The present disclosure relates to an abnormality diagnosing method and an abnormality diagnosing system. Particularly, the present disclosure relates to an abnormality diagnosing method and an abnormality diagnosing system suitable for detecting an abnormality in a non-steady state that changes dynamically.
In the field of various plants such as a gas turbine power plant, a nuclear power plant, a thermal power plant, and in the field of an internal-combustion engine such as a jet engine, an abnormality diagnosis of the plant or the engine is performed by monitoring an operating state (including a test operation) thereof to realize a stable operation and output.
For example, Japanese Patent Application Laid-Open No. 2011-090382 (Patent Literature 1) discloses a monitoring system in which a series of processes from monitoring of an indication of an abnormality of a monitoring target to a troubleshooting can be automated. This monitoring system includes a monitoring unit that acquires predetermined monitoring target data from the monitoring target, calculates a Mahalanobis distance thereof, and detects an abnormality in the monitoring target, a data processing unit that generates a predetermined input signal by extracting an abnormal signal indicating an indication of an abnormality and a related signal that is related monitoring target data, and a malfunction diagnosing unit that performs the troubleshooting with respect to the monitoring target based on the input signal.
Japanese Patent Application Laid-Open No. 2014-035282 (Patent Literature 2) discloses an abnormality diagnosing apparatus that diagnoses an abnormality of a plant by comparing values of a plurality of variables input newly from the plant with a predetermined unit space. This abnormality diagnosing apparatus includes an accumulated data storing unit that stores therein accumulated data including a value of each of the variables input in the past, a deciding unit that, for each of the variables, extracts a maximum value and a minimum value within a predetermined period of the accumulated data and decides a central value of these as a median value, a first calculating unit that calculates a difference between the value newly input for each of the variables and the median value, a second calculating unit that calculates a Mahalanobis distance by using the calculated difference for each of the variables and data of the predetermined unit space, and a determining unit that diagnoses an abnormality by determining whether the Mahalanobis distance is within a threshold range set beforehand.
A monitoring target such as a plant or an internal-combustion engine generally has a steady state that is a stable operating state and a non-steady state that is a transient unstable operating state before the monitoring target reaches the steady state. In the non-steady state, the same monitoring target behaves differently depending on environmental conditions, operating conditions, and the like at a given time, and almost never shows the same dynamic change.
In the monitoring system disclosed in Patent Literature 1, by calculating the Mahalanobis distance of the monitoring target data, the input signal used in the troubleshooting is generated from the abnormal signal indicating the indication of the abnormality and the related signal. However, to determine whether there is the abnormality or the indication of the abnormality after calculating the Mahalanobis distance of the monitoring target data, it is necessary to prepare reference data beforehand. In case of the steady state, because the operating state and the outputting state are stable, it is possible to prepare the reference data. However, in case of the non-steady state that changes dynamically, the reference data cannot be generated from only the monitoring target data, so that the abnormality diagnosis cannot be performed.
Also in the abnormality diagnosing apparatus disclosed in Patent Literature 2, because the Mahalanobis distance is calculated by using the accumulated data of the past, like Patent Literature 1, although the abnormality diagnosis can be performed for the steady state by comparison thereof with the past data, the abnormality diagnosis cannot be performed for the non-steady state.
This disclosure has been made in view of the above discussion. One object of the present disclosure is to provide an abnormality diagnosing method and an abnormality diagnosing system that can perform the abnormality diagnosis not only in the steady state of the monitoring target but also in the non-steady state.
A first aspect of the present disclosure is an abnormality diagnosing method of diagnosing an abnormality of a monitoring target having an operating state that includes a non-steady state, the method including: generating a simulation model of the monitoring target; measuring an internal state quantity in the operating state of the monitoring target and extracting a measured value; inputting into the simulation model same control input value used in the operating state of the monitoring target and calculating a predicted value of the internal state quantity of the monitoring target; calculating a Mahalanobis distance from a difference between the measured value and the predicted value; and diagnosing whether the operating state of the monitoring target is abnormal based on the Mahalanobis distance.
