 World Journal of Mechanics, 2012, 2, 311-324 doi:10.4236/wjm.2012.26037 Published Online December 2012 (http://www.SciRP.org/journal/wjm) Copyright © 2012 SciRes. WJM On the Modal and Non-Modal Model Reduction of Metallic Structures with Variable Boundary Conditions Wolfgang Witteveen University of Applied Sciences Upper Austria, Wels, Austria Email: wolfgang.witteveen@fh-wels.at Received October 1, 2012; revised November 2, 2012; accepted November 12, 2012 ABSTRACT Vibration mode based model reduction methods like component mode synthesis (CMS) will be compared to methods coming from control engineering, namely moment matching (MM) and balanced truncation (BT). Conclusions based on the theory together with a numerical demonstration will be presented. The key issues on which the paper is focused are the reduction of metallic structures, the sensitivity of the reduced model to varying boundary conditions, full system response, accurate statics and the possibility to determine “a priori” the number of needed modes (trial vectors). These are important topics for the use of reduction methods in general and in particular for the implementation of FE models in multi body system dynamics where model reduction is widely used. The intention of this paper is to give insight into the methods nature and to clarify the strengths and limitations of the three methods. It turns out, that in the considered framework CMS delivers the best results together with a clear strategy for an “a priori” selection of the modes (trial vectors). Keywords: Model Reduction; Vibration Modes; Component Mode Synthesis; Moment Matching; Balanced Truncation 1. Introduction Model order reduction is a key issue when the dynamic of finite element (FE) models is investigated. It is con- cerned with the question whether a system with a large number of degrees of freedom (DOF) n can be accurately represented by a transformed system of the size m with m << n, see [1-3] for a general review and introduction on this topic. During the last decades a lot of reduction methods have been proposed. For linear elastic structures with a moderate number of input degrees of freedom (DOF), mode based reduction methods, like Component mode synthesis (CMS) have been developed to very re- liable standard tools. An overview of the family of CMS methods is given by Craig in [4,5]. Another, more re- cently published review has been done by de Clerk [6]. All CMS variants have in common, that at least a part of the reduction base is formed by vibration modes. There- fore this family of reduction methods will be denoted as “mode” based within this work. In the last few years a lot of effort has been made in order to adapt model reduction methods for mechanical structures which come originally from control engineer- ing, namely moment matching (MM) and balanced trun- cation (BT). In contrast to CMS where the trial vectors have a physical meaning, the latter two methods are based on mathematical considerations. Therefore MM and BT are denoted as “non-modal” reduction methods. In the following both approaches will be outlined as far as it is necessary to understand the principal characteris- tics and their consequences on the topic of this work. More detailed introductions into MM which is also known as “Krylov subspace method” can be found in [7-11] and in case of BT the reader is referred to [12-15] for more background information. In some newer publications [16-19] the three methods have been compared to each other and MM and BT have been pointed out as kind of the “better method” with less error. In case of BT it has been emphasized, that a “a priori” error bound in term of displacements can be given, see among others [10,20,21]. This work deals with a critical qualitative comparison of the three methods for industrial use of model reduction for metallic structures with focus on the following im- portant issues: 1) Sensitivity of the reduced system with respect to varying boundary conditions; 2) Full system response; 3) Static and dynamic response; 4) Simple and clear strategy for an “a priori” selection of the number of needed trial vectors. 1) Sensitivity of the reduced system with respect to varying boundary condition: This is of particular impor- tance for multi body dynamics where the implementation of the component in the overall system is in general not
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 312 known at the time when the reduction base is computed. In this particular case an arbitrary interaction of the in- put/output DOF with the surrounding rigid or flexible bodies should be possible. The input/output DOF are those on which external forces may be applied on the structure. In other words, the response of the reduced system has to be sufficient accurate independent of the stiffness or mass which may be applied to the input/output DOF. 2) Full system response: MM and BT guarantee a de- fined behavior between the input and output (I/O) of the reduced system. The output vector holds a linear super- position of the state vector and represents the quantity of interest. This is of special interest in control engineering but not sufficient in structural mechanics where accurate stress recovery is an important requirement. For details on stress recovery of reduced components, see [22-24]. Consequently, the response of the entire structure needs to be considered because the place of the highest stress is not known a priory and is not necessarily represented by the I/O. For this reason this work is not focused on the I/O behavior but on the full system response. 