1. Field of the Invention
The present invention relates to an operation support system for plant accidents.
2. Description of the Related Art
In various plants including nuclear power plants, thermal power plants, and chemical plants, when abnormalities and accidents occur, it is necessary for operators to promptly grasp the states of the plants and take appropriate responses. As support for operators when abnormalities and accidents occur, Patent Document 1 (JP-A-7-181292) discloses a state estimation apparatus that can estimate process states of a plant.
In Patent Document 1, a plurality of device model formulae are provided, observation signals as sensor signals are input to the device model formulae, and output signals corresponding to the input/output characteristics of the device model formulae are output as process states of the plant. The device models are prepared in advance and, for example, if an object device of the prepared device model breaks down, it is impossible to output an output signal reflecting the failure of the device. As a result, there is a problem that it becomes impossible to output a change in process of the plant in response to the plant state. Further, even when a device model assuming the failure of the device is prepared, if no means for determining the failure of the device is provided, it is impossible to determine what kind of failure occurs, and there is a problem that it is impossible to estimate the plant state reflecting the device state of the plant.
The invention has been achieved in view of the above described problems, and an object of the invention is to provide an operation support system for plant accidents that estimates events reflecting plant states changing momentarily at plant accidents.
An operation support system for plant accidents according to the invention includes an event narrow-down device that narrows down occurring event candidates based on at least one of a sensor signal, a device state signal, and an alarm signal and a discriminant rule, an event analysis device that analyzes a plant behavior based on a plurality of event narrow-down results as output of the event narrow-down device, the sensor signal, the device state signal, and the alarm signal, and an event estimation device that estimates an occurring event by comparing an analysis result from an analysis of a process state as output of the event analysis device and the sensor signal, wherein the event estimation device outputs the analysis result of the process state and the sensor signal corresponding to the occurring event as an event estimation result.
According to the invention, an operation support system for plant accidents that estimates events reflecting plant states changing momentarily at plant accidents may be provided.
The invention relates to an operation support system for plant accidents and an operation support method for plant accidents that support operation of a plant at accidents by identification of plant states including sensors at accidents. As below, the respective examples will be explained.
As below, the example will be explained with reference to the drawings.
Sensor signals 201 are process signals of a temperature, pressure, a water level, a flow rate, or the like of the plant, and 204 denotes device state signals and alarm signals. These signals are generated by an alarm processing system, a controller, and a process calculator (not shown). The device state signal is a state signal of start/stop, open/close of a pump, a valve, or the like which is a device of the plant. The sensor signals 201 are taken in a sensor integrity diagnostic device 202, and abnormal sensor signals are removed and normal signals 203 are taken in an event narrow-down device 205. Regarding the redundant sensors in terms of hardware, the signal of the sensor outputting the abnormal value by majority decision of the output signals is excluded by the sensor integrity diagnostic device 202. Further, regarding the analytically redundant sensors (e.g., a plurality of correlated sensors), the signal of the sensor deviated from the correlation is excluded by the sensor integrity diagnostic device 202. Information representing the abnormal sensor is separately output from the sensor integrity diagnostic device 202. The normal sensor signals 203 are used not only in the event narrow-down device 205 but also in an event analysis device 208 and an event estimation device 210. 20 denotes an operation support system for plant accidents.
A rule DB (database) 206 stores discriminant rules for various events. The event narrow-down device 205 narrows down occurring event candidates from the discriminant rules for various events, the normal sensor signals 203, the device state signals, and the alarm signals 204 which are input to the event narrow-down device. When the event candidates are narrowed down, at least one of the sensor signals 203, the device state signals, and the alarm signals 204 may be used. In the narrow-down of the event candidates, a naive Bayes classifier may be used for event narrow-down using alarm information and a DP matching (dynamic programming) for event narrow-down by comparison with reference values using sensor information may be used.
For example,
Further, in the above described example, with respect to the occurring event “HPCF pipe rupture”, as the narrowed down events, the estimation probability of HPCF pipe rupture is higher than those of the other narrowed down events. However, it is conceivable that, with respect to other occurring events, the estimation probabilities of the narrowed down events may not largely different. In this case, if the events are narrowed down only to the event indicating the highest estimation probability, the event narrow-down may be wrong. Accordingly, a plurality of event narrow-down results 207 (pluralities of occurring events narrowed down, sensor signals, alarm signals, device state signals) are output from the event narrow-down device 205. As a result, an event with coincidence between an analysis result of an analysis of the plant state, which will be described later, and the sensor signal may be extracted from a plurality of event candidates, and the accuracy of the event estimation is improved. Further, by narrow-down of a plurality of events, in the case where a complex event (e.g., main steam isolation valve rupture and HPCF pump inoperative) occurs, the estimation probability may fluctuate due to deviation of occurrence times, and there is an advantage that the extraction accuracy is improved in event narrow-down of complex events.
The plurality of event narrow-down results, the sensor signals, the alarm signals, the device state signals as the output signals from the event narrow-down device 205 are input, and the event analysis device 208 analyzes a behavior of the plant. The sensor signals, the alarm signals, the device state signals are provided as boundary conditions of the plant behavior analysis. Models for analyzing the plant behavior include e.g., core analysis models (a nuclear dynamic characteristic model, a fuel behavior analysis model, a thermal hydraulic model), a turbine condensate system model, a feed-water system model, safety system models (a high-pressure core cooling system model, a low-pressure flooder system model, an isolation cooling system model, a residual heat removal system model, an auto-depressurization system model), a measurement system model, etc. Particularly, the safety system model has an automatic start condition of a device of the safety system and, when the sensor signal indicating the process state exceeds the automatic start condition, starts at least the device model of the safety system and analyzes the plant behavior in a predetermined time range. Therefore, the process state including the operation of the safety system at accidents may be estimated. As a result, the event analysis device 208 may analyze the plant behavior and estimate the process state in the predetermined time range with respect to each of the plurality of events narrowed down by the event narrow-down device 205, and outputs the results as analysis results associated with the narrowed-down events. 209a denotes an analysis result 1, 209b denotes an analysis result 2, and 209c denotes an analysis result 3. The analysis results associated with the plurality of events are output to the event estimation device 210.
