METHOD FOR MONITORING AXIAL LOADS IN STRUCTURES BY IDENTIFYING NATURAL FREQUENCIES

Abstract

The present invention relates to a method for monitoring axial loads in structures by identifying natural frequencies. The analyzed structures are made up of elements connected by means of contact and are subjected to tractive loads, such as mooring lines. The proposed method uses bench testing and a computer model of the structure to determine the variation in the natural frequencies in relation to the variation in load. Monitoring is carried out using vibration sensors, in particular accelerometers, laser position sensors or strain gauges, to measure the dynamic behaviour of the structure, a data capture and signal conditioning unit and a computer to correlate the load applied and the vibration behaviour using a computer algorithm, and also to present the result. The invention discloses an easy calibration method for the dimensional template of the structures in question, high accuracy and easy installation and operation in the field.

Claims

1-6. (canceled)

7. A method of monitoring axial loads in structures through the identification of natural frequencies, the method comprising the steps of: arranging measurement sensors (201) on a test mooring comprising at least three links; connecting said sensors (201) to a signal acquisition, conditioning, and processing unit (202); tensioning and exciting the test mooring; collecting vibration data from the test mooring by means of said sensors (201); identifying natural frequencies of the test mooring based on the collected data; developing a load monitoring model based on mechanical characteristics of the test mooring; performing modal analysis of the load monitoring model to determine the natural frequencies of the model; comparing the natural frequencies of the test mooring calculated based on the collected data with the natural frequencies obtained by the load monitoring model; adjusting the load monitoring model until said natural frequencies obtained by the load monitoring model are equal to the natural frequencies of the test mooring; extrapolating the load monitoring model by increasing the number of links in the test mooring; generating a calibration chart via modal analysis for different loads; placing vibration measurement sensors (201) along an actual mooring (105); exciting the actual mooring (105); conditioning the data obtained by said measurement sensors (201) by means of a signal acquisition, conditioning, and processing unit (202); transforming data obtained by said measurement sensors from the time domain to the frequency domain for determining the natural frequencies of the mooring; analyzing the natural frequencies and determining the vibrational profile achieved by the load monitoring model that is most similar to the vibrational profile of the mooring and its equivalent load; and displaying the equivalent load value on a monitor (203).

8. The method according to claim 7, wherein the exciting forces used to determine the natural frequencies of the actual mooring (105) are from at least one of: environmental conditions, impact of a hammer, or an inertial exciter.

9. The method according to claim 7, wherein strain gauges or load cells (103) already installed on the actual mooring (105) are reused to measure vibration of the actual mooring and to estimate the load to which the actual mooring is subjected.

10. The method according to claim 7, wherein position sensors are used to measure the actual mooring (105) and estimate the load to which the actual mooring is subjected.

11. The method according to claim 7, wherein determination of the load applied to the actual mooring (105) is made by correlating a single natural frequency with the results present in the calibration chart specifically generated for the actual mooring (105).

12. The method according to claim 7, wherein, to determine the load applied to the actual mooring (105), one of the following is used: neural network algorithms, genetic algorithms, fuzzy logic algorithms, or intelligence artificial algorithms.

13. The method according to claim 8, wherein, to determine the load applied to the actual mooring (105), one of the following is used: neural network algorithms, genetic algorithms, fuzzy logic algorithms, or intelligence artificial algorithms.

14. The method according to claim 9, wherein, to determine the load applied to the actual mooring (105), one of the following is used: neural network algorithms, genetic algorithms, fuzzy logic algorithms, or intelligence artificial algorithms.

15. The method according to claim 10, wherein, to determine the load applied to the actual mooring (105), one of the following is used: neural network algorithms, genetic algorithms, fuzzy logic algorithms, or intelligence artificial algorithms.

16. The method according to claim 11, wherein, to determine the load applied to the actual mooring (105), one of the following is used: neural network algorithms, genetic algorithms, fuzzy logic algorithms, or intelligence artificial algorithms.

