Data Presentation Schemes for Selection and Identification of Modal Parameters Allyn W. Phillips, PhD, Research Associate Professor Randall J. Allemang, PhD, Professor P.O. Box 210072, University of Cincinnati, Cincinnati, OH 45221-0072 Nomenclature Eigen solution state vector φ ψ λ n MAC pwMAC pw N XH Mode shape (vector) System pole or modal frequency Left model order Modal Assurance Criteria Pole Weighted MAC Pole weight Pole weight order Hermitian (complex conjugate) transpose of vector X ABSTRACT Although the theories behind various methods of estimating modal parameters normally receive the most attention, it is the presentation of the results that is fundamental to the selection of an optimal set of modal parameters from the large number of solutions represented by the process of allowing the model order to vary in the problem solution (iteration over model order). Many software implementations provide only a limited set of presentation tools, but access to more tools may be very beneficial. This paper reviews several of the various data presentation tools, and their relative effectiveness, for selection of a set of modal parameters. These include: coefficient normalization, stability and consistency diagrams, pole (LaPlace) surface plots, pole surface density plots, and a new companion matrix state vector (phi) MAC, called pwMAC, method. 1.0 Background The history of developing visualization tools for evaluating modal parameters began at least 25 years ago. When least squares and nonlinear (iterative) mathematical tools were first used to aid in the estimation of modal parameters, the development of an error chart was utilized to visualize how the error between the synthesized frequency response function (FRF) or impulse response function (IRF) was reduced as a function of increasing model order (number of modes) used in the identification model [1]. Due to the limited availability of graphical presentations, these plots were generally bar graphs utilizing printed characters to represent linear or logarithmic changes of the error. Today, the error chart would be presented as in Figure 1. As numerical tools such as singular value decomposition, condition number and matrix rank computation became available in the early 1980s, these tools were used to present a rank chart. The rank chart looked similar to the error chart but was a presentation of the number of independent parameters (effectively modes) in a given matrix equation developed for a specific, maximum model order [2]. Once again, if the rank indicated that the matrix was dominated by a limited number of independent parameters less than the maximum model order, this was a good indication of the number of modes that could be found in the measured data. Singular values were used to calculate the condition number as a more sensitive indicator of the number of dominating parameters (effectively modes). Due to the limited availability of graphical presentations, these plots were generally bar graphs utilizing printed characters to represent linear or logarithmic changes of the error. Today, the rank chart would be presented as in Figure 2. Relative Rank and Reciprocal Condition Number 0 10 Error Chart 0 Relative Rank 1/Condition 10 -2 10 -2 10 -4 -4 10 10 -6 10 -6 10 -8 10 -8 10 -10 10 0 10 20 30 Number of Modes 40 50 -10 10 Figure 1: Error Chart 0 5 10 15 20 25 Model Iteration 30 35 40 Figure 2: Rank Chart By the end of the 1980s, more advanced graphical presentation capabilities were becoming routinely available to the users of modal parameter estimation software and the development of more useful visual presentation methods were being evaluated. In particular, the stability diagram was developed which is still in wide use today. The stability diagram is a visual presentation of the frequency location of the estimated modal frequencies, as a function of increasing model order (number of modes), plotted on a background of an FRF, an auto-moment of FRFs, a complex mode indication function (CMIF) [3], or a multi-variate mode indication function (MvMIF) [4]. Symbols