Deep Learning for Bridge Load Capacity Estimation in Post-Disaster and -Conflict Zones

02/05/2019
by   Arya Pamuncak, et al.
0

Many post-disaster and -conflict regions do not have sufficient data on their transportation infrastructure assets, hindering both mobility and reconstruction. In particular, as the number of aging and deteriorating bridges increase, it is necessary to quantify their load characteristics in order to inform maintenance and prevent failure. The load carrying capacity and the design load are considered as the main aspects of any civil structures. Human examination can be costly and slow when expertise is lacking in challenging scenarios. In this paper, we propose to employ deep learning as method to estimate the load carrying capacity from crowd sourced images. A new convolutional neural network architecture is trained on data from over 6000 bridges, which will benefit future research and applications. We tackle significant variations in the dataset (e.g. class interval, image completion, image colour) and quantify their impact on the prediction accuracy, precision, recall and F1 score. Finally, practical optimisation is performed by converting multiclass classification into binary classification to achieve a promising field use performance.

READ FULL TEXT
research
11/04/2018

Synchronized Multi-Load Balancer with Fault Tolerance in Cloud

In this method, service of one load balancer can be borrowed or shared a...
research
07/06/2022

Deep Learning approach for Classifying Trusses and Runners of Strawberries

The use of artificial intelligence in the agricultural sector has been g...
research
07/17/2018

Icing on the Cake: An Easy and Quick Post-Learnig Method You Can Try After Deep Learning

We found an easy and quick post-learning method named "Icing on the Cake...
research
10/06/2021

Post-hoc Models for Performance Estimation of Machine Learning Inference

Estimating how well a machine learning model performs during inference i...
research
12/03/2018

Deep Learning of Superconductors I: Estimation of Critical Temperature of Superconductors Toward the Search for New Materials

High-temperature superconductors have a lot of promising applications: q...
research
10/06/2021

A New Weakly Supervised Learning Approach for Real-time Iron Ore Feed Load Estimation

Iron ore feed load control is one of the most critical settings in a min...
research
09/25/2020

Sequence-to-Sequence Load Disaggregation Using Multi-Scale Residual Neural Network

With the increased demand on economy and efficiency of measurement techn...

Please sign up or login with your details

Forgot password? Click here to reset