The present invention relates to a plant-abnormality-monitoring method for monitoring the operation condition of a plant using the Mahalanobis distance and a computer program for plant abnormality monitoring, and particularly relates to a process for determining whether or not a reference-data update process is necessary in the plant-abnormality-monitoring method.
Regarding the operation condition of a plant, state quantities of many factors such as temperature, pressure, vibration, and the like generated in various facilities/devices in the plant are detected, and it is determined whether or not the plant is normally operated according to the detected state quantities. Recently, a method for monitoring an abnormality in the operation condition of a plant is proposed. In the method, the Mahalanobis distance is used by analyzing many state quantities detected as described above.
For example, Patent Literature 1 discloses a technique for monitoring the operation condition of a refrigeration cycle apparatus by using the Mahalanobis distance and selectively using a plurality of reference spaces (unit spaces) according to seasonal variations in a year or the like. In addition, Patent Literature 2 discloses a plant-condition-monitoring method for determining whether or not a plant operates normally even upon starting at which the operation condition differs from that under a rated load, and also even when an allowable level of performance degradation occurs due to aged deterioration of a device. In the plant-condition-monitoring method disclosed in Patent Literature 2, a unit space that is an aggregate of data in a fixed period serving as a criterion is created, the Mahalanobis distance is obtained from the unit space, and the obtained Mahalanobis distance is compared with a predetermined threshold value. Thus, it is determined whether or not the plant condition is normal.
PLT 1: JP 2005-207644 A
PLT 2: JP 2012-067757 A
In a conventional plant-abnormality-monitoring method using the Mahalanobis distance, as described above, a normal distribution (unit space) serving as a criterion is created from normal data in a fixed period, the degree of deviation from the unit space is periodically calculated by using the Mahalanobis distance, the calculated Mahalanobis distance is compared with a predetermined threshold value, and thus plant abnormality monitoring is performed.
However, the conventional plant abnormality monitoring based on the Mahalanobis distance has a problem that, even in a case where the condition of the plant changes due to maintenance or the like, when a determination is made according to the reference data (including a unit space, a predetermined threshold value, and the like) before the condition changes, there is a possibility that sensitivity of plant abnormality detection lowers, that is, normality/abnormality is erroneously detected, and it is difficult to continuously perform abnormality monitoring with high accuracy. In addition, in the conventional plant-condition-monitoring method in Patent Literature 2, reference data is periodically and automatically updated according to a fixed period in the past. In the monitoring method of performing automatic updating periodically, in a case where reference data is updated according to data obtained at a time of an abnormality, there is a possibility that sensitivity of abnormality detection lowers.
In the field of plant abnormality monitoring, a top priority is to provide an abnormality monitoring method capable of reliably detecting a change in the condition of a facility/device which is a monitoring target in a plant, appropriately updating reference data as necessary, and constantly monitoring abnormality with high accuracy.
An object of the present invention is to provide an abnormality monitoring method and a computer program for plant abnormality monitoring, capable of reliably detecting a change in the condition of a plant even in a case where the condition of the plant changes due to maintenance or the like, capable of appropriately updating reference data as necessary according to the detected change in the condition, and capable of constantly performing abnormality monitoring with high accuracy.
A plant-abnormality-monitoring method according to the present invention includes:
a step of creating a unit space serving as a criterion for determining an operation condition of a plant from reference data from a monitoring target in a reference period of the plant;
a step of collecting measurement data from the monitoring target in the operation condition of the plant;
a step of calculating a Mahalanobis distance of an aggregate of the reference data and the measurement data which is collected, according to the unit space which is created;
a step of calculating and comparing a dispersion value of the reference data in the reference period and a dispersion value of measurement data in a most recent fixed period per fixed interval for the Mahalanobis distance which is calculated; and
a step of updating the reference data when a proportion of the dispersion value of the reference data in the reference period to the dispersion value of the measurement data in the most recent fixed period exceeds a criterion value serving as a threshold value.
