Description
hardware flow control. It is an ideal choice in the field of industrial automation.
(5) Perform predictive maintenance, analyze machine operating conditions, determine the main
causes of failures, and predict component failures to avoid unplanned downtime.
Traditional quality improvement programs include Six Sigma, Deming Cycle, Total Quality Management (TQM), and Dorian Scheinin’s
Statistical Engineering (SE) [6]. Methods developed in the 1980s and 1990s are typically applied to small amounts
of data and find univariate relationships between participating factors. The use of the MapReduce paradigm to simplify data processing in
large data sets and its further development have led to the mainstream proliferation of big data analytics [7]. Along with the development of
machine learning technology, the development of big data analytics has provided a series of new tools that can be applied to manufacturing
analysis. These capabilities include the ability to analyze gigabytes of data in batch and streaming modes, the ability to find complex multivariate
nonlinear relationships among many variables, and machine learning algorithms that separate causation from correlation.
Millions of parts are produced on production lines, and data on thousands of process and quality measurements are collected for them, which is
important for improving quality and reducing costs. Design of experiments (DoE), which repeatedly explores thousands of causes through
controlled experiments, is often too time-consuming and costly. Manufacturing experts rely on their domain knowledge to detect key
factors that may affect quality and then run
DoEs based on these factors. Advances in big data analytics and machine learning enable the detection of critical factors that effectively
impact quality and yield. This, combined with domain knowledge, enables rapid detection of root causes of failures. However,
there are some unique data science challenges in manufacturing.
(1) Unequal costs of false alarms and false negatives. When calculating accuracy, it must be recognized that false alarms
and false negatives may have unequal costs. Suppose a false negative is a bad part/instance that was wrongly predicted to
be good. Additionally, assume that a false alarm is a good part that was incorrectly predicted as bad. Assuming further that
the parts produced are safety critical, incorrectly predicting that bad parts are good (false negatives) can put human lives
at risk. Therefore, false negatives can be much more costly than false alarms. This trade-off needs to be considered when
translating business goals into technical goals and candidate evaluation methods.
https://www.xmamazon.com
https://www.xmamazon.com
https://www.plcdcs.com/
www.module-plc.com/
https://www.ymgk.com
UFC789AE101 FSCD-BOARD,COATED
PD D163 A03 Current Transducer Control Board ABB PDD163A03
UU D148 AE02 Current Transducer Control Board ABB
UU D148 AE01 Voltage Transducer Control Board
PD D163 A03 INTBOARD MAIN MOD
UD C920 AE ASE2 (ANTI SATURATION) ABB
UA D149 A00-0-11 AC 800PEC Combi IO
XVC904A101 ADAPTER PECINT
XDC903A101 AMC33-DONGLE PCB ABB
GV C736 BE101 Gate Unit 91mm ABB
KV C757 A124 IPS SINGLE VOLTAGE 24V ABB
KV C757 A127 SINGLE VOLTAGE27V
UB C717 BE101 OVVP-Board Coated ABB
KV C758 A124 VOLTAGE SUBPRINT ABB
GV C713 A101 Gate Unit 51mm ABB
GF D233 A 3BHE022294R0103 ABB PEC80 LIN
Controller Board AC 800PEC PP D113 B03-20-110110 ABB
AC 800PEC Controller Board PP D113 B03-23-110110
ABB Controller Board AC 800PEC PP D113 B03-24-110110
PP D113 B03-25-110110 AC 800PEC Controller Board
PP D113 B03-26-110110 Controller Board AC 800PEC ABB
PP D113 B13-23-661711 ABB Controller Board AC 800PEC
5SHY 3545L0014 GCT MODULE 4500V, 91MM ABB
GD C801 A101 Rigi Crowbar Drive PCB Var
UD C920 AE ANTI SATURATION ABB
GD C806 A01 Gate Driver ABB
GD C806A Gate Driver HA C807A ABB GDC806A0101
DD C779 CE102 RETRO- PINT (ACS) 3BHE027859R0102 ABB
XV C772 A102 HVD- BOARD VARNISHED ABB
XV C772 A101 HVD- BOARD VARNISHED ABB
GC C960 C101 PCB VARNISHED ABB
GC C960 C102 PHASE INTERFACE BOARD ABB GCC960C102
GC C960 C103 ABB PHASE INTERFACE BOARD
UD C920 BE101 ASE2B WITH HOUSIN UDC920BE101
UFD402A101 Controller module ABB
GV C736 CE101 ABB GATE DRIVER BOARD GVC736CE101
PP D513 A24-110110 ABB AC 800PEC Controller
UF C092 BE01 HIEE300910R0001 Binary Input
UF C719 AE01 3BHB003041R0001
UF C718 AE01 HIEE300936R0001 MAIN CIRCUIT INTE INT
UF C921 A101 3BHE024855R0101 INT-2 Board Varnished
UF C719 AE 3BHB003041R0101 I/O CONTROL BOARD IOEC
UF C721 BE101 3BHE021889R0101 ADCVI-Board Coat
UFC911B106 3BHE037864R0106 ABB
UF C760 BE43 3BHE004573R0043 ABB MAIN CIRC. INTER.
U FC760 BE42 3BHE004573R0042 ABB CONVERTER CONTROL
UFC762AE101 3BHE006412R0101 ABB CVMI
PP C381 CE01 ABB CONVERTER CONTROL PPC381CE01
3BHE007599R0101 ABB CONVERTER CONTROL
UA A326 AE04 ABB UAA326AE04 HIEE300024R0004 Input Output Unit
PP B022 CE ABB PPB022CE HIEE300550R1 PSR CONTROLLER
UPC090AE01 HIEE300661R0001 ABB FIELDBUS COUPL
PP B022 DE01 ABB PPB022DE01 PSR CONTROLLER
LD MUB-01 ABB LDMUB-01 UNIT BOARD
UