Invention Grant
- Patent Title: Data driven method for automated detection of anomalous work pieces during a production process
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Application No.: US16211370Application Date: 2018-12-06
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Publication No.: US11468274B2Publication Date: 2022-10-11
- Inventor: Denis Krompaß , Hans-Georg Köpken
- Applicant: SIEMENS AKTIENGESELLSCHAFT
- Applicant Address: DE Munich
- Assignee: SIEMENS AKTIENGESELLSCHAFT
- Current Assignee: SIEMENS AKTIENGESELLSCHAFT
- Current Assignee Address: DE Munich
- Agency: Schmeiser, Olsen & Watts LLP
- Priority: EP17206972 20171213
- Main IPC: G06K9/22
- IPC: G06K9/22 ; G05B19/41 ; G06K9/62 ; G05B19/418

Abstract:
Provided is a method and system for detection of anomalous work pieces that includes computing at least one deviation data signal for a target data signal of a target work piece with respect to reference data signals recorded for a corresponding production process step of a set of reference work pieces, performing a stepwise anomaly detection by data processing of the at least one computed deviation data signal and a process type indicator indicating a type of the production process step using a trained anomaly detection data model to calculate for each time step or path length step of the production process step an anomaly probability that the respective time step or path length step is anomalous, and classifying the target work piece and/or the production process step as being anomalous or not anomalous on the basis of the calculated anomaly probabilities.
Public/Granted literature
- US20190180152A1 DATA DRIVEN METHOD FOR AUTOMATED DETECTION OF ANOMALOUS WORK PIECES DURING A PRODUCTION PROCESS Public/Granted day:2019-06-13
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