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A coupled fluid-mechanical workflow to simulate the directed energy deposition additive manufacturing process

Computational Mechanics

Beghini, Lauren L.; Stender, Michael; Moser, Daniel R.; Trembacki, Bradley L.; Veilleux, Michael G.; Ford, Kurtis

Simulation of additive manufacturing processes can provide essential insight into material behavior, residual stress, and ultimately, the performance of additively manufactured parts. In this work, we describe a new simulation based workflow utilizing both solid mechanics and fluid mechanics based formulations within the finite element software package SIERRA (Sierra Solid Mechanics Team in Sierra/SolidMechanics 4.52 User’s Guide SAND2019-2715. Technical report, Sandia National Laboratories, 2011) to enable integrated simulations of directed energy deposition (DED) additive manufacturing processes. In this methodology, a high-fidelity fluid mechanics based model of additive manufacturing is employed as the first step in a simulation workflow. This fluid model uses a level set field to track the location of the boundary between the solid material and background gas and precisely predicts temperatures and material deposition shapes from additive manufacturing process parameters. The resulting deposition shape and temperature field from the fluid model are then mapped into a solid mechanics formulation to provide a more accurate surface topology for radiation and convection boundary conditions and a prescribed temperature field. Solid mechanics simulations are then conducted to predict the evolution of material stresses and microstructure within a part. By combining thermal history and deposition shape from fluid mechanics with residual stress and material property evolutions from solid mechanics, additional fidelity and precision are incorporated into additive manufacturing process simulations providing new insight into complex DED builds.

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Assessing the Influence of Process Induced Voids and Residual Stresses on the Failure of Additively Manufactured 316L Stainless Steel

Karlson, K.N.; Stender, Michael; Bergel, Guy L.

It is well established that the variability in mechanical response and ultimate failure of additively manufactured metals correlates to uncertainties introduced in the build process, among which include internal void structure and residual stresses. Here, we quantify the aforementioned variabilities in 316L stainless steels by conducting simulations in Sierra/SM of the specimens/geometries used in Sandia's third fracture challenge (SFC3). We leverage the simulations and experimental work presented in 6 to construct a statistical representation of the internal void structure of the tension specimen used for material parameter calibration as well as the "challenge" geometry. Voided mesh samples of both specimens are generated given a set of statistical variables, and the physics simulations are conducted for multiple sets of realization to determine the effects of void structure on variability in the fracture paths and displacement-to-failure. Lastly, a series of simulations are presented which highlight the effect of the powder bed fusion additive manufacturing process on the formation of residual stresses in the as-built geometries.

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Sandia Fracture Challenge 3: detailing the Sandia Team Q failure prediction strategy

International Journal of Fracture

Karlson, K.N.; Alleman, Coleman; Foulk, James W.; Manktelow, Kevin; Ostien, Jakob T.; Stender, Michael; Stershic, Andrew J.; Veilleux, Michael G.

The third Sandia Fracture Challenge highlighted the geometric and material uncertainties introduced by modern additive manufacturing techniques. Tasked with the challenge of predicting failure of a complex additively-manufactured geometry made of 316L stainless steel, we combined a rigorous material calibration scheme with a number of statistical assessments of problem uncertainties. Specifically, we used optimization techniques to calibrate a rate-dependent and anisotropic Hill plasticity model to represent material deformation coupled with a damage model driven by void growth and nucleation. Through targeted simulation studies we assessed the influence of internal voids and surface flaws on the specimens of interest in the challenge which guided our material modeling choices. Employing the Kolmogorov–Smirnov test statistic, we developed a representative suite of simulations to account for the geometric variability of test specimens and the variability introduced by material parameter uncertainty. This approach allowed the team to successfully predict the failure mode of the experimental test population as well as the global response with a high degree of accuracy.

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Born Qualified Grand Challenge LDRD Final Report

Roach, Robert A.; Argibay, Nicolas; Allen, Kyle; Balch, Dorian K.; Beghini, Lauren L.; Bishop, Joseph E.; Boyce, Brad L.; Brown, Judith A.; Burchard, Ross L.; Chandross, Michael E.; Cook, Adam; Diantonio, Christopher; Dressler, Amber D.; Forrest, Eric C.; Ford, Kurtis; Ivanoff, Thomas; Jared, Bradley H.; Johnson, Kyle L.; Kammler, Daniel; Koepke, Joshua R.; Kustas, Andrew B.; Lavin, Judith M.; Leathe, Nicholas S.; Lester, Brian T.; Madison, Jonathan D.; Mani, Seethambal; Martinez, Mario J.; Moser, Daniel R.; Rodgers, Theron M.; Seidl, D.T.; Brown-Shaklee, Harlan J.; Stanford, Joshua; Stender, Michael; Sugar, Joshua D.; Swiler, Laura P.; Taylor, Samantha; Trembacki, Bradley L.

