Effect of Levels of Fidelity on Steady Aerodynamic and Static Aeroelastic Computations

Static aeroelastic deformations are nowadays considered as early as in the preliminary aircraft design stage, where low-fidelity linear aerodynamic modeling is favored because of its low computational cost. However, transonic flows are essentially nonlinear. The present work aims at assessing the impact of the aerodynamic level of fidelity used in preliminary aircraft design. Several fluid models ranging from the linear potential to the Navier–Stokes formulations were used to solve transonic flows for steady rigid aerodynamic and static aeroelastic computations on two benchmark wings: the Onera M6 and a generic airliner wing. The lift and moment loading distributions, as well as the bending and twisting deformations predicted by the different models, were examined, along with the computational costs of the various solutions. The results illustrate that a nonlinear method is required to reliably perform steady aerodynamic computations on rigid wings. For such computations, the best tradeoff between accuracy and computational cost is achieved by the full potential formulation. On the other hand, static aeroelastic computations are usually performed on optimized wings for which transonic effects are weak. In such cases, linear potential methods were found to yield sufficiently reliable results. If the linear method of choice is the doublet lattice approach, it must be corrected using a nonlinear solution.


Introduction
In recent years, constraints on limiting air pollution generated by aircraft increased dramatically. For example, the European project Flightpath 2050 [1] aims at a reduction of 90% and 75% in NO x and CO 2 gas emissions, respectively. On the other hand, the aircraft market is becoming more and more competitive, so that aircraft having low operational cost are valued. As a consequence, extensive research is being carried out to reduce aircraft fuel consumption. Current design philosophies aim at reducing aircraft structural weight while maximizing aerodynamic efficiency. This approach often leads to the design of very flexible and highly loaded composite wings, with increased aspect ratio and complex shape. For such wings, aeroelastic deformations cannot be ignored as they can have widely used transonic test case, and the second is the Embraer Benchmark Wing, which is elastic and more representative of an airliner wing. The differences in predicted aerodynamic loads and wing deflections, as well as in convergence characteristics and computational cost are analyzed, with the aim of identifying the fastest method yielding consistent and reliable results. The present work is organized as follows. In Section 2, the equations used for aerodynamic and structural modeling are briefly presented. The solvers used to carry out the calculations are also briefly described. The different fluid models are then used to solve transonic flow conditions on two rigid benchmark wings in Section 3. The resulting aerodynamic load predictions and related computational costs are compared. Section 4 is dedicated to a similar comparison but on an elastic wing. Finally, the results are summarized and discussed in Section 5 and future work is suggested.

Methodology
Five levels of fidelity are considered for the aerodynamic modeling: the Reynolds-Averaged Navier-Stokes equations, the Euler equations, the Full Potential equation, on its own or coupled to the Boundary Layer equations, and the Linear Potential equation. The structural dynamics is modeled using linear finite element analysis and the analysis performed in either physical or modal coordinates.

Flow Modeling
The different aerodynamic models, their abbreviations, and the corresponding software packages are detailed in Table 1.
where U is the vector of the conservative flow variables defined as The convective fluxes F c and the diffusive fluxes F d are defined as where ρ is the density, u is the velocity vector, p is the pressure, E is the total energy per unit mass, c p is the specific heat capacity at constant pressure, and T is the temperature. The stress tensor for a Newtonian fluid is given by The total viscosity µ and µ in Equations (3) and (4) can be expressed as where Pr is the Prandtl number. The subscript d refers to dynamic quantities, which are properties of the fluid, while the subscript t refers to turbulent quantities, which are given by a turbulence model. In the present study, the Spalart-Allmaras model [27], commonly used for aeronautical flows, was used. The system of equations needs to be closed with the state equations where u is the norm of the velocity vector, c v is the specific heat capacity at constant volume, and R is the ideal gas constant. The Euler equations are the inviscid counterpart of the Navier-Stokes equations and are obtained by neglecting the diffusive fluxes, F d , in Equation (1).
In the present study, the Reynolds-Averaged Navier-Stokes and Euler equations were solved using SU2 [28][29][30], an open-source code for multiphysics simulations and design optimization. The equations are spatially discretized on an unstructured dual-grid using a finite volume method with a cell-vertex based approach and a second-order accurate Jameson-Schmidt-Turkel scheme. The fluxes are reconstructed using a Green-Gauss procedure. The time dependent terms are discretized using an Euler implicit scheme, and steady state is reached through a time marching procedure. For the Navier-Stokes computations, the Courant-Friedrich-Levy number is kept close to 1 and no multigrid is used, while, for the Euler computations, the condition number is set to 5 and a multigrid with a W pattern and 3 coarsening levels are used.

