Rashmi Singh, D. K. Nishad, Saifullah Khalid, Aryan Chaudhary
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引用次数: 0
摘要
自动驾驶汽车(AV)和无人驾驶飞行器(UAV)为运输和航空业带来了变革。然而,如何使这些系统完全自主,并能在不可预测的现实环境中安全导航,仍然是一个巨大的挑战。模糊逻辑和相关数学算法已成为解决这些系统中不确定性和复杂决策的实用工具。本文回顾了模糊逻辑和数学方法如何应用于 AV 和 UAV 的导航、控制、避障、路线规划和决策等领域。它深入探讨了在自动驾驶汽车中使用模糊逻辑的关键方法、设计、利弊。论文还将模糊逻辑与其他人工智能技术进行了比较。综述显示,模糊逻辑可管理自动驾驶车辆如何感知和导航动态环境所涉及的不确定性和不精确性。在车辆控制和无人飞行器方向控制方面,模糊控制器的性能往往优于传统方法。自动驾驶汽车的高层决策和路线规划也受益于模糊推理系统。不过,计算效率、适应性以及模糊逻辑与其他人工智能组件的整合等挑战依然存在。本文最后提出了未来研究的建议,以便利用模糊逻辑使自动驾驶汽车和无人机更智能、更安全。这篇综述对开发智能自主系统的任何人都是一本有用的指南。
A review of the application of fuzzy mathematical algorithm-based approach in autonomous vehicles and drones
Autonomous vehicles (AVs) and unmanned aerial vehicles (UAVs) have brought about transformative changes in transportation and aviation. However, making these systems fully autonomous and able to navigate safely in unpredictable real-world situations remains a big challenge. Fuzzy logic and related mathematical algorithms have emerged as practical tools to tackle uncertainty and complex decision-making in these systems. This paper reviews how fuzzy logic and mathematical approaches are applied in areas like navigation, control, avoiding obstacles, planning routes, and decision-making for AVs and UAVs. It delves into the key methods, designs, pros, and cons of using fuzzy logic in autonomous vehicles. The paper also compares fuzzy logic with other AI techniques. The review shows that fuzzy logic manages the uncertainties and imprecision involved in how autonomous vehicles perceive and navigate dynamic environments. Fuzzy controllers often perform better than traditional methods in vehicle control and UAV direction control. High-level decisions and route planning in AVs have also benefited from fuzzy inference systems. Still, challenges like computational efficiency, adaptability, and integrating fuzzy logic with other AI components remain. The paper concludes with suggestions for future research to make autonomous vehicles and drones smarter and safer using fuzzy logic. This review is a useful guide for anyone developing intelligent autonomous systems.
期刊介绍:
The International Journal of Intelligent Robotics and Applications (IJIRA) fosters the dissemination of new discoveries and novel technologies that advance developments in robotics and their broad applications. This journal provides a publication and communication platform for all robotics topics, from the theoretical fundamentals and technological advances to various applications including manufacturing, space vehicles, biomedical systems and automobiles, data-storage devices, healthcare systems, home appliances, and intelligent highways. IJIRA welcomes contributions from researchers, professionals and industrial practitioners. It publishes original, high-quality and previously unpublished research papers, brief reports, and critical reviews. Specific areas of interest include, but are not limited to:Advanced actuators and sensorsCollective and social robots Computing, communication and controlDesign, modeling and prototypingHuman and robot interactionMachine learning and intelligenceMobile robots and intelligent autonomous systemsMulti-sensor fusion and perceptionPlanning, navigation and localizationRobot intelligence, learning and linguisticsRobotic vision, recognition and reconstructionBio-mechatronics and roboticsCloud and Swarm roboticsCognitive and neuro roboticsExploration and security roboticsHealthcare, medical and assistive roboticsRobotics for intelligent manufacturingService, social and entertainment roboticsSpace and underwater robotsNovel and emerging applications