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Performance optimization of a diagnostic system based upon a simulated strain field for fatigue damage characterization

机译:基于模拟应变场的疲劳损伤表征诊断系统的性能优化

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摘要

The work presented hereafter is about the development of a diagnostic system for crack damage detection, localization and quantification on a typical metallic aeronautical structure (skin stiffened through riveted stringers). Crack detection and characterization are based upon strain field sensitivity to damage. The structural diagnosis is carried out by a dedicated smart algorithm (Artificial Neural Network) which is trained on a database of Finite Element simulations relative to damaged and undamaged conditions, providing the system with an accurate predictor at low overall cost. The algorithm, trained on numerical damage experience, is used in a simulated environment to provide reliable preliminary information concerning the algorithm performances for damage diagnosis, thus further reducing the experimental costs and efforts associated with the development and optimization of such systems. The same algorithm has been tested on real experimental strain patterns acquired during real fatigue crack propagation, thus verifying the capability of the numerically trained algorithm for anomaly detection, damage assessment and localization on a real complex structure. The load variability, the discrepancy between the Finite Element Model and the real structure, and the uncertainty in the algorithm training process have been addressed in order to enhance the robustness of the system inference process. Some further algorithm training strategies are discussed, aimed at minimizing the risk for false alarms while maintaining a high probability of damage detection.
机译:下文介绍的工作是关于诊断系统的开发,该诊断系统用于在典型的金属航空结构(通过铆接纵梁加硬的皮肤)上检测裂纹,定位和定量。裂纹检测和表征基于应变场对损伤的敏感性。结构诊断是通过专用的智能算法(人工神经网络)执行的,该算法在有限元模拟的数据库中经过训练,该数据库相对于损坏和未损坏的情况,为系统提供了准确的预测器,且总成本较低。经过数值损伤经验训练的算法被用于模拟环境中,以提供有关损伤​​诊断算法性能的可靠初步信息,从而进一步降低了实验成本以及与此类系统的开发和优化相关的工作。已经对在实际疲劳裂纹扩展过程中获得的实际实验应变模式测试了相同算法,从而验证了经过数字训练的算法在异常复杂结构上进行异常检测,损伤评估和定位的能力。解决了负载可变性,有限元模型与实际结构之间的差异以及算法训练过程中的不确定性,以增强系统推理过程的鲁棒性。讨论了一些其他的算法训练策略,旨在最大程度地降低错误警报的风险,同时保持较高的损坏检测概率。

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