PHYSICS-BASED HIGH FIDELITY MODELING OF HEAT AND MASS TRANSFER IN LASER ADDITIVE MANUFACTURING PROCESSES WITH APPLICATIONS TO PROCESS QUANTIFICATION AND OPTIMIZATION
<p>In
the advent of laser additive manufacturing (LAM), extensive efforts have been
taken to optimize the properties of resulting manufactured products. Since optimizing these processes
experimentally is expensive from both an equipment and materials perspective,
modeling of the processes is critical to gain insight into the key parameters
necessary to produce a high-quality manufactured component. Physics-based high
fidelity modeling of additive manufacturing processes can provide information
to predict material properties via track geometry and temperature field;
however, previous models require tuning factors that prevent prediction of
deposition processes over a wide range of materials or operating conditions. </p>
<p>The overall objective
of this research was to develop a methodology to systematically describe each
aspect of the LAM process (laser-powder interaction, powder-surface
interaction, and heat transfer mechanics) and use the relevant information to
feed into various models to predict microstructures, phases, and properties of
the resulting deposition. The methodology
was demonstrated on a variety of deposition systems, including blown-powder
systems and powder bed systems to show the robustness of the method and the
predictive capabilities of simulating each of the aforementioned aspects of the
process to obtain the track geometry and temperature field, the key factors
necessary to determine material properties of as-built components. Although the interactions of the powder,
laser irradiation, and substrate are different in nature and must be modeled
with due-diligence, these were found to be boundary conditions for a
common-core deposition model applicable for any LAM process.</p>
<p>For blown-powder
systems, computational fluid dynamics (CFD) was used to calculate the average
spatial distribution of powder as the powder is ejected from a gas-assisted nozzle. This was then coupled to the molten pool
dynamics model, which involves melting, fluid flow and subsequent heat transfer
to the surrounding areas, which are solved by a set of coupled momentum,
continuity and energy equations with proper source terms and boundary
conditions with the free surface tracked using the levelset method. This model was subsequently applied to H13
and Ti-6Al-4V powder being deposited on their respective substrates in a
single-track configuration to understand the temperature field and track
geometry throughout the LAM process.
These studies enabled the prediction of the phases, microstructure,
residual stress and hardness of as-built components produced with blown-powder
LAM for these two materials. More
importantly, predictions of capture efficiency were obtained, as opposed to
using capture efficiency as an input, which previous researchers relied on as a
model tuning parameter. The study of
Ti-6Al-4V was taken further by simulating a multi-track deposition with the
same LAM parameters and was shown to predict the molten pool region, heat
affected zone, and track geometry after three tracks were simulated without the
need for any model tuning. Since powder
concentration could be calculated throughout the computational domain, the
effect of standoff distance on the deposition process was studied to optimize
the best cladding condition for Stellite-6 cladding of a mild steel substrate,
wherein the cladding is often performed with the laser focal point above the
substrate surface to minimize dilution.</p>
<p>The AM model has been
extended to powder bed additive manufacturing by modeling particle-particle and
particle-surface interactions via a discrete element model coupled with the
molten pool dynamics model developed for the blown powder model. Particles of Ti-6Al-4V were modeled with
aerodynamic drag and cohesive forces to demonstrate the effect of
evaporative-driven gas flow during powder bed deposition, a phenomenon which
has been observed experimentally, but had yet to be modeled with reasonable
accuracy when coupled to a LAM process model.
Simulation of the powder bed formation was included to consider
particles of multiple sizes and multiple spreading passes, which is necessary for
obtaining a physically representative powder bed. Finally, the model was updated with a robust
dual-mesh algorithm that allows for the simulation of high scanning speed
processes for large manufactured components without excessive computational
effort associated with large-scale simulations. </p>
<p>With these modeling
processes being used to predict the geometry and temperature field of a
deposition, regardless of the powder feed mechanism, the results could be used
to verify optimal LAM parameters from experimentation. Unfortunately, computational effort and cost
for modeling of these processes for a large domain is prohibitively expensive,
which is needed to determine the resultant microstructure and mechanical
properties of industrial large-scale parts.
Though having a high-fidelity model of the deposition process enables
accurate prediction of the track geometry and temperature fields, methods to
increase model throughput are necessary to obtain accurate process predictions
without excessive computational effort. A
combination of an Arbitrary Lagrangian-Eulerian mesh formulation and volumetric
powder-bed heating methods decrease computational effort compared to analogous
models in literature by up to 95%. </p>