The current invention relates in general to industrial plants/process plants and more particularly for production accounting using artificial intelligence in process plants.
Generally, material stock validation/production accounting in process plants involves validating the actual stock with the one recorded in the system. Measurements from sensors associated with the process equipment are used to record the stock present in the process equipment. In practice, it is observed that there exist deviations between the recorded stocks and actual stocks. The issues with stock validation are mainly attributed to calibration issues in the sensors, leakage in the process equipment's, malfunctioning of the sensors, drifts in sensor measurement, and the like. It is important to have a system to identify and predict the faults in real time. Thus, improving the manufacturing productivity.
The existing solutions which are used to detect faults involve standard data reconciliation and gross error detection techniques. These techniques consider the spatial redundancy for example mass and energy balance of materials in the process equipment's for detecting faults.
The gross error detection techniques are based on historical data. Any slow drifting in the measuring instruments may be ignored and averaged due to the statistical nature of the algorithms.
Further, if the gross errors are truly outliers and not a reflection of leaks or instrument bias, they might get averaged with good measurements if not detected by statistical techniques (which are subject to error due to probabilistic nature). Also, some good measurements can be wrongly identified as gross errors, and as a consequence, precision of reconciled data is affected.
Further, if averaged measurements containing gross errors are not eliminated and are used in the reconciliation, the fault detections are missed.
An issue with the existing solution is that probability of multiple faults in the measuring instruments and process equipment might not be detected due to the statistical nature of the algorithms.
In view of the above, there is a need to address at least one of the abovementioned limitations and propose a method and system to overcome the abovementioned problems.
In an embodiment the present invention relates to a method and a system for detecting faults in a plurality of measuring instruments and process equipment in a process plant. In an embodiment, the plurality of measuring instruments is configured to monitor one or more parameters associated with a process. In an embodiment, a plurality of measured signals is generated based on the monitoring. In an embodiment, the process control system is configured to receive the plurality of measured signals from the plurality of measuring instruments. Further, the process control system is configured to extract noise present in the plurality of measured signals. Furthermore, the process control system configured to correlate the extracted noise from the plurality of measured signals with noise extracted from a plurality of reference signals. The plurality of reference signals is obtained in absence of faults in the plurality of measuring instruments. Thereafter, the process control system is configured to identifying deviations in the one or more parameters. Finally, the process control system is configured to detect faults in at least one of the plurality of measuring instruments and the process equipment using at least one of the correlated noises and the identified deviations of the one or more parameters. The detected faults are rectified for controlling the process in the process plant.
In an embodiment, the process control system correlates the plurality of extracted noise with the plurality of reference noise includes using one or more Artificial Intelligence (AI) based data analysis techniques.
In an embodiment, the identifying deviations include correlating the one or more parameters with a predefined threshold range to determine deviations in the one or more parameters. Further, the one or more parameters comprises at least one of a mass of a material, energy of the material and a rate of flow of the material.
In an embodiment, the detection of the faults includes identifying at least one of a sensor malfunctioning, a sensor drift, a sensor calibration issue, a leakage of materials in the process equipment in the process plant.
In an embodiment, the detected faults are validated by an operator and the validated faults are used in subsequent fault detections.
Systems of varying scope are described herein. In addition to the aspects and advantages described in this summary, further aspects and advantages will become apparent by reference to the drawings and with reference to the detailed description that follows.
The subject matter of the invention will be explained in more detail in the following text with reference to preferred exemplary embodiments which are illustrated in the drawings, in which:
The present invention discloses a method and a system for production accounting in process industries using artificial intelligence.
In an embodiment a tank (101A) in a process plant contains an inlet for receiving one or more materials from one or more tanks (101). The tank (101A) in a process plant contains an outlet for pumping the materials stored in the tank (101A) to one or more tanks (101) in a process plant. Further, the measuring instruments (102) for measuring the one or more signals may be associated with the process equipment for example inside the process equipment, beneath the process equipment or on the outer surface of the process equipment.
