Research on Arrangement of Measuring Points for Modal Identification of Spatial Grid Structures
Abstract
:1. Introduction
2. Applicability Analysis of Measuring Point Arrangement Method
2.1. Principle of Measuring Point Arrangement Method
2.1.1. Effective Independence Method (EI) [34,35]
2.1.2. Modal Assurance Criterion (MAC) [36]
2.1.3. Modal Kinetic Energy Method (MKE) [10]
2.1.4. Covariance Matrix (VM) [37,38,39]
2.1.5. Effective Independence–Modal Kinetic Energy Method (EI-MKE)
2.2. Evaluation Criteria of Measuring Point Arrangement Results
2.2.1. Energy
2.2.2. MAC
2.2.3. The Determinant of Fisher’s Information Matrix
2.2.4. Modal Expansion
2.3. Research on Search Order of Algorithm
2.4. Algorithm Optimization
- (1)
- From the perspective of Fisher’s determinant, the information of the measuring point arrangement obtained by the EI method was slightly higher than that obtained by the EI-MKE method, and the Fisher information obtained by the MKE algorithm was the least.
- (2)
- From the perspective of MACn, the modal orthogonality of the measuring points obtained by the EI-MKE method was the best, followed by the EI method. The arrangement of the measuring points obtained by the MKE method and the non-diagonal elements of the MAC matrix reached more than 0.9, indicating that the orthogonality of the test mode was poor and that there was a cross mode.
- (3)
- From the perspective of MACd, the extended mode obtained by the EI method had the best correlation with the theoretical mode of the structure, followed by the EI-MKE method. The minimum value of the extended mode MACd of the measuring point obtained by the MKE method reached within 0.2, indicating that the extended mode was almost orthogonal to the theoretical mode of the order and that the expansion result was poor.
3. Arrangement of Structural Measuring Points with Damage
4. Study on the Number of Measuring Points
5. Conclusions
- (1)
- The EI method, MKE method, and EI-MKE method, which have a great influence on the arrangement of the measuring points, were compared and analyzed. When the three methods were applied to the grid structure, the measuring points obtained by the gradually deleted search process had the greatest correlation between the structural extended mode and the theoretical mode. At the same time, it was concluded that the EI method is the most suitable method for the arrangement of the measuring points in spatial grid structures.
- (2)
- The effect of the search order on the MKE method was negligible, and the results for the three search orders were identical. However, the search order greatly influenced the EI method and the EI-MKE method. The MKE method was found to have significant missing modal information compared to the EI method and the EI-MKE method, making it unsuitable for measuring point layout in spatial grid structures. Both the EI method and the EI-MKE method have their own advantages. With reference to the extended MACd value of the sixth-order mode derived from the extended mode, it was observed that although the EI-MKE method yielded good expansion results for the first five order modes, the sixth-order MACd value was very small and was almost orthogonal to the sixth-order theoretical mode, indicating that the sixth-order mode is lost in the expansion process of the EI-MKE method. The EI method was found to be superior to the EI-MKE method in terms of measuring point information, measuring point orthogonality, and extended mode integrity. Therefore, the EI method can obtain more measuring point arrangement information for three-dimensional spatial grid structures and is considered more suitable for determining the measuring point arrangement of spatial grid structures.
- (3)
- The numerical analysis of the grid was carried out, and the most unfavorable situation of structural damage was determined by the sensitivity method. The correlation of the structural modes under various damage conditions was compared. The statistical information shows that the structural frequency of the structure had a large loss under the different damage degrees, and the structural vibration mode and the vibration mode of the undamaged structure still maintained a good correlation. In particular, when the structural frequency decrease was less than 5%, the low-order vibration modes of the structure were still highly consistent with the theoretical vibration modes of the undamaged structure.
- (4)
- It was found that with the increase in the damage amount, the MAC values of the modal orthogonality and extended modal correlation of the measuring points were less different from those of the undamaged structures. This shows that the structure had a basically stable distribution of measuring points that could basically cover the possibility of the measuring point distribution of all possible vibration modes.