Description

BRIEF DESCRIPTION OF THE FIGURES

[0021] The present invention will now be described in more detail based on the drawings. The figures show:

[0022] FIG. 1—is an example of the measurement process as widely known from the prior art;

[0023] FIG. 2—is a diagram of the components required to carry out measurements and display the measured load;

[0024] FIG. 3—is a flowchart with all operations performed in the process;

[0025] FIG. 4—is an example of measuring accelerometers;

[0026] FIG. 5—is an example of response in the frequency domain structure for two different loads; and

[0027] FIG. 6—is an example of variation in the value of natural frequencies due to load variation.

DETAILED DESCRIPTION OF VARIOUS EMBODIMENTS

[0028] It is widely known in the state of the art that natural frequencies of a structure vary according to the state of stresses present therein. A very emblematic case of this phenomenon is the tuning of the strings of a guitar, in which applying tension on them generates a higher note. Similarly, a relaxation translates into a lower note.

[0029] The present invention makes use of this relationship between loading and vibration pattern to identify loads on moorings, by observing their vibrational responses under different loads. FIG. 1 exemplifies a common situation in the state of the art of measuring the load on moorings 105 using widely known components. On the right is the vessel 104, on the left is an anchor 101 and between them is the mooring 105. A load cell 103 is at the end of the mooring 105 which is secured to the vessel 104 and an angle sensor 102 at a predetermined position along the mooring 105.

[0030] As noted in the previous sections, monitoring of moorings as it is commonly done has a number of disadvantages.

[0031] As seen in FIG. 2, data collected by the sensors 201 are forwarded to a signal acquisition, conditioning and processing unit 202 so that the results be analyzed in a computer 203.

[0032] The flowchart illustrated in FIG. 3 presents the steps to implement the proposed method.

Step 1—Analysis of the Prototype Mooring

[0033] In step 301, a bench test is carried out with a prototype consisting of a fraction of the real mooring, that is, a mooring with less links, designated as test mooring. In this step, vibration measurement sensors, especially accelerometers, are placed along the structure, where each sensor will measure the vibration at the point of placement on the three spatial directions.

[0034] The prototype must be tensioned in step 302 according to a pre-established value and then, in step 303, vibration is caused. The system can be excited by the impact of a hammer, sledgehammer or similar object, and sensors arranged on the test mooring capture the responses at each point of the prototype.

[0035] Then, in step 304, acceleration data, or other signal, is collected by means of a data acquisition module, as illustrated in FIG. 2, and, in step 305, it is saved in a computer.

[0036] In step 306, if necessary, steps 302 to 305 are repeated for loads of different magnitudes, that is, tension on the test mooring is changed and new measurements are taken.

[0037] In step 307, the collected data is processed in a computer determining the frequency domain response. Thus, in step 308 natural frequencies of the structure are related to each applied load, in addition to the dampening characteristics of the structure and the hysteresis curves of the test mooring.

[0038] In order to model the test mooring prototype with a reduced number of links in step 309, a computational model of the prototype is developed and analyzed in steps 301 to 305. Preferably, a 3D modeling CAD (Computer Aided Design) software is used to model the test mooring prototype.

[0039] Preferably, a CAE (Computer Aided Engineering) software of analysis of finite elements is used, in which the constitutive properties of the prototype material (usually steel) are entered as well as the boundary conditions, the same load to which the prototype was subjected in the bench test and an initial value for the friction index between the links.

[0040] A modal analysis is performed for the model and the natural frequencies for each load are calculated in step 310.

[0041] In step 311, the frequency response obtained in the analysis of the computational model is compared with the response achieved by the bench test and, in step 312, the model is updated by adjusting the computational model until convergence of the vibrational results, hence validating the computational model.

Step 2—Analysis of the Actual Mooring

[0042] In step 313, the reduced test mooring model is extrapolated to a larger number of links in order to model the actual mooring.

[0043] In step 314, a computational modal analysis is performed for different load magnitudes, thus obtaining the natural frequencies associated with each case where the actual mooring is subjected to each of the pre-established loads.

