five

Data underlying Chapter 5 of the PhD thesis: Chemical Imaging Methods for Cultural Heritage: Advanced Data Acquisition and Processing

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4TU.ResearchData2025-03-25 更新2026-04-23 收录
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*** L.M. de Almeida Nieto Dissertation Chapter 5: Accelerating MA-XRF Through Advanced Scanning Strategies Related Data***Authors: L.M. de Almeida Nieto, H.M. Chopp, J. Dik, R. Van de Plas, M. AlfeldMaterials Science and Engineering Department, Faculty of Mechanical Engineering, DelftUniversity of TechnologyCorresponding author: L.M. de Almeida NietoContact Information:luisdealmeida95@gmail.comDelft University of Technology - Faculty of Mechanical EngineeringThe Netherlands<br>***General Introduction***This dataset contains all the data relevant to Chapter 5 of L.M. de Almeida Nieto's doctoral dissertation, collected between 2024 and 2025.The data in this data set was collected in the Alfeld Lab of the Faculty of Mechanical Engineering of TU Delft.This research project was made possible by by funding from TU Delft.<br>***Purpose of the test campaign***The purpose of these experiments was to evaluate differeny smart scanning strategies for MA-XRF measurements.<br>***Test equipment***MA-XRF data was acquired using the in-house built BLB Mark I MA-XRF scanner. Information on the scanner can be found on Chapter 4 of the related dissertation.

*** L.M. de Almeida Nieto 博士论文第5章:基于先进扫描策略的MA-XRF加速相关数据集 *** 作者:L.M. de Almeida Nieto、H.M. Chopp、J. Dik、R. Van de Plas、M. Alfeld 材料科学与工程系,机械工程学院,代尔夫特理工大学(Delft University of Technology) 通讯作者:L.M. de Almeida Nieto 联系方式:luisdealmeida95@gmail.com 代尔夫特理工大学(Delft University of Technology)机械工程学院,荷兰 <br> *** 概述 *** 本数据集涵盖L.M. de Almeida Nieto博士论文第5章的全部相关研究数据,采集时间为2024年至2025年。本数据集所有数据均采集自代尔夫特理工大学机械工程学院Alfeld实验室。本研究项目获得代尔夫特理工大学的经费资助。 <br> *** 测试活动目标 *** 本系列实验旨在评估各类先进扫描策略在MA-XRF测量中的应用效果。 <br> *** 测试设备 *** 本研究通过自主研发的BLB Mark I型MA-XRF扫描仪采集MA-XRF数据。有关该扫描仪的详细信息可参阅相关博士论文的第4章。
提供机构:
Chopp, Henry
创建时间:
2025-03-25
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