are used to represent whether successive estimates of modal parameters, using the next higher model order, give a result for a modal frequency that is realistic (reasonable damping), stable frequency (damped natural frequency within a tolerance, for example 1 percent), stable pole (stable frequency plus a stable fraction of critical damping, for example 5 percent) and stable modal vector (stable modal frequency plus a stable estimate of modal vector, for example modal assurance criterion of 0.95). An example of a modern stability diagram is given in Figure 3. The computation of stability is generally successive in that modal vector stability is not evaluated unless the pole is stable and the pole stability is not evaluated unless the modal frequency is stable, etc. Note that the usefulness of the stability diagram will depend upon actual values of tolerance that is used for each level of stability. cluster pole & vector pole frequency conjugate non realistic 1/condition Consistency Diagram Model Iteration Model Iteration Stability Diagram 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 cluster pole & vector pole frequency conjugate 0 500 Figure 3: Stability Diagram 1000 1500 Frequency (Hz) 2000 2500 non realistic 1/condition 40 39 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 0 500 1000 1500 Frequency (Hz) 2000 2500 Figure 4: Consistency Diagram An extension of the stability diagram, the consistency diagram, was developed shortly after the stability diagram was in wide use. It has long been recognized that the solutions for the modal frequencies were sensitive to many numerical issues, including the normalization of the linear, least squares equation that is fundamental to the estimation of modal parameters [2]. This issue has generally been considered a trade secret by commercial vendors until recently where several researchers have attempted to theoretically explain why different normalizations yielded different stabilization diagrams [5-8]. The consistency diagram looks very similar to the stability diagram but includes variations in solution method (different normalizations or inclusions of different residuals, for example) in addition to increasing model order. Figure 4 is an example of a consistency diagram for which several different solution parameters are varying. More recently [9], a more discriminating visual presentation, the pole surface consistency plot or pole surface density plot, is being successfully utilized. The pole surface consistency plot involves plotting all of the modal frequencies found in a stability or consistency diagram in the complex frequency plane (s-plane). Primarily, the modal frequencies that are in the second quadrant of the complex frequency plane are those that exhibit positive frequency with appropriate damping. Clusters of modal frequencies in this plot, together with the same symbols used in the consistency diagram give clear indications of modal frequencies that are of interest. The statistical distribution of the cluster can also yield error bound information associated with each modal frequency chosen. The pole surface consistency plot is shown in Figure 5. In order to clear up this plot, modal frequencies can be included only when they represent a certain level of stability. To utilize the pole surface information in a more discriminating manner, the density of the poles in a given region can be plotted in a pole surface density plot. This plot, particularly when limited to densities greater than one, gives a very clear visualization of modal frequencies that have been found consistently through all solution conditions evaluated. Figure 6 is an example of a pole surface density plot. Pole Surface Density 2 1.8 1.8 1.6 1.6 1.4 1.4 1.2 1.2 Zeta (%) Zeta (%) Pole Surface Consistency 2 1 0.8 0.6 cluster pole & vector 0.6 79 frequency 0.4 Density 0.4 pole 0.2 conjugate 0 non realistic 1/condition 1 0.8 0 500 1000 1500 Imaginary (Hz) 2000 2500 Figure 5: Pole Surface Consistency 40 0.2 20 0 1 0 500 1000 1500 Imaginary (Hz) 2000 2500 Figure 6: Pole Surface Density 