Near-real-time Probabilistic Assessment of Riverbank Structures using Monitoring-integrated Numerical Models

Authors

  • Shiji Ma
    Affiliation
    School of Future Cities, University of Science and Technology Beijing, No. 30 Xueyuan Road, Haidian District, 100083 Beijing, Chin
  • Lan Qiao
    Affiliation
    School of Resources and Safety Engineering, University of Science and Technology Beijing, No. 30 Xueyuan Road, Haidian District, 100083 Beijing, China
  • Meng Zhang
    Affiliation
    China First Highway Engineering Co., Ltd., Block A, Shitong International Building, Zhoujiajing, Guanzhuang, Chaoyang District, 100024 Beijing, China
  • Ruizhi Wang
    Affiliation
    Center for School Development and Planning, Ministry of Education, 15th Floor, Science and Technology Building, No. 3 Shangyuancun, Haidian District, 100044 Beijing, China
  • Qingwen Li
    Affiliation
    School of Resources and Safety Engineering, University of Science and Technology Beijing, No. 30 Xueyuan Road, Haidian District, 100083 Beijing, China
  • Jianhong Man
    Affiliation
    School of Resources and Safety Engineering, University of Science and Technology Beijing, No. 30 Xueyuan Road, Haidian District, 100083 Beijing, China
https://doi.org/10.3311/PPci.43182

Abstract

Riverbank hydraulic structures are typically monitored using deterministic thresholds, whereas their reliability is assessed through probabilistic analysis during design. This separation limits the ability of monitoring systems to quantify evolving structural risk under uncertain geotechnical conditions and stochastic excitations. To bridge this gap, this study proposes an integrated probabilistic monitoring framework that couples offline probability density evolution (PDEM) with online surrogate-based distribution correction.
An offline baseline database of response probability density surfaces (PDS) is established by incorporating spatially variable geotechnical parameters and stochastic excitation models within a reduced-dimensional representation. This baseline captures the temporal evolution of structural response distributions under representative environmental scenarios. For near-real-time application, a lightweight surrogate model is developed to infer distribution-level correction parameters from monitoring-derived features, enabling rapid reconstruction of updated PDS without repeated dynamic simulations. The framework is validated through a numerical case study of a Π-shaped anti-scour wall slope. The surrogate-reconstructed PDS demonstrates strong agreement with direct probabilistic solutions, with Jensen-Shannon divergence and Earth Mover's Distance generally below 0.1, while reducing computational cost by more than two orders of magnitude. The proposed method enables real-time extraction of distribution-based risk indicators and provides a probability-informed pathway for monitoring and early warning of hydraulic structures subjected to coupled environmental uncertainties.

Keywords:

probabilistic monitoring, probability density evolution, surrogate modelling, spatial variability, hydraulic structures

Citation data from Crossref and Scopus

Published Online

2026-06-17

How to Cite

Ma, S., Qiao, L., Zhang, M., Wang, R., Li, Q., Man, J. “Near-real-time Probabilistic Assessment of Riverbank Structures using Monitoring-integrated Numerical Models”, Periodica Polytechnica Civil Engineering, 2026. https://doi.org/10.3311/PPci.43182

Issue

Section

Research Article