A computer program for plant abnormality monitoring according to the present invention includes:
a procedure of creating a unit space serving as a criterion for determining an operation condition of a plant from reference data from a monitoring target in a reference period of the plant;
a procedure of collecting measurement data from the monitoring target in the operation condition of the plant;
a procedure of calculating a Mahalanobis distance of an aggregate of the reference data and the measurement data which is collected, according to the unit space which is created;
a procedure of calculating and comparing a dispersion value of the reference data in the reference period and a dispersion value of measurement data in a most recent fixed period per fixed interval for the Mahalanobis distance which is calculated; and
a procedure of updating the reference data when a proportion of the dispersion value of the reference data in the reference period to the dispersion value of the measurement data in the most recent fixed period exceeds a criterion value serving as a threshold value.
According to the present invention, even in a case where the condition of the plant changes due to maintenance or the like, it is possible to reliably detect a change in the condition of the plant, to appropriately update reference data as necessary according to the detected change in the condition, and to constantly perform plant abnormality monitoring with high accuracy.
Hereinafter, an embodiment of the present invention will be described in detail with reference to the drawings. Note that before describing the embodiment of the present invention in detail with reference to the drawings, various aspects of the present invention will be described.
A plant-abnormality-monitoring method according a first aspect of the present invention includes:
a step of creating a unit space serving as a criterion for determining an operation condition of a plant from reference data from a monitoring target in a reference period of the plant;
a step of collecting measurement data from the monitoring target in an operation condition of the plant;
a step of calculating a Mahalanobis distance of an aggregate of the reference data and the measurement data which is collected, according to the unit space which is created;
a step of calculating and comparing a dispersion value of the reference data in the reference period and a dispersion value of measurement data in a most recent fixed period per fixed interval for the Mahalanobis distance which is calculated; and
a step of updating the reference data when a proportion of the dispersion value of the reference data in the reference period to the dispersion value of the measurement data in the most recent fixed period exceeds a criterion value serving as a threshold value.
According to the plant-abnormality-monitoring method according the first aspect of the present invention as described above, even in a case where the condition of the plant changes due to maintenance or the like, it is possible to reliably detect a change in the condition, to appropriately update the reference data, and to constantly perform plant abnormality monitoring with high accuracy.
In a plant-abnormality-monitoring method according a second aspect of the present invention, in the step of calculating and comparing the dispersion value of the reference data and the dispersion value of the measurement data per fixed interval, according to the first aspect, after the reference data and the measurement data are subjected to a low-frequency-component removal process, a dispersion value of the reference data which is subjected to the low-frequency-component removal process and a measurement data which is subjected to the low-frequency-component removal process are calculated and compared per fixed interval.
In the plant-abnormality-monitoring method according to the second aspect as described above, it is not erroneously determined that the dispersion value has increased at a time of an abnormal trend, and therefore it is possible to prevent an unfavorable process for updating the reference data from being executed.
In a plant-abnormality-monitoring method according to a third aspect of the present invention, the first aspect or the second aspect further includes:
a step of calculating a difference value between Mahalanobis distances at a fixed interval in a Mahalanobis distance group in a fixed period when a Mahalanobis distance which is calculated exceeds a reference value serving as a threshold value, the Mahalanobis distance group including the Mahalanobis distance exceeding the reference value; and
a step of notifying that necessity of a process for updating the reference data is high when the difference value calculated exceeds a set value serving as a threshold value.
In the plant-abnormality-monitoring method according to the third aspect, even in a case where the condition of the plant changes due to maintenance or the like, it is possible to detect the change in the condition by using the difference value, and to notify that necessity of the process for updating the reference data is high according to the detected change in the condition, and to constantly perform plant abnormality monitoring with high accuracy.
A computer program for plant abnormality monitoring according to a fourth aspect the present invention includes:
a procedure of creating a unit space serving as a criterion for determining an operation condition of a plant from reference data from a monitoring target in a reference period of the plant;
a procedure of collecting measurement data from the monitoring target in the operation condition of the plant;
a procedure of calculating a Mahalanobis distance of an aggregate of the reference data and the measurement data which is collected, according to the unit space which is created;
a procedure of calculating and comparing a dispersion value of the reference data in the reference period and a dispersion value of measurement data in a most recent fixed period per fixed interval for the Mahalanobis distance which is calculated; and
a procedure of updating the reference data when a proportion of the dispersion value of the reference data in the reference period to the dispersion value of the measurement data in the most recent fixed period exceeds a criterion value serving as a threshold value.