1.1 Application Issues The critical use of tolerances and floors in the visual presentations is very important in selecting modal frequencies correctly. In general, in the stability and consistency diagrams, changing the tolerances can yield stability and consistency diagrams that are much clearer and/or cleaner. The risk is that modal frequencies associated with realistic structural modes may be excluded when the tolerances are manipulated. This happens when realistic structural modes are not well represented in the measured FRF data. This can easily happen when a minimum number of references are utilized where the included references are near nodes of certain modes or when insufficient response information (spatially) is included to weight the realistic structural modes in the least squares solution methods utilized. The estimates of these modal frequencies will often be poor or erratic and will confuse the visualization methods utilized. This raises the philosophical question of whether it is desirable to have no information about these modes or to have inaccurate information about these modes. cluster pole & vector pole frequency conjugate non realistic 1/condition Consistency Diagram Model Iteration Model Iteration Consistency Diagram 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 cluster pole & vector pole frequency conjugate 0 500 1000 1500 Frequency (Hz) 2000 2500 Figure 7: Consistency Diagram – Standard Tolerances non realistic 1/condition 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 0 500 1000 1500 Frequency (Hz) 2000 2500 Figure 8: Consistency Diagram – Relaxed Tolerances Figures 7 and 8 represent two consistency diagrams for the same data. Figure 7 represents a standard choice of tolerances (1,5,95 percent) and Figure 8 represents a relaxed set of tolerances (5,20,80 percent) for a relatively simple structure with repeated roots (circular plate) that is often used to evaluate modal parameter estimation methodology. In Figure 8, only those modal frequencies that are stable in a modal vector sense are included in the consistency diagram yielding a consistency diagram that is very easy to utilize when selecting modal frequencies. Figures 9 and 10 show Figures 7 and 8 expanded in the region of 2300 Hertz. From these two plots, it is clear that the repeated root around 2320 Hertz is poorly identified in Figure 10 compared to Figure 9. cluster pole & vector pole frequency conjugate non realistic cluster pole & vector pole frequency conjugate 2280 1/condition Consistency Diagram Model Iteration Model Iteration Consistency Diagram 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 2290 2300 2310 2320 Frequency (Hz) 2330 2340 2350 Figure 9: Consistency Diagram – Standard Tolerances non realistic 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 2280 1/condition 2290 2300 2310 2320 Frequency (Hz) 2330 2340 2350 Figure 10: Consistency Diagram – Relaxed Tolerances Similarly, the floor that is used in the pole surface density plots can affect the ability to quickly and easily use the pole surface density plot to identify pole clusters. Figure 11 shows a default plot with the floor set to show any pole surface density (1+). Figure 12 is the same information but utilizing a floor of three (3) which will only show pole surface densities of three or greater (3+). This plot includes all of the default stability tolerances but quickly identifies the clusters of modal frequency that should be examined. 79 Pole Surface Density 2 1.8 1.8 1.6 1.6 1.4 1.4 1.2 1.2 Zeta (%) Zeta (%) Pole Surface Density 2 1 0.8 0.6 79 0.2 20 0 1 0.6 0.4 Density Density 0.4 40 1 0.8 0 500 1000 1500 Imaginary (Hz) Figure 11: Pole Surface Density – All Poles 2000 2500 40 0.2 20 0 3 0 500 1000 1500 Imaginary (Hz) 2000 2500 Figure 12: Pole Surface Density – Floor = 3 2.0 New Visualization/Selection Method ( pwMAC ) A new visualization method has been developed and evaluated that combines the characteristics of frequency, pole and modal vector consistency. This method is known as the pole weighted modal assurance criterion ( pwMAC ) and was initially evaluated as part of a new, autonomous modal identification method [10]. The following presentation starts with the fundamental idea of computing the modal assurance criterion (MAC) [11-12] between associated state vectors and then proceeds to separating the pole weighting computation form the MAC computation. The state vectors are the actual eigenvectors found in the UMPA formulation [13] of most modal identification algorithms. Each state vector involves a stacked repetition of a modal vector weighted by the associated modal frequency raised to successively higher powers. 