Abstract

The purpose of a bridge maintenance strategy is to make effective decisions by evaluating current performance and predicting future conditions of the bridge. The social cost because of the rapid increase in the number of decrepit bridges. The current bridge maintenance system relies on traditional man-power-based methods, which determine the bridge performance by employing a material deterioration model, and thus shows uncertainty in predicting the bridge performance. In this study, a new type of performance degradation model is developed using the actual concrete deck condition index (or grade) data of the general bridge inspection history database (1995–2017) on the national road bridge of the bridge management system in Korea. The developed model uses the long short-term memory algorithm, which is a type of recurrent neural network, as well as layer normalization and label smoothing to improve the applicability of basic data. This model can express the discrete historical degradation indices in continuous form according to the service life. In addition, it enables the prediction of bridge performance by using only basic information about new and existing bridges.

Highlights

  • With economic growth and industrial development, the number of bridges has increased rapidly globally

  • To develop a model that shows a change in the condition index over time, the deep learning algorithm LSTM, which is known as the shape of the Recurrent Neural Network (RNN), is used [30]

  • This paper presents a new performance degradation model of a concrete deck

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Summary

Introduction

With economic growth and industrial development, the number of bridges has increased rapidly globally. The end of service life or collapse of a bridge causes loss of life and paralysis of the city, which can cause huge economic losses. To prevent such damage, bridges and facility maintenance are being actively studied. The database of the national road bridge precise diagnosis and precise safety diagnosis in Korea was used to develop a performance degradation model for a concrete deck.

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