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Structural damage alarming using auto-associative neural network technique: Exploration of environment-tolerant capacity and setup of alarming threshold

机译:使用自动关联神经网络技术的结构损伤报警:耐环境能力的探索和报警阈值的设置

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With the intention of avoiding false-positive and false-negative alarms in structural damage alarming using the auto-associative neural network (AANN) technique, two issues pertaining to this technique are addressed in this study. The first issue explored is the environment-tolerant capacity of the AANN. Efforts have been made to seek a generalization technique to enhance the environment-tolerant capacity. First, a baseline AANN model is formulated using the conventional training algorithm. Generalization techniques including AIC and FPE, early stopping, and Bayesian regularization are then investigated, resulting in three new AANN models. Their environment-tolerant capacity is evaluated as per their capability to avoid false-positive and false-negative alarms. The other issue addressed is the setup of alarming threshold, with intent to reduce the uncertainty in AANN-based structural damage alarming. A procedure based on the probability analysis of the novelty index is proposed for this purpose. First, the novelty index characterizing the intact structure is analyzed by the Kolmogorov-Smirnov goodness-of-fit test to obtain its best-fit continuous probability distribution. A confidence interval is then defined in consideration of the compromise between type I and type II errors. The alarming threshold of the novelty index is consequently set at the upper limit of the confidence interval. The above explorations are examined by using the long-term monitoring data on modal properties of the cable-stayed Ting Kau Bridge. The capability to eliminate false-positive alarm is verified by using unseen testing data which were not used in formulating the AANN models, while the capability to alleviate false-negative alarm is examined by using simulated data from the 'damaged' bridge with the help of a precise finite element model. The study indicates that the early stopping technique performs best in improving the environment-tolerant capacity of the AANN, and the alarming threshold set by the proposed procedure helps to reduce the uncertainty in AANN-based structural damage alarming.
机译:为了避免在使用自动关联神经网络(AANN)技术进行结构破坏警报时出现假阳性和假阴性警报,本研究解决了与该技术有关的两个问题。探索的第一个问题是AANN的环境耐受能力。已经努力寻求一种泛化技术以增强环境耐受能力。首先,使用常规训练算法制定基线AANN模型。然后研究了包括AIC和FPE,提前停止和贝叶斯正则化在内的通用技术,从而产生了三个新的AANN模型。根据其避免误报和误报警报的能力来评估其环境承受能力。解决的另一个问题是警报阈值的设置,目的是减少基于ANN的结构破坏警报的不确定性。为此,提出了一种基于新颖性指数概率分析的程序。首先,通过Kolmogorov-Smirnov拟合优度检验来分析表征完整结构的新颖性指标,以获得最佳拟合的连续概率分布。然后考虑I型和II型错误之间的折衷来定义置信区间。因此,将新颖性指标的警报阈值设置为置信区间的上限。以上探索是通过对斜拉汀九桥的模态特性进行长期监测而得出的。消除假阳性警报的能力是通过使用未在AANN模型中使用的看不见的测试数据来验证的,而缓解假阴性警报的能力则是通过使用来自“损坏”桥的模拟数据并借助以下方法来检查的:精确的有限元模型。研究表明,早期停止技术在提高AANN的环境承受能力方面表现最好,而所提出的程序设置的警报阈值有助于减少基于AANN的结构破坏警报的不确定性。

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