A Flexible Numerical Framework for Engineering—A Response Surface Modelling Application

  • P. Viviani
  • M. Aldinucci
  • R. d’Ippolito
  • J. Lemeire
  • D. Vucinic
Chapter
Part of the Advanced Structured Materials book series (STRUCTMAT, volume 72)

Abstract

This work presents an innovative approach adopted for the development of a new numerical software framework for accelerating dense linear algebra calculations and its application within an engineering context. In particular, response surface models (RSM) are a key tool to reduce the computational effort involved in engineering design processes like design optimization. However, RSMs may prove to be too expensive to be computed when the dimensionality of the system and/or the size of the dataset to be synthesized is significantly high or when a large number of different response surfaces has to be calculated in order to improve the overall accuracy (e.g. like when using ensemble modelling techniques). On the other hand, the potential of modern hybrid hardware (e.g. multicore, GPUs) is not exploited by current engineering tools, while they can lead to a significant performance improvement. To fill this gap, a software framework is being developed that enables the hybrid and scalable acceleration of the linear algebra core for engineering applications and especially of RSMs calculations with a user-friendly syntax that allows good portability between different hardware architectures, with no need of specific expertise in parallel programming and accelerator technology. The effectiveness of this framework is shown by comparing an accelerated code to a single-core calculation of a radial basis function RSM on some benchmark datasets. This approach is then validated within a real-life engineering application and the achievements are presented and discussed.

Keywords

Response surface modelling GPU computing Linear algebra Armadillo 

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Copyright information

© Springer International Publishing AG 2018

Authors and Affiliations

  • P. Viviani
    • 1
    • 2
    • 4
  • M. Aldinucci
    • 1
  • R. d’Ippolito
    • 2
  • J. Lemeire
    • 3
  • D. Vucinic
    • 3
  1. 1.Dipartimento di InformaticaUniversità degli Studi di TorinoTurinItaly
  2. 2.Noesis SolutionsLeuvenBelgium
  3. 3.Department of Electronics and Informatics (ETRO)Vrije Universiteit BrusselBrusselsBelgium
  4. 4.Noesis Solutions srl c/o Ufficio 201NovaraItaly

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