2.1 Theory The equation for evaluating the pole weighted MAC ( standard MAC: MAC (ψ 1 ,ψ 2 pwMAC ) can be derived from the expression for the (ψ )= (ψ Replacing the vectors, ψ 1 & ψ 2 , with the state vectors, φ1 pwMAC (φ1 , φ2 ) = By recognizing that the state vector, modal frequency, ψ 2 )(ψ 2Hψ 1 ) H 1 & φ2 , results in: (φ φ )(φ φ ) (φ φ )(φ φ ) H 1 2 H 2 1 H 1 1 H 2 2 φ , is simply the modal vector, ψ λ , the expression for the pwMAC (1) ψ 1 )(ψ 2Hψ 2 ) H 1 (2) , multiplied by successive powers of the can be significantly reduced. Substituting for φ: λ n {ψ } n −1 λ {ψ } {φ} = # λ 1 {ψ } {ψ } (3) And recognizing that: n {φ1} {φ2 } = ∑ ( λ1*λ2 ) {ψ 1} {ψ 2 } H k =0 k H (4) The expression for pwMAC reduces to: k n k n * λ λ λ2*λ1 ) H H ( ) ( ∑ ∑ 1 2 φ φ )(φ φ ) k =0 ( ψ 1} {ψ 2 }{ψ 2 } {ψ 1} { k =0 = pwMAC (φ1 , φ2 ) = H (φ1 φ1 )(φ2H φ2 ) ∑n ( λ1*λ1 )k ∑n ( λ2*λ2 )k {ψ 1}H {ψ 1}{ψ 2}H {ψ 2} k =0 k =0 H 1 2 H 2 1 (5) It is now observed that the pwMAC is a pole weighting function multiplied by the standard MAC. Since the function is separable, it should be recognized that the pole weight order does not need to be identical to the actual model order. Therefore, the pole weighting can be defined in terms of the actual pole and the desired effective model order, as follows: N * k N * k ∑ ( λ1 λ2 ) ∑ ( λ2 λ1 ) k =0 pw ( λ1 , λ2 , N ) = kN=0 N k k * * ∑ ( λ1 λ1 ) ∑ ( λ2 λ2 ) k =0 k =0 Using this definition, the pwMAC reduces to: pwMAC (φ1 , φ2 ) = pw ( λ1 , λ2 , N ) ⋅ MAC (ψ 1 ,ψ 2 ) (6) (7) This formulation makes it clear that the original complete (full) state vector ( φ ) is not actually needed for the pwMAC calculation and further, that the calculation can be applied to the results of any modal parameter estimation scheme. (Note also that the special case of N = 0 results in simply the ordinary MAC calculation.) For numerical reasons, the pole weight ( pw ) will rarely be calculated using the frequency domain poles directly, (except for small values of N ). Rather, the true system poles are converted to the Z domain using: λz = exp ( λ ⋅ ∆t ) (8) Where: ∆t = f max and f max is a real value greater than the largest absolute frequency in the set of λ ' s . (ie. f max > max( abs (imag (λ ))) This results in a significantly numerically better conditioned solution and effectively synthesizes the state vector that would have resulted had a time domain parameter estimation method been used. 2.1 Pole Weighting Characteristic The effectiveness of this variable pole weighting at identifying the comparable poles and vectors between two independent sets can be seen in the following figures. The figures on the left (Figures 13, 15, 17) are the standard MAC , the pole weighted MAC for λ 5 , and the pole weighted MAC for λ 15 . The figures on the right (Figures 14, 16, 18) are the same figures with a MAC floor of 0.95 . In all cases, each plot has used the same set of poles and vectors for presentation, only the pole weighting has changed. MAC - (>0.95) 60 55 55 50 50 45 45 40 40 Left Pole Index Left Pole Index MAC 60 35 30 25 35 30 25 20 20 15 15 10 10 5 5 5 10 15 20 25 30 35 Right Pole Index Figure 13: Standard MAC 40 45 50 55 60 5 10 15 20 25 30 35 Right Pole Index 40 45 Figure 14: Standard MAC – Floor = 0.95 50 55 60 Pole Weighted MAC - λ 5 55 55 50 50 45 45 40 40 35 30 25 30 25 20 15 15 10 10 5 5 10 15 20 25 30 35 Right Pole Index 40 45 50 55 60 Figure 15: : Pole Weighted MAC – N = 5 5 50 45 45 40 40 Left Pole Index 55 50 35 30 25 15 10 10 5 5 25 30 35 Right Pole Index 40 45 Figure 17: : Pole Weighted MAC – N = 15 40 45 50 55 60 Pole Weighted MAC - λ 15 - (>0.95) 25 20 20 25 30 35 Right Pole Index 30 15 15 20 35 20 10 15 60 55 5 10 Figure 16: Pole Weighted MAC – N = 5, Floor = 0.95 Pole Weighted MAC - λ 15 60 Left Pole Index 35 20 5 Pole Weighted MAC - λ 5 - (>0.95) 60 Left Pole Index Left Pole Index 60 50 55 60 5 10 15 20 25 30 35 Right Pole Index 40 45 50 55 60 Figure 18: : Pole Weighted MAC – N = 15, Floor = 0.95 Although the MAC plots clearly show the effect and value of the pole weighting, the direct usefulness of such plots is limited. 