Medium Fidelity
The steady Full Potential equation assumes that the fluid is inviscid and the flow steady and isentropic. The flow is irrotational and the velocity derives from a potential φ such that, Conservation of momentum is automatically satisfied and only the mass conservation remains, namely ∇ · (ρ∇φ) = 0, where the density ρ is given by the isentropic flow relationship where ρ ∞ is the freestream density, γ is the heat capacity ratio, and M ∞ is the freestream Mach number. Note that the velocity has been normalized by the freestream velocity. The isentropicity assumption restricts the use of the equation to transonic flow with embedded weak shocks only. The Kutta condition must be enforced to allow a potential (irrotational) flow to generate aerodynamic loads.
Mathematically, the pressure on the upper and lower sides of the trailing edge of a wing are imposed to be equal. Numerically, the potential is discontinuous across a wake extending from the trailing edge of any lifting configurations to the downstream boundary, and the Kutta condition is enforced by prescribing the continuity of the mass flux and velocity magnitude on both sides of the wake such that where the double squared bracket indicates a jump through the wake surface. The exact implementation of this boundary condition depends on the method used to discretize the potential equation and on the grid type. Finite volume implementations of the Kutta condition include those of Neel [31], Liegl [32], and Lyu et al. [33], while finite element formulations can be found in the works of Nishida [34], Galbraith et al. [35], and Crovato et al. [36].
In the present work, the Full Potential equation was solved using Tranair [37,38] and Flow [36,39]. Tranair is a commercial software for aircraft design and optimization developed by NASA and Boeing in the last two decades of the 20th century and distributed by Calmar Research [40] since 2004. The equation is discretized with finite elements on a rectangular Cartesian grid refined automatically by the software with an Octree method using a solution adaptation procedure. The equation is solved with a Quasi-Newton procedure combined with the Rose and Bank line search [41]. Tranair also offers the possibility to model the effect of the boundary layer on body surfaces by coupling the inviscid solution to an integral solution of the Boundary Layer equations. Details about the formulation can be found in several works by Drela [11,42,43]. Flow is an open-source finite element code developed at the University of Liège for computing the flow around arbitrary wing-fuselage configurations for preliminary aircraft design. The Full Potential equation is discretized using Continuous-Galerkin finite elements on unstructured tetrahedral grids built automatically by gmsh [44,45]. A Newton method with a quadratic line search [46] is used to solve the resulting system of equations.

Low Fidelity
The Full Potential equation can be transformed into an integral equation by integrating Equation (8) and using Green's third identity. The resulting expression can then be linearized, such that where φ ∞ is the freestream potential, K is a kernel function depending on the geometry and the freestream conditions, and n is the outward unit vector normal to the surface S of the geometry. The terms appearing in the integral of Equation (11) represent the linear part of the flow, and are expressed with sources and doublets, which are fundamental solutions of the equation.
In the present study, Equation (11) was solved using Panair [47,48] and NASTRAN [49,50]. Panair is a high-order Panel Method developed at NASA during the 1980s. The body is discretized using first-order source and second-order doublet panels, allowing Panair to account for both the thickness and camber of a body with relatively few panels. The impermeability boundary condition, applied at the center of each panel, allows computing the singularity strengths from which the potential can be recovered. NASTRAN is distributed by MSC Software and uses the doublet-lattice method to solve the integral potential equation. The mean plane surface of a lifting configuration is discretized into a flat sheet containing panels with constant doublet line segments at their quarter chords, and the impermeability condition is imposed at the three quarter-chord of each panel. As a result, the doublet-lattice approach ignores the thickness and camber of the body, but NASTRAN offers the possibility to apply corrections using geometric, numerical or experimental data [51,52]. In the present work, the Euler solution obtained with SU2 is used to build the FA2J matrix required by NASTRAN to correct the doublet-lattice pressure loads.