3) Static and dynamic response: In mechanics the static response of a system is of special interest. It is not just a theoretical issue as it may be in other disciplines. A static portion in the overall system response leads to a mean stress which influences the overall stress and therefore the components lifetime. Neglecting the static in general is not an option from a mechanical engineers point of view. 4) Simple and clear strategy for an “a priori” selection of the number of needed trial vectors: A key feature of a reliable reduction method is a simple way to determine the number of required modes in order to get an accurate solution. No application engineer is interested in doing a convergence analysis or a comparison with the full sys- tem, as it is common in the academic society. Note, that the applicability of the methods for huge FE models is not issue of the current work, even it is still a field of research, see [14] in case of BT. The focus is on basic insights and qualitative differences. There is already some comparative literature available, see for example [25] and, as mentioned [16-19]. To the best knowledge of the author the following points of this paper have not been investigated and pointed out yet: 1) A comparison of the three methods with the focus on the issues mentioned above, especially the varying boundary conditions which are of significant importance for the use of model reduction in multi body simulation. 2) The reliability of MM and BT in terms of statics. 3) The practical significance of the error bound of BT when the boundary conditions of the input DOF in the reduced system divers significant from the situation at the time of trial vector generation. 4) The reliability of the methods when large parts of a structure are not represented by the I/O. This is of par- ticular interest when large models like car bodies or air- crafts with few I/O locations will be reduced. A preliminary und unfinished version of this work has been published at the SEM IMAC Conference in Jack- sonville, FL, US [26]. The paper is organized as follows: In a first section general issues connected to model reduction will be dis- cussed as well as issues arising from the prior mentioned topics. In the subsequent section all three approaches will be briefly outlined as far as it is necessary to see the qualitative differences. At the end of this chapter the most important conclusions already can be drawn based on the given equations. In the following a simple beam example is used to demonstrate the expected advantages and disadvantages of each method which leads to a clear conclusion and recommendation. Finally some publica- tions will be briefly discussed. 2. General Issues on Model Reduction of Metallic Structures The FE method leads to an equation of motion in the form of 1 1 Mx KxBu yCx (1) where the (n × n) matrixes M and K are the mass and stiffness matrix, the (n × 1) vector x contains the bodies DOF, the (u × 1) vector u holds the time history of the applied loads, the (n × u) matrix B1 maps the loads to the corresponding degrees of freedom, the (y × 1) vector y holds the output of interest and C1 maps the state vari- ables to the output. In the following a symmetric system is considered with M = MT and K = KT. In next subsec- tion it will be discussed why no viscous damping is con- sidered for the reduction process. The corresponding reduced system can be given as 1 1 1111 ,,, , TT T MzKzB u yCz xVzMWMV KWKV B=W BC=CV (2) with the (m × 1) vector z and the (n × m) matrixes V and W. Model order reduction deals with the question of de- termining the matrixes V and W, so that the reduced sys- tem captures somehow the important characteristics of the unreduced system. For a better readability of this work it is remembered that (1) can be transformed into a first order system in the form of
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 313 1 1 ,, , TTT 00 00 00 EqAq Bu yCq qxxB CC B II EA MK (3) In [15] a little modification of (3) is suggested, so that symmetric system matrixes E and A are obtained: , 00 00 qAqBu yCq K EA MK (4) The latter modification has some important implica- tions which will be reported in subsection 2.2. The ac- cording reduced system is ,, , TT T EqAq Bu yCq qVqEWEV AWAV BWBCCV (5) with the (2n × m) reduction matrixes V and W. 2.1. Absence of the Viscose Damping Matrix The damping matrix is not considered in Equation (1) because of the nature of the two most frequently involved dissipation mechanisms, namely material damping and joint damping (micro slip). Both of them are energy dis- sipation mechanisms which cannot be properly modeled by pure viscous damping. Material damping of metallic structures will be overestimated in case of high fre- quency if it is modeled with a viscous damping matrix, see [27-29] for an experimental verification with alumi- num. The reason why material damping is commonly modeled with a velocity proportional approach is more its simplicity than its accuracy. Furthermore it is mention worth that material damping of metallic structures is that low so that it is normally dominated by other damping mechanisms like joint damping or by external applied damping like rubber bearings, lubrication bearings or the like. Joint damping (micro slip) is frequently independent and cannot be modeled by a viscous damping at all, see exemplarily [30]. Consequently, a viscous damping is always an inaccurate approximation for metallic struc- tures and it does not matter if it is introduced in the full system or in the reduced system. When the damping ma- trix is regarded in the reduction process, it will influence the final comparison between the reduced and the full model. This doesn’t make sense because something physi- cally not meaningful is introduced and may affect an objective evaluation. Note, that the latter considerations may not be valid for structures with a large amount of rubber, plastic or other visco-elastic materials. 