Scientific Reports (Jul 2023)

Research on surrogate model of dam numerical simulation with multiple outputs based on adaptive sampling

  • Jiaming Liang,
  • Zhanchao Li,
  • Litan Pan,
  • Ebrahim Yahya Khailah,
  • Linsong Sun,
  • Weigang Lu

DOI
https://doi.org/10.1038/s41598-023-38590-z
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 17

Abstract

Read online

Abstract Dam numerical simulation is an important method to research the dam structural behavior, but it often takes a lot of time for calculation when facing problems that require many simulations, such as structural parameter back analysis. The surrogate model is widely used as a technology to reduce computational cost. Although various methods have been widely investigated, there are still problems in designing the surrogate model's optimal Design of Experiments (DoE). In addition, most of the current DoE focuses on establishing a single-output problem. Designing a reasonable DoE for high-dimensional outputs is also a problem that needs to be solved. Based on the above issues, this research proposes a sequential surrogate model based on the radial basis function model (RBFM) with multi-outputs adaptive sampling. The benchmark function demonstrates the applicability of the proposed method to single-input & multi-outputs and multi-inputs & multi-outputs problems. Then, this method is applied to establishing a surrogate model for dam numerical simulation with multi-outputs. The result demonstrates that the proposed technique can be sampled adaptively and samples can be targeted based on the function form of the surrogate model, which significantly reduces the required sampling and calculation cost.