CN105203150B - A kind of chemical plant installations instrumented data exception point-type lapse error detection method - Google Patents
A kind of chemical plant installations instrumented data exception point-type lapse error detection method Download PDFInfo
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- CN105203150B CN105203150B CN201510579123.XA CN201510579123A CN105203150B CN 105203150 B CN105203150 B CN 105203150B CN 201510579123 A CN201510579123 A CN 201510579123A CN 105203150 B CN105203150 B CN 105203150B
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- A kind of 1. chemical plant installations instrumented data exception point-type lapse error detection method, it is characterised in that including:Step 1:Collection sample data, one server of configuration in the control room of chemical enterprise, server and process units Live database server is connected, and live database server gathers the data of the instrument from production scene, is adopted every one Real time data of sample periodic recording, continuously collects the data in multiple sampling periods, then forms sample data, the sample data Input as abnormal point-type lapse error detection method;Step 2:Choose suitable wavelet transform function, including Haar small echos, dbN wavelet systems, symN wavelet systems, Morlet small echos And Meyer small echos;Step 3:Sample different frequency scale resolution and wavelet transformation is carried out to sample data, the small echo obtained under different scale becomes Change coefficient, the different local circumstances in reflected sample data time domain;Step 4:Wavelet conversion coefficient under each yardstick is analyzed, radio-frequency component corresponds to the fast change composition in time domain;Step 5:To the wavelet conversion coefficient application box figure method of each yardstick obtained under wavelet transformation, wavelet conversion coefficient conduct Input data, calculate five statistics of input data, i.e. data minimum value, maximum, median, first quartile Q1And 3rd quartile Q2, wherein first quartile Q1It is the median of the data between minimum value and median, the 3rd quartile Number Q2It is the median of data between maximum and median;Step 6:Calculate the spacing I of quartileQR=Q3-Q1, the bound of the wavelet conversion coefficient of each yardstick is calculated, wherein The upper limit is defined as HIGH=Q3+m*IQR, lower limit is defined as LOW=Q1-n*IQR, wherein, m and n are fixed coefficient;Step 7:When data x > HIGH or x < LOW, x are abnormity point, and at the time of record current x values and correspond to;Step 8:At the time of the abnormity point detected according to box figure method corresponds to, by data point in wavelet transformation time-frequency domain one by one Mapping relations, the position of the abnormal point-type human error point of original meter data is determined, realizes abnormal point-type lapse error detection.
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Inventor after: Wang Chunli Inventor after: Li Chuankun Inventor after: Gao Xinjiang Inventor before: Zhu Jianfeng Inventor before: Wang Chunli Inventor before: Li Chuankun Inventor before: Gao Xinjiang |
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Effective date of registration: 20170927 Address after: Yanan City, Shandong province Qingdao City three road 266071 No. 218 Applicant after: Qingdao Safety Engineering Research Institute of Sinopec Co., Ltd. Applicant after: Sinopec Corp. Address before: 100728 Chaoyangmen street, Beijing, No. 22, No. Applicant before: Sinopec Corp. Applicant before: Qingdao Safety Engineering Research Institute of Sinopec Co., Ltd. |
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