2.2 Pole Weighting MAC Consistency By using the pole weighted MAC calculation to identify comparable poles and vectors and presenting those pwMAC results (over a specified threshold) as a consistency diagram, a clearer indication of global (ie. simultaneous pole and vector) consistency is provided (Figures 19-22). cluster pole & vector pole frequency conjugate non realistic Consistency Diagram 40 35 30 Model Iteration Model Iteration Consistency Diagram 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 pweight = λ 15 pwMAC > 0.99 pwMAC > 0.90 1000 1500 Frequency (Hz) 2000 2500 Figure 19: Traditional - Consistency 15 5 pwMAC > 0.94 500 20 10 pwMAC > 0.97 0 1/condition 25 0 pwMAC > 0.85 0 500 1.8 1.8 1.6 1.6 1.4 1.4 1.2 1.2 Zeta (%) Zeta (%) 2 1 0.8 frequency 0.4 pwMAC > 0.97 0.2 pwMAC > 0.94 0.2 pwMAC > 0.90 conjugate 0 non realistic 1/condition 0 500 1000 1500 Imaginary (Hz) 2000 2500 Figure 21: Traditional – Pole Surface Consistency 1 0.8 0.6 pweight = λ 15 pwMAC > 0.99 0.4 pole 2500 Pole Surface Consistency 2 0.6 pole & vector 2000 Figure 20: Pole Weighted MAC - Consistency Pole Surface Consistency cluster 1000 1500 Frequency (Hz) pwMAC > 0.79 0 pwMAC > 0.85 0 500 1000 1500 Imaginary (Hz) pwMAC > 0.79 2000 2500 Figure 22: Pole Weighted MAC – Pole Surface Consistency The following figures (Figures 23-28) demonstrate the effectiveness of this presentation scheme. While the first two figures (Figures 23 & 24) both give a clear indication of the two poles, the pwMAC consistency shows the degradation in the estimated poles at higher model order. Contrariwise, the second two figures (Figures 25 & 26) show the other issue. Whereas both figures provide clear indication of three poles, the traditional consistency diagram indicates that the vector never attains consistency; however, the pwMAC consistency clearly indicates that the higher model order estimates are more consistent and are to be preferred. This result is also shown in the pole surface plots (Figures 27 & 28), where the pwMAC density more clearly indicates the pole location. cluster pole & vector pole frequency conjugate non realistic 1/condition Consistency Diagram 40 2000 35 30 Model Iteration Model Iteration Consistency Diagram 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 pweight = λ 15 pwMAC > 0.99 pwMAC > 0.97 pwMAC > 0.94 pwMAC > 0.90 2005 2010 2015 2020 2025 2030 Frequency (Hz) Figure 23: Traditional - Consistency 2035 2040 2045 2050 pwMAC > 0.85 pwMAC > 0.79 25 20 15 10 5 0 2000 2005 2010 2015 2020 2025 2030 Frequency (Hz) 2035 2040 Figure 24: Pole Weighted MAC - Consistency 2045 2050 cluster pole & vector pole frequency conjugate non realistic 2300 1/condition Consistency Diagram 40 35 30 Model Iteration Model Iteration Consistency Diagram 38 37 36 35 34 33 32 31 30 29 28 27 26 25 24 23 22 21 20 19 18 17 16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1 pweight = λ 15 pwMAC > 0.99 pwMAC > 0.90 2315 2320 2325 2330 Frequency (Hz) 2335 2340 2345 2350 Figure 25: Traditional - Consistency 15 5 pwMAC > 0.94 2310 20 10 pwMAC > 0.97 2305 25 0 2300 pwMAC > 0.85 2305 2310 pole frequency conjugate non realistic 1/condition 0.18 0.178 0.178 0.176 0.176 0.174 0.174 0.172 0.172 0.17 0.168 0.166 pweight = λ 15 pwMAC > 0.99 0.164 pwMAC > 0.97 pwMAC > 0.94 0.162 0.16 2322 pwMAC > 0.90 2322.1 2322.2 2322.3 2322.4 Imaginary (Hz) 2335 2340 2345 2350 Pole Surface Consistency 0.18 Zeta (%) Zeta (%) pole & vector 2320 2325 2330 Frequency (Hz) Figure 26: Pole