2.2. Stability and Symmetry of the Reduced System If the reduced model (2) is used for time integration it is of significant importance, that no instability will be in- troduced due to the model reduction. In this particular case, when no damping is regarded the eigenvalues of the reduced model are required to be real, such as they are in the original system. The symmetry of a mechanical sys- tem is a fundamental characteristic which should be pre- served during the reduction process. Both is obtained in case of a so called “symmetric or single sided projection” which requires an identical re- duction and test space matrix WV (6) In case of a symmetric system (4) and when the input DOF are the same as the output DOF 11 TCB it has been demonstrated in [7] and [15], that MM and BT leads to a symmetric projection (6). Note, that the latter, more mathematical considerations do have a mechanical pendant. In case of a coordinate transformation it is common in mechanics to apply the principle of virtual work, which requires, that the work of all forces due to a virtual displacement has to vanish. This can be written as 1 T 0 xMxKxBu (7) where δ indicates a virtual displacement of the state vec- tor. If the reduction law x = Vz is used for the state vector as well as for the virtual displacement the reduced system (2) is obtained with W = V. For the latter reasons we re- strict ourselves to such systems where 11 TCB. 3. Brief Review on Component Mode Synthesis, Moment Matching and Balanced Truncation For the sake of simplicity and readability an invertible stiffness and mass matrix will be assumed further one. The presence of rigid body modes doesn’t have an effect on the conclusions which will be drawn. As mentioned before, the theory given next is by far not exhaustive but should give at least as much insight, that the finally drawn conclusions are understandable. 3.1. Component Mode Synthesis, See [4-6] A CMS based reduction is typically directly applied to the second order system (1). Commonly, the reduction matrix is of the form
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 314 SD VVV (8) where the trial vectors in the (n × p) matrix VD are vibra- tion modes which capture the systems dynamics. These modes are obtained by a proper eigenvalue problem which delivers the modes eigenfrequencies. For the re- duction process just those p modes (p << n) are regarded, having an eigenfrequency smaller as a defined limit, which typically a factor of 1.5 - 2 higher as the highest relevant frequency content of all involved forces. In order to improve the convergence, some static trial vectors are added to the vibration modes. These trial vectors are obtained by loads on the input/output DOF and collected in the columns of the (n × s) matrix VS. During the last decades a lot of methods for the com- putation of V according to (8) have been suggested. An overview is given by Craig in [5]. In the latter publica- tion it has been shown, that the different approaches span a similar space. For this publication the most frequently used method has been chosen to represent the family of “mode based” reduction methods, namely the fixed boundary CMS introduced by Craig (and Bampton) [31]. According to Craig’s method the vector of nodal DOF of the FE model is subdivided into TTT I xxx (9) where the (b × 1) vector xB represents the “boundary” DOF and the 1nb vector xI holds the remaining‚ inner DOF. The boundary DOF is those DOF on which external forces may be applied. In this work these DOF are mostly denoted as input/output DOF. In terms of (1), the input matrix B1 contains non zero entries at these DOF. According to the subdivision (9), an eigenvalue problem in the form of 2 ,,,IIiII Di 0KMv (10) can be used for the computation of the vibration modes. The nb nb matrixes KI,I and MI,I denote the portion of K and M matching the definition of (9). The obtained modes vD,i are named as ‚Fixed Boundary Nor- mal Modes’ and can be given as ,1 ,2, D DDp 0000 Vvv v (11) with an user defined eigenfrequency limit ω* so that p (12) As mentioned before, the latter limit is usually con- nected to the highest relevant frequency content of the excitation. Die Matrix VS is obtained according to a Guyan [32] reduction 1 ,, S IIB I VKK (13) with the (b × b) identity matrix I. Obviously, each boun- dary DOF introduces a trial vector in VS. It is known that the use of such static displacement fields significantly improve the convergence of the solu- tion in case of imposed boundary conditions which are different to the one at the time of mode generation, see reference [24]. Therefore it is to expect, that CMS should deliver good results independently of the applied bound- ary conditions. This is an important feature for accurate stress recovery as well, see [24]. Unfortunately no “a priori” error bound in terms of displacement is known yet. However, the procedure en- sures exact statics and the presence of all modes of inter- est within a well defined frequency range. 3.2. Moment Matching, See [7-11] With the Laplace transformation the transfer function of the system (4) can be given as 1 ss CEA B (14) where s holds the complex Laplace variable. An ap- proximation of (14) with a Power Series around s0 gives 0 0 0 s j j ss HT (15) with the so called j-th moment. 011 00 j s jss TCEAEEAB (16) see [7]. If W and V are chosen in such a way that the spanned space is equal to 110 11 110 11 m m vv vvv m m WW WWW Vv vv PR PRR Ww ww RPRR (17) with 1 0 1 0 0 0 v v TT W TT v s s s s REAB PEAE REAC PEAE (18) it can be shown, that the first 2 m moments of the re- duced system around s0 are equal to those in the full sys- tem. 00 1,, 2 ss jj jm TT (19) Note, that a direct implementation of (17) for the con- struction of W and V is numerically disadvantageous. The literature offers better choices, see exemplarily [11].
