11

LS-OPT

2018/6/6

LS-OPT® for Design Optimization and Parameter Identification


LS-OPT® is a simulation-based optimization tool which enables the solution of complex, multi-stage design processes or regression/classification tasks. LS-OPT interfaces with LS-DYNA® (e.g. result extraction) and also supports popular pre- and post-processors, e.g. for shape optimization. For visualization of results, graphical pre- and post-processing tools are included in the package.



Tasks:


Multidisciplinary and Multi-Objective Optimization (MDO/MOO)

Discrete and Mixed Optimization

Global Optimization

Robust and/or Reliability-based Optimization

LS-DYNA statistics, including outlier analysis and LS-PrePost® support

Parameter Identification with matching of noisy, steep and hysteretic curves

Full-field calibration using Digital Image Correlation

Uncertainty Quantification

Sensitivity Analysis




LS-OPT界面参数定义流程图


Solvers and Methods:


Sequential Response Surface Method

Genetic Algorithm and Efficient Global Optimization (EGO)

NSGA-II algorithm for MOO

Monte Carlo methods (direct and metamodel-based)

Outlier Analysis

Support Vector Machines (SVMs) for Statistical Classification

Taguchi Method

Curve similarity measures: Dynamic Time Warping (DTW), Partial Curve Mapping and Discrete Fréchet

Experimental Design: Space-filling, Full or Fractional Factorial, Latin Hypercube

Metamodels: Neural networks, Polynomials, Kriging and Support Vector Regression

Network-based job scheduling


LS-OPT is capable of performing optimization with multiple objectives, disciplines and load cases. It can account for uncertainties in the design or loading (stochastic analysis and optimization), and can also be used to optimize tolerances with a multi-level setup.





     


     

实际的数据 (LS-DYNA)        分类器 (蓝色边界线)
基于分类器的参数化车身侧面碰撞



Graphical Post-Processing:


Result plots (Correlation Matrix, Scatter plots, Parallel Coordinate, Self-Organizing Maps, Time-history, Statistical)

Metamodel plots (Surface, 2D cross-sections, Accuracy, Global sensitivities, History sensitivities)

 Classification boundary plot

Pareto plots (Scatter plots, Parallel Coordinate, Self-Organizing Maps)

Stochastic Analysis (Statistical tools, Correlation, Stochastic Contribution)

Effect plot (Taguchi)

Optimization History

Tables with interactive features


   

采用动态时间规整算法的GISSMO 失效模型校正(左)
全场校正 (数字图像相关法)(右)

材料参数识别


Website:

https://www.lsoptsupport.com/

LS-DYNA China