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CONTENTS | |
Volume 30, Number 6, December 2022 |
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- Preface: Structural Hidden Damage Detection and Condition Diagnosis of Large-scale Infrastructure Jun Li, Jian Li, Shao-Dong Shen and Ting-Hua Yi
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Abstract; Full Text (115K) . | pages 00i-ii. | DOI: 10.12989/sss.2022.30.6.00i |
Abstract
Key Words
Address
- Vibration-based structural health monitoring using CAE-aided unsupervised deep learning Minte Zhang, Tong Guo, Ruizhao Zhu, Yueran Zong and Zhihong Pan
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Abstract; Full Text (4418K) . | pages 557-569. | DOI: 10.12989/sss.2022.30.6.557 |
Abstract
Vibration-based structural health monitoring (SHM) is crucial for the dynamic maintenance of civil building structures to protect property security and the lives of the public. Analyzing these vibrations with modern artificial intelligence and deep learning (DL) methods is a new trend. This paper proposed an unsupervised deep learning method based on a convolutional autoencoder (CAE), which can overcome the limitations of conventional supervised deep learning. With the convolutional core applied to the DL network, the method can extract features self-adaptively and efficiently. The effectiveness of the method in detecting damage is then tested using a benchmark model. Thereafter, this method is used to detect damage and instant disaster events in a rubber bearing-isolated gymnasium structure. The results indicate that the method enables the CAE network to learn the intact vibrations, so as to distinguish between different damage states of the benchmark model, and the outcome meets the high-dimensional data distribution characteristics visualized by the t-SNE method. Besides, the CAE-based network trained with daily vibrations of the isolating layer in the gymnasium can precisely recover newly collected vibration and detect the occurrence of the ground motion. The proposed method is effective at identifying nonlinear variations in the dynamic responses and has the potential to be used for structural condition assessment and safety warning.
Key Words
damage identification; on-site test; structural health monitoring; unsupervised deep learning; vibration assessment
Address
(1) Minte Zhang, Tong Guo, Ruizhao Zhu, Yueran Zong:
School of Civil Engineering, Southeast University, Nanjing, Jiangsu, People's Republic of China;
(2) Zhihong Pan:
School of Architecture and Civil Engineering, Jiangsu University of Science and Technology, Zhenjiang, Jiangsu, People's Republic of China;
(3) Tong Guo:
The Centre for BIM Studies, Smart City and Sustainable Development Academy, Chongqing, China.
Abstract
Optimal life-cycle management is a challenging issue for deteriorating regional bridges. Due to the complexity of regional bridge structural conditions and a large number of inspection and maintenance actions, decision-makers generally choose traditional passive management strategies. They are less efficiency and cost-effectiveness. This paper suggests a deep reinforcement learning framework employing double-deep Q-networks (DDQNs) to improve the life-cycle management of deteriorating regional bridges to tackle these problems. It could produce optimal maintenance plans considering restrictions to maximize maintenance cost-effectiveness to the greatest extent possible. DDQNs method could handle the problem of the overestimation of Q-values in the Nature DQNs. This study also identifies regional bridge deterioration characteristics and the consequence of scheduled maintenance from years of inspection data. To validate the proposed method, a case study containing hundreds of bridges is used to develop optimal life-cycle management strategies. The optimization solutions recommend fewer replacement actions and prefer preventative repair actions when bridges are damaged or are expected to be damaged. By employing the optimal life-cycle regional maintenance strategies, the conditions of bridges can be controlled to a good level. Compared to the nature DQNs, DDQNs offer an optimized scheme containing fewer low-condition bridges and a more costeffective life-cycle management plan.
