This patent application is a U.S. National Phase application under 35 U.S.C. § 371 of International Application No, PCT/EP20156/00963, filed on Jun. 10, 2016, entitled THERMOACOUSTIC PRECURSOR METHOD AND APPARATUS, which claims priority from European Patent Application No, 15001745.7, filed on Jun. 12, 2015; and from European Patent Application No. 15003308.2, filed on Nov. 20, 2015.
The present invention relates to a method and an apparatus for monitoring a combustor (e.g. a gas turbine) and, particularly, for monitoring the dynamic stability margin of combustor (e.g. a gas turbine).
Several methods to determine a stability margin of a combustor or combustion chamber have been proposed. Approaches to determine a stability margin are usually developed and/or validated on laboratory combustors. The degree of effectivity in applying the same strategies to full scale industrial combustors and, particularly, annular gas turbine combustors and full gas turbine combustors is questionable. For example, the measurement location may corrupt the stability margin estimation.
It is an object of the present invention to provide solutions for a reliable determination of a stability margin of a combustor and, for example, an annular gas turbine combustors or a full gas turbine combustor.
To solve the above object, the present invention provides subject-matter according to the independent claims. Preferred embodiments of the present invention are defined in dependent claims.
A method of determining a stability margin for a combustor by assessing modal dynamics of the thermoacoustic system is disclosed. Assessment of modal dynamics of the thermoacoustic system is understood to relate to the characterization of the thermoacoustic vibration (modes) originating from the excitation by the combustion process. The thermoacoustic phenomenon may also be referred to as combustion dynamics or combustion instability.
In general, modal characteristics of at least one spectral peak in an acoustic field of the combustor are obtained and at least one stability margin is determined based on the obtained modal characteristics. In some embodiments, the modal characteristics of the at least one spectral peak in the acoustic field of the combustor may comprise modal contributions. In particular, modal contributions to the at least one spectral peak of the acoustic field may be determined by obtaining a basis of modal vectors (e.g. comprising harmonic functions) and by mode decomposition of measured acoustic amplitudes onto the obtained basis.
Furthermore, a computer program product, an apparatus and a system for determining a stability margin are disclosed.
In the following, possible embodiments are defined:
The method may comprise obtaining modal characteristics of at least one spectral peak in an acoustic field of the combustor, determining at least one stability margin for the combustor based on the obtained modal characteristics of the at least one spectral peak in the acoustic field of the combustor.
In the method, the step of obtaining the modal characteristics may comprise identifying the thermoacoustic system, based on a state space model structure with stochastic input, to estimate
In the method, the step of obtaining the modal characteristics may comprise assuming at least one pre-defined modal vector, in particular at least one pre-defined modal vector corresponding to a standing acoustic wave or a traveling acoustic wave, mode decomposition based on the at least one pre-defined modal vector to obtain modal amplitudes, and estimating a decay rate and/or frequency of at least one of the modal amplitudes.
In the method, the at least one stability margin for the combustor may be determined as the estimated decay rate.
The method may comprise that the thermodynamic system is decomposed onto at least one estimated eigenvector and the at least one stability margin for the combustor is determined based on the modal amplitude on basis of an estimated eigenvector.
The method may comprise that the thermodynamic system is decomposed onto at least one assumed, pre-defined modal vector, and the at least one stability margin for the combustor is determined based on the modal amplitude on basis of an assumed, pre-defined modal vector.
In the method, the combustor may be an annular combustor, wherein the modal characteristics may be defined on basis of an azimuthal coordinate and an azimuthal mode order m, and/or the at least one modal vector is based on the azimuthal mode number m.
In the method, the at least one spectral peak may be determined based on acoustic signals measured or deduced in the combustor.
Computer program product including program code configured to, when executed in a computing device, carry out the steps of one of the preceding claims.
The apparatus may comprise at least one of:
as well as a stability margin determination device being adapted to determine at least one stability margin for the combustor based on at least one of the obtained modal characteristics and the modal vector decomposition.
The apparatus may further comprise at least two acoustic sensors to measure or deduce acoustic signals in the combustor.
In the apparatus, the mode analyzer device may be adapted to determine the stability margin for the combustor based on a decay rate of the at least one acoustic mode, or the stability margin determination device may be adapted to determine the stability margin for the combustor based on an amplitude of the modal characteristics, and/or an acoustic noise in the combustor.
In the apparatus, the mode analyzer device or the mode decomposed device may be adapted to determine the acoustic noise in the combustor on the basis of acoustic signals measured or deduced in the combustor.