By using the computer program for plant abnormality monitoring according to the fourth aspect as described above, even in a case where the condition of the plant changes due to maintenance or the like, it is possible to reliably detect the change in the condition, to appropriately update the reference data, and to constantly perform plant abnormality monitoring with high accuracy.
In a computer program for plant abnormality monitoring according a fifth aspect of the present invention, in the procedure of calculating and comparing the dispersion value of the reference data and the dispersion value of the measurement data per fixed interval, according to the fourth aspect, after the reference data and the measurement data are subjected to a low-frequency component removal process, a dispersion value of the reference data which is subjected to the low-frequency-component removal process and a dispersion value of the measurement data which is subjected to the low-frequency-component removal process are calculated and compared per fixed interval.
By using the computer program for plant abnormality monitoring according to the fifth aspect as described above, it is not erroneously determined that the dispersion value has increased at a time of an abnormal trend, and therefore it is possible to prevent an unfavorable process for updating the reference data from being executed.
A computer program for plant abnormality monitoring according a sixth aspect of the present invention includes:
a procedure of calculating a difference value between Mahalanobis distances at a fixed interval in a Mahalanobis distance group in a fixed period when the Mahalanobis distance which is calculated according to the fourth or fifth aspect exceeds a reference value serving as a threshold value, the Mahalanobis distance group including the Mahalanobis distance exceeding the reference value; and
a procedure of notifying that necessity of a process for updating the reference data is high when the difference value calculated exceeds a set value serving as a threshold value.
By using the computer program for plant abnormality monitoring according to the sixth aspect as described above, even in a case where the condition of the plant changes due to maintenance or the like, it is possible to detect the change in the condition by using the difference value, to notify that necessity of the process for updating the reference data is high according to the detected change in the condition, and to constantly perform plant abnormality monitoring with high accuracy.
In the following embodiment, an abnormality monitoring method and the like for a power plant using an industrial gas turbine will be described. However, the present invention is not limited to a gas turbine power plant, and can be applied to various plants such as an energy plant including another power plant, a manufacturing plant, a chemical plant, and the like. Note that the embodiment described below represents one example of the present invention. The numerical values, shapes, configurations, steps, order of steps, and the like described in the following embodiment are examples only and do not limit the present invention. Among the constituents in the following embodiment, a constituent not described in an independent claim representing the most generic concept is described as an optional constituent.
Hereinafter, a plant abnormality monitoring apparatus and an abnormality monitoring method for the plant abnormality monitoring apparatus according to a first embodiment of the present invention will be described with reference to the drawings. The plant abnormality monitoring apparatus and the abnormality monitoring method for the plant abnormality monitoring apparatus based on the Mahalanobis distance according to the first embodiment are examples applied to a power plant using an industrial gas turbine.
The abnormality monitoring apparatus 10 according to the first embodiment continuously monitors behavior of the gas turbine power plant 1 in operation. To the abnormality monitoring apparatus 10, various pieces of measurement data from each facility/device which is a monitoring target in the gas turbine power plant 1 is sequentially transmitted as state quantities. For example, various pieces of measurement data such as the position, temperature, pressure, and vibration in each facility/device of the gas turbine are input to the abnormality monitoring apparatus 10 as state quantities of each factor.
For example, the abnormality monitoring apparatus 10 has a configuration in which a plurality of state quantities from the respective devices of the gas turbine are input to a control unit 2 and are processed by the abnormality monitoring method to be described later, and an abnormal condition in the gas turbine power plant 1 is detected. The control unit 2 is, a computer system configured of, for example, a microprocessor, a ROM, a RAM, a hard disk unit, a display unit, a keyboard, a mouse, and the like. The RAM or the hard disk unit stores a computer program for the abnormality monitoring method according to the present embodiment.
