Review of artificial intelligence-based bridge damage detection

Y Zhang, KV Yuen - Advances in Mechanical Engineering, 2022 - journals.sagepub.com
Bridges are often located in harsh environments and are thus extremely susceptible to
damage. If the initial damage is not detected in time, it can develop further causing safety …

Optimizing machine learning algorithms for improving prediction of bridge deck deterioration: A case study of Ohio bridges

A Rashidi Nasab, H Elzarka - Buildings, 2023 - mdpi.com
The deterioration of a bridge's deck endangers its safety and serviceability. Ohio has
approximately 45,000 bridges that need to be monitored to ensure their structural integrity …

Bridge infrastructure asset management system: Comparative computational machine learning approach for evaluating and predicting deck deterioration conditions

R Assaad, IH El-Adaway - Journal of Infrastructure Systems, 2020 - ascelibrary.org
Bridge infrastructure asset management system is a prevailing approach toward having an
effective and efficient procedure for monitoring bridges through their different development …

A state-of-the-art review of bridge inspection planning: Current situation and future needs

AM Abdallah, RA Atadero, ME Ozbek - Journal of Bridge …, 2022 - ascelibrary.org
Inspections are important to ensuring adequate safety and performance of a bridge
throughout its service life. Bridge inspections are highly connected with maintenance …

Evaluating deterioration of tunnels using computational machine learning algorithms

MO Ahmed, R Khalef, GG Ali… - Journal of construction …, 2021 - ascelibrary.org
Tunnels are an integrated part of the transportation infrastructure. Structural evaluation and
inspection of tunnels are vital tasks to assess the deterioration of tunnels and maintain their …

Compressive Strength Evaluation of Fiber‐Reinforced High‐Strength Self‐Compacting Concrete with Artificial Intelligence

TT Nguyen, H Pham Duy… - Advances in Civil …, 2020 - Wiley Online Library
This paper describes the application of two artificial intelligence‐(AI‐) based methods to
predict the 28‐day compressive strength of fiber‐reinforced high‐strength self‐compacting …

Structural damage detection using hybrid deep learning algorithm

DV Hung, HM Hung, PH Anh… - Journal of Science and …, 2020 - stce.huce.edu.vn
Timely monitoring the large-scale civil structure is a tedious task demanding expert
experience and significant economic resources. Towards a smart monitoring system, this …

Bridge deck deterioration: Reasons and patterns

X Kong, Z Li, Y Zhang, S Das - Transportation research …, 2022 - journals.sagepub.com
The deck condition of bridges is one of the most important factors impacting the connectivity
and efficiency of transportation networks. Bridges with quickly deteriorating deck conditions …

Modeling the quantitative assessment of the condition of bridge components made of reinforced concrete using ANN

R Trach, V Moshynskyi, D Chernyshev, O Borysyuk… - Sustainability, 2022 - mdpi.com
Bridges in Ukraine are one of the most important components of the infrastructure, requiring
attention from government agencies and constant funding. The object of the study was the …

[PDF][PDF] A neural network approach for predicting hardened property of geopolymer concrete

TT Pham, TT Nguyen, LN Nguyen… - GEOMATE …, 2020 - geomatejournal.com
This paper presents the application of an Artificial Neural Network (ANN) approach to predict
the 28-day compression strength of Geopolymer concrete (GPC) from the input ingredients …