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 315 The trial vectors of (17) are also called “Krylov se- quences”. When M = MT, K = KT and CT = B it easily can be seen, that W evaluates exactly to V, see (17) and (18). The transfer function of the second order system (1) is 1 2 11 ss CM KB (20) The formal similarity of (20) and (14) can be used to obtain the desired quantities in a similar matter. Again W evaluates to V in case of a symmetric system (M = MT, K = KT) and when the input is equal to the output 11 TCB. 110 11 1 2 01 1 2 0 m m s s Vv vv PR PRR RMKB PMKM (21) The computation of V in the presence of a damping matrix can be found in [7]. A more mechanical interpretation of the Krylov se- quences around s0 = 0 will be given next and can be found in [33,34]. There, each additional Krylov sequence regards the dynamic residua of the already existing Kry- lov subspace in a quasi-static matter. In a first step the state vector of (1) is approximated by the static only. This leads to 11 1 10 xKBux vux (22) where x(1) is the (dynamic) residuum of this quasi static approximation and K–1B1 is selected as first trial vector v0 which is scaled by u. In a next step the acceleration vec- tor of (1) is replaced by the second derivative of (22) with respect to the time. This gives 11 1 1 MxKxMKBu (23) As before x(1) is approximated by the static response in the form 122 11 11 xKMKBuxvux (24) where x(2) is the remaining (dynamic) residuum and the second trial vector v1 is introduced. Substituting (24) into (22) delivers 2 01 xvuvux (25) and it is obvious that the latter procedure can be repeated as long as the result has the desired accuracy. The ob- tained vectors v0, v1, ··· can be collected in a matrix V. They are identical with the one of (21) in case of s0 = 0. A characteristic of a reduction base formed of Krylov sequences is the presence of the structures static response v0. With the same considerations as before it can be ex- pected, which varying boundary conditions may not lead to unacceptable results. Again there is no “a priori” error bound available and furthermore no “a priori” frequency limit for the validity of the reduction base can be given. This is a drawback when it comes to the question how many trial vectors have to be selected “a priori” in order to get accurate results. 3.3. Balanced Truncation, See [9,10,12-15] For the introduction of the Gramian matrixes the system (3) is considered with E = I. The conversion into such a system is trivial in case of a non singular E. For the sys- tem (3) an input signal u (t) can be given, so that each arbitrary state q (T) can be reached within the time T starting at q0 = 0. This input signal depends on the so called Gramian controllability matrix WC (T) and can be given as 1 ee T Tt T C tTT AA uB Wq (26) with 0 eed T T tT t CTt AA WBB (27) The important point for the issue under consideration is that the inputs are somehow connected with the states via the Gramian controllability matrix. Further one the L2-norm for u (t) is 21 2 T C tT TT uqWq (28) The Gramian observability matrix WO (T) can be un- derstood in a similar way. It can be used to reconstruct the initial condition q0 based on an arbitrary output y (t). This can be given as 0t u 1 0 0 ed T T tT OTtt A qWCy (29) with T 0 eed T tT t OTtAA WCC (30) and the L2-norm of y (t) is 2 00 2 T O tTyqWq (31) Note, that full controllability and full observability have been assumed for the latter considerations. The par- ticular Gramians WC (∞) und WO (∞) fulfill the Lyapunov equation TT CC TT OO 0 0 AWWABB AWWAC C (32) In case of CT = B and a symmetric system of the form (4), the matrixes WC (∞) und WO (∞) are identical and can be computed by the generalized Lyapunov equation
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 316 TT T CC 0ΕWA AWΕBB (33) see [15]. At this point it is important to note, that system (4) und its Gramians are not unique. With each non sin- gular (2 n × 2 n) matrix T* a transformation in the form of qTq (34) can be performed which leads to an equivalent but dif- ferent system. A system is called “balanced” when the Gramians are diagonal and WC = WO. The corresponding transformation is unique and the transformation matrix will be denoted as T. For the balanced system, Equation (28) evaluates to 1 2 2 2 2 1 1 1 1 T n n ii ii tTT qT qT uq q (35) with σ1 > σ2 > ··· > σ2n. Equation (35) gives insight how the energy of the input signal is distributed among the states which correspond to the vectors of the transforma- tion matrix T. A small σj leads to a large 1 and that means that the vector j needs a lot of energy from the input signal to be controlled. Equation (31) can be writ- ten as 1 2 00 2 2 2 0, 0, 1 T n n ii i i t qq yq q (36) and it gives insight how the energy of the output signal depends from the. A large value of σj means, that the energy of the output signal is strongly influenced by this particular state. The idea of BT is, to use just these states which need low energy to be controlled from the input and which give a lot of energy to the output. Note, that the values of σj decrease very quickly for common mechanical struc- tures so that just a view columns of the transformation matrix need to be considered as trial vectors for model reduction. A special feature of this approach is an “a pri- ori” error bound in the form of 22 δBT u yy (37) with 2 1 2 n Tj jm (38) and m as the number of the last considered trial vector, see exemplarily [10,20,21]. Note, that the upper error bound (38) is just valid for a balanced realization of a first order LTI system in the form of (4) or (3) and does not hold when BT is direct applied to second order systems (1). A direct application of BT on second order systems is somehow different. Instead of single controllability and observability Gramian matrixes there are Gramians for the positions and veloci- ties. The interested reader is referred to [6,13] for a de- tailed discussion and more literature quotations. In [9,16] a modified error bound has been developed for such sys- tems in case of frequency weighted Gramians. For more literature on actual implementations of BT for first order LTI systems and second order systems see [9,10,12-15]. In [35] the use of MM together with BT has been sug- gested. MM is used there in order to transform a huge system into one of moderate