In addition, the abnormality monitoring apparatus 10 includes a memory unit 5 which stores various pieces of data, a display unit 4 capable of displaying various pieces of data, and an operation unit 3 which enables a user to issue various commands to the control unit 2 or the like. The operation unit 3 includes an input means for inputting various commands. The display unit 4 is configured to be able to display various input commands.
Next, the abnormality monitoring method using the abnormality monitoring apparatus 10 according to the first embodiment configured as described above will be described. In the abnormality monitoring apparatus 10, a Mahalanobis unit space is created according to state quantities obtained from data (reference data) in the respective facilities/devices during a normal operation of the gas turbine power plant 1. This unit space is an aggregate of data serving as a criterion for determining whether or not the operation condition of the gas turbine power plant 1 is a normal operation. Examples of the state quantities in the gas turbine power plant 1 include many state quantities regarding various devices, such as temperature, pressure, vibration, and rotation speed of each unit in the gas turbine, examples of which include intake air temperature of the compressor 7, output of the generator 9, and vibration of a main shaft serving as an output shaft of the gas turbine.
In the plant-abnormality-monitoring method based on the Mahalanobis distance, a normal space (unit space) is created from the reference data, and the Mahalanobis distance is calculated as an indicator of the degree of deviation of the most recent measurement data for the unit space. As the calculated Mahalanobis distance is greater, it is determined that the degree of abnormality of the facilities of the gas turbine power plant which are monitoring targets is high.
However, the method for monitoring the abnormality of the facilities using the Mahalanobis distance from the unit space created from the reference data as described above has the following problem.
For example, in a case where some of the facilities are repaired or replaced due to maintenance or the like of the plant and the plant condition changes, if the unit space created from the reference data is used as it is as a target for the Mahalanobis distance, there is a possibility that a serious problem will occur such as detecting abnormality of the facilities/devices which are monitoring targets even though the facilities/devices are normal, or in contrast, not recognizing abnormality even if there is an abnormality in the facilities/devices.
Measurement data (signal value) represented by the upper graph in (a) of
The cause of lowering sensitivity of abnormality detection as described above is as follows. In a case where dispersion of the measurement data changes due to maintenance or the like and fluctuation of the data becomes small, if the reference data obtained before the dispersion change is kept used, the unit space is excessively enlarged with respect to a normal condition after the dispersion has changed. As a result, a serious problem that sensitivity of abnormality detection lowers occurs.
In (b) of
In the abnormality monitoring method using the abnormality monitoring apparatus 10 according to the first embodiment of the present invention, it is possible to solve the problem illustrated in (a) of
In the abnormality monitoring method using the abnormality monitoring apparatus 10 according to the first embodiment of the present invention, the dispersion value of the reference data is compared with the dispersion value obtained from the measurement data in the most recent fixed period, and the reference data is updated according to the result of comparison.
In addition, in the abnormality monitoring method using the abnormality monitoring apparatus 10 according to the first embodiment of the present invention, when the Mahalanobis distance which is calculated from the measurement data increases, an increasing trend of the Mahalanobis distance is determined according to the magnitudes of the difference values calculated at a fixed interval (fixed width) for a Mahalanobis distance group in a fixed period, and the reference data is updated according to the result.
Hereinafter, in the abnormality monitoring method, an updating method for determining whether or not to update the reference data as described above will be described. In the case of determining whether nor not to update the reference data, when the measurement data in a predetermined determination period increases, it may be erroneously recognized that the dispersion value of the measurement data in the determination period increases.
In order to prevent unfavorable update of the reference data as described above, in the present embodiment, the measurement data is subjected to a high-pass filter (HPF) process for removing low-frequency components in advance.
As described above, when the measurement data (detection signal: state quantities) greatly changes due to a change in the condition of the facilities/devices in the plant, the Mahalanobis distance with respect to the unit space increases. For example, when some of the facilities/devices are changed due to maintenance or the like and the condition changes significantly, the Mahalanobis distance changes suddenly. As described, when an increase in the Mahalanobis distance is not due to a facility abnormality in the plant, it is necessary to set reference data for newly defining a normal unit space after the condition change and to calculate the Mahalanobis distance according to the normal unit space. In contrast, when the Mahalanobis distance increases due to a facility abnormality in the plant, it is necessary to notify the user of the facility abnormality as soon as possible.