Structural Modeling
Neglecting internal damping, the equilibrium equations of a solid are obtained by balancing the inertial and internal forces in the solid with the external forces applied onto it. The structural equations can be written as where ρ s is the solid density, σ σ σ is the stress tensor, f are the external forces, and u s are the displacements.
In the present work, the wing is made of a composite material modeled as orthotropic and Equation (12) is solved by the linear finite element method implemented in NASTRAN [52]. The displacements of the solid can be expressed in modal space and discretized as where q are the modal coordinates of the solid and Φ is the modal matrix, containing the mode shapes of the solid. By neglecting the time dependent terms, Equation (12) can be further discretized into where K q is the modal stiffness matrix and f q is the vector of modal forces, obtained by multiplying the vector of forces by the mode shape matrix. In the present study, the linear Equation (14) was solved by modali, an in-house modal solver [53].

Fluid-Structure Coupling
Fluid structure interaction coupling was performed using NASTRAN, an in-house MATLAB [54] code, or CUPyDO [55][56][57], depending on the software used to calculate the aerodynamic loads. The NASTRAN computations were performed by means of the elastic trim analysis, also known as SOL 144, which projects the loads directly on the structural model. Fluid structure computations were also carried out in MATLAB, such that the displacements were obtained using a MATLAB version of modali, while the loads were computed by Panair. MATLAB interpolation functions were used to transfer data between the fluid and structural meshes. The loads and the displacements were updated until the FSI process converged. Finally, Flow and SU2 were coupled to modali through CUPyDO, a Python suite designed to couple staggered solvers. The code is developed at the University of Liège and offers different coupling algorithms and different methods to interpolate the loads on the structural mesh and the displacements on the fluid nodes. In the present study, the fluid-structure computations were performed using the Block-Gauss-Seidel algorithm and the quantities were interpolated using Radial Basis Functions.

Rigid Aerodynamic Cases
The different fluid models and methods were first compared on the Onera M6 and Embraer Benchmark wings, making the assumption that both are rigid.