size. In a subsequent step BT has been applied in order to transform the moderate system into one of small size. The Gramians obtained by the Lyaponov equations consider all frequencies but a direct solution can be very expensive for large systems. It is possible to compute or approximate the Gramians for a frequency range of in- terest, see [9] or [20]. A low rank approximation of the solution of the Lyaponov equation can be found in [36]. One approach for the reduction of second order sys- tems with an approximated position controllability Gramian is reported in [9] and given next. It delivers valuable qualitative insight into the nature of BT, especially in the framework of un- or lightly damped structures. Similar considerations can be found in [20] for arbitrary first order LTI systems. In a first step a series of frequency response computa- tions of (1) for k frequencies in the form of 2 1 Limit 01 iii ik MKX B (39) have to be carried out. The resulting (n × u) deformation matrixes Xi are collected in the nku matrix 2ik XX X. (40) In a subsequent step the matrix X is decomposed in its Proper Orthogonal Modes (POM) by using Proper Or- thogonal Decomposition (POD) which is also known as Karhunen-Leove decomposition. The interested readers are referred to [37,38] for a short review on the POD itself and on the available literature. In [39] a detailed outline of the theoretical background can be found. Due to the definition of POD the first m POM v1 ··· vm can be characterized as
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 317 1 2 2 11 1 ,, 2 2 1 max .. n m TT kxu TT mm kxu T ji ij st uu xvx v xvx v vv (41) where δij denotes Kroneckers delta. The vectors v1 ··· vm can be interpreted as those which span “most” of the space of X in a Euclidean sense. Note that the POM are the eigenvectors of XXT and the magnitude of the ac- cording eigenvalues correlate with the importance of a POM, analog the entries σi of (35) and (36). For a lot of mechanical systems these eigenvalues decrease rapidly so that m << n. Finally the vectors v1 ··· vm will be used for the reduction matrix V. As observed in [9] the matrix XXT is an approximation of the position controllability Gramian which is the link of this approach to BT. In [40] it has been demonstrated, that the POM of an undamped system with a mass matrix proportional to the identity matrix are identical with the free vibration modes. This observation can be generalized to systems where M and K fulfill the criteria given in [41]. The latter publication focuses on necessary and sufficient condi- tions so that the vibration modes are orthogonal with respect to the mass and stiffness matrix and to them- selves. Note, that the vibration modes orthogonality with respect to themselves is not true in general. For the following considerations it is assumed that the number of frequency samples k off (39) is high enough so that each reachable vibration mode will be excited nearby its eigenfrequency. Therefore each excited eigen- frequency will lead to huge contributions in X. Now it can be concluded that the space spanned by X is domi- nated by these (linear independed) vibration modes. The later considerations and (41) require that the first and most important POM approximate the space spanned by the dominating vibration modes. The fact that the conservative system may have infi- nite response, implies that the “a priori” error estimation (37) is just valid in presence of a viscous damping which is not realistic in the framework of metallic structures, see the remarks in chapter 2.1. This is the first observa- tion why the “error controlled model reduction” is more a theoretical statement than a practical one, when applied to the reduction of metallic structures. The static response of the structure is undetermined because in general it cannot be ensured that it can be ap- proximated by a space spanned by the vibration modes. Especially when the static response in a dynamical stiff direction is needed, the displacement error may be small but the error in terms of stress is not predictable which is demonstrated in the numerical example below. Note that in a dynamic response computation the exact representa- tion of a static portion is very important because it leads to mean stress which is a significant parameter for fa- tigue lifetime prediction. In terms of dynamics, it is known that static deflection shapes, which help to fulfill arbitrary boundary condi- tions, do accelerate the convergence of a mode base [24]. Therefore it is to expect, that a balanced reduced system does not deliver accurate results in case of mounted or mistuned I/O DOF. The observation that the absence of static displacement fields may lead to considerable errors can be found in [42] as well. This publication deals with the application of POD to linear dynamic systems. The relation to BT is not mentioned there. However, a sug- gestion is given to improve the reduction base by a static correction. Finally it is important to emphasize the difference be- tween the eigenfrequencies of (10) and the singular val- ues (SV) σi of (35) and (36). An eigenfrequency has a physical meaning and denotes a pole in the system char- acterized by M and K. The SV describes the importance of a trial vector in terms of a Euclidean distance or an energy transfer from the input to the output. This differ- ence leads to two interesting facts: A certain mode will not be detected by BT when the locations of the input/output DOF are at this modes vibration node. The sequence of the POM is not directly connected with the eigenfrequencies of the structure but with the location of the input/output DOF. That means that there is no direct correlation between the number of trial vectors and spanned frequency range. 3.4. Short Remark on the Number of Input/ Output DOF As it can be seen in the theory outlined before, the num- ber of I/O DOF is kind of a bottle neck. Too many of such DOF would lead to many columns in the reduction matrixes and therefore to an undesired size of the re- duced model. Model reduction for systems with many input/output DOF is still an active field of research and the interested reader is referred to [43-45] for some dif- ferent approaches to overcome that problem. 3.5. Summary and Conclusions Based on the Nature of the Three Approaches 1) Using CMS in a proper way leads to a reduced sys- tem which is exact in terms of static and sufficient for a defined range for frequency. It is to expect that the static mode shapes will guarantee satisfying results even if the I/O DOF is different mounted as at the time of mode gen- eration. 2) MM leads to an exact static behavior whereas the dynamics is not clearly predictable because no frequency range of validity can be given for a certain number of