Key Words
condition assessment; deteriorating structures; life-cycle management; regional bridges; reinforcement learning
Address
Department of Civil and Environmental Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
- Wireless sensor network design for large-scale infrastructures health monitoring with optimal information-lifespan tradeoff Xiao-Han Hao, Sin-Chi Kuok and Ka-Veng Yuen
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Abstract; Full Text (1910K) . | pages 583-599. | DOI: 10.12989/sss.2022.30.6.583 |
Abstract
In this paper, a multi-objective wireless sensor network configuration optimization method is proposed. The proposed method aims to determine the optimal information and lifespan wireless sensor network for structural health monitoring of large-scale infrastructures. In particular, cluster-based wireless sensor networks with multi-type of sensors are considered. To optimize the lifetime of the wireless sensor network, a cluster-based network optimization algorithm that optimizes the arrangement of cluster heads and base station is developed. On the other hand, based on the Bayesian inference, the uncertainty of the estimated parameters can be quantified. The coefficient of variance of the estimated parameters can be obtained, which is utilized as a holistic measure to evaluate the estimation accuracy of sensor configurations with multi-type of sensors. The proposed method provides the optimal wireless sensor network configuration that satisfies the required estimation accuracy with the longest lifetime. The proposed method is illustrated by designing the optimal wireless sensor network configuration of a cable-stayed bridge and a space truss.
Key Words
Bayesian inference; measurement information; multi-type sensor system; network lifespan; system identification; wireless sensor network
Address
(1) State Key Laboratory of Internet of Things for Smart City and Department of Civil and Environmental Engineering, University of Macau, Macao SAR, China;
(2) Guangdong-Hong Kong-Macau Joint Laboratory for Smart Cities, University of Macau, Macao SAR, China.
- DATCN: Deep Attention fused Temporal Convolution Network for the prediction of monitoring indicators in the tunnel Bowen Du, Zhixin Zhang, Junchen Ye, Xuyan Tan, Wentao Li and Weizhong Chen
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Abstract; Full Text (3691K) . | pages 601-612. | DOI: 10.12989/sss.2023.30.6.601 |
Abstract
The prediction of structural mechanical behaviors is vital important to early perceive the abnormal conditions and avoid the occurrence of disasters. Especially for underground engineering, complex geological conditions make the structure more prone to disasters. Aiming at solving the problems existing in previous studies, such as incomplete consideration factors and can only predict the continuous performance, the deep attention fused temporal convolution network (DATCN) is proposed in this paper to predict the spatial mechanical behaviors of structure, which integrates both the temporal effect and spatial effect and realize the cross-time prediction. The temporal convolution network (TCN) and self-attention mechanism are employed to learn the temporal correlation of each monitoring point and the spatial correlation among different points, respectively. Then, the predicted result obtained from DATCN is compared with that obtained from some classical baselines, including SVR, LR, MLP, and RNNs. Also, the parameters involved in DATCN are discussed to optimize the prediction ability. The prediction result demonstrates that the proposed DATCN model outperforms the state-of-the-art baselines. The prediction accuracy of DATCN model after 24 hours reaches 90 percent. Also, the performance in last 14 hours plays a domain role to predict the short-term behaviors of the structure. As a study case, the proposed model is applied in an underwater shield tunnel to predict the stress variation of concrete segments in space.
Key Words
machine learning; mechanical behaviors; monitoring; prediction; tunnel
Address
(1) Bowen Du, Zhixin Zhang, Junchen Ye, Wentao Li:
SKLSDE and BDBC Lab, Beihang University, Beijing 100083, China;
(2) Xuyan Tan, Weizhong Chen:
State Key Laboratory of Geomechanics and Geotechnical Engineering, Institute of Rock and Soil Mechanics, Chinese Academy of Sciences, Wuhan 430071, China;
(3) Xuyan Tan, Weizhong Chen:
University of Chinese Academy of Sciences, Beijing 100049, China.
