five

Data of Graduation Project 'Anisotropic Swelling of a Cylindrical Hydrogel'

收藏
Mendeley Data2024-03-27 更新2024-06-30 收录
下载链接:
https://zenodo.org/record/5495244
下载链接
链接失效反馈
资源简介:
The data is generated as part of the graduation project 'Anisotropic Swelling of a Cylindrical Hydrogel'. The data is generated via Mathematica Notebooks that can be retrieved directly from the GitHub. These notebooks are annotated, and the data provided here can be reproduced by using the appropriate parameters. The Mathematica notebooks can be subdivided in two categories, namely 1) Notebooks that generate data and 2) Notebooks that analyze the data. Notebooks that are used to analyze the data must be adjusted to import the data correctly. ReadMe-files are added to guide you through the process when using these notebooks. The data that is stored here can be subdivided into three different sets: Data - spring models.zip. This data is related to the spring model as introduced in part I of the thesis. Data – Spherical Poroelasticity Model.zip. This data is related to the spherical poroelastic model as introduced in the appendix of the thesis. Data – Cylindrical Poroelasticity Model.zip. This data is related to the cylindrical poroelastic model as introduced in part II of the thesis. Each of these folders are subdivided into folders, which contain the following data: Data – spring models.zip. Read the ReadMe-Information-Data.txt for more information. Each folder contains the data that is generated by the notebook 'discrete3Dmodel-meanB-experimental3kDa.nb'. The numbers indicated the values for Ka, Kb and Kc before and after the transition respectively. Data is used to generate figure 3.3 of the report. Data – Spherical Poroelasticity Model.zip. Typical results for spherical hydrogel. Folder contains the data that is generated by the notebook Spherical-swelling-notebook.wl with the parameters as provided in the folder. Data is used to generate figure C.2, C.3 of the report Effect of grid size N - N = 5. Folder contains the data that is generated by the notebook Spherical-swelling-notebook.wl with the parameters as provided in the folder. Data is used to generate figure C.3 of the report Effect of chemical potential mu - mu = 0. Folder contains the data that is generated by the notebook Spherical-swelling-notebook.wl with the parameters as provided in the folder. Data is used to generate figure C.3 of the report Data – Cylindrical Poroelasticity Model.zip. Equilibrium Dynamics. Folder contains data generated by the notebook Cylinder-finalversion-annotated.wl with the parameters as provided in the folder. Data is used to generate figures 6.1 – 6.4 of the report Anisotropy parameters. Folder contains data for different anisotropy parameters generated by the notebook Cylinder-finalversion-annotated.wl with the parameters as provided in the folder. Data is used to generate figures 6.5 – 6.7 of the report Relative Humidity Rate. Folder contains data for different rates (i.e. different times) and different gridpoints generated by the notebook Cylinder-finalversion-annotated.wl with the parameters as provided in the folder. Data is used to generate figures 6.8 – 6.10 of the report Transition. Folder contains data for transitions with different properties generated by the notebook Cylinder-finalversion-annotated.wl with the parameters as provided in the folder. Data is used to generate figures 6.11 – 6.14, E.1 – E.8 of the report The other figures in the report are generated without explicit data storage, and can (in most cases) be generated directly with the appropriate notebook provided at GitHub. The correct version on GitHub used for generating the data can be found via https://github.com/QBraat/Cylindrical-Gel-Swelling/releases/tag/v1.0.
创建时间:
2023-06-28
用户留言
有没有相关的论文或文献参考?
这个数据集是基于什么背景创建的?
数据集的作者是谁?
能帮我联系到这个数据集的作者吗?
这个数据集如何下载?
点击留言
数据主题
具身智能
数据集  4099个
机构  8个
大模型
数据集  439个
机构  10个
无人机
数据集  37个
机构  6个
指令微调
数据集  36个
机构  6个
蛋白质结构
数据集  50个
机构  8个
空间智能
数据集  21个
机构  5个
5,000+
优质数据集
54 个
任务类型
进入经典数据集
热门数据集

rpi_test

该数据集为HuggingFace LeRobot格式机器人数据集。

huggingface 收录

CMU-MOSI

CMU-MOSI数据集包括了从93个YouTube的视频中获取的2199个独白类型的短视频片段。每个片段都是一个独立的多模态示例,其中图像、文本和音频占比是均匀的,情感分数取值为[-3,+3],表示从强负向到强正向情感。

DataCite Commons 收录

VEDAI

用于训练YOLO模型的VEDAI数据集,包含图像和标签,用于目标检测和跟踪。

github 收录

Global Urban Boundaries (GUB)

Global Urban Boundaries (GUB) 数据集包含了全球城市边界的详细信息,提供了高分辨率的城市边界数据,用于分析城市化进程和城市扩张。

datacatalog.worldbank.org 收录

danaroth/icvl

ICVL是一个高光谱图像数据集,由Specim PS Kappa DX4高光谱相机和旋转平台进行空间扫描采集。数据集目前包含200张图像,并且会逐步增加。图像的空间分辨率为1392×1300,覆盖519个光谱波段(400-1000nm,间隔约1.25nm)。数据集提供了ENVI格式的原始数据和MAT格式的下采样数据(31个光谱通道,400-700nm,间隔10nm)。原始数据集仅包含干净的图像,用于高光谱图像去噪的测试数据来自另一篇论文。

hugging_face 收录