The method may include calculating an error vector that includes the difference and an integral value of the difference as components thereof. Moreover, the calculating of the predicted value may be made based on a measured value that was measured immediate previously in a time series.
A second aspect of the present disclosure is an abnormality diagnosing system for diagnosing an abnormality of a monitoring target having an operating state that includes a non-steady state, the system including: a simulation model configured to simulate the monitoring target; a measuring unit configured to measure an internal state quantity in the operating state of the monitoring target; a diagnosing device configured to calculate a Mahalanobis distance from a difference between a predicted value calculated by the simulation model and a measured value extracted by the measuring unit and diagnoses whether the operating state of the monitoring target is abnormal based on the Mahalanobis distance; and a controlling unit configured to transmit same control input value to at least the monitoring target and the simulation model.
The diagnosing device may calculate the Mahalanobis distance based on an error vector that includes the difference and an integral value of the difference as components thereof. Moreover, the simulation model may calculate the predicted value based on a measured value that was measured immediate previously in a time series. The monitoring target is, for example, an engine for reusable spacecraft.
In the abnormality diagnosing method and the abnormality diagnosing system according to the present disclosure, a simulation model that simulates an internal state of a monitoring target is generated, and whether the monitoring target is abnormal is diagnosed by using a difference between a measured value obtained from the monitoring target and a predicted value calculated by the simulation model. Accordingly, the predicted value that suits with the environmental conditions and/or the operating conditions at the time the abnormality diagnosis is made can be calculated by the simulation model, and, because the difference has been used, the measured value obtained from the monitoring target can be replaced with a variation value of a normal value. Accordingly, even if the operating state of the monitoring target is the non-steady state, the dynamic change thereof can be followed and an action can be taken, and the abnormality diagnosis of the monitoring target can be performed not only in the steady state but also in the non-steady state. Moreover, by using the Mahalanobis distance in the abnormality diagnosis, the abnormality diagnosis can be made simple and fast.
Exemplary embodiments according to the present disclosure are explained below by using the accompanying drawings.
An abnormality diagnosing system 1 according to one embodiment of the present disclosure is, as shown in
The monitoring target 2 is, for example, an engine for reusable spacecraft. However, the monitoring target 2 is not limited to the engine for reusable spacecraft and can be any other internal-combustion engine such as a jet engine, various plants such as a gas turbine power plant, a nuclear power plant, a thermal power plant, a chemical plant, and the like. Particularly, it is desirable that the monitoring target 2 has a steady state that is a stable operating state and a non-steady state that is a transient unstable operating state before reaching the steady state.
The simulation model 3 is a model that allows an estimation of the internal state quantity of the monitoring target 2. The simulation model 3 is generated, for example, by applying a numerical simulation technique. In generating the simulation model, a recurrence relation expression (ARMA) can be used in consideration of a real-time process. When the monitoring target 2 is, for example, the engine for reusable spacecraft, as the internal state quantity, for example, a combustion pressure Pc, a regenerative cooling outlet temperature Tjmf, a fuel pump rotation frequency Nf, an oxidant pump rotation frequency No, a fuel pump outlet pressure Pdf, an oxidant pump outlet pressure Pdo, and the like, can be selected. Accordingly, the simulation model that allows calculation of these internal state quantities is generated. The simulation model 3 can be one simulation model that simulates the entire monitoring target 2 or can be constituted by a plurality of simulation models each of which calculates a different internal state quantity.
The measuring unit 4 is installed in the monitoring target 2. The measuring unit 4 is, for example, a sensor that measures one or more of the internal state quantities such as the combustion pressure Pc, the regenerative cooling outlet temperature Tjmf, the fuel pump rotation frequency Nf, the oxidant pump rotation frequency No, the fuel pump outlet pressure Pdf, and the oxidant pump outlet pressure Pdo. The measuring unit 4 is, for example, a pressure gauge, a thermometer, a rotary encoder, and the like. However, the measuring unit 4 is not limited to these devices, and can be selected appropriately based on the type of the monitoring target 2 and/or the internal state quantity to be measured.