The event estimation device 210 compares the analysis results associated with the plurality of events (process states) and the sensor signals 203, and an occurring event with coincidence between them is output with the sensor signal 203 and the analysis result 209 as an event estimation result 211. For comparison, it is preferable to synchronize the times of the analysis result associated with each event and the sensor signal, however, there is no guarantee that the event analysis device 208 executes the calculation at the same speed as actual time. When the time of the sensor signal and the time lapse of the analysis result are different, the event narrow-down result is output, in synchronization with the time to start event analysis by the event analysis device 208, regarding both signals having temporal differences as shown in
In the example, the plant states are narrowed down based on at least one of the sensor signal, the alarm signal, and the device state signal, with at least the event narrow-down result as the initial condition of the plant behavior analysis, the process state of the plant is estimated with respect to the narrowed down event candidates, the analysis result and the sensor signal of the plant are compared, and the event candidate with coincidence or the highest similarity is output as the occurring event, and thereby, there is an advantage that the event may be estimated in reflection of the state of the plant changing momentarily.
Further, in the example, the event analysis device has the automatic start condition of the safety system and, when the sensor signal indicating the process state exceeds the automatic start condition, starts at least the safety system model and analyzes the plant behavior, and thereby, the process state reflecting the operation status of the safety system that operates at accidents may be estimated, and the estimation accuracy is further improved.
The analysis result DB (database) 230 is a massive event database in which change patterns of a plurality of processes (corresponding to sensor signals) and events occurring within the plant are associated. The massive event database is created by generating an enormous number of abnormalities and device operations using a plant simulator in advance, for example. The analysis results (process states) associated with each of the events are input from the event analysis device 208, the event estimation device 210 compares the results and the analysis results 231, and outputs an occurring event with coincidence of them together with the sensor signal 203 and the analysis result 209 as an event estimation result 211. The comparison between the signals is the same processing as that of the event estimation device 210 shown in
In the example, the plant states are narrowed down based on at least one of the sensor signal, the alarm signal, and the device state signal, with at least the event narrow-down result as the initial condition of the plant behavior analysis, the process state of the plant is estimated with respect to the narrowed down event candidates, the analysis result and the massive event data in which change patterns of the processes (corresponding to the sensor signals) and the events occurring within the plant are compared, and thereby, the detailed event estimation result in consideration of the rupture size of the pipe may be output with the sensor signal.
When the device operation command signal 214 is input through the operation by the operator or the technical supporter, in the device start commanding device 213, the start condition of an object device designated by the device operation command signal 214 is input to the model for the analysis of the plant behavior within the second event analysis device 212. The event estimation result 211, the alarm signal, the device state signal 204 are input, and the second event analysis device 212 analyzes the plant behavior. The alarm signal, the device state signal are provided as boundary conditions of the plant behavior analysis. That is, how the plant state turns out when a certain device is started after the event is estimated is calculated. For confirmation of the effect by starting the device, an analysis when the device is not started is performed.
In the example, the progresses of the plant state (process state) when the device is operated and not operated may be predicted with respect to the event estimation result, and whether or not the plant is brought to be safer by the device operation may be predicted. In the example of
The analysis result DB (database) 230 is a massive event database in which change patterns of a plurality of processes (corresponding to sensor signals) and events occurring within the plant are associated. The massive event database is created by generating an enormous number of abnormalities and device operations using a plant simulator in advance, for example. The analysis results (process states) associated with each of the events are input from the first event analysis device 208, the event estimation device 210 compares the results and the analysis results 231, and outputs an occurring event with coincidence of them as an event estimation result 211. The comparison between the signals is the same processing as that of the event estimation device 210 shown in
When the device operation command signal 214 is input through the operation by the operator or the technical supporter, the device start commanding device 213 inputs the start condition of an object device designated by the device operation command signal 214 to the model for the analysis of the plant behavior within the second event analysis device 212. The more detailed event estimation result 211, sensor signal 203, alarm signal, device state signal 204 are input, and the second event analysis device 212 analyzes the plant behavior. The sensor signal, the alarm signal, the device state signal are provided as boundary conditions of the plant behavior analysis. That is, how the plant state turns out when a certain device is started after the detailed event is estimated is calculated. For confirmation of the effect by starting the device, an analysis when the device is not started is performed. The second event estimation device 212 can output a progress prediction result (progress prediction result after device operation) and the sensor signal 203 (process state) to a display device (not shown). As a result, there is an advantage that coincidence of the behavior (process state) of the real plant with the progress prediction result may be confirmed by comparison on the display device.
In the example, the progresses of the plant state (process state) when the device is operated and not operated may be predicted with respect to the detailed estimation result, and the operator or the technical supporter may determine whether or not to bring the plant to be safer by the device operation.
Note that the invention is not limited to the above described examples, but includes various modified examples. For example, the above described examples are explained in detail for clear explanation, and the invention is not necessarily limited to an embodiment having all of the explained configurations.
According to the invention, an event may be estimated in reflection of a plant state changing momentarily at a plant accident and a plant state (process state) with or without device operation may be further predicted with respect to the estimated event, and thus, the industrial value is extremely high.
Number | Date | Country | Kind |
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2014-054298 | Mar 2014 | JP | national |