five

Metal Additive Manufacturing Open Repository

收藏
NIAID Data Ecosystem2026-03-12 收录
下载链接:
https://zenodo.org/record/3603603
下载链接
链接失效反馈
官方服务:
资源简介:
LMD dataset This dataset gathers data from different parts of the Laser Metal Deposition process (Additive Manufacturing). The dataset covers not only the process data, but also the design, NDT (Non-Destructive Testing) and dimensional inspection. Motivation The industrialisation of Additive Manufacturing (AM) requires a holistic data management and integrated automation. INTEGRADDE aims to develop an end-to-end Digital Manufacturing solution, enabling a cybersecured bidirectional dataflow for a seamless integration across the entire AM chain. The goal is to develop a new manufacturing methodology capable of ensuring the manufacturability, reliability and quality of a target metal component from initial product design via Direct Energy Deposition (DED) technologies, implementing a zero-defect manufacturing approach ensuring robustness, stability and repeatibility of the process. To achieve this aim, INTEGRADDE addresses following key innovations:  Development of an intelligent data-driven AM pipeline.  Combination of automatic topology optimisation algorithms for design, multi-scale process modelling, automated hardware-independent process planning, online control and distributed NDT for the manufacturing of certified metal parts.  A self-adaptive control is adopted focused on the implementation of non-propagation of defects strategy. Moreover, Data Analytics will provide a continuous refinement by acquiring process knowledge to assist in the manufacturing of new metal components, improving right-first-time production by adopting a mass customization approach  Cybersecurity ensures data integrity along the AM workflow, providing a novel manufacturing methodology for the certification of metal AM parts. INTEGRADDE implements a twofold deployment approach for the pilot lines: both in application-driven at five industrial end-users (steel, tooling, aeronautics, and construction) and open-pilot networks at RTOs already owning AM infrastructure (AIMEN, IREPA, CEA, WEST). This will allow a continuous validation and deployment of specific developments towards industrialization, boosting definitive uptake of AM in EU metalworking sector. Authors Carlos Gonzalez-Val: Main contact (carlos.gonzalez@aimen.es) Baltasar Lodeiro Marcos Diez   Entities This dataset was collected under the INTEGRADDE project. Attributions: AIMEN: Process data collection and manufacturing of P1, P2, P3 and P4 CEA: Tomography analysis. DATAPIXEL: Dimensional inspection. Structure The dataset follows this structure: Dataset [SAMPLE 1 NAME] README: metadata and information about the sample. Format: txt. Photo: a photo of the manufactured sample. Format: jpg. Design: a 3D design file of the piece before manufacturing (original design). Format: stl. Trajectories: the trajectories followed for the manufacturing. Format: gcode. Process data: data recorded from the process. Format hdf5. Tomography: data from a 3D tomographic reconstruction. Format: raw. Dimensional inspection: A comparison [SAMPLE 2 NAME] ... Further information and metadata is contained in each stage's subdirectory. Note that not all the samples contain all the stages. Software To open the different files that conform the dataset, we recommend the following Open softwares:  hdf5 -> HDF5 Viewer: https://www.hdfgroup.org/downloads/hdfview/  stl/amf -> Slic3r: https://slic3r.org / OpenJScad: https://openjscad.org/  stp -> ShareCad: https://beta.sharecad.org/  gcode -> Text editor / Slic3r: https://slic3r.org/  raw -> ImageJ: https://imagej.net/
创建时间:
2021-07-02
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作