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Published February 16, 2022 | Version 1.0.0
Dataset Open

Convolutional Neural Networks for Classifying Combinatorial Metamaterials

  • 1. University of Amsterdam; AMOLF
  • 2. Utrecht University
  • 3. Leiden University; AMOLF
  • 4. University of Amsterdam

Description

This dataset contains the training and test data, as well as the trained neural networks as used for the paper 'Machine Learning of Combinatorial Rules in Mechanical Metamaterials', as published in XXX.

In this paper, a neural network is used to classify each \(k \times k\) unit cell design into one of two classes (C or I). Additionally, the performance of the trained networks is analysed in detail. A more detailed description of the contents of the dataset follows below.

NeuralNetwork_train_and_test_data.zip

This file contains the train and test data used to train the Convolutional Neural Networks (CNNs) of the paper. Each unit cell size has its own file, and is saved in a zipped numpy file type (.npz).

CNN_saves_kxk.zip

This file contains the parameter configurations of the CNNs trained on \(k \times k\) unit cells. Every hyperparameter (number of filters nf, number of hidden neurons nh, learning rate lr) combination is saved separately. The neural networks can be loaded using Google's TensorFlow package in Python, specifically using the 'tf.keras.models.load_model' function. 

Files

CNN_saves_3x3.zip

Files (112.3 GB)

Name Size Download all
md5:289a715826518c7a09cdad71dbdb0332
8.7 GB Preview Download
md5:eb0e924b27e45df0dfb5d6c4a07aadd1
25.4 GB Preview Download
md5:152ab38fa6b54812940cb3dc7f6a320c
13.7 GB Preview Download
md5:a19acd88125ca04dcbf8cdd1895f70a0
28.8 GB Preview Download
md5:b16a783413a69db6daad68b31866305f
5.2 GB Preview Download
md5:aa7800a277b415b018c4edd0838b13b6
29.2 GB Preview Download
md5:72efbeb5f6b4f48893fa194b30b9ec62
1.3 GB Preview Download

Additional details

Related works

Is supplemented by
Dataset: 10.5281/zenodo.5879125 (DOI)

Funding

European Commission
Extr3Me - Extreme Mechanics of Metamaterials: From ideal to realistic conditions 852587