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Data Driven Benchmark - Plate with Hole - Dataset 3

Inspired by strategic discussions within the NAFEMS ASSESS Initiative, this curated finite element analysis dataset builds upon NAFEMS' 40-year legacy of establishing trusted industry benchmarks for physics-based simulation and looks to the emerging use of AI in engineering simulation.

The collection provides baseline data on principal stress distributions within plate geometries. A deliberately simple problem was selected to maximise the dataset's educational merit. Because the peak principal stress for this geometry can be validated against a well-established analytical solution (Heywood's equations), the dataset provides a transparent baseline. This simplicity allows engineers and researchers to study fundamental behaviour of the data driven models, such as demonstrating how the quantity and distribution of training data impacts the model predictions. As artificial intelligence models increasingly integrate into commercial simulation tools, this dataset is intended to serve as a useful resource for engineers looking for a vendor neutral dataset.

To maintain NAFEMS' commitment to vendor neutrality, the results are provided in the open standard VMAP format, alongside training and test data in HyperMesh (*.h3d) and Nastran (*.op2) formats. For those who wish to recreate the results on their own systems solver input decks have been provided in optistruct (*.fem) and Nastran (*.bdf) format.

Download the problem description

NAFEMS would like to thank Altair and the Fraunhofer Institute for their support with this project.

P​roblem Variables

V​ariable

Range Lower Bound

R​ange Upper Bound

H​ole diameter

30mm

2​40mm

P​late width

300mm

1​000mm

P​late length

3​00mm

1​000mm

P​late thickness

1​mm

2​0mm

A​pplied load

5​000N

1​00000N

O​ffset width direction

0​mm

0​.4 x (Plate Width - Hole diameter)

O​ffset length direction

0​mm

0​.4 x (Plate Length - Hole diameter)

T​he Datasets

6​ datasets have been provided. The first 5 datasets are relatively simple and vary between one and three parameters.

The 6th dataset represents a significantly more complicated problem where 7 parameters are varied. T​he variables in the 6th dataset have been selected using latin hypercube sampling approach. Users are encouraged to parse the dataset for outliers.

Dataset

# training sets

# test sets

Variables

Dataset location

1

19

3

H​ole diameter

Link

2

19

6

Hole diameter, p​late thickness

L​ink

3​

1​9

3​

H​ole Diameter, plate width, plate length

N​AFEMS Member Download Button

4​

1​9

3​

H​ole diameter, applied load

L​ink

5​

1​9

3​

H​ole diameter, hole location

L​ink

6​

9​7

-​

H​ole diameter, plate thickness, applied load, plate width, plate length, hole location

L​ink

Dataset 3 Details

I​D

T​est/ Train

Diameter (mm)

T​hickness (mm)

W​idth (mm)

L​ength (mm)

WidthOffset (mm)

LengthOffset (mm)

Load (N)

Test31

Test

90

5

600

800

0

0

100000

Test32

Test

200

5

500

600

0

0

100000

Test33

Test

150

5

800

1000

0

0

100000

Train31

Train

41.7

5

601

1000

0

0

100000

Train32

Train

181.7

5

911

867

0

0

100000

Train33

Train

53

5

823

734

0

0

100000

Train34

Train

205

5

778

823

0

0

100000

Train35

Train

88.3

5

956

424

0

0

100000

Train36

Train

77

5

557

557

0

0

100000

Train27

Train

228.3

5

645

956

0

0

100000

Train38

Train

217

5

424

690

0

0

100000

Train39

Train

193

5

247

291

0

0

100000

Train310

Train

123

5

380

601

0

0

100000

Train311

Train

147

5

291

202

0

0

100000

Train312

Train

158.3

5

1000

645

0

0

100000

Train313

Train

100

5

202

380

0

0

100000

Train314

Train

135

5

335

778

0

0

100000

Train315

Train

30

5

867

911

0

0

100000

Train316

Train

170

5

468

247

0

0

100000

Train317

Train

65

5

512

512

0

0

100000

Train318

Train

240

5

734

335

0

0

100000

Train319

Train

111.7

5

690

468

0

0

100000

 

Document Details

Referenceassess-26-03
AuthorSymington. I
LanguageEnglish
AudiencesAnalyst Developer
TypeKnowledge Base
Date 22nd February 2026
OrganisationNAFEMS

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