首页> 外文会议>AAAI Conference on Artificial Intelligence >A Unified Framework for Augmented Reality and Knowledge-Based Systems in Maintaining Aircraft
【24h】

A Unified Framework for Augmented Reality and Knowledge-Based Systems in Maintaining Aircraft

机译:维持飞机增强现实和知识系统的统一框架

获取原文

摘要

Aircraft maintenance and training play one of the most important roles in ensuring flight safety. The maintenance process usually involves massive numbers of components and substantial procedural knowledge of maintenance procedures. Maintenance tasks require technicians to follow rigorous procedures to prevent operational errors in the maintenance process. In addition, the maintenance time is a cost-sensitive issue for airlines. This paper proposes intelligent augmented reality (IAR) system to minimize operation errors and time-related costs and help aircraft technicians cope with complex tasks by using an intuitive UI/UX interface for their maintenance tasks. The IAR system is composed mainly of three major modules: 1) the AR module 2) the knowledge-based system (KBS) module 3) a unified platform with an integrated UI/UX module between the AR and KBS modules. The AR module addresses vision-based tracking, annotation, and recognition. The KBS module deals with ontology-based resources and context management. Overall testing of the IAR system is conducted at Korea Air Lines (KAL) hangars. Tasks involving the removal and installation of pitch trimmers in landing gear are selected for benchmarking purposes, and according to the results, the proposed IAR system can help technicians to be more effective and accurate in performing their maintenance tasks.
机译:飞机维护和培训在确保飞行安全方面发挥最重要的作用之一。维护过程通常涉及大量的组件和维护程序的大量程序知识。维护任务要求技术人员遵循严格的程序来防止维护过程中的操作错误。此外,维护时间是航空公司的成本敏感问题。本文提出了智能增强现实(IAR)系统,以最大限度地减少运行错误和时间相关成本,并帮助飞机技术人员通过使用直观的UI / UX接口来解决复杂的任务,以实现其维护任务。 IAR系统主要由三个主要模块组成:1)AR模块2)基于知识的系统(KBS)模块3)具有AR和KBS模块之间的集成UI / UX模块的统一平台。 AR模块解决了基于视觉的跟踪,注释和识别。 KBS模块涉及基于本体的资源和上下文管理。 IAR系统的整体测试是在韩国航空线(kal)机库进行。选择涉及在着陆齿轮中拆卸和安装的任务是为了基准测试目的,并根据结果,提议的IAR系统可以帮助技术人员更有效和准确地执行其维护任务。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号