进异常检测和预测系统的四旋翼无人机安全性和可靠性的综合框架。针对四旋翼飞行器控制器的设计难题,提出了一种新的滑模流形方法,该方法分为两个子系统进行精确的位置和姿态跟踪。本文还利用赫维茨稳定性分析方法对滑动流形的非线性系数进行了详细的分析。通过大量的仿真结果验证了该方法的有效性。为了进一步评估四旋翼飞行器的安全性和可靠性,将异常检测和预测系统与位置和姿态跟踪控制相结合。该系统利用机器学习和人工智能技术实时识别和预测异常行为或故障,使四旋翼飞机能够快速有效地应对紧急情况。该框架为四旋翼无人机鲁棒安全控制器的设计提供了一种可行的方法。它展示了先进的机器学习和人工智能技术在提高自主系统的安全性和可靠性方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Second Order Sliding Mode Control and Anomaly Detection Using Auto-Encoder for Enhanced Safety and Reliability of Quadrotor UAVs
This paper presents a comprehensive framework for enhancing the safety and reliability of quadrotor UAVs by integrating second-order sliding mode control (2-SMC) and an advanced anomaly detection and prediction system based on machine learning and AI. The paper addresses the challenges of designing controllers for quadrotors by proposing a novel sliding manifold approach divided into two subsystems for accurate position and attitude tracking. The paper also provides a detailed analysis of the nonlinear coefficients of the sliding manifold using Hurwitz stability analysis. It demonstrates the effectiveness of the proposed method through extensive simulation results. To further assess the safety and reliability of the quadrotor, an anomaly detection and prediction system is integrated with the position and attitude tracking control. The system utilizes machine learning and AI techniques to identify and predict abnormal behaviours or faults in real time, enabling the quadrotor to quickly and effectively respond to critical situations. The proposed framework provides a promising approach for designing robust and safe controllers for quadrotor UAVs. It demonstrates the potential of advanced machine learning and AI techniques for enhancing the safety and reliability of autonomous systems.
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