- (5)
- Combined with the three-level improved Guyan recursive technique, in order to obtain better complete modal parameters, the demand for the number of measuring points was studied, and it was concluded that the number target of MACd is better than that of MACn.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Measuring Point Arrangement Method | Effective Independence Method (EI) | Modal Assurance Criterion (MAC) | Modal Kinetic Energy (MKE) | Covariance Matrix (VM) |
---|---|---|---|---|
Objective function | The estimation of the model coordinate estimation error covariance is the smallest. | The maximum element of the non-diagonal element of the MAC matrix is the smallest. | The kinetic energy of the modal degree of freedom is the largest. | The linear unbiased estimation error of the modal matrix is the smallest. |
Target | The contribution to the target mode is the largest. | The spatial intersection angle of the modal vector of the measuring point is the largest. | The signal-to-noise ratio is the maximum | The ability to obtain the vibration mode and the signal strength are the largest. |
Searching Sequence | EI | MKE | EI-MKE |
---|---|---|---|
Gradually deleted | 1X 2Z 6X 7Z 11Z 13Z | 2Z 5Z 7Z 9Z 13Z 15Z | 2X 2Z 4Z 7X 7Z 13Z |
Direct acquisition | 2Z 7Z 11Z 13Z 9Z 15Z | 2Z 5Z 7Z 9Z 13Z 15Z | 2Z 7Z 13Z 9Z 15Z 5Z |
Gradually accumulated | 2Z 9Z 10Z 3Z 11Z 4Z | 2Z 5Z 7Z 9Z 13Z 15Z | 2Z 9Z 10Z 3Z 7Z 15Z |
Measuring Point Arrangement Method | Measuring Point |
---|---|
EI | 13Y 16Y 25Z 28Z 49Z 52Z |
EI-MKE | 21Y 25Z 28Z 49Z 50Z 52Z |
Damage Situation | No. | Min(f) | MAC | ||||||
---|---|---|---|---|---|---|---|---|---|
>0.99 | 0.95–0.99 | 0.90–0.95 | 0.1–0.9 | 0.05–0.1 | <0.05 | ||||
0–10% | 1 | 6.358 | 4.61% | 168 | 0 | 0 | 0 | 0 | 0 |
2 | 6.868 | 4.78% | 168 | 0 | 0 | 0 | 0 | 0 | |
3 | 7.421 | 5.01% | 168 | 0 | 0 | 0 | 0 | 0 | |
4 | 12.475 | 5.04% | 168 | 0 | 0 | 0 | 0 | 0 | |
5 | 14.445 | 4.90% | 168 | 0 | 0 | 0 | 0 | 0 | |
6 | 17.356 | 5.13% | 168 | 0 | 0 | 0 | 0 | 0 | |
20–30% | 1 | 5.594 | 16.08% | 115 | 50 | 3 | 0 | 0 | 0 |
2 | 6.050 | 16.12% | 67 | 101 | 0 | 0 | 0 | 0 | |
3 | 6.537 | 16.32% | 77 | 63 | 26 | 2 | 0 | 0 | |
4 | 11.028 | 16.06% | 154 | 14 | 0 | 0 | 0 | 0 | |
5 | 12.820 | 15.60% | 115 | 53 | 0 | 0 | 0 | 0 | |
6 | 15.357 | 16.05% | 152 | 16 | 0 | 0 | 0 | 0 | |
40–50% | 1 | 4.742 | 28.86% | 63 | 55 | 17 | 33 | 0 | 0 |
2 | 5.132 | 28.84% | 17 | 28 | 66 | 48 | 1 | 8 | |
3 | 5.565 | 28.76% | 72 | 12 | 21 | 63 | 0 | 0 | |
4 | 9.456 | 28.03% | 68 | 100 | 0 | 0 | 0 | 0 | |
5 | 10.794 | 28.94% | 26 | 78 | 54 | 10 | 0 | 0 | |
6 | 13.006 | 28.91% | 27 | 119 | 22 | 0 | 0 | 0 |
Damage Quantity | No. | Theoretical Distribution of Measuring Points | MACn | MACd |
---|---|---|---|---|
0 | 13Y 16Y 25Z 28Z 49Z 52Z | 0.4507 | 0.9769 | |
0–10% | 1 | 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Z 49Y 49Z 50Z 51Y 51Z 52Y 52Z | 0.4552 | 0.9734 |