- Structural health monitoring data anomaly detection by transformer enhanced densely connected neural networks Jun Li, Wupeng Chen and Gao Fan
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Abstract; Full Text (3404K) . | pages 613-626. | DOI: 10.12989/sss.2022.30.6.613 |
Abstract
Guaranteeing the quality and integrity of structural health monitoring (SHM) data is very important for an effective assessment of structural condition. However, sensory system may malfunction due to sensor fault or harsh operational environment, resulting in multiple types of data anomaly existing in the measured data. Efficiently and automatically identifying anomalies from the vast amounts of measured data is significant for assessing the structural conditions and early warning for structural failure in SHM. The major challenges of current automated data anomaly detection methods are the imbalance of dataset categories. In terms of the feature of actual anomalous data, this paper proposes a data anomaly detection method based on data-level and deep learning technique for SHM of civil engineering structures. The proposed method consists of a data balancing phase to prepare a comprehensive training dataset based on data-level technique, and an anomaly detection phase based on a sophisticatedly designed network. The advanced densely connected convolutional network (DenseNet) and Transformer encoder are embedded in the specific network to facilitate extraction of both detail and global features of response data, and to establish the mapping between the highest level of abstractive features and data anomaly class. Numerical studies on a steel frame model are conducted to evaluate the performance and noise immunity of using the proposed network for data anomaly detection. The applicability of the proposed method for data anomaly classification is validated with the measured data of a practical supertall structure. The proposed method presents a remarkable performance on data anomaly detection, which reaches a 95.7% overall accuracy with practical engineering structural monitoring data, which demonstrates the effectiveness of data balancing and the robust classification capability of the proposed network.
Key Words
anomalous data; anomaly detection attention mechanism; deep learning; structural health monitoring
Address
(1) Wupeng Chen, Gao Fan:
School of Civil Engineering, Guangzhou University, Guangzhou 510006, China;
(2) Jun Li:
Centre for Infrastructure Monitoring and Protection, School of Civil and Mechanical Engineering, Curtin University, Bentley, WA 6102, Australia.
Abstract
Recent years, direct displacement-based design (DDBD) procedure is proposed for the design of un-bonded posttensioned (UPT) concrete wall systems. In the DDBD procedure, the determination of the equivalent viscous damping (EVD) ratio is critical since it would influence the strength demand of the UPT wall systems. Nevertheless, the influence of EVD ratio determination of the UPT wall systems were not thoroughly evaluated. This study was aimed to investigate the influence of different EVD ratio determinations on the DDBD procedure of UPT wall systems. Case study structures with four, twelve and twenty storeys have been designed with DDBD procedure considering different EVD ratio determinations. Nonlinear time history analysis was performed to validate the design results of those UPT wall systems. And the simulation results showed that the global responses of the case study structures were influenced by the EVD ratio determination.
Key Words
direct displacement-based design; equivalent viscous damping ratio determination; nonlinear time histories analysis; un-bonded post-tensioned concrete wall
Address
(1) Anqi Gu:
Department of Mechanical Engineering, University of Canterbury, Christchurch, New Zealand;
(2) Shao-Dong Shen:
Disaster Prevention Research Institute, Kyoto University, Uji 611-0011, Japan.
- Stress evaluation of tubular structures using torsional guided wave mixing Ching-Tai Ng, Carman Yeung, Tingyuan Yin and Liujie Chen
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Abstract; Full Text (2077K) . | pages 639-648. | DOI: 10.12989/sss.2022.30.6.639 |
Abstract
This study aims at numerically and experimentally investigating torsional guided wave mixing with weak material nonlinearity under acoustoelastic effect in tubular structures. The acoustoelastic effect on single central frequency guided wave propagation in structures has been well-established. However, the acoustoelastic on guided wave mixing has not been fully explored. This study employs a three-dimensional (3D) finite element (FE) model to simulate the effect of stress on guided wave mixing in tubular structures. The nonlinear strain energy function and theory of incremental deformation are implemented in the 3D FE model to simulate the guided wave mixing with weak material nonlinearity under acoustoelastic effect. Experiments are carried out to measure the nonlinear features, such as combinational harmonics and second harmonics in related to different levels of applied stresses. The experimental results are compared with the 3D FE simulation. The results show that the generation combinational harmonic at sum frequency provides valuable stress information for tubular structures, and also useful for damage diagnosis. The findings of this study provide physical insights into the effect of applied stresses on the combinational harmonic generation due to wave mixing. The results are important for applying the guided wave mixing for in-situ monitoring of structures, which are subjected to different levels of loadings under operational condition.
