无人机自动控制系统中的人工智能方法

G. S. Veresnikov, A. Skryabin
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引用次数: 0

摘要

确保无人机系统(UAS)安全和控制性能指标的主要问题之一,是对机载传感器传来的异构数据进行运行分析组织,并在其基础上形成适当的建议和决定,以执行飞行任务。近年来,有许多研究论文致力于利用人工智能(AI)方法解决这一问题。本文讨论了用于无人机系统相关任务的人工智能方法。我们介绍了生成应用人工智能方法所需数据的信息来源。我们对使用人工智能方法解决计算机视觉和导航系统的典型任务进行了分类。我们分析了研究课题范围内公认的人工智能方法分类。同时,我们还特别关注了人工智能方法的特点,这些方法可以解决许多众所周知的问题,如识别、近似、优化无人机系统目标和导航任务的实现以及有效的操作员支持。我们特别考虑了神经网络、决策树、支持向量机、k 近邻算法、遗传算法、蚁群算法和人工免疫系统。目前,硬件可以将基于这些方法的复杂算法集成到机上,并在飞行任务中广泛使用。科学出版物中的实例说明了作为审查一部分进行的研究的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Methods in Automated Unmanned Aerial Vehicles Control Systems
One of the main problems in ensuring the unmanned aerial systems (UAS) safety and control performance indicators is the operational analysis organization of heterogeneous data coming from on-board sensors and the formation of adequate recommendations and decisions on their basis of flight missions implementation. In recent years, there have been many research papers devoted to solving this problem using artificial intelligence (AI) methods. The article discusses AI methods for using in tasks related to UAS. We have described the sources of information to generate the data necessary for the application of AI methods. We have classified typical tasks of computer vision and navigation systems for solving using AI methods. We have analyzed the generally accepted classification of AI methods within the scope of the research subject. At the same time, special attention is paid to the features of AI methods that allow solving many well-known problems of recognition, approximation, optimization for UAS target and navigation tasks realization and effective operator support. In particular, we have considered neural networks, decision trees, support vector machines, k-nearest neighbors, genetic, ant colony algorithms, artificial immune systems. Currently, the hardware allows integrating complex algorithms based on these methods on board and widely using them in flight missions. The results of the study conducted as part of the review are illustrated by examples from the scientific publications.
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