Onera M6 Wing
The wing model is depicted in Figure 1 and its geometric parameters are given in Table 2. Wind tunnel measurements are available [26] for this wing at a Mach number M of 0.839 and an angle of attack α of 3.06 • . The present simulations used the same flight condition and angle of attack.  A surface grid made of rectangular surface panels was used in Panair and NASTRAN. In Tranair, the wing was enclosed in a box-shaped computational domain with boundaries placed two chord lengths away from the wing in the chordwise and normal directions, and a half-span length from the wingtip in the spanwise direction. The final grid, built automatically by Tranair, consists of hexahedral cells with a minimum size of 1/200 of the chord at the shock and leading edge. In Flow, the wing was enclosed in a box-shape computational domain with boundary faces placed 3.5 chord lengths away from the wing in the chordwise and normal directions, and one span length away from the wingtip in the spanwise direction. The unstructured grid was built using gmsh and is made of tetrahedral cells having a characteristic size of 1/200 and 1/100 of the local chord at the leading edge and at the trailing edge, respectively. The inviscid SU2 grids were also built with gmsh, based on an unstructured O-grid topology extending 50 root chords away from the wing. The mesh has a characteristic cell size of 1/200 and 1/100 of the local chord at the leading edge and at the trailing edge, respectively. The viscous SU2 grids were built with ANSYS ICEM [58] using a multiblock structured C-grid topology extending 50 root chords away from the wing. The grid has 150, 75, and 25 hexahedra in the chordwise, normal, and spanwise directions, respectively. Experimental results consist of surface pressures measured at 271 locations distributed on seven spanwise sections, and were gathered by Schmitt and Charpin [26].
A convergence study was performed to find a suitable mesh size for each model. Table 3 shows the convergence for the lift and drag coefficients of the Onera M6 wing at M = 0.839 and α = 3.06 • for the different models. Note that the grids required for NASC and TRNV are similar to those used for NAS and TRN, respectively. In addition, note that NASTRAN does not provide any value for the drag coefficient. In each case, the selected grid is the one for which the results did not change significantly when the number of cells was increased, which is the medium grid indicated in Table 3. The angle of attack of the wing and the aerodynamic force coefficients, obtained by integrating the forces on the surface of the wing, are given in Table 4. The reference point for the moment computation is taken at the leading edge of the root chord. As expected, the nonlinear inviscid models TRN, FLO, and SU2 tend to predict higher lift and moment coefficients and a lower drag coefficient compared to the viscous models TRNV and SU2V because they ignore the boundary layer, which modifies the pressure distribution and produces shear forces. Compared to the nonlinear inviscid models, the linear models PAN and NAS slightly underestimate the lift and moment coefficients. PAN also strongly underestimates the drag coefficient, as it cannot compute the wave drag produced by shock waves. When corrected by an Euler solution, NASC predictions move closer to the results of the nonlinear models, except for the drag coefficient, which is not computed.  Figure 2 shows the pressure distribution along the mean aerodynamic chord of the wing. Note that the difference in pressure distribution between the suction and pressure sides is used to compare linear models, since NAS and NASC are based on a lattice approach, hence not accounting for the wing's thickness. Because of their underlying assumptions, PAN and NAS are unable to predict shocks and to represent the actual physics of transonic flows. Since NASC is corrected using an Euler calculation, it is the only linear approach that captures the shock. The nonlinear inviscid models TRN, FLO, and SU2 were found to correctly represent the physics even though they predict a stronger shock when compared to the experimental results. Finally, the viscous models TRNV and SU2V give accurate pressure distribution predictions, although a small difference in the shock location and strength is still observed between them. Figure 2b also shows that the different numerical solution procedures implemented in Flow and Tranair slightly affect the shock strength and location. Moreover, in the case of viscous models (Figure 2c), the difference in boundary layer and turbulence modeling also affects the solution. This has a direct impact on the aerodynamic coefficients: SU2 tends to predict higher values of drag compared to TRN and FLO, while TRNV tends to underestimate the lift, moment, and drag coefficients compared to SU2V, as illustrated in Table 4.  Figure 3 shows the distribution of the sectional lift and moment coefficients along the span of the Onera M6 wing, obtained by integrating numerically the pressure coefficient in the chordwise direction. The sectional moment is computed around the local quarter-chord. The lift distribution predicted by the different solvers is similar to the experimental measurements, but there are differences in magnitude. In particular, as already noted in Table 4, the nonlinear inviscid models tend to predict higher lift coefficients for the same angle of attack. Both the inviscid and viscous nonlinear models predict sectional moment distributions that are similar to the experimental results. Since inviscid models ignore the boundary layer and predict stronger shocks, they tend to yield higher magnitudes for the moment coefficient. Finally, the moment distribution predicted by the linear models does not follow the same trend as the experimental data, except when correct by a nonlinear solution.

Computing Performance
Models PAN, NAS, NASC, TRN, FLO, and TRNV were run in serial on a laptop fitted with an Intel i7-7700HQ processor (2.8 GHz), and models SU2 and SU2V were run on a cluster equipped with Intel Xeon X5650 processors (2.7 GHz). The mesh sizes and computational times are given in Table 5. The linear models PAN, NAS, and NASC are very fast since they require only one iteration to solve a scalar equation and need a small number of cells. Note that the computational time needed to compute the reference Euler solution required by NASC is not taken into account. On the other hand, the higher-fidelity models SU2 and SU2V need many iterations to solve five and six equations, respectively, which makes them slower. The medium-fidelity models TRN, FLO, and TRNV require few Newton iterations to solve a scalar equation, for a typical runtime of 10 min. Table 5 shows that SU2V is quite slow. This is mainly due to the fact that using acceleration techniques such as Courant-Friedrich-Levy number adaptation or multigrid was not possible for this computation. Note that the goal of the present work is to identify the trends in the computational cost of the different models. Optimizing the numerical parameters of the different solvers could lead to a decrease in computational time.