In Pattern 1 illustrated in (a) of
In three Patterns 1, 2 and 3 illustrated in
Note that the extraction period C may be a fixed period from a time point when the moving average value per unit time of the Mahalanobis distance exceeds the threshold value to a time point going back by a predetermined period from the above time point. Alternatively, the extraction period C may be a fixed period from a time point after a fixed period has passed from a time point when the Mahalanobis distance exceeds the threshold value to a time point going back by a predetermined period from the time point after the fixed period has passed.
As illustrated in (b) of
As illustrated in the flow of
In contrast, in each of the cases of Patterns 2 and 3 illustrated in (b) and (c) of
Hereinafter, a method for determining whether or not a reference data update process is necessary in the abnormality monitoring method according to the first embodiment will be described more specifically.
In step S102, it is determined whether or not the Mahalanobis distance exceeds the threshold value (reference value F). In a case where the Mahalanobis distance exceeds the reference value F, difference values di (i=1, 2, 3, . . . , n) are calculated, each of the difference values di being a value between the Mahalanobis distances (MD values) at a fixed interval in the Mahalanobis distance group in the extraction period C from a time point when the Mahalanobis distance exceeds the reference value F to a time point going back by a fixed period from the above time point. The maximal difference value dmax among the difference values di is extracted. In step S103, it is determined whether or not the extracted maximal difference value dmax exceeds a set value G serving as a threshold value (maximal difference value dmax>set value G). In a case where the maximal difference value dmax exceeds the set value G, the likelihood that the reference data update process is necessary is high. Therefore, the display unit 4 displays the determination result as to whether or not the reference data update is necessary (S104).
In contrast, in a case where the maximal difference value dmax does not exceed the set value G in step S103, there is no need to update the reference data. Therefore, abnormality monitoring for the respective facilities/devices is continuously performed by using the Mahalanobis distance based on the unit space created from the reference data as it is. Abnormality monitoring is performed according to the calculated Mahalanobis distance (S101).
In a case where the Mahalanobis distance does not exceed the reference value F in step S102, the process proceeds to step S105. In step S105, the reference data and the most recent measurement data are subjected to a low-frequency-component removal process (HPF process). By performing the HPF process in this manner, an unnecessary reference data update process caused by false recognition that the dispersion value between the Mahalanobis distances has increased is excluded as described above.
In step S106, the Mahalanobis distance (MD value) is calculated again for target data subjected to the HPF process, and a dispersion value V1 of the Mahalanobis distance of reference data in the reference period A and a dispersion value V2 of the Mahalanobis distance of the most recent measurement data in the determination period B which arrives per fixed interval are calculated. As a result, in a case where the dispersion value V2 of the Mahalanobis distance in the determination period B is smaller than the dispersion value V1 of the Mahalanobis distance of the reference data and a proportion of the dispersion value V1 to the dispersion value V2 (V1/V2) is larger than a criterion value H set in advance, that is, in a case where V1>V2 and (V1/V2)>the criterion value H, it is determined that a change in dispersion in the Mahalanobis distance calculated in step S101 is large.
As described above, when it is determined that a change in dispersion in the Mahalanobis distance is large in step S106, the reference data update process is performed in step S107. Note that in step 107, the reference data update process may be automatically performed; however, a configuration of notifying a user that the reference data update process is necessary may be adopted. In the case of performing the reference data update process, the reference data may be updated by using the determination period B as a new reference period. Alternatively, a reference period when the plant is normal may be set again and data obtained in the reference period may be used as the reference data to perform the update process. Then, in the abnormality monitoring method in which the reference data update process described above has been performed, abnormality monitoring for the power plant is continued, a unit space is created according to the updated reference data, and the Mahalanobis distance is calculated from the unit space.