The controlling unit 6 is a device that transmits to the monitoring target 2 the control input value u necessary to operate the monitoring target 2. The operating state of the monitoring target 2 can be an actual operation or can be a test operation. Moreover, the controlling unit 6 transmits also to the simulation model 3 the control input value u necessary to operate the monitoring target 2. The simulation model 3 calculates an internal state quantity based on this control input value u, and also calculates a predicted value x for each of the internal state quantities. It is allowable to measure an output value y of the monitoring target 2 that is operated by using the control input value u, and extract the output value y to the outside.
The diagnosing device 5 is a device that receives data of the measured value x{circumflex over ( )} measured by the measuring unit 4 and data of the predicted value x calculated by the simulation model 3, and performs an abnormality diagnosis of the monitoring target 2 by using the received data. The diagnosing device 5 performs a process based on, for example, the flowchart shown in
As shown in
The diagnosing device 5 performs the Mahalanobis distance calculation step (Step 5) and the abnormality diagnosis step (Step 6). In the abnormality diagnosing method according to the present embodiment, whether the obtained data (measured value x{circumflex over ( )}) is abnormal is diagnosed based on multivariable analysis that uses the Mahalanobis distance. A correlation among a plurality of variables can be processed at one time by using the Mahalanobis distance. That is, because it is not necessary to separately perform the diagnosis per variable to decide whether the variable is abnormal, the abnormality diagnosis can be made simple and fast.
The Mahalanobis distance calculation step (Step 5), as shown in
The error vector ε can be expressed in the manner shown in
When the combustion pressure Pc, the regenerative cooling outlet temperature Tjmf, the fuel pump rotation frequency Nf, the oxidant pump rotation frequency No, the fuel pump outlet pressure Pdf, and the oxidant pump outlet pressure Pdo are selected as the internal state quantity, for example, the error vector ε can be written as a matrix of (ΔPc, ΔTjmf, ΔNf, ΔNo, ΔPdf, ΔPdo, ΣΔPc, ΣΔTjmf, ΣΔNf, ΣΔNo, ΣΔPdf, ΣΔPdo) as shown in
The prediction step (Step 4) includes an inputting step (Step 41) of inputting into the simulation model 3 the same control input value u as the operation of the monitoring target 2, and a predicted value calculation step (Step 42) of calculating the predicted value x of the internal state quantity based on the control input value u. At the predicted value calculation step Step 42 (prediction step (Step 4)), as shown in
At the Mahalanobis distance computation step (Step 53), to calculate the Mahalanobis distance MD from the error vector ε, at first, the error vector ε is standardized by using Expression 1 to convert the error vector into a state so that the error vector ε does not depend on a physical quantity unit. To standardize the error vector ε, an entire average value vector during the operation period
and a deviation
σε [Equation 2]
are used.
where
The error vector εn″ standardized based on Expression 1 is expressed as εn and used in the subsequent calculation.
Then, the Mahalanobis distance MD is calculated by using Expression 2. Here, εT indicates a transposed matrix of the error vector ε, and dim(ε) indicates a dimension of the error vector ε. Moreover, a covariance matrix can be derived, for example, from the accumulated data of the past that is diagnosed as being normal.
[Equation 5]
MDn=√{square root over (εn−1εnT/dim(ε))} (Expression 2)
where
[Equation 6]
is the covariance matrix.