In the apparatus, the combustor may be an annular combustor, wherein the mode decomposer device may be adapted to decompose the acoustic field onto a modal vector, based on an azimuthal mode order m, and/or the mode analyzer device may be adapted to determine the modal characteristics on basis of an azimuthal mode order m.
The system may comprise an apparatus according to one of the above embodiments claims and a combustor.
The system may further comprise a controller being adapted to control the operation of the combustor based on the stability margin for the combustor, determined by the stability margin determination device of the apparatus or the mode analyzer device.
In the system, the combustor may be the combustor of an annular gas turbine.
In the system, the combustor may be a gas turbine combustor.
In the system, the modal characteristics may be obtained on basis of fluctuating heat release rate of the combustor.
In the system, at least one stability margin may be determined, based on the obtained modal characteristics of the at least one spectral peak in the fluctuating heat release rate of the combustor.
In the following, the present invention is described with reference to the attached drawings, which show:
Returning to
As known to the skilled person, acoustics and flame dynamics are inherently coupled in thermoacoustic modes. The acoustics causes heat release fluctuations of the flame and vice versa. Therefore, the heat release rate can be considered as an indirect representation or indication of the acoustics. In some embodiments, measurements representing heat release rate fluctuations are used instead of acoustic signals. The heat release rate can for example be quantified with help of the chemiluminescence from the combustion process, measured for instance with a Photomultiplier Tube (PMT) and optionally an optical bandpass filter.
Accordingly, as will be apparent to the skilled person, a sensor for measuring a quantity indicative of an acoustic field of the combustor may be placed in, adjacent to or near any component of the combustor.
The at least one sensor device 14 is adapted to output sensor signals s1, s2 . . . sK, indicative of respective measurements of the acoustic field, e.g. with K sensors. Sensor signals from the at least one sensor device 14 may be provided to an (optional) analog-digital converter device 16, in the case the at least one sensor device 14 provides analog signals, while digital signals are needed for processing steps and devices, respectively, described in the following. The analog-digital converter device 16 is not necessary in the case analog signals from the at least one sensor device 14 can be processed by said processing steps and devices, respectively, described in the following. Nor is the analog-digital converter device 16 necessary in case the at least one sensor device 14 provides digital output signals. Each one of the at least one sensor device may be adapted to output one or more of the sensor signals.
The sensor signals s1, s2 . . . sK are processed by a mode analyzer 20 as described further below.
The mode analyzer device 20 estimates and outputs modal characteristics. The estimated modal characteristics include information indicating identified decay rate α, modal eigenvector V and/or process noise R of at least one eigenmode per monitored spectral peak in the acoustic field of the combustor 12. The modal eigenvectors can have any basis of spatial harmonic functions with order m around the circumference of the combustion chamber and/or combustor plenum. The eigenvectors can describe for instance standing waves, traveling waves or combinations thereof. The at least one decay rate estimate α can be used as a precursor for thermoacoustic stability directly.
In some embodiments, the mode analyzer device 20 analyzes modal amplitudes Aj of at least one spectral peak in the acoustic field of the combustor 12, generated by the mode decomposer device 18 described further below.
In some embodiments, the sensor signals s1, s2 . . . sK are processed by a mode decomposer device 18, which projects the signals onto a modal vector basis (Vj). The said vector basis can be set manually or set as the eigenvector estimate, identified by the mode analyzer device 20. If the vector basis is set manually, it typically corresponds to traveling or standing wave solutions of the acoustic field with spatial mode order m around the circumference of the combustor 12. The mode decomposer device 18 outputs modal amplitudes Aj of at least one spectral peak in the acoustic field corresponding to mode order m of the combustor 12. For example, the output of the wave decomposer device 18 may indicate acoustic clockwise (F) and anticlockwise (G) waves, which may be provided to a stability margin determination device 22.
The outputs of the mode decomposer device 18 may be provided to a stability margin determination device 22, which determines or, at least, estimates at least one stability margin Dj for the combustor 12. To this end, the stability margin determination device 22 uses the outputs Aj of the mode decomposer device 18 as basis. In some embodiments, the process noise R identified by the mode analyzer device 20 is used, along with the modal amplitudes Aj, to determine a stability margin output.
A determined/estimated stability margin may be used to control the combustion process. To this end, information on the determined/estimated stability margin is provided to a controller 24. The controller 24 can be a technical controller for automatically controlling the combustor, for example, by using a pre-programmed algorithm, can be a human controller or operator. The combustor can be controlled by means of an actuator 26, which changes the combustion process parameters, such as, but not limited to, fuel split, staging strength or fuel flow to the pilot burner.