Weighted MAC - Consistency Pole Surface Consistency cluster 2315 pwMAC > 0.79 2322.5 2322.6 Figure 27: Traditional – Pole Surface Consistency 2322.7 pwMAC > 0.85 pwMAC > 0.79 0.17 0.168 0.166 0.164 0.162 0.16 2322 2322.1 2322.2 2322.3 2322.4 Imaginary (Hz) 2322.5 2322.6 2322.7 Figure 28: Pole Weighted MAC – Pole Surface Consistency 3.0 Conclusions Historically, as computational and graphical computing power has increased, new calculation and presentation techniques have been developed for identifying the true system model. In this paper, a new companion matrix state vector (phi) MAC, called pwMAC (pole weighted MAC) has been developed. This approach has been shown to be extremely effective at identifying consistent modal parameter (pole and vector) estimates from different model iterations and/or solutions. As formulated, this technique represents a natural progression in parameter presentation/identification schemes, and as such, is easily integrated into existing consistency diagram presentations. It thus provides a powerful new tool for the user to identify the estimates that truly represent the underlying system model. 4.0 References 1. Brown, D.L., Allemang, R.J., Zimmerman, R.D., Mergeay, M. "Parameter Estimation Techniques for Modal Analysis", SAE Paper Number 790221, SAE Transactions, Volume 88, pp. 828-846, 1979. 2. Allemang, R.J., Brown, D.L., "Modal Parameter Estimation" Experimental Modal Analysis and Dynamic Component Synthesis, USAF Technical Report, Contract No. F33615-83-C-3218, AFWAL-TR-87-3069, Vol. 3, 1987, 130 pp. 3. Shih, C.Y., Tsuei, Y.G., Allemang, R.J., Brown, D.L., "Complex Mode Indication Function and Its Application to Spatial Domain Parameter Estimation", Mechanical System and Signal Processing, Vol. 2, No. 4, pp. 367-377, 1988. 4. Williams, R., Crowley, J., Vold, H., "The Multivariable Mode Indicator Function in Modal Analysis", Proceedings, International Modal Analysis Conference, 1985, pp. 66-70. 5. Verboven, P., Guillaume, P., Cauberghe, B., Parloo, E., Vanlanduit, S., "Stabilization Charts and Uncertainty Bounds for Frequency Domain Linear Least Squares Estimators", Proceedings, International Modal Analysis Conference, 10 pp., 2003. 6. Hung, Chen-Far, Ko, Wen-Jiunn, Peng, Ken-Tung, “Identification of Modal Parameters from Measured Input and Output Data Using a Vector Backward Auto-Regressive with Exogeneous Model”, Journal of Sound and Vibration, Vol. 276, 2004, pp. 1043-1063. 7. Verboven, P., Cauberghe, B., Vanlanduit, S., Parloo, E., Guillaume, P., "The Secret Behind Clear Stabilization Diagrams: The Influence of the Parameter Constraint on the Stability of the Poles", Proceedings, Society of Experimental Mechanics (SEM) Annual Conference, 17 pp., 2004. 8. Cauberghe, B., "Application of Frequency Domain System Identification for Experimental and Operational Modal Analysis", PhD Dissertation, Department of Mechanical Engineering, Vrije Universiteit Brussel, Belgium, 259 pp., 2004. 9. Phillips, A.W., Allemang, R.J., Pickrel, C.R., "Clustering of Modal Frequency Estimates from Different Solution Sets", Proceedings, International Modal Analysis Conference, pp. 1053-1063, 1997. 10. Brown, D.L., Phillips, A.W., Allemang, R.J., “A First Order, Extended State Vector Expansion Approach to Experimental Modal Parameter Estimation”, Proceedings, International Modal Analysis Conference, 11 pp., 2005. 11. R.J. Allemang, D.L. Brown, "A Correlation Coefficient for Modal Vector Analysis", Proceedings, International Modal Analysis Conference, pp.110-116, 1982. 12. Allemang, R.J., “The Modal Assurance Criterion (MAC): Twenty Years of Use and Abuse”, Proceedings, International Modal Analysis Conference, 9 pp., 2002. 13. Allemang, R.J., Phillips, A.W., “The Unified Matrix Polynomial Approach to Understanding Modal Parameter Estimation: An Update”, Proceedings, International Seminar on Modal Analysis (ISMA), 36 pp, 2004. 14. Strang, G., Linear Algebra and Its Applications, Third Edition, Harcourt Brace Jovanovich Publishers, San Diego, 1988, 505 pp. 15. 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