Key Words
combinational harmonic; guided wave; second harmonic; torsional wave acoustoelastic effect; tubular structure; wave mixing
Address
(1) Ching-Tai Ng, Carman Yeung, Tingyuan Yin:
School of Civil, Environmental & Mining Engineering, The University of Adelaide, Adelaide, 5005 SA, Australia;
(2) Liujie Chen:
School of Civil Engineering, Guangzhou University, Guangzhou, 510006, China.
- Dynamic deformation measurement in structural inspections by Augmented Reality technology Jiaqi Xu, Elijah Wyckoff, John-Wesley Hanson, Derek Doyle and Fernando Moreu
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Abstract; Full Text (2328K) . | pages 649-659. | DOI: 10.12989/sss.2022.30.6.649 |
Abstract
Structural Health Monitoring (SHM) researchers have identified Augmented Reality (AR) as a new technology that can assist inspections. Post-seismic structural inspections are conducted to evaluate the safety level of the damaged structures. Quantification of nearby structural changes over short-term and long-term periods can provide building inspectors with information to improve their safety. This paper proposes a Time Machine Measure (TMM) application based on an Augmented Reality (AR) Head-Mounted-Device (HMD) platform. The primary function of TMM is to restore the saved meshes of a past environment and overlay them onto the real environment so that inspectors can intuitively measure dynamic structural deformation and other environmental movements. The proposed TMM application was verified by demo experiments simulating a real inspection environment.
Key Words
augmented reality; deformation measurement; inspection; structural health monitoring; virtual images
Address
(1) Jiaqi Xu, John-Wesley Hanson, Fernando Moreu:
Department of Civil, Construction & Environmental Engineering, University of New Mexico, Albuquerque, NM, USA;
(2) Elijah Wyckoff:
Department of Mechanical Engineering, University of New Mexico, Albuquerque, NM, USA;
(3) Derek Doyle:
Air Force Research Laboratory, Space Vehicles Directorate, Kirtland Air Force Base, Albuquerque, NM, USA.
- Cable anomaly detection driven by spatiotemporal correlation dissimilarity measurements of bridge grouped cable forces Dong-Hui Yang, Hai-Lun Gu, Ting-Hua Yi and Zhan-Jun Wu
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Abstract; Full Text (2428K) . | pages 661-671. | DOI: 10.12989/sss.2022.30.6.661 |
Abstract
Stayed cables are the key components for transmitting loads in cable-stayed bridges. Therefore, it is very important to evaluate the cable force condition to ensure bridge safety. An online condition assessment and anomaly localization method is proposed for cables based on the spatiotemporal correlation of grouped cable forces. First, an anomaly sensitive feature index is obtained based on the distribution characteristics of grouped cable forces. Second, an adaptive anomaly detection method based on the k-nearest neighbor rule is used to perform dissimilarity measurements on the extracted feature index, and such a method can effectively remove the interference of environment factors and vehicle loads on online condition assessment of the grouped cable forces. Furthermore, an online anomaly isolation and localization method for stay cables is established, and the complete decomposition contributions method is used to decompose the feature matrix of the grouped cable forces and build an anomaly isolation index. Finally, case studies were carried out to validate the proposed method using an in-service cable-stayed bridge equipped with a structural health monitoring system. The results show that the proposed approach is sensitive to the abnormal distribution of grouped cable forces and is robust to the influence of interference factors. In addition, the proposed approach can also localize the cables with abnormal cable forces online, which can be successfully applied to the field monitoring of cables for cable-stayed bridges.
Key Words
anomaly location; condition assessment; grouped cable forces; novelty detection; spatiotemporal correlation
Address
(1) Dong-Hui Yang:
State Key Laboratory of Mechanical Behavior and System Safety of Traffic Engineering Structures, Shijiazhuang Tiedao University, Shijiazhuang 050043, China;
(2) Dong-Hui Yang, Hai-Lun Gu, Ting-Hua Yi:
School of Civil Engineering, Dalian University of Technology, Dalian 116023, China;
(3) Zhan-Jun Wu:
State Key Laboratory of Structural Analysis for Industrial Equipment, Dalian University of Technology, Dalian 116023, China.
