A Critical Review for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges with Human-In-The-Loop
Abstract
:1. Introduction
2. Motivating Case: Human-Cyber Reliability Issues in Structural Health Monitoring and Risk Prognosis of Bridges
2.1. Human Reliability Issues
2.2. Cyber Reliability Issues
3. Human Reliability Analysis and Team Cognition for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges
3.1. Human Reliability (Individual Level)
3.2. Human Reliability (Team Level)
4. Cyber Reliability for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges
4.1. Data and Model Reliability
4.2. Computational Reliability
4.3. Data Storage, Exchange, and Transmission Reliability
5. Human-Cyber Reliability for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges
6. Conclusions: A Research Road Map for Advancing Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Title | Objectives |
---|---|
Modeling and Evaluating the Resilience of Critical Electrical Power Infrastructure to Extreme Weather Events [37] | This study established a framework for comprehending the impact of human responses on power systems resilience during severe weather events. |
A fuzzy causal relational mapping and rough set-based model for context-specific human error rate estimation [38] | This study established a fuzzy rule-based causal relational mapping approach for deriving human error rates under different contexts. |
Prediction of human error probabilities in a critical marine engineering operation on-board chemical tanker ship: The case of ship bunkering [39] | This study presents a Shipboard Operation Human Reliability Analysis (SOHRA) method for predicting human errors during bunkering operations. |
A modified human reliability analysis for cargo operation in single point mooring (SPM) off-shore units [40] | This study established a framework for a human error assessment and reduction technique (HEART) with human uncertainties in decision-making. |
A methodological extension to human reliability analysis for cargo tank cleaning operation on board chemical tanker ships [41] | This study developed a method for augmenting human reliability analysis in examining human reliability impacts on cargo tank cleaning operations. |
Perception Reliability—Reliability of the sensed spatiotemporal information about the self and environmental objects | Visual perception [42]; Auditory sense [43]; Taste sense [44]; Sense of smell [45]; Tactile and somatosensory [46] |
Cognition Reliability—Impact of the self-sensed physical conditions of human bodies and environmental conditions on the decisions of human individuals and teams | Visual information [47,48]; Auditory information [49]; Taste [50]; Smell [51]; Body motions [52]; Temperature [53]; Space size (confined space) [54]; Motion speeds [55]; Frequencies of changes [56]; Interruptions/Distractions [57,58] |
Response Reliability—Impact of the individual’s capability and team’s situational awareness on the risks and efficiency of collaborative operations of a team | Reaction time [59,60]; Time limits [61,62]; Physical demand [63,64]; The impact of the environmental conditions (performance shaping factors—PSFs) on the operational performance of individual workers [65] |
Perception Reliability—Reliability of the sensed spatiotemporal information about the self and environmental objects | Visual communication: Gestures [98]; Flag [99]; Signs [100]; Auditory communication [101]; Motion communication [102]; Somatosensory and visual and auditory [103] |
Cognition Reliability—Impact of the self-sensed physical conditions of human bodies and environmental conditions on the decisions of human individuals and teams | Motions and positions [104]; Voice [105]; Impact of environmental conditions gained through team communication and collaboration on the team decisions; Relative motions [106,107]; Relative differences between workspaces [108]; Speeds of changes in remote workspaces [108] |
Response Reliability—Impact of the individual’s capability and team’s situational awareness on the risks and efficiency of team operations | Team reaction time [109]; Task independence [110,111]; The impact of environmental conditions on team performance [112] |
Title | Objectives |
---|---|
Convolutional neural network-based data anomaly detection method using multiple information for structural health monitoring [127] | This study established an anomaly detection method based on convolutional neural networks that mimic human vision and decision making. |
Review of Bridge Structural Health Monitoring Aided by Big Data and Artificial Intelligence: From Condition Assessment to Damage Detection [128] | This study has established a method that uses big data (BD) and artificial intelligence (AI) techniques to solve the data interpretation problem. |
Deep learning for data anomaly detection and data compression of a long-span suspension bridge [129] | This study has established a method for data compression and reconstruction based on deep learning. |
Decentralized fault detection and isolation in wireless structural health monitoring systems using analytical redundancy [130] | This study has established a decentralized approach for automatic sensor fault detection and isolation for wireless SHM systems. |