In general, a system according to the invention comprises a mode analyzer device and/or a mode decomposer device, which as illustration may operate according to the following considerations.
Modeling azimuthal modes in annular geometries, an azimuthal mode order m comprises two eigenvalues with corresponding eigenvectors. In some cases, these eigenvalues are equal and the eigenvectors are orthogonal, leading to so-called degenerate eigenvalues. In practical systems, however, two distinct solutions may be possible because of side effects, including an azimuthal bulk velocity through the combustion chamber and azimuthally varying flame response characteristics (angular variation of the flame response).
On the one hand, an azimuthal bulk velocity in the combustion chamber (or combustor annulus) causes, at least promotes independent acoustic clockwise (F) and anticlockwise (G) waves with (slightly) different frequency and decay rate.
On the other hand, azimuthally varying flame response characteristics can cause standing wave solutions, with frequency and decay rate depending on the angular orientation of the standing wave.
In general, combustors show both phenomena, yielding mixed modes, i.e. combinations of standing and traveling wave behavior.
The azimuthal eigenmodes can be fully described by two complex amplitudes. Their amplitudes control the contribution of two independent harmonic basis functions around the circumference with mode order m.
In order to predict the moment where the lowest decay rate will cross zero resulting in exponential growth, monitoring a mix of the two eigenmodes will yield a bias towards stable operation. For a more accurate or more reliable stability margin determination, the two eigenmodes at mode order m may be resolved and considered individually.
To this end, a mode decomposition of measured acoustic signals may be carried out. Mode decomposition may be based on an eigenvector basis that describes the acoustic field of the considered mode order m. Two main strategies are proposed: (a) Assuming at least one prescribed or pre-defined modal vector, such as a standard and/or known vector; (b) Obtaining an estimate of the eigenvectors by (online) identification of the system. In some embodiments, one of strategies (a) and (b) may be carried out. Alternatively, in some embodiments, both strategies (a) and (b) can be combined.
Strategy (a) predominantly follows the outer loop of the block diagram in
The hats denote that the variables might be analytic, i.e. complex variables. For two sensor channels, the decomposed traveling waves can now be found using the inverse of C
For more than two sensors, the Moore-Penrose pseudoinverse can be used, yielding the decomposition in a least square sense.
Preferably, the above decomposition is performed in Fourier domain. Fast Fourier Transforms (FFT) are often already implemented and optimized in monitoring hardware and/or software of a combustion system. The decomposed waves are obtained in frequency domain directly where the modal peaks can be analyzed visually and separated from other modes by means of a bandpass filter. As compared with the time domain, in the frequency domain more information per sensor is readily obtained, since the data comes with both amplitude and phase information.
An example for the precursors based on the average modal amplitudes is given in equation [3], determined from a sample with N time steps.
When the strength of the combustion noise R, exciting the acoustic field, is known or estimated, it can be used in defining the following precursors:
D1=RN/Σn=1N|{circumflex over (F)}n|
D2=RN/Σn=1N|Ĝn| [4]
The combustion noise R can be fixed to a reasonable number, or estimated online from measured data when performing output-only modal identification by a mode analyzer device. The expected value for the precursor definition in equation [4] is monotonically increasing with the decay rates of the corresponding traveling waves. For marginal stability, the precursor value will go to zero.
Evolution of precursors based on modal amplitudes can be monitored for different modal vectors individually, preferably normalized by the estimate of noise level R, exciting the system around the frequency of the considered mode. Preferred implementations of the mode decomposer and stability margin determination device were explained here with traveling waves as basis vector of the system, but the methods apply under any change of basis, including all standing and mixed wave bases.
Strategy (b) predominantly follows the smaller clockwise loop in
The used model structure for system identification is a state space representation, with acoustic variables in state vector x, for example traveling waves {circumflex over (F)} and Ĝ:
xn+1=Axn+wn
Ŝn=Cxnvn [5]
The subscript n denotes discrete steps in time. Output-only modal identification methods can estimate matrix A and the stochastic forcing vector w. The state-space model in total can be identified by the Stochastic Subspace Identification algorithm (SSI). The eigenvalues λ and eigenvectors V are retrieved by solving the eigenvalue problem of system matrix A, wherein w is representative for the noise strength exciting the system. The eigenvalues contain both the decay rate and the eigenfrequency of the eigenmodes. When the sensor noise can be neglected, A can be determined by ordinary least squares, with residual w.
