Description
hardware flow control. It is an ideal choice in the field of industrial automation.
0 Preface
Germany”s “Industry 4.0″ and the United States” “Industrial Internet” will
restructure the world”s industrial layout and economic structure, bringing different challenges and
opportunities to countries around the world. The State Council of China issued “Made in China 2025” as an action plan
for the first ten years of implementing the strategy of manufacturing a strong country, which will accelerate the integrated
development of IoT technology and manufacturing technology [1]. IoT collects data on machine operations, material usage
, facility logistics, etc., bringing transparency to operators. This transparency is brought about by the application of data analytics,
which refers to the use of statistical and machine learning methods to discover different data characteristics and patterns. Machine
learning technology is increasingly used in various manufacturing applications, such as predictive maintenance, test time reduction,
supply chain optimization, and process optimization, etc. [2-4]. The manufacturing process of enterprises has gradually developed from
the traditional “black box” model to the “multi-dimensional, transparent and ubiquitous perception” model [5].
1 Challenges facing manufacturing analysis
The goal of manufacturing analytics is to increase productivity by reducing costs without compromising quality:
(1) Reduce test time and calibration, including predicting test results and calibration parameters;
(2) Improve quality and reduce the cost of producing scrap (bad parts) by identifying the root causes of scrap and optimizing
the production line on its own;
(3) Reduce warranty costs, use quality testing and process data to predict field failures, and cross-value stream analysis;
(4) Increase throughput, benchmark across production lines and plants, improve first-pass rates, improve first-pass throughput,
and identify the cause of performance bottlenecks such as overall equipment effectiveness (OEE) or cycle time;
UAD155A0111 3BHE029110R0111 ABB
UAD206A101 3BHE019959P201 ABB
UAD206A101 3BHE019958R0101 ABB
3BHE019959P201AEND:C Main control board ABB
3BHE019958R0101 Main control board ABB
UAD206A101 Main control board ABB
UAD206A101 3BHE019958R0101/3BHE019959P201 AEND:C
HIEE300885R1 Main control board ABB
PPC380AE01 HIEE300885R0001 ABB
HIEE300885R0001 Main control board ABB
PPC380AE01 Main control board ABB
HIEE300885R0102 Main control board ABB
PPC380AE02 Main control board ABB
PPC380AE02 HIEE300885R0102 ABB
PPC380AE102 HIEE300885R0102 ABB
HIEE300885R0102 Main control board ABB
PPC380AE102 Main control board ABB
3BHE010751R0101 Main control board ABB
PPC902AE101 Main control board ABB
PPC902AE101 3BHE010751R0101 ABB
PPC902CE101 3BHE028959R0101 ABB
3BHE028959R0101 control module ABB
PPC902CE101 control module ABB
3BHE024577R0101 control module ABB
PPC907BE control module ABB
PPC907BE 3BHE024577R0101 ABB
INNPM12 Transmission module ABB
PM150V08 3BSE009598R1 ABB
3BSE009598R1 processing module ABB
PM150V08 processing module ABB
3BSE011180R1 processing module ABB
PM511V08 3BSE011180R1 ABB
3BSE008358R1 processing module ABB
PM510V16 processing module ABB
PM510V16 3BSE008358R1 ABB
PM511V08 ABB
PM630processing module ABB
PM632 3BSE005831R1 ABB
3BSE005831R1 processing module ABB
PM632 processing module ABB
PM633 processing module ABB
3BSE008062R1 processing module ABB
3BSE008062R1 PM633 ABB
PM645B 3BSE010535R1 ABB
3BSE010535R1 processing module ABB
PM645B processing module ABB
3BDH000364R0002 processing module ABB
PM783F processing module ABB
PM783F 3BDH000364R0002 ABB
PMA323BE HIEE300308R1 ABB
HIEE300308R1 processing module ABB
PMA323BE processing module ABB
3BSE011181R1 processing module ABB
PM511V16 processing module ABB
PM511V16 3BSE011181R1 ABB
1SAP500405R0001 interface ABB
CP405 A0 Industrial touch screenABB
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