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 318 trial vectors. 3) It is to expect, that the strength of MM and BT is the representation of the I/O characteristic of the full system in the reduced space. The error is a minimum and even predictable in case of BT when no statics is of sig- nificance. 4) For BT it can be expected that the static response is in general not accurate. The dynamic response is not ac- curate for a reduced system with different boundary con- ditions as they have been at the time of mode generation. 4. Numerical Example (Cantilever Beam) In the latter section some conclusions have been drawn just by considering the characteristics of the reduction methods. A generic beam example will be investigated for a practical demonstration of the former insights. As mentioned before a non floating structure (invert- ible stiffness matrix) is considered in order to keep the formalism as simple as possible without losing generality. There is no single conclusion which would not hold in case of a floating structure. The beam seems a bit artificial, especially the over- hanging sub beam. The intention was the presence of a significant part which is not covered by the input/output DOF. This is of practical relevance for the model reduc- tion of large structures like car bodies or aircrafts. In such cases it cannot be garneted in general, that the criti- cal regions which are not known “a priori” are well rep- resented by the I/O. 4.1. FE Model and Investigated Figure 1 contains a visual representation of the FE model of the beam structure. The beam has been modeled using the CBEAM1 elements of the FE code MSC.NASTRAN [46]. The square of the bottom section is of 100 mm by Figure 1. Solid and wireframe representation of the FE model under consideration. 10 mm and the one of the overhanging beam is 100 mm by 5 mm, the Young’s modulus is of 210,000 N/mm2, the shear modulus is of 80,000 N/mm2 and the density is of 7800 kg/m3. The structure is mounted at the grid point where the coordinate system is located and 6 input/out- put DOF are located at the free end of the beam which is denoted as A and marked in Figure 1 by a circle. One additional input/output DOF in z direction is located at the center of the beam which is denoted as B and marked in Figure 1 as well. Note, that the sub beam which has its main extension in x direction will be denoted as “bot- tom section” further one. The mass and stiffness matrixes have been assembled by MSC.NASTRAN [46] and exported to an ASCII File. The content of this ASCII File has been imported to Scilab [47] which was used for all subsequent computa- tions. For the evaluation of the reduction methods, the re- duced model will be compared to the full model with respect to statics and dynamics. In order to evaluate the statics, simply the static deflection shapes due to certain loads is computed in the full and in the reduced system. The dynamics is evaluated by a comparison of the ei- genvectors and eigenvalues of the full and the reduced system. Three different variants will be investigated. Note, that the reduction base is equal for all of them. The changes are applied at the reduced model only. Variant 1: No additional boundary conditions are ap- plied in the reduced system. Consequently the system is equal to the one at the time of mode (or trial vector) gen- eration. Variant 2: All 6 DOF of point A will be fixed to ground. Variant 3: All translational and rotational DOF of point A will be fixed to ground except the translation in x di- rection. This is similar to a “sliding” joint. An additional mass is mounted at point A. 4.2. Error Measures The static results will be compared by plotting the bend- ing lines in the direction of interest. The dynamics of the reduced system will be evaluated by means of the rela- tive error of the frequencies and the MAC value of the normalized mode shapes. The error in frequency of mode number i is measured as ii i i f (42) and the MAC value of the corresponding mode shapes is defined as 2 T ii iTT ii ii (43)
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 319 where βi has a value between 0 and 1 and 1 means full identity, see [48]. Figure 2 helps to get an impression what βi = 0.95 means in terms of displacements. For that reason, a value of βi < 0.95 will be denoted as inaccurate further one. 4.3. Model Reduction 4.3.1. Moment Matching As it can be seen in (21), moment matching leads to blocks which are added to the reduction matrix. Due to the 7 selected I/O DOF the number of trial vectors in the reduction matrix is an even multiple of 7. For this study a total number of 14 trial vectors have been selected. The trial vectors have been computed along the algorithm cited in [11]. 4.3.2. CMS The Craig-Bampton approach [31] requires 7 static dis- placement vectors and a number of vibration modes which can be estimated by the frequency content of the excita- tion. As mentioned before, the final size of the entire reduction matrix is given by the MM approach which leads to 7 fixed interface vibration modes which are added to the CMS reduction base. The highest considered frequency is about 331 Hz. Therefore, as an “a priori” estimation, the eigenvalue and eigenvectors should be accurate up to approx. 200 Hz. 4.3.3. BT The trial vectors based on balanced truncation have been computed along the SBPOR algorithm of [15]. This al- gorithm requires the presence of viscous damping. There- fore a damping matrix D = 1.0e–4K has been defined in order to obtain the trial vectors. In Chapter 3.3, it has been assumed, that in case of full controllability the space spanned by balanced truncation is somehow similar to one spanned by the systems vibra- tion modes. For a numerical confirmation of that as- sumption the first three vibration modes of the structure have been put into a matrix. A singular value decomposi- tion of this matrix delivers the Hankel singular values (HSV) 2.6, 2.2 and 1.4. In a next step the first three trial vectors obtained by the SBPOR algorithm have been added to the matrix which contains the three vibration modes. The HSV of this matrix are 2.7, 2.4, 1.7, 0.006, 0.0001 and 0.0000002. The sudden decrease of HSV reveals that this 6 dimensional space is dominated by three dimensions. Consequently, both groups of modes Figure 2. Two mode shapes with βi = 0.95. (or trial vectors) span a similar space. 