Embraer Benchmark Wing
The different models were next applied to the Embraer Benchmark wing, which is more representative of a transport aircraft wing. The wing model is depicted in Figure 4 and its approximated geometrical parameters are provided in Table 6. This benchmark is purely numerical and no experimental data are available for this case. As such, the numerical results are compared to the highest aerodynamic level of fidelity used in the present work: the RANS equations. The wing was simulated at Mach number 0.78 and altitude of 27, 000 ft. For each calculation, the angle of attack was adjusted such that the resulting lift coefficient was equal to C L = 0.60. Note that this procedure was automatically handled by the solver for models TRN and TRNV.  The models for the different solvers were built in the same way as for the Onera M6 case, but the grid sizes differed. Again, a convergence study was performed on each of the meshes. PAN and NAS/NASC werediscretized with 1400 and 800 surface panels, respectively. The final grids of TRN and TRNV consist of 500, 000 hexahedral cells, with a minimum cell size of 1/200 of the chord at the shock and leading edge. The mesh used for FLO consists of 660, 000 tetrahedral cells, with a characteristic size of 1/100 of the local chord at the leading and trailing edges. The unstructured grid used for SU2 contains 1.3 million tetrahedra with characteristic cell sizes of 1/200 and 1/100 of the local chord at the leading edge and at the trailing edge, respectively. Finally, the grid for SU2V contains 150, 75, and 25 cells in the chordwise, normal, and spanwise direction, respectively, for a total of 1.5 million hexahedra.

Aerodynamic Loads
The computed angle of attack of the wing and the resulting aerodynamic force coefficients, obtained by integrating the forces on the surface of the wing, are given in Table 7. TRNV and SU2V require a higher angle of attack to reach the same target lift than the inviscid models. They also predict higher values for the drag coefficient and moment coefficients. Linear models fall into two categories. On the one hand, PAN, which makes use of the full geometry of the wing, predicts a slightly higher angle of attack and a lower value of the drag coefficient when compared to TRN, FLO, and SU2. On the other hand, NAS is based on a flat lattice geometry and predicts a significantly higher angle of attack. Predictably, when the pressure correction calculated from the Euler solution is used, NASC predicts almost the same results as the nonlinear solvers.  Figure 5 shows the pressure distribution along the mean aerodynamic chord of the Embraer Benchmark Wing at a lift coefficient of 0.6. PAN predicts a similar pressure difference compared to that obtained from SU2V, except at the shock and pressure peak locations. NAS strongly overpredicts the pressure peak at the leading edge. This is mostly due to the high angle of attack needed to achieve the target lift coefficient. While PAN and NAS are not able to capture the shock, NASC is corrected by an Euler solution and the resulting difference in pressure is comparable to that calculated by SU2V, except that the shock is stronger and located further downstream. The same is true for the results obtained from the inviscid nonlinear solvers, which also feature a reduced pressure peak compared to the SU2V result. As opposed to the Onera M6 case, the shock on the Embraer wing is weaker and FLO was found to smear the shock and underestimate the drag compared to TRN and SU2. TRNV, found to be as accurate as SU2V in the Onera M6 case, predicts a stronger shock and a slightly higher drag coefficient in the present case.  Figure 6 shows the sectional lift and moment coefficients distribution along the span of the Embraer wing at a lift coefficient of 0.6. In this case, where the lift coefficient of the wing is prescribed, the lift and moment distributions predicted by the various models are similar, with the following exceptions. Firstly, as in the Onera M6 case, inviscid models tend to predict moment coefficients with higher magnitude. Secondly, PAN does not capture the dip in the moment distribution located at the kink of the wing (y/b = 0.37). Thirdly, NAS yields highly inaccurate results for the angle of attack, pressure, lift, and moment distributions. It should be recalled that the Embraer wing is cambered while the Onera M6 is not. NASTRAN does not include camber in its calculation by default; a camber or pressure correction must be applied. The pressure correction obtained here from an Euler computation improves all predictions significantly, as shown by the NASC results.

Computing Performance
The same computers were used as for the Onera M6 wing. The mesh size and the computational time are given in Table 8. Again, the computational time needed to compute the reference Euler solution required by NASC is not taken into account. Compared to the Onera M6 wing, the Embraer wing has a higher aspect ratio and unstructured meshes need to be denser to achieve the same resolution. This has an impact on the runtime: FLO is now two times slower than TRN and two orders of magnitude slower than the linear models. Furthermore, SU2 is about 50 times slower than TRN. As in the Onera M6 case, TRNV is significantly faster than SU2V. Overall, the linear models PAN, NAS, and NASC remain very fast, while higher-fidelity SU2 and SU2V based on the Euler and Navier-Stokes equations are significantly slower. The full potential models TRN, FLO, and TRNV offer a good tradeoff between accuracy and computational time.

