Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management

Data collected using sensors plays an essential role in active bridge health monitoring. When analyzing a large number of bridges in the U.S., the National Bridge Inventory data as been widely used. Yet, the database does not provide information about live loads, one of the most indeterminate variab...

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Main Authors: Ananta Sinha, Mi G. Chorzepa, Jidong J. Yang, S. Sonny Kim, Stephan Durham
Format: Article
Language:English
Published: MDPI AG 2022-10-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/12/20/10359
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author Ananta Sinha
Mi G. Chorzepa
Jidong J. Yang
S. Sonny Kim
Stephan Durham
author_facet Ananta Sinha
Mi G. Chorzepa
Jidong J. Yang
S. Sonny Kim
Stephan Durham
author_sort Ananta Sinha
collection DOAJ
description Data collected using sensors plays an essential role in active bridge health monitoring. When analyzing a large number of bridges in the U.S., the National Bridge Inventory data as been widely used. Yet, the database does not provide information about live loads, one of the most indeterminate variables for monitoring bridges. Such asymmetric information can lead to an adverse selection problem in making maintenance, rehabilitation, and repair decisions. This study proposes a data-driven reliability analysis to assess probabilities of bridge failure by synthesizing NBI data and Weigh-In-Motion (WIM) data for a large number of bridges in Georgia. On the resistance side, tree ensemble methods are employed to support the hypothesis that the NBI operating load rating represents the distribution of bridge resistance capacities which change over time. On the loading side, the live load distribution is derived from field data collected using WIM sensors. Our results show that the proposed WIM data-enabled reliability analysis substantially enhances information symmetry and provides a reliability index that supports monitoring of bridge conditions, depending on live loads and load-carrying capacities.
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spelling doaj.art-5edc3d687c584a579ed205eae4f3ebc62023-11-23T22:43:36ZengMDPI AGApplied Sciences2076-34172022-10-0112201035910.3390/app122010359Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and ManagementAnanta Sinha0Mi G. Chorzepa1Jidong J. Yang2S. Sonny Kim3Stephan Durham4College of Engineering, The University of Georgia, Athens, GA 30605, USACollege of Engineering, The University of Georgia, Athens, GA 30605, USACollege of Engineering, The University of Georgia, Athens, GA 30605, USACollege of Engineering, The University of Georgia, Athens, GA 30605, USACollege of Engineering, The University of Georgia, Athens, GA 30605, USAData collected using sensors plays an essential role in active bridge health monitoring. When analyzing a large number of bridges in the U.S., the National Bridge Inventory data as been widely used. Yet, the database does not provide information about live loads, one of the most indeterminate variables for monitoring bridges. Such asymmetric information can lead to an adverse selection problem in making maintenance, rehabilitation, and repair decisions. This study proposes a data-driven reliability analysis to assess probabilities of bridge failure by synthesizing NBI data and Weigh-In-Motion (WIM) data for a large number of bridges in Georgia. On the resistance side, tree ensemble methods are employed to support the hypothesis that the NBI operating load rating represents the distribution of bridge resistance capacities which change over time. On the loading side, the live load distribution is derived from field data collected using WIM sensors. Our results show that the proposed WIM data-enabled reliability analysis substantially enhances information symmetry and provides a reliability index that supports monitoring of bridge conditions, depending on live loads and load-carrying capacities.https://www.mdpi.com/2076-3417/12/20/10359reliability indexweigh in motionWIM databridge maintenanceoperating ratingload rating
spellingShingle Ananta Sinha
Mi G. Chorzepa
Jidong J. Yang
S. Sonny Kim
Stephan Durham
Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
Applied Sciences
reliability index
weigh in motion
WIM data
bridge maintenance
operating rating
load rating
title Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
title_full Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
title_fullStr Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
title_full_unstemmed Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
title_short Enhancing Reliability Analysis with Multisource Data: Mitigating Adverse Selection Problems in Bridge Monitoring and Management
title_sort enhancing reliability analysis with multisource data mitigating adverse selection problems in bridge monitoring and management
topic reliability index
weigh in motion
WIM data
bridge maintenance
operating rating
load rating
url https://www.mdpi.com/2076-3417/12/20/10359
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