In an embodiment, the aggregated signals received from the summing unit (103) is used to extract the one or more parameters of the process. Further, the extracted one or more parameters may be used by the operator to perform data reconciliation and detect faults in the measuring instruments (102) and the process equipment using a process control system.
In an embodiment, the process control system may receive a plurality of measured signals from a one or more measuring instruments associated with the process equipment's of a process plant. Further, the process control system extracts the noise present in the plurality of measured signals. Furthermore, the process control system correlates the extracted noise with a plurality of noise extracted from the reference signals. The reference signals are recorded and stored in the process control system in the absence of faults. Thereafter, deviations are identified the one or more parameters associated with the process. Finally, the identified deviations and the correlated noise is used for detecting faults in the measuring instruments and the process equipment of the process plant.
At the step 302, the process control system extracts a noise present in the plurality of the measured signals. The noise extraction is done through the standard signal processing techniques.
At the step 303, the extracted noise is correlated with a noise from a plurality of reference signals. Further, the correlation of the plurality of extracted noise with the plurality of noise from a reference signal is achieved using one or more Artificial Intelligence (AI) based data analysis techniques for example Time Series Analysis. The plurality of reference signals is obtained and stored in the process control system in the absence of faults in the process plant. The plurality of reference signals is stored based on the manual validation done by the operator. An example is detailed in the
In an embodiment, the periodic measurement of the plurality of measured signals from the one or more measuring instruments (102) possesses an inherent autocorrelation. Autocorrelation indicates a similarity between the plurality of measured signals with a delayed plurality of measured signals. Any fault associated with one or more measuring instruments (102) or the process equipment reflects in the noise associated with the corresponding measurements. Therefore, the autocorrelation in the noise of the plurality of measured signals change or gets affected. Further, identifying such a change in the correlation of the noise in the plurality of the measured signals is used to validate the fault in the process equipment or the one or more measuring instruments (102).
At the step 304, the process control system identifies deviations in the one or more parameters. The process plants generally use a closed loop control system for maintaining the desired quality or yield of the product. In a closed loop control system, there exists a definite correlation between a fault in certain measured signal and its impact on other one or more parameters associated with a process of the process plant. An example is detailed in
In an embodiment, identifying deviations in the one or more parameters includes correlating the one or more parameters with a predefined threshold range. The threshold range for a process equipment may indicate a maximum and minimum quantity of the materials stored in the process equipment or a maximum and minimum quantity of the material flow from one process equipment to another. The predefined threshold range may vary from one process equipment to another and from one process plant to another. The one or more parameters may include at least one of a mass of a material, energy of the material and a rate of flow of the material.
Further in an embodiment, an Artificial Intelligence (AI) based data analysis techniques for example Time Series Analysis may be used for identifying deviations in the one or more parameters of the process plant.
At the step 305, the process control system detects the faults in the measuring instruments (102) or the process equipment using the one or more correlated noises at the step 303 and the identified deviations at the step 304. The process control system may detect the faults using the standard statistical techniques for example Kalman filtering and principal component analysis used for detecting an outlier.
In an embodiment, the faults detected by the process control system is validated by the operator. The operator based on the faults detected by the process control system may manually verify or validate the fault in the process plant and the validation is updated to the process control system. Based on the validations updated by the operator the process control system may increase the probability of fault detection by incorporating a suitable learning for the AI technique used at the step 303 and step 304.
This written description uses examples to describe the subject matter herein, including the best mode, and also to enable any person skilled in the art to make and use the subject matter. The patentable scope of the subject matter is defined by the claims, and may include other examples that occur to those skilled in the art. Such other examples are intended to be within the scope of the claims if they have structural elements that do not differ from the literal language of the claims, or if they include equivalent structural elements with insubstantial differences from the literal language of the claims.
Number | Date | Country | Kind |
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201941016370 | Apr 2019 | IN | national |
Filing Document | Filing Date | Country | Kind |
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PCT/IB2020/053715 | 4/20/2020 | WO | 00 |