4.4. Variant 1: Reduced System with the Same Boundary Conditions as at the Time of Mode Generation 4.4.1. Stati c Response Two different static load cases will be investigated. Load Case 1 (LC 1): Two forces in z direction have been applied. One about 50 N at point B and another one about –15 N at point A. Load Case 2 (LC 2): A single force in x direction about 1000 N has been applied at point A. The resulting deflection in z direction of the bottom section due to LC 1 can be seen in Figure 3. As it was expected the CMS and MM reduced model deliver accu- rate results while BT does not. The resulting deflection in x direction of the bottom section due to LC 2 can be seen in Figure 4. This is a very interesting result. It underlines the advantage of static displacement shapes as trial vectors. While the CMS and MM results are exact the BT result is highly inaccurate. This is, because no trial vector with a domi- nate displacement in x direction is part of the reduction base. The reason for this is the displacement oriented reduction procedure where directions with high dynamic stiffness are considered to be less important, see (41). The latter observation has important consequences for the dynamoics as well. If an arbitrary dynamic response contains a quasi static portion of the latter deflection in x direction, the resulting stress state will be inaccurate even if the displacement error may be small. The missing mean stress would lead to bad fatigue lifetime prediction as well. 4.4.2. Dynamics Figure 5 contains a summary of the eigenfrequency errors and the correlations of the according mode shapes, re- spectively. It can be seen that up to 200 Hz, which is the “a-priori” assumed range of validity for CMS, all meth- Figure 3. z-deflection of bottom section due to LC 1. Figure 4. x-deflection of bottom section due to LC 2.
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 320 Figure 5. Error in mode frequencies and shape s. ods deliver acceptable results except MM which leads to a considerable error for the fifth mode at 129.9 Hz. BT gives the most accurate results. The frequency of mode number 7 is beyond the fre- quency limit of 200 Hz. However, this mode is not cap- tured by the BT reduction base at all. Both alternative methods provide that mode in the reduced model even the frequency error is considerable. Figure 6 contains a visualization of mode number 7 which is dominated by torsion of the bottom section. It can be observed in the trial vectors φi that the magnitudes of the rotations are much smaller as the ones of the translations. This is re- lated to the chosen units and very common in conven- tional FE models. The dominating deformations in terms of magnitude are in the overhanging part which is not represented in the input/output which are marked by two circles in Figure 6. This observation leads to the as- sumption that BT is somehow unity sensitive. This can be easily observed when the relation of BT and POD is considered, see Equation (41). There it can be seen that the importance of trial vectors are based on a Euclidian distance. Therefore the units do play an important role in case of trial vectors which are dominated by rotational part of the I/O DOF only. The absence of this mode will have significant influence on the results of variant 2. An- other explanation could be, that the units of the rotations are not in the same scale as the translations. 4.5. Variant 2: Fixed End 4.5.1. Stati c Response One static load case is considered where a single force with 10 N is acting in z direction of point B. Figure 7 con- tains the deflection in z-direction of the bottom section of the beam. It can be observed, that BT leads to significant errors while CMS and MM deliver accurate results. Figure 6. Mode number 7 (torsion oft the bottom section). Figure 7. z-deflection of bottom section due to a static load. 4.5.2. Dynamics Figure 8 contains a summary of the eigenfrequency errors and the correlations of the according mode shapes, re- spectively. It can be seen that up to 200 Hz CMS gives excellent because the investigated modes are part of the reduction base, see (10). MM does not deliver that good performance and the frequency error for the 4th mode is remarkable even it is clear beneath 200 Hz. BT delivers the worst result. This is because the mounted system is badly represented in the mode base without static dis- placement shapes. Furthermore it can be seen, that mode number 3 is not part of the mode base at all. This is the first torsion mode and the reasons for its absence can be found in the previous subsection. Note, that the missing mode could be excited by an imposed rotational motion at point A. The absence of a mode is always a critical issue if the full system response is of interest. 4.6. Variant 3: Large Mass Coupling In this configuration just 5 DOF of point A will be fixed to ground. The DOF which is associated with the transla- tion in x direction is free and a large point mass about 250 kg is mounted at point A. The error in mode shapes and frequencies can be seen in Figure 9. Due to the large mass an additional mode comes into the spectrum of interest. This mode has an eigenfre- quency of 145.1 Hz and represents an elongation of the bottom section along the x direction together with a bending of the overhanging beam, see Figure 10. It can be observed, that the torsion mode at 98.38Hz and the latter mentioned mode at 145.1 Hz cannot be represented by the BT trial vectors. Note, that this is not a pure artificial construction. An example would be a flexible slider crank mechanism in a multi body dynamic system (MBDS). The FE model of the elastic slider crank (or con rod) is typically modeled without the mass which will be attached in the MBDS by means of constraints. This mass attachment will influ- ence the modes of the slider crank.