Alternatively or additionally, Fourier Domain Decomposition (FDD) and fitting strategies can be applied to estimate the eigenvectors only. Mode decomposition onto these eigenvectors can then be applied to obtain the dynamic amplitudes of the eigenmodes. These modal amplitudes can be used to find a precursor following strategy (a), or they can be fed back to the modal analyzer to find the remaining modal characteristics.
To find the eigenvalues from a modal amplitude A, the following model is used for all amplitudes independently
An+1−λAn+wn [6]
Alternatively, the decay rate can be found by fitting the autocorrelation function envelope of the modal amplitude A.
The standard deviation of (a long) combustion noise forcing vector w gives the estimate of noise strength R. The estimate of R can be used in the stability margin determination device as described in strategy (a).
When the decay rate is estimated, it can serve as a quantitative stability margin. This strategy will be most suited for slowly changing system parameters, because the identification process requires large data sets. Precursors based on modal amplitude (strategy (a)) can be monitored as quantitative measure to represent short term stability changes with the estimated decay rate as reference.
Furthermore, identification can provide more information about the system parameters which can prove to be helpful in taking the right control action to manage the stability margin of the system. For example, the orientation of a standing wave can suggest at what burners fuel staging should be applied to gain stability margin. Moreover, subcritical and supercritical bifurcation points could be predicted with help of the estimated eigenfrequencies, when sufficient information about the flame response is known. This may be a reason, for example, to retain a larger or smaller stability margin for a specific mode.
An exponential moving average (EMA) with exponent of 0.25 s−1 is applied to smooth the results. The precursors go down towards zero as the damping decreases. From about 280 seconds the values drop down quickly and go to zero asymptotically with the exponent of the EMA-filter. The value for
In some embodiments, it may be preferable to obtain modal characteristics by identifying the thermoacoustic system based on a state space model structure with stochastic input.
In this particular example, the decomposition using a pre-defined basis of traveling waves and using a basis of the identified eigenvectors yield approximately the same precursor result for the least stable mode which is the mode of interest. However, depending on the system, this does not have to be the case. A precursor based on a properly identified vector basis will yield the best results. If this is not available, the lowest precursor of standing wave and traveling wave decomposition may be taken as the stability margin for the system.
Number | Date | Country | Kind |
---|---|---|---|
15001745 | Jun 2015 | EP | regional |
15003308 | Nov 2015 | EP | regional |
Filing Document | Filing Date | Country | Kind |
---|---|---|---|
PCT/EP2016/000963 | 6/10/2016 | WO | 00 |
Publishing Document | Publishing Date | Country | Kind |
---|---|---|---|
WO2016/198164 | 12/15/2016 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
5005353 | Acton | Apr 1991 | A |
5428951 | Wilson | Jul 1995 | A |
5445517 | Kondou | Aug 1995 | A |
5544478 | Shu | Aug 1996 | A |
5791889 | Gemmen | Aug 1998 | A |
6205765 | Iasillo | Mar 2001 | B1 |
6464489 | Gutmark | Oct 2002 | B1 |
20020162317 | Banaszuk | Nov 2002 | A1 |
20050144955 | Handelsman | Jul 2005 | A1 |
20050247064 | Lieuwen | Nov 2005 | A1 |
20060266045 | Bollhalder | Nov 2006 | A1 |
20070062196 | Gleeson | Mar 2007 | A1 |
20070271927 | Myers | Nov 2007 | A1 |
20080072605 | Hagen | Mar 2008 | A1 |
20080134684 | Umeh | Jun 2008 | A1 |
20090005952 | Tonno | Jan 2009 | A1 |
20120279229 | Zinn | Nov 2012 | A1 |
20150081233 | An | Mar 2015 | A1 |
20170219208 | Song | Aug 2017 | A1 |
Number | Date | Country |
---|---|---|
1286031 | Feb 2003 | EP |
Entry |
---|
European Patent Office—International Search Report of the International Searching Authority dated Aug. 12, 2016 for correlating International Application No. PCT/EP2016/000963 (3 pgs). |
European Patent Office—Written Opinion of the International Searching Authority dated Aug. 12, 2016 for correlating International Application No. PCT/EP2016/000963 (5 pgs). |
European Patent Office—International Preliminary Report on Patentability for related International Application No. PCT/EP2016/000963 (6 pgs). |
Number | Date | Country | |
---|---|---|---|
20180142891 A1 | May 2018 | US |