This SAND report fulfills the final report requirement for the Born Qualified Grand Challenge LDRD. Born Qualified was funded from FY16-FY18 with a total budget of ~$13M over the 3 years of funding. Overall 70+ staff, Post Docs, and students supported this project over its lifetime. The driver for Born Qualified was using Additive Manufacturing (AM) to change the qualification paradigm for low volume, high value, high consequence, complex parts that are common in high-risk industries such as ND, defense, energy, aerospace, and medical. AM offers the opportunity to transform design, manufacturing, and qualification with its unique capabilities. AM is a disruptive technology, allowing the capability to simultaneously create part and material while tightly controlling and monitoring the manufacturing process at the voxel level, with the inherent flexibility and agility in printing layer-by-layer. AM enables the possibility of measuring critical material and part parameters during manufacturing, thus changing the way we collect data, assess performance, and accept or qualify parts. It provides an opportunity to shift from the current iterative design-build-test qualification paradigm using traditional manufacturing processes to design-by-predictivity where requirements are addressed concurrently and rapidly. The new qualification paradigm driven by AM provides the opportunity to predict performance probabilistically, to optimally control the manufacturing process, and to implement accelerated cycles of learning. Exploiting these capabilities to realize a new uncertainty quantification-driven qualification that is rapid, flexible, and practical is the focus of this effort.

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Changing the Engineering Design & Qualification Paradigm in Component Design & Manufacturing (Born Qualified)

Roach, Robert A.; Bishop, Joseph E.; Jared, Bradley H.; Keicher, David; Cook, Adam; Whetten, Shaun R.; Forrest, Eric C.; Stanford, Joshua; Boyce, Brad L.; Johnson, Kyle L.; Rodgers, Theron M.; Ford, Kurtis; Martinez, Mario J.; Moser, Daniel R.; Van Bloemen Waanders, Bart; Chandross, Michael E.; Abdeljawad, Fadi F.; Allen, Kyle; Stender, Michael; Beghini, Lauren L.; Swiler, Laura P.; Lester, Brian T.; Argibay, Nicolas; Brown-Shaklee, Harlan J.; Kustas, Andrew B.; Sugar, Joshua D.; Kammler, Daniel; Wilson, Mark A.

Abstract not provided.

A thermal-mechanical finite element workflow for directed energy deposition additive manufacturing process modeling

Additive Manufacturing

Stender, Michael; Beghini, Lauren L.; Sugar, Joshua D.; Dagel, Daryl; Subia, Samuel R.; Veilleux, Michael G.; San Marchi, Chris; Brown, Arthur

This work proposes a finite element (FE) analysis workflow to simulate directed energy deposition (DED) additive manufacturing at a macroscopic length scale (i.e. part length scale) and to predict thermal conditions during manufacturing, as well as distortions, strength and residual stresses at the completion of manufacturing. The proposed analysis method incorporates a multi-step FE workflow to elucidate the thermal and mechanical responses in laser engineered net shaping (LENS) manufacturing. For each time step, a thermal element activation scheme captures the material deposition process. Then, activated elements and their associated geometry are analyzed first thermally for heat flow due to radiation, convection, and conduction, and then mechanically for the resulting stresses, displacements, and material property evolution. Simulations agree with experimentally measured in situ thermal measurements for simple cylindrical build geometries, as well as general trends of local hardness distribution and plastic strain accumulation (represented by relative distribution of geometrically necessary dislocations).

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Thermal mechanical finite element simulation of additive manufacturing; process modeling of the LENS process

American Society of Mechanical Engineers, Pressure Vessels and Piping Division (Publication) PVP

Stender, Michael; Beghini, Lauren L.; Veilleux, Michael G.; Subia, Samuel R.; Sugar, Joshua D.

Laser engineered net shaping (LENS) is an additive manufacturing process that presents a promising method of creating or repairing metal parts not previously feasible with traditional manufacturing methods. The LENS process involves the directed deposition of metal via a laser power source and a spray of metal powder co-located to create and feed a molten pool (also referred to generically as Directed Energy Deposition, DED). DED technologies are being developed for use in prototyping, repair, and manufacturing across a wide variety of materials including stainless steel, titanium, tungsten carbidecobalt, aluminum, and nickel based superalloys. However, barriers to the successful production and qualification of LENS produced or repaired parts remain. This work proposes a finite element (FE) analysis methodology capable of simulating the LENS process at the continuum length scale (i.e. part length scale). This method incorporates an element activation scheme wherein only elements that exceed the material melt temperature during laser heating are activated and carried through to subsequent analysis steps. Following the initial element activation calculation, newly deposited, or activated elements and the associated geometry, are carried through to thermal and mechanical analyses to calculate heat flow due to radiation, convection, and conduction as well as stresses and displacements. The final aim of this work is to develop a validated LENS process simulation capability that can accurately predict temperature history, final part shape, distribution of strength, microstructural properties, and residual stresses based on LENS process parameters.

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Process Modeling for Additive Manufacturing

Beghini, Lauren L.; Stender, Michael; Veilleux, Michael G.

Additive Manufacturing (AM) provides a new avenue to design innovative materials and components that cannot be created using traditional machining operations. With current AM capabilities, complex designs (such as those required in weapon systems) can be readily manufactured with laser powder forming (or Laser-Engineered Net Shaping (LENSTM)) [1] that would be otherwise cost prohibitive or impossible to produce. However, before an AM product can be qualified for weapon applications, the characteristics of the metals produced by additive manufacturing processes need to be well understood. This work focuses on the development of computational simulation tools to model the metal additive manufacturing process. This work extends and integrates existing Sandia National Laboratories tools to accomplish the following: (i) be able to better predict residual stresses in AM product, (ii) extend high-fidelity material models to capture material evolution during the formation process, leading to prediction of end-state material properties, and (iii) provide a basis for engineering tools to propose improvements to additive manufacturing process variables, including those that minimize process variation. While this work in its current state is directly applicable to additive manufacturing processes, the tools developed may also help enable modeling welding processes such as gas tungsten arc (GTA), electron beam, and laser welding.

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48 Results
48 Results