Discussion
For both the test cases considered in the present work, the presence of the shock and the boundary layer affected the results significantly. The shock was found to change the behavior of the pressure distribution and to impact the lift, drag, and moment coefficients. On the other hand, the boundary layer was found to affect both the shock location and its strength, which in turn affected the aerodynamic coefficients. Moreover, accounting for the shear stresses significantly increases the magnitude of the drag coefficient. These results are in line with, and support, those previously reported by various authors [7][8][9][11][12][13]. Results also show that using lattice methods, which do not account for the wing thickness and camber, can have a significant impact on the solution. Correcting such methods with a nonlinear solution improves all results except for the drag, but the computational time becomes slightly higher than the one needed to obtain the nonlinear solution. This observation supports the early suggestion of Verhoff and O'Neil [3], which is widely accepted today albeit in the absence of thorough validation, of using multi-fidelity modeling for transonic flow computations.
The results presented up to this point demonstrate that, in the presence of shocks, linear methods predict lift with reasonable accuracy but underestimate drag and pitching moment and yield unphysical pressure distributions. They are therefore not suited for transonic aerodynamic computations and optimization in preliminary aircraft design. On the other hand, the Euler and Reynolds-Averaged Navier-Stokes equations correctly capture the physics but have a high computational cost. Full potential models were found to give reliable results for a moderate computational cost. More particularly, the full potential equation was found to predict results comparable to the Euler equations for less than a tenth of the computational cost. Note that, even though the shock on the Onera M6 is relatively strong, the full potential results remain accurate and the formulation does not breakdown, contrary to what may sometimes be reported in the literature [14,15]. When coupled to the boundary layer equations, the full potential computations are almost as accurate as Navier-Stokes results for less than a thousandth of the computational cost.

Static Aeroelastic Case
In this section, models PAN, NAS, NASC, FLO, and SU2 are compared on the flexible Embraer Benchmark Wing, which is analyzed in the context of a static fluid-structure interaction simulation.
The objective is to predict the deformed shape of the wing subjected to the flight condition described in Section 3.2 and to recover the new angle of attack needed to obtain a lift coefficient of 0.6, as well as the new load distributions along the span. Note that the wing is clamped at its root to represent its attachment to the fuselage. Such a boundary condition is not fully realistic as the fuselage is not rigid. However, this setup allows comparing the different solvers.
The aerodynamic meshes used by all the models are those described in Section 3.2. The associated structural model was discretized in NASTRAN and consists of 50, 000 shell elements. The fluid-structure computations for NAS and NASC were carried out directly within NASTRAN using the elastic trim analysis. The other aerodynamic models were coupled to a structural model, obtained by a modal decomposition performed in NASTRAN. The mesh used by the modal solver consists of 2100 points distributed on the surface of the wing. Note that these points were only used to create the modal matrix to transfer quantities between the physical and modal spaces. FLO and SU2 were coupled to the modal solver using CUPyDO while PAN was coupled through MATLAB. The fluid-structure computation stopped when the difference in an objective function between two consecutive iterations fell below a given tolerance. In CUPyDO, the objective function includes the displacements, while the loads are considered in MATLAB. In both cases, a normalized tolerance of 10 −4 was used. Table 9 summarizes the new angle of attack and aerodynamic coefficients of the benchmark wing in its deformed configuration. As in the rigid case presented in Section 3.2, the linear model PAN slightly overpredicts the angle of attack needed to achieve the target lift coefficient when compared to nonlinear models. On the other hand, the lattice model NAS neglects the camber of the wing, strongly overperdicts the angle of attack, and underpredicts the moment coefficient. Using the Euler correction with NASC significantly improves the predictions, even though the angle of attack is still overestimated by about 1 degree. In this case, FLO was also found to strongly underestimate the drag coefficient when compared to SU2. Comparing the results in Tables 7 and 9 illustrates the impact of wing deformation on the angle of attack and aerodynamic coefficients.   Figure 8 shows the vertical displacement, averaged between the leading and trailing edges, and the nose-up rotation along the span of the deformed wing. Note that the displacement is normalized with respect to the half-span of the wing and the rotation angle is normalized by the maximum value of the rotation. All models predict similar results for both displacement and rotation, except for NAS, which strongly underestimates rotation at the outboard section of the wing.