[0044] At the end of this process, a calibration chart is achieved that relates the axial load values with the respective natural frequency values of the actual mooring.

[0045] With the computational model ready, there still remains to instrument the actual mooring.

[0046] In step 315, sensors, preferably accelerometers, are placed along the structure of the actual mooring and the wind and/or sea forces themselves are used to excite the system in step 316. A hammer, mallet or similar object can also be used to excite the system and obtain its vibrational behavior. Inertial actuators physically coupled to the mooring can also be used, which are capable of applying to the structure an infinite number of types of excitation forces. Other types of actuators can be used, although not mandatory.

[0047] In step 317, acceleration data, or other signal, is collected via a data acquisition module. Then, in step 318, the collected data is processed in a computer by calculating the response in the frequency domain in order to assess peaks and identify natural frequencies. After the natural frequencies are identified, they are compared, in step 319, with the numerical ones obtained via the computational model.

[0048] In the simplest possibility of analysis, determination of the load applied to the actual mooring is made by correlating a single natural frequency with the results present in the calibration chart specifically generated for such a mooring The choice of natural frequency to be used in identifying the load intensity is based on sensitivity criteria for each of the natural frequencies relative to the applied load.

[0049] If the actual load is within two load limits measured in the mathematical model, a linear interpolation calculation is performed to estimate the load value in step 320, finally displaying the result on a monitor to the user.

[0050] FIG. 4 shows a plot illustrating the shape of a time signal response from the moment the system is excited by impact to its rest. Such response indicates the presence of dampening of the system, which is inherent to the structure.

[0051] FIG. 5 exemplifies a frequency response for two loads, where in load 2 is greater than load 1. As can be seen, as the load increases, location of the peaks undergoes an increase in frequency, with a change in the natural frequency of the moorings. For example, spot 1-1 on the first peak of the first load is at a lower frequency than corresponding spot 2-1 on the first peak of the second load. FIG. 6 represents the variation in the values of natural frequencies due to load variation, where f1 represents the frequency on the first peak, f2 the frequency on the second peak, and so on.

[0052] In one embodiment of the invention, the mooring is excited by environmental forces, such as wind and sea waves. The vibrational response generated is measured by accelerometers and/or sensors that can capture the frequency response, such as strain gauges and position sensors. These data is acquired by an acquisition module to be saved and processed in a computer 203.

[0053] Any type of ambient vibration can be used to excite the structures during their operation and/or bench calibration. In addition, the impact of a hammer, mallet or similar object can also be used to excite the system, so the use any type of actuator is unnecessary (although being possible).

[0054] In another embodiment of the invention, monitoring can be performed using strain gauges, mainly by reusing those mounted on already installed, defective load cells. That is, if it is verified that strain gauges are providing a satisfactory response for a vibrational analysis, they can be used by the method of the present invention.

[0055] Another monitoring possibility is by using laser position sensors.

[0056] Inertial actuators physically coupled to the mooring can also be used, which are capable of applying an infinite number of types of excitation forces to the structure. Sinusoidal scanning, for example, is an excellent solution to excite the mooring natural frequencies.

[0057] In the simplest possibility of analysis, determination of the load is made by correlating a single natural frequency with the results present in the calibration chart specifically generated for said mooring. The choice of natural frequency to be used in identifying the load intensity is based on sensitivity criteria for each of the natural frequencies relative to the applied load.

[0058] In another possible analysis, several natural frequencies are used simultaneously to determine the load applied to the mooring. In this case, a correlation is made of the natural frequencies with the results present in the calibration chart specifically generated for said mooring. Neural network algorithms can be used to determine the load applied to the mooring.

[0059] Another embodiment provides the use of genetic algorithms or fuzzy logic to correlate various natural frequencies estimated through field measurements with the results present in the calibration chart specifically generated for said mooring. Response of these algorithms makes it possible to determine the load applied to the mooring with a high level of confidence.

[0060] More comprehensively, it is possible to use any artificial intelligence algorithm to process data from the computational model and measurements to determine the load applied to the mooring.