2 | 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Z 52Z | 0.4552 | 0.9749 | |
3 | 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Z 49Y 49Z 50Z 51Y 51Z 52Y 52Z | 0.4547 | 0.9728 | |
4 | 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | 0.4556 | 0.9740 | |
5 | 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Z 50Z 51Z 52Y 52Z | 0.4574 | 0.9716 | |
6 | 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | 0.4568 | 0.9729 | |
Merge measuring points | 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | |||
20–30% | 1 | 10Y 13Y 16Y 25Y 25Z 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Z | 0.4643 | 0.9646 |
2 | 10Y 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | 0.4652 | 0.9621 | |
3 | 10Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | 0.4646 | 0.9640 | |
4 | 8Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | 0.4648 | 0.9634 | |
5 | 8Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Z 52Y 52Z | 0.4806 | 0.9389 | |
6 | 8Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Z 52Y 52Z | 0.4694 | 0.9590 | |
Merge measuring points | 8Y 10Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z | |||
40–50% | 1 | 8Y 10Y 13Y 16Y 25Y 25Z 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Z | 0.4689 | 0.9467 |
2 | 10Y 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Z 51Y 51Z 52Z | 0.4769 | 0.9448 | |
3 | 8Y 10Y 13Y 16Y 25Z 26Y 26Z 27Z 28Y 28Z 49Y 49Z 50Z 51Y 51Z 52Z | 0.4688 | 0.9678 | |
4 | 8Y 10Y 13Y 16Y 25Y 25Z 26Y 26Z 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Z 52Z | 0.4731 | 0.9124 | |
5 | 8Y 10Y 13Y 16Y 25Z 26Y 26Z 27Y 27Z 28Y 8Z 49Y 49Z 50Y 50Z 51Z 52Y 52Z | 0.5114 | 0.8482 | |
6 | 8Y 10Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Z 51Z 52Y 52Z | 0.4804 | 0.9345 | |
Merge measuring points | 8Y 10Y 13Y 16Y 25Y 25Z 26Y 26Z 27Y 27Z 28Y 28Z 49Y 49Z 50Y 50Z 51Y 51Z 52Y 52Z |
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Zhou, C.; Wu, J.; Sun, G.; Hu, J.; Xu, Q.; Li, Y.; Liu, M. Research on Arrangement of Measuring Points for Modal Identification of Spatial Grid Structures. Buildings 2024, 14, 2338. https://doi.org/10.3390/buildings14082338
Zhou C, Wu J, Sun G, Hu J, Xu Q, Li Y, Liu M. Research on Arrangement of Measuring Points for Modal Identification of Spatial Grid Structures. Buildings. 2024; 14(8):2338. https://doi.org/10.3390/buildings14082338
Chicago/Turabian StyleZhou, Chunjuan, Jinzhi Wu, Guojun Sun, Jie Hu, Qize Xu, Yang Li, and Mingliang Liu. 2024. "Research on Arrangement of Measuring Points for Modal Identification of Spatial Grid Structures" Buildings 14, no. 8: 2338. https://doi.org/10.3390/buildings14082338
APA StyleZhou, C., Wu, J., Sun, G., Hu, J., Xu, Q., Li, Y., & Liu, M. (2024). Research on Arrangement of Measuring Points for Modal Identification of Spatial Grid Structures. Buildings, 14(8), 2338. https://doi.org/10.3390/buildings14082338