Robust Bayesian target vector optimization for multi-stage manufacturing processes

被引:1
作者
Hoffer, J. G. [1 ]
Geiger, B. C. [2 ]
Kern, R. [3 ]
机构
[1] Voestalpine BOHLER Aerosp GmbH & Co KG, Mariazellerst 25, A-8605 Kapfenberg, Austria
[2] Graz Univ Technol, Signal Proc & Speech Commun Lab, Inffeldgasse 16c, A-8010 Graz, Austria
[3] Graz Univ Technol, Inst Interact Syst & Data Sci, Inffeldgasse 16c, A-8010 Graz, Austria
关键词
Multi-stage manufacturing processes; Bayesian optimization; Robust optimization; Cascaded optimization; Target vectors; MODEL;
D O I
10.1016/j.commatsci.2024.113175
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This research focuses on optimizing multi-stage manufacturing processes using Bayesian optimization (BO) with a robust Expected Improvement (EI) acquisition function. The aim is to optimize towards pre-selected target vectors, not to just minimize or maximize a function. To achieve this, we minimize the Euclidean distance between the actual and target output vectors, which requires transforming the Gaussian surrogate model posterior distribution into a non-central chi(2) ( NC chi(2) ) distribution. Furthermore, the distance measure additionally uses aleatoric uncertainty estimates of the actual output vectors to achieve robustness. We use a cascaded method that also considers the optimization results of intermediate stages, whereby optimization results are propagated from the last stage towards the first stage in each optimization iteration. By considering intermediate process outputs and aleatoric effects, our approach provides a robust optimization method for multi-stage manufacturing processes. To validate our method and to evaluate its properties, we use two artificial use cases. Moreover, we evaluate our approach in an industrial multi-stage forging process for the manufacturing of a nickel basis superalloy turbine disk, where involved stages are represented by corresponding 2D finite element method (FEM) DEFORM simulations. Evaluation suggests that our approach is superior in optimizing multi-stage manufacturing processes by considering all stage outcomes, robust distance measures, and the use of appropriate uncertainty distributions.
引用
收藏
页数:16
相关论文
共 54 条
  • [1] Geospatial uncertainty modeling using Stacked Gaussian Processes
    Abdelfatah, Kareem
    Bao, Junshu
    Terejanu, Gabriel
    [J]. ENVIRONMENTAL MODELLING & SOFTWARE, 2018, 109 : 293 - 305
  • [2] A multi-stage melanoma recognition framework with deep residual neural network and hyperparameter optimization-based decision support in dermoscopy images
    Alenezi, Fayadh
    Armghan, Ammar
    Polat, Kemal
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2023, 215
  • [3] [Anonymous], 2006, Gaussian Processes for Machine Learning, DOI [DOI 10.1093/BIOINFORMATICS/BTQ657, 10.1142/S0129065704001899, 10.1093/bioinformatics/btq657, DOI 10.1142/S0129065704001899]
  • [4] Bogunovic I., 2018, Adv. Neural Inf. Process. Syst., P5760
  • [5] Treed gaussian process for manufacturing imperfection identification of pultruded GFRP thin-walled profile
    Civera, Marco
    Boscato, Giosue
    Fragonara, Luca Zanotti
    [J]. COMPOSITE STRUCTURES, 2020, 254
  • [6] Daulton S, 2022, PR MACH LEARN RES
  • [7] Engineering model-based Bayesian monitoring of ramp-up phase of multistage manufacturing process
    Du, Shichang
    Yao, Xufeng
    Huang, Delin
    [J]. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 2015, 53 (15) : 4594 - 4613
  • [8] Fröhlich LP, 2020, PR MACH LEARN RES, V108, P2262
  • [9] Production Scheduling of Multi-Stage, Multi-product Food Process Industries
    Georgiadis, Georgios P.
    Ziogou, Chrysovalantou
    Kopanos, Georgios
    Garcia, Manuel
    Cabo, Daniel
    Lopez, Miguel
    Georgiadis, Michael C.
    [J]. 28TH EUROPEAN SYMPOSIUM ON COMPUTER AIDED PROCESS ENGINEERING, 2018, 43 : 1075 - 1080
  • [10] Bayesian Optimization for Adaptive Experimental Design: A Review
    Greenhill, Stewart
    Rana, Santu
    Gupta, Sunil
    Vellanki, Pratibha
    Venkatesh, Svetha
    [J]. IEEE ACCESS, 2020, 8 : 13937 - 13948