- Damage localization and quantification of a truss bridge using PCA and convolutional neural network Jiajia Hao, Xinqun Zhu, Yang Yu, Chunwei Zhang and Jianchun Li
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Abstract; Full Text (2335K) . | pages 673-686. | DOI: 10.12989/sss.2022.30.6.673 |
Abstract
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of researchers and engineers. These algorithms commonly used loss functions and evaluation indices like the mean square error (MSE) which were not originally designed for SHM problems. An updated loss function which was specifically constructed for deep-learningbased structural damage detection problems has been proposed in this study. By tuning the coefficients of the loss function, the weights for damage localization and quantification can be adapted to the real situation and the deep learning network can avoid unnecessary iterations on damage localization and focus on the damage severity identification. To prove efficiency of the proposed method, structural damage detection using convolutional neural networks (CNNs) was conducted on a truss bridge model. Results showed that the validation curve with the updated loss function converged faster than the traditional MSE. Data augmentation was conducted to improve the anti-noise ability of the proposed method. For reducing the training time, the normalized modal strain energy change (NMSEC) was extracted, and the principal component analysis (PCA) was adopted for dimension reduction. The results showed that the training time was reduced by 90% and the damage identification accuracy could also have a slight increase. Furthermore, the effect of different modes and elements on the training dataset was also analyzed. The proposed method could greatly improve the performance for structural damage detection on both the training time and detection accuracy.
Key Words
convolutional neural network (CNN); damage detection; normalized modal strain energy change; principal component analysis (PCA)
Address
(1) Jiajia Hao, Xinqun Zhu, Yang Yu, Jianchun Li:
School of Civil and Environmental Engineering, Faculty of Engineering and Information Technology, University of Technology Sydney, Ultimo, NSW, Australia;
(2) Chunwei Zhang:
Multidisciplinary Center for Infrastructure Engineering, Shenyang University of Technology, Shenyang 110870, China.
- Structural health monitoring response reconstruction based on UAGAN under structural condition variations with few-shot learning Jun Li, Zhengyan He and Gao Fan
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Abstract; Full Text (3644K) . | pages 687-701. | DOI: 10.12989/sss.2023.30.6.687 |
Abstract
Inevitable response loss under complex operational conditions significantly affects the integrity and quality of measured data, leading the structural health monitoring (SHM) ineffective. To remedy the impact of data loss, a common way is to transfer the recorded response of available measure point to where the data loss occurred by establishing the response mapping from measured data. However, the current research has yet addressed the structural condition changes afterward and response mapping learning from a small sample. So, this paper proposes a novel data driven structural response reconstruction method based on a sophisticated designed generating adversarial network (UAGAN). Advanced deep learning techniques including U-shaped dense blocks, self-attention and a customized loss function are specialized and embedded in UAGAN to improve the universal and representative features extraction and generalized responses mapping establishment. In numerical validation, UAGAN efficiently and accurately captures the distinguished features of structural response from only 40 training samples of the intact structure. Besides, the established response mapping is universal, which effectively reconstructs responses of the structure suffered up to 10% random stiffness reduction or structural damage. In the experimental validation, UAGAN is trained with ambient response and applied to reconstruct response measured under earthquake. The reconstruction losses of response in the time and frequency domains reached 16% and 17%, that is better than the previous research, demonstrating the leading performance of the sophisticated designed network. In addition, the identified modal parameters from reconstructed and the corresponding true responses are highly consistent indicates that the proposed UAGAN is very potential to be applied to practical civil engineering.
Key Words
deep learning; few-shot learning; self-attention; structural health monitoring; structure response reconstruction
Address
(1) Zhengyan He, Gao Fan:
School of Civil Engineering, Guangzhou University, Guangzhou 510006, China;
(2) Jun Li:
Centre for Infrastructure Monitoring and Protection, School of Civil and Mechanical Engineering, Curtin University, Bentley, WA 6102, Australia.