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 321 Figure 8. Error in mode frequencies and shape s. Figure 9. Error in mode frequencies and shape s. Figure 10. Mode at 145 Hz (grey represents the reference configuration). 5. Comments on Former Publications In some recent publications MM and BT have been sug- gested as the somehow better reduction methods in gen- eral and for the use in multi body system dynamics in particular. This is in contrast to some of the observations in this work. This will be commented in this section. 5.1. Frequency Response as Relevant Criterion In [16-19] the error in the frequency response functions has been evaluated. This has been done by the compari- son of the reduced models frequency responses with the ones of the full system. All comparisons have in common that the error of BT and MM are much smaller as in case of mode based methods. Firstly, the evaluation of the frequency response func- tions do not properly take into account the full system response and boundary conditions which are different as they have been at the time of trial vector generation. The observation in the latter publication matches Figure 5 which holds the eigenfrequencies and mode shape errors of the reduced system. BT and partially MM deliver the best results because the reduced system is not mistuned at the I/O. As depicted in the sections before a deduction off similar accuracy in case of different boundary condi- tions is not possible. Further one it could be demon- strated, that the quality of static response is not predict- able. In [18] the mode based methods are represented by the fixed boundary CMS as in this work. The error of this approach is less than 1% for the frequency range of va- lidity (up to 720 Hz). MM and BT deliver better results indeed but the result quality of CMS seems to be suffi- cient for standard mechanical applications. The mode based methods in [16,17,19] are not identi- cal with a CMS reduction base in the form of (8). There- fore the error, which goes up to 10% in the frequency range of interest, cannot be commented here. 5.2. Time Domain Response as Relevant Criterion In [18] a crankshaft is reduced by MM, BT and fixed boundary CMS. A multi body simulation of the full en- gine fired by gas pressure has been performed. The rela- tive error of the gap and the pressure for one particular lubrication bearing has been evaluated with respect to the time. A close look to the diagrams reveals, that the CMS reduced model has the best performance in an averaged sense. This has to be expected because an operating crankshaft is closer to a mounted crankshaft as to an un- supported one. The conclusion in the latter publication has not been based on this observation but on the fre- quency response error which is problematic as explained in the subsection before. 6. Conclusions This paper is devoted to a clear answer which method has to be used for the model reduction of metallic struc- tures in context of industrial use. The following conclu- sions have been drawn by a close look to the underlying theory and they have been demonstrated by means of a generic beam example. The clear result of the qualitative and quantitative in- vestigations is that modal reduction techniques based on
 W. WITTEVEEN Copyright © 2012 SciRes. WJM 322 component mode synthesis (CMS) have the best overall performance. The results are sufficient accurate in terms of statics and dynamics, independently of the applied boundary conditions. Another practical feature is a clear selection criterion for the number of considered modes as a function of the excitations frequency content. The observed accuracy in case of moment matching (MM) cannot compete with one obtained by the CMS method. The absence of a correlation between the con- sidered modes and the covered frequency range is an- other drawback for industrial use where no convergence analysis with respect of the number of trial vectors will be done. Finally it can be reported, that BT in principle cannot be recommended for model reduction in the investigated framework at all. The reasons are manifold: If the overall system response contains a static portion, the accuracy in terms of displacement and stress is ques- tionable. Due to the absence of static correction vectors in the mode base, BT delivers bad results when the I/O DOF in the reduced system face different boundary conditions as at the time of trial vector generation. Vibration modes can be missed as a consequence of the I/O focused approach and its unity sensitivity. This can lead to unpredictable full system response in case of varying boundary conditions in the reduced system. There is no correlation between the trial vectors and the covered frequency range. As a final conclusion it can clearly be stated that the most reliable reduction method for metallic structures and for a wide range of industrial application in me- chanical engineering is still the Component Mode Syn- thesis and its variants. Balanced truncation can be rec- ommended, when the reduced system is not mistuned, when the influence of statics is clarified and when just the I/O behavior is of interest. One of the most important fields where model reduc- tion of flexible bodies needs to be applied is elastic multi body system simulation (MBSS). As already mentioned MBSS is characterized by the importance of statics, over- all system response and varying boundary conditions at the I/O DOF of flexible bodies. For the reasons shown in this paper, CMS seems to be the best choice. The feature of predictable error in case of balanced truncation (BT) may be valuable when the displacement I/O behavior of the non reduced system has to be ap- proximated. The practical significance of such an a-priori error estimation is questionable when viscous damping is used as an approximation of real damping, when the boundary conditions in the reduced model differ from the one of the trial vectors and when stresses or statics are of particular interest. Finally it is mentioned once again, that the focus of the current work is on mechanical engineering. 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