首页> 外文期刊>Journal of intelligent material systems and structures >A framework for the identification of full-field structural dynamics using sequences of images in the presence of non-ideal operating conditions
【24h】

A framework for the identification of full-field structural dynamics using sequences of images in the presence of non-ideal operating conditions

机译:在非理想操作条件下使用图像序列识别全场结构动力学的框架

获取原文
获取原文并翻译 | 示例

摘要

Recent developments in the ability to automatically and efficiently extract natural frequencies, damping ratios, and full-field mode shapes from video of vibrating structures has great potential for reducing the resources and time required for performing experimental and operational modal analysis at very high spatial resolution. Furthermore, these techniques have the added advantage that they can be implemented remotely and in a non-contact fashion. Emerging full-field imaging techniques therefore have potential to allow the identification of the modal properties of structures in regimes that used to be challenging. For instance, these techniques suggest that the high spatial resolution structural identification could be performed on an aircraft during flight using a ground or aircraft-based imager. They also have the potential to identify the dynamics of microscopic systems. In order to realize this capability it will be necessary to develop techniques that can extract full-field structural dynamics in the presence of non-ideal operating conditions. In this work, we develop a framework for the deployment of emerging algorithms that allow the automatic extraction of high-resolution, full-field modal parameters in the presence of non-ideal operating conditions. One of the most notable non-ideal operating conditions is the rigid body motion of both the structure being measured as well as the imager performing the measurement. We demonstrate an instantiation of the framework by showing how it can be used to address, in-plane, translational, rigid body motion. The development of a frame-to-frame keypoint–based technique for identifying full-field structural dynamics in the presence of either rigid body motion is presented and demonstrated in the context of the framework for the deployment of full-field structural identification techniques in the presence of non-ideal operating conditions. It is expected that this framework will ultimately help enable the collection of full-field structural dynamics using measurement platforms including unmanned aerial vehicles, robotic telescopes, satellites, imagers mounted in high-vibration environments (seismic, industrial, harsh weather), characterization of microscopic structures, and human-carried imagers. If imager-based structural identification techniques mature to the point that they can be used in non-ideal field conditions, it could open up the possibility that the structural health monitoring community will be able to think beyond monitoring individual structures, to full-field structural integrity monitoring at the city scale.
机译:从振动结构的视频中自动有效地提取固有频率,阻尼比和全场模式形状的能力方面的最新发展具有巨大的潜力,可以减少以很高的空间分辨率执行实验和操作模式分析所需的资源和时间。此外,这些技术具有附加的优点,即它们可以远程且以非接触方式实施。因此,新兴的全视场成像技术具有潜力,可以在过去具有挑战性的方案中识别结构的模态特性。例如,这些技术表明,可以在飞行期间使用地面或基于飞机的成像仪在飞机上执行高空间分辨率的结构识别。它们还具有识别微观系统动力学的潜力。为了实现此功能,将有必要开发能够在不理想的操作条件下提取全场结构动力学的技术。在这项工作中,我们为部署新兴算法开发了一个框架,该框架允许在存在非理想操作条件的情况下自动提取高分辨率,全场模态参数。最理想的非理想操作条件之一是被测结构以及执行测量的成像仪的刚体运动。我们通过展示如何将其用于解决平面内,平移,刚体运动来演示该框架的实例化。提出并展示了一种基于帧对帧关键点的技术,用于在存在刚体运动的情况下识别全场结构动力学,并在框架内部署了全场结构识别技术的框架中进行了演示。存在不理想的工作条件。预计该框架最终将有助于使用测量平台收集全场结构动力学,包括无人驾驶飞机,机器人望远镜,卫星,安装在高振动环境(地震,工业,恶劣天气)中的成像仪,微观表征结构和人类携带的成像仪。如果基于成像器的结构识别技术成熟到可以在非理想的野外条件下使用的程度,那么结构健康监测界将有可能超越思维监测单个结构,而转向全视野结构城市规模的完整性监控。

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