Computational Performance
The mesh size and the computational time required to run the computations are given in Table 10. The calculations were performed in serial on a laptop fitted with an Intel i7-7700HQ processor (2.8 GHz). In this case, the computational cost of the Euler correction required by NASC is included. PAN, FLO, and SU2 converged, respectively in nine, seven, and nine FSI iterations, while NAS and NASC converged in three iterations. PAN and NAS are more than one order of magnitude faster than FLO, which is itself more than one order of magnitude faster than SU2.

Discussion
Although panel methods do not capture shocks, their static aeroelastic predictions are, in general, quite similar to those obtained from the nonlinear solvers. For the present case at least, static wing deflections are not sensitive to shock modeling. Consequently, flight shape calculations can be carried out using linear methods with reasonable confidence in the predictions. In any case, the camber must be modeled or corrected, otherwise wildly inaccurate results will be obtained. The corrected doublet lattice model is also quite accurate but its computational cost is much higher due to the need to calculate an Euler solution.
Note that the ability of linear methods to predict wing displacements accurately seems to be quite sensitive to the geometry. Results previously reported by Romanelli et al. [21] show that the doublet lattice method was less accurate than Euler computations, especially near the wingtip. However, it is unclear whether the authors corrected the method with higher-fidelity data.

Conclusions
The objective of the present work is to assess systematically the impact of the aerodynamic level of fidelity on steady aerodynamic and static aeroelastic computations typically performed in preliminary aircraft design. To this end, several aerodynamic models were compared on the Onera M6 and the Embraer Benchmark wings.
The assumptions made by considering different levels of fidelity can be grouped into four categories: flow viscosity, isentropicity, linearity, and model geometry. The results obtained in the context of steady aerodynamic computations on both rigid wings illustrate that neglecting the viscosity leads to an underestimation of the aerodynamic loads, particularly the moment and the drag. When the lift coefficient is imposed, the angle of attack is underestimated by about 1 • . The shock strength is also underestimated and its location is moved downstream. These results globally agree with those previously reported in the literature [9,13]. Considering the flow to be isentropic does not significantly affect the solution. This is particularly true for the flows considered in aircraft design, where only weak shocks are present. However, the results obtained on the Onera M6 demonstrate that the full potential formulation does not necessarily break down when a relatively strong shock is present, although this statement raises the question of what constitutes a strong shock wave and what are the exact limits of validity of the full potential theory. Further considering the flow to be fully linear has only a mild impact on the lift and the moment, even if the pressure distribution is significantly affected. The drag is also underestimated since the wave drag produced through shocks is not accounted for. Finally, modeling the wing without accounting for its camber results in a complete miscalculation of the angle of attack and aerodynamic loads.
The present analysis suggests that at least a nonlinear method is required to accurately capture transonic physics. Even though full potential methods achieve the best tradeoff between accuracy and computational cost for rigid steady computations, they are still too expensive for static aeroelastic computations in preliminary aircraft design. As such, calculations are usually performed on wings already optimized for the transonic flow regime; a linear potential method seems sufficient to predict the wing loading and deformation and should yield results similar to those obtained using nonlinear methods, except for the drag. Note, however, that this result strongly depends on the geometry, as results previously reported in the literature [21] suggest that linear methods are not necessarily accurate in transonic cases. In any case, if a linear model is used to compute the wing deflection, a single nonlinear rigid aerodynamic calculation should be performed on the deformed shape in order to estimate more accurate aerodynamic loads. This two-stage computation strategy might offer a cheaper alternative to multi-fidelity static aeroelastic computations, whereby nonlinear computations are performed during the iterative process to calibrate a linear computation. The two-stage computation could also be more accurate than correcting a linear method with higher-fidelity data obtained from a rigid aerodynamic computation performed on the undeformed wing shape.