Reliability analysis and damage detection in high-speed naval craft based on structural health monitoring data [131] | This study has established a method for reliability analysis and damage detection of high-speed ships (HSNC) using SHM data. |
Category | Example Studies of Reliability Issues | |
---|---|---|
Data | Visual and Geometric Data | Accuracy and level of detail of 3D imagery data reconstructed from photos [145]; spatial resolutions of images [146]; temporal resolution of videos [147] |
Reports | Errors in field notes [148]; omitted structural defects in inspection reports [149] | |
Tabular Data | Missing and anomalous values of locations, structural condition ratings in the NBI database [148] | |
Relational Database | Incorrect external keys for representing the related columns in two tables and linking the information from two tables [150]; redundant information items having inconsistent values at different parts of the database [151,152]; missing relationships between two tables while the link should exist for linking common columns in two tables [153,154] | |
Sensory Data | Errors or missing values in time series sensory data that measures structure vibrations [155] | |
Metadata | Errors in the metadata for specifying the formats and organization of datasets, such as the meaning of columns of numbers in a data file [144]; errors in the metadata for specifying the time and data collection environments [156]; errors in the metadata for specifying the methods of processing and transforming the data, such as a transformation matrix for transforming point clouds to a global coordinate system [157] | |
Model | 2D/3D Maps | Location errors of points [158]; length and direction errors of lines representing paths on 2D or 3D maps [159]; level of detail of maps [160]; missing values in the properties of objects on 2D or 3D maps [161] |
Semantic-Rich Digital Models | Missing and additional objects [162]; dimensional and shape deviations from actual dimensions [163,164]; wrong type information of objects [165] |
Reliability Issues | Example Studies | |
---|---|---|
Data Storage | Data and information losses due to compression of data for saving storage space | Point cloud compression research for reducing point cloud data sizes while keeping the geometric changes captured in the point clouds [189] |
Losses of data and information due to data saving errors and hardware defects | Corrupted files or missing parts of files due to problematic file saving processes for saving data of large sizes or unique data structures, such as Gigabytes of imagery datasets [190] | |
Losses of data and information due to decaying hardware devices for storing the data files | Corrupted files or missing parts of files due to storage unit failures under unfavorable environmental conditions or decaying of storage media materials [191,192] | |
Data Exchange | Losses of data and information while converting files between different formats | Mapping the same objects stored in different formats based on properties of objects while accepting losses of semantics associated with specific properties uniquely stored in only one of the formats [193] |
Losses of data and information while updating the data schema | Mapping the entity definitions in different versions of a schema for automated updating of building information model files into files that use a new version of the schema [194,195] | |
Data Transmission | Losses of data and information due to problems in communication protocols | Losses of data packets due to problems in data and file transmission protocols, especially for transferring large images and data files [196] |
Stage | Inputs/Outputs | Reliability Issues |
---|---|---|
Data Pre-Processing (Prepare the raw data in formats that are suitable for reliable feature extraction and pattern recognition) |
|
|
Data Processing (Extract features and data patterns that are corresponding to objects and changes captured in the spatiotemporal patterns of features) |
|
|
Data Interpretation (Analyze relationships between objects and events to interpret the correlated objects and events into meaningful change information of the facilities and workspaces) |
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© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Sun, Z.; Chen, T.; Meng, X.; Bao, Y.; Hu, L.; Zhao, R. A Critical Review for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges with Human-In-The-Loop. Sustainability 2023, 15, 6389. https://doi.org/10.3390/su15086389
Sun Z, Chen T, Meng X, Bao Y, Hu L, Zhao R. A Critical Review for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges with Human-In-The-Loop. Sustainability. 2023; 15(8):6389. https://doi.org/10.3390/su15086389
Chicago/Turabian StyleSun, Zhe, Tiantian Chen, Xiaolin Meng, Yan Bao, Liangliang Hu, and Ruirui Zhao. 2023. "A Critical Review for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges with Human-In-The-Loop" Sustainability 15, no. 8: 6389. https://doi.org/10.3390/su15086389
APA StyleSun, Z., Chen, T., Meng, X., Bao, Y., Hu, L., & Zhao, R. (2023). A Critical Review for Trustworthy and Explainable Structural Health Monitoring and Risk Prognosis of Bridges with Human-In-The-Loop. Sustainability, 15(8), 6389. https://doi.org/10.3390/su15086389