Recurrent Neural Network for Quantitative Time Series Predictions of Bridge Condition Ratings

被引:0
作者
Sowemimo, Adeyemi D. [1 ]
Chorzepa, Mi G. [1 ]
Birgisson, Bjorn [1 ]
机构
[1] Univ Georgia, Coll Engn, Athens, GA 30602 USA
关键词
LSTM; GRU; time-distributed; bridge health index; condition rating; time-series forecasting; deep learning; DETERIORATION MODELS;
D O I
10.3390/infrastructures9120221
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Traditional forecasting models for bridge conditions, such as ARIMA and Markov chains, often fail to adequately capture nonlinear and dynamic relationships among critical variables like age, traffic patterns, and environmental factors, leading to suboptimal maintenance decisions, increased long-term maintenance costs, and heightened safety risks. This study addresses these limitations by developing recurrent neural network (RNN) models utilizing Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) architectures with a TimeDistributed output layer. This novel approach enables accurate forecasting of the Bridge Health Index (BHI) and condition ratings for key components-deck, superstructure, and substructure-while effectively modeling temporal dependencies. Applied to bridge data from Georgia, USA, the regression models (BHI) achieved R2 values exceeding 0.84, while the classification models (components condition ratings) demonstrated accuracy between 84.78% and 87.54%. By modeling complex temporal trends in bridge deterioration, our method processes time-dependent data from multiple bridges simultaneously, revealing intricate relationships that influence bridge performance within a state's inventory. These results provide actionable insights for maintenance planning, optimized resource allocation, and reduced risks of unexpected failures. This research establishes a robust framework for bridge performance prediction, ensuring improved infrastructure safety and resilience amid aging assets and constrained maintenance budgets.
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页数:28
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共 18 条
  • [11] An application of convolutional neural network for deterioration modeling of highway bridge components in the United States
    Liu, Heng
    Nehme, Jean
    Lu, Ping
    [J]. STRUCTURE AND INFRASTRUCTURE ENGINEERING, 2023, 19 (06) : 731 - 744
  • [12] Bridge condition rating data modeling using deep learning algorithm
    Liu, Heng
    Zhang, Yunfeng
    [J]. STRUCTURE AND INFRASTRUCTURE ENGINEERING, 2020, 16 (10) : 1447 - 1460
  • [13] Deep Learning-Based Analytics of Multisource Heterogeneous Bridge Data for Enhanced Data-Driven Bridge Deterioration Prediction
    Liu, Kaijian
    El-Gohary, Nora
    [J]. JOURNAL OF COMPUTING IN CIVIL ENGINEERING, 2022, 36 (05)
  • [14] Machine learning approach for predicting bridge components' condition ratings
    Mia, Md. Manik
    Kameshwar, Sabarethinam
    [J]. FRONTIERS IN BUILT ENVIRONMENT, 2023, 9
  • [15] Singh S., 2019, P 2 INT C ADV COMP S, DOI [10.2139/ssrn.3350281, DOI 10.2139/SSRN.3350281]
  • [16] Reliability-Based Modeling of Bridge Deterioration Hazards
    Sobanjo, John
    Mtenga, Primus
    Rambo-Roddenberry, Michelle
    [J]. JOURNAL OF BRIDGE ENGINEERING, 2010, 15 (06) : 671 - 683
  • [17] Deterioration models for prediction of remaining useful life of timber and concrete bridges: A review
    Srikanth, Ishwarya
    Arockiasamy, Madasamy
    [J]. JOURNAL OF TRAFFIC AND TRANSPORTATION ENGINEERING-ENGLISH EDITION, 2020, 7 (02) : 152 - 173
  • [18] The development of a mobile manipulator imaging system for bridge crack inspection
    Tung, PC
    Hwang, YR
    Wu, MC
    [J]. AUTOMATION IN CONSTRUCTION, 2002, 11 (06) : 717 - 729