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Parameter estimation for multiple-input multiple-output modal analysis of large structures

机译:大型结构多输入多输出模态分析的参数估计

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Experimental modal analysis (EMA) has been explored as a technology for condition assessment and damage identification of constructed structures. However, successful EMA application's such as damage detection to constructed systems pose certain difficulties. The properties of constructed systems are influenced by temperature changes as well as other natural influences such as movements in addition to any deterioration and damage. Writers were challenged in their attempts to measure the dynamic properties of an aged bridge by EMA due to inconsistencies within the data set due to short-term variations in ambient conditions. A complex interaction was observed between the dynamic properties of the bridge, hour-to-hour changes in temperature, and controlled damages applied to the bridge. Inconsistencies in the data set made curve fitting difficult for some common parameter estimation algorithms that have been designed to handle consistent data sets. Although the quality of measurements within the entire data set was affected by time variance and nonlinearity, increasing the number of reference measurements significantly improved the reliability of the information which could be extracted. In conjunction with the multiple-input multiple-output technique, a parameter estimation method using complex mode indicator function (CMIF) was developed and implemented in this study to determine the modal properties with proper scaling to obtain modal flexibility. This method proved to be very successful among many others with the data acquired from the aged and deteriorated highway bridge. In this paper, challenges in reliable identification of modal parameters from large structures are reviewed and the new CMIF based algorithm is documented. The method is evaluated on actual bridge data sets from a damage detection research study.
机译:实验模态分析(EMA)已被开发为一种状态评估和损坏结构识别技术。但是,成功的EMA应用(例如对已构建系统的损坏检测)会带来一定的困难。所构建系统的特性会受到温度变化以及其他自然影响(例如运动以及任何恶化和损坏)的影响。由于数据集由于环境条件的短期变化而导致的不一致,因此作者尝试通过EMA测量老化桥梁的动力特性时遇到了挑战。观察到桥梁的动力特性,每小时的温度变化以及施加到桥梁的受控破坏之间存在复杂的相互作用。数据集中的不一致性使得对于某些旨在处理一致数据集的常用参数估计算法而言,曲线拟合变得困难。尽管整个数据集中的测量质量受时间方差和非线性的影响,但是增加参考测量的数量会显着提高可提取信息的可靠性。结合多输入多输出技术,开发了一种使用复杂模式指示符函数(CMIF)的参数估计方法,并在本研究中进行了实施,以通过适当缩放确定模态属性以获得模态灵活性。通过从老化和老化的公路桥梁获得的数据,该方法在许多其他方法中被证明是非常成功的。在本文中,对大型结构模态参数的可靠识别提出了挑战,并记录了基于CMIF的新算法。该方法是根据来自损伤检测研究的实际桥梁数据集进行评估的。

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