In contrast, when it is determined in step S106 that a change in dispersion in the Mahalanobis distance is not large, the reference data is maintained as it is and the Mahalanobis distance is continuously calculated from the former unit space (S101).
Hereinafter, a specific description will be given of a method for determining whether or not the Mahalanobis distance increases and a method for determining a difference value of the Mahalanobis distances in steps S102 to S104 of the flowchart illustrated in
Difference values di (i=1, . . . , n) between the Mahalanobis distances at a fixed interval (fixed width) among a plurality of Mahalanobis distances of the extracted Mahalanobis distance group are calculated. The maximal difference value dmax is extracted from among the calculated difference values di. It is determined whether or not the extracted maximal difference value dmax exceeds the set value G set in advance (see (c) of
Next, in the flowchart illustrated in
As illustrated in (a) of
Next, as illustrated (b) of
A test statistic (V1/V2, V1>V2) is calculated by using the calculated dispersion values and is compared with the predetermined criterion value H (see (c) of
As described above, in a case where the calculated test statistic is larger than the predetermined criterion value H, a unit space based on the reference data which is the measurement data in the determination period B is automatically updated (see (d) of
As described above, in the abnormality monitoring method and the computer program for plant abnormality monitoring according to the first embodiment, a unit space is created from appropriate data (reference data) in a fixed period (reference period A), the unit space serving as a criterion when the Mahalanobis distance is calculated, or when it is determined whether or not the operation condition of the plant is normal according to the calculated Mahalanobis distance. In addition, it is possible to perform plant abnormality monitoring with high accuracy based on the Mahalanobis distance group of the measurement data in the determination period B, including the most recent measurement data and going back by a fixed period in order to evaluate the operation condition of the plant.
As described above with reference to the first embodiment, in the present invention, by using the abnormality monitoring method and the computer program for plant abnormality monitoring, it is possible to reliably detect a change in the condition of a plant even in a case where the condition of the plant changes due to maintenance or the like, to appropriately update reference data as necessary according to the detected change in the condition, and to constantly perform abnormality monitoring with high accuracy.
Note that the present invention is not limited to the configuration of the above-described first embodiment, and can be implemented in various other aspects. For example, in the above-described first embodiment, the abnormality monitoring method performs the process of comparing the dispersion value of the reference data and the dispersion value calculated from the measurement data in the most recent fixed period and updating the reference data according to the result of the comparison (steps S106 to S107), and the process of determining an increase trend of the Mahalanobis distance by comparing the difference values calculated at the fixed interval in the Mahalanobis distance group in the fixed period when the Mahalanobis distance increases, and updating the reference data according to the result (steps S102 to S104). However, in the present invention, an abnormality monitoring method including either one of the processes can improve the accuracy of abnormality monitoring, and this method is included in the present invention.
In addition, in the first embodiment, a configuration has been described where after the reference data and the most recent measurement data are subjected to the low-frequency-component removal process (step S105: HPF process), the process for comparing the dispersion values is performed (step S106). However, in the present invention, a configuration is possible where a process for comparing dispersion values is performed without performing a HPF process. In such a configuration, in step S107, in lieu of the reference-data update process which is performed automatically, a process of notifying a user that necessity of reference-data update process is high may be adopted.
In addition, part or entirety of the abnormality monitoring apparatus according to the present invention is a computer system specifically configured of a microprocessor, a ROM, a RAM, a hard disk unit, a display unit, a keyboard, a mouse, and the like. A computer program is stored in the RAM or the hard disk unit. Each of a control unit, an operation unit, a display unit, a memory unit, and the like achieves its function by the microprocessor operating according to the computer program. Here, the computer program is configured by combining a plurality of instruction codes indicating commands to a computer in order to achieve a predetermined function.
The abnormality monitoring method according to the present invention is applicable to various plants, and is an effective method capable of performing highly accurate abnormality monitoring on the plant to which the method is applied, and capable of continuously maintaining reliability of the plant at a high level.
Number | Date | Country | Kind |
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2015-256477 | Dec 2015 | JP | national |
Filing Document | Filing Date | Country | Kind |
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PCT/JP2016/088967 | 12/27/2016 | WO | 00 |