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data models
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Series: ASM Handbook
Volume: 24A
Publisher: ASM International
Published: 30 June 2023
DOI: 10.31399/asm.hb.v24A.a0006963
EISBN: 978-1-62708-439-0
... on the printed coupons and/or parts, to name just a few examples. This article presents the standards to enable findable, accessible, interoperable, and reusable (FAIR) data. It then discusses three main types of data models that are used to capture different levels of detail and granularity of data: conceptual...
Abstract
Additive manufacturing, as the first fully digital manufacturing process, is critically dependent on data, including the input materials, the process parameters guiding the three-dimensional printing process execution, any postprocessing steps, and any inspections performed on the printed coupons and/or parts, to name just a few examples. This article presents the standards to enable findable, accessible, interoperable, and reusable (FAIR) data. It then discusses three main types of data models that are used to capture different levels of detail and granularity of data: conceptual, logical, and physical. Different approaches and techniques with their own strengths and weaknesses are developed to model data. Four of the major types of data models include hierarchical, relational, object-oriented, and network/graph-based. The article also presents the evolution of data management approaches. It then describes the characteristics of effective logical data models.
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Published: 01 January 2001
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in Nondestructive Testing of Composites (Polymer- and Metal-Matrix Composites)[1]
> Nondestructive Evaluation of Materials
Published: 01 August 2018
Fig. 43 Induction welding data fusion models of process data and nondestructive evaluation measurements
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in Evolution of Data Management and Common Data Models for Additive Manufacturing
> Additive Manufacturing Design and Applications
Published: 30 June 2023
Fig. 3 Visual example of a hierarchical data model with classes and attributes relevant to an additive manufacturing (AM) use case
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in Evolution of Data Management and Common Data Models for Additive Manufacturing
> Additive Manufacturing Design and Applications
Published: 30 June 2023
Fig. 4 Visual example of a relational data model with the same classes and attributes as found in Fig. 3
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in Evolution of Data Management and Common Data Models for Additive Manufacturing
> Additive Manufacturing Design and Applications
Published: 30 June 2023
Fig. 5 Visual example of an object-oriented data model with the same classes and attributes as found in Fig. 3
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in Evolution of Data Management and Common Data Models for Additive Manufacturing
> Additive Manufacturing Design and Applications
Published: 30 June 2023
Fig. 6 Visual example of a graph-based data model with the same classes and attributes as found in Fig. 3
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Published: 01 January 2001
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Published: 01 January 1996
Fig. 16 Schematic representation of the specimen, data, and modeling process for generating fatigue crack growth rate ( da / dN − Δ K ) data. (a) Specimen and loading. (b) Measured data. (c) Rate data. Source: Ref 44
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in X-Ray Diffraction Residual Stress Measurement in Failure Analysis
> Failure Analysis and Prevention
Published: 01 January 2002
Fig. 21 Theoretical model versus XRD-generated experimental data plots of residual stress versus number of cycles. Source: Ref 43
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Published: 01 January 1996
Fig. 18 Comparison of the predictions of the initiation-propagation model with data in the University of Illinois at Urbana-Champaign weldment fatigue databank for a mild steel, non-load-carrying cruciform weldment, R = 0
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Published: 01 January 1996
Fig. 19 Comparison of the predictions of the initiation-propagation model with data in the University of Illinois at Urbana-Champaign weldment fatigue databank for a mild steel, non-load-carrying cruciform weldment, R = −1
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Published: 01 January 1996
Fig. 20 Comparison of the predictions of the initiation-propagation model with data in the University of Illinois at Urbana-Champaign weldment fatigue databank for a mild steel, double-V butt weldment, R = 0
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Published: 01 January 1996
Fig. 21 Comparison of the predictions of the initiation-propagation model with data in the University of Illinois at Urbana-Champaign weldment fatigue databank for a mild steel, double-V butt weldment, R = −1
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Published: 01 January 1989
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Published: 01 December 2009
Fig. 4 Test and training errors as a function of model complexity for noisy data in a case where y should vary with x 4 . The solid data points were used to create the models (i.e., they represent training data), and the open circles constitute the test data. (a) Linear function
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in Modeling of Microstructure Evolution during the Thermomechanical Processing of Titanium Alloys
> Fundamentals of Modeling for Metals Processing
Published: 01 December 2009
Fig. 18 Comparison of measurements (data points, thin lines) and mesocale-model predictions (thick lines) of microstructure evolution in Beta-Cez. (a) Isothermal transformation kinetics at 800 °C for material prior-beta worked to develop different subgrain sizes. (b) Number of colonies
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Published: 15 January 2021
Fig. 58 Model of swivel bracket reconstructed from computed tomography scan data. Isometric views
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Published: 15 January 2021
Fig. 59 Model of swivel bracket reconstructed from computed tomography scan data. (a) Front view. (b) Rear view
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Published: 15 January 2021
Fig. 60 Model of swivel bracket reconstructed from computed tomography scan data. (a) Top view. (b) Bottom view
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