By calculating the Mahalanobis distance MD and connecting equidistant points, for example, a correlation among the internal state quantities shown in
At the abnormality diagnosis step Step 6, for example, as shown in
In the abnormality diagnosing method and the abnormality diagnosing system 1 according to the present embodiment, the simulation model 3 that simulates the internal state of the monitoring target 2 is generated, and whether the monitoring target 2 is abnormal is diagnosed by using the difference (x{circumflex over ( )}−x) between the measured value x{circumflex over ( )} obtained by the monitoring target 2 and the predicted value x calculated by the simulation model 3. Accordingly, the predicted value x that suits with the environmental conditions and/or the operating conditions at the time the abnormality diagnosis is made can be calculated by the simulation model 3. Moreover, because the difference has been used, the measured value x{circumflex over ( )} obtained by the monitoring target 2 can be replaced with a variation value of a normal value. Accordingly, even if the operating state of the monitoring target 2 is the non-steady state, the dynamic change thereof can be followed and an action can be taken, and the abnormality diagnosis of the monitoring target 2 can be performed not only in the steady state but also in the non-steady state.
The amount of the fuel and the oxidant are controlled to obtain the thrust shown in
In
The present disclosure is not limited to the above embodiments, and it can be implemented by making various changes in a range that do not deviate from the gist of the present disclosure.
Number | Date | Country | Kind |
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2015-029249 | Feb 2015 | JP | national |
This application is a continuation application of International Application No. PCT/JP2016/054579, filed on Feb. 17, 2016, which claims priority to Japanese Patent Application No. 2015-029249, filed on Feb. 18, 2015, the entire contents of which are incorporated by reference herein.
Number | Name | Date | Kind |
---|---|---|---|
8862433 | Yerramalla | Oct 2014 | B2 |
20020066054 | Jaw | May 2002 | A1 |
20030045992 | Humerickhouse | Mar 2003 | A1 |
20050107984 | Samata | May 2005 | A1 |
20050154562 | Matsuura | Jul 2005 | A1 |
20050157327 | Shoji | Jul 2005 | A1 |
20050222747 | Vhora | Oct 2005 | A1 |
20070124113 | Foslien | May 2007 | A1 |
20080183444 | Grichnik et al. | Jul 2008 | A1 |
20100161274 | Leao et al. | Jun 2010 | A1 |
20100198555 | Takahama et al. | Aug 2010 | A1 |
20110112775 | Bramban | May 2011 | A1 |
20110288836 | Lacaille et al. | Nov 2011 | A1 |
20110307220 | Lacaille | Dec 2011 | A1 |
20120101706 | Masse | Apr 2012 | A1 |
20130179097 | Masse et al. | Jul 2013 | A1 |
20130338898 | Aurousseau et al. | Dec 2013 | A1 |
20150293523 | Yamamoto | Oct 2015 | A1 |
Number | Date | Country |
---|---|---|
2 204 778 | Jul 2010 | EP |
6-103481 | Apr 1994 | JP |
2009-274588 | Nov 2009 | JP |
2011-90382 | May 2011 | JP |
2011-106467 | Jun 2011 | JP |
2012-510585 | May 2012 | JP |
2013-41490 | Feb 2013 | JP |
2014-35282 | Feb 2014 | JP |
2 385 456 | Mar 2010 | RU |
2 413 976 | Mar 2011 | RU |
2 441 271 | Jan 2012 | RU |
WO 2009107805 | Sep 2009 | WO |
WO 2012052696 | Apr 2012 | WO |
Entry |
---|
Combined Decision to Grant and Search Report dated Jul. 10, 2018 in Russian Patent Application No. 2017132000, citing documents AO-AR therein, 17 pages, (with English translation). |
International Search Report dated Apr. 26, 2016 in PCT/JP2016/054579 filed on Feb. 17, 2016 (with English Translation). |
Written Opinion dated Apr. 26, 2016 in PCT/JP2016/054579 filed on Feb. 17, 2016. |
Extended European Search Report dated Jul. 10, 2018 in European Patent Application No. 16752507.0, citing documents AA, AB and AO therein, 8 pages. |
Number | Date | Country | |
---|---|---|---|
20170328811 A1 | Nov 2017 | US |
Number | Date | Country | |
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Parent | PCT/JP2016/054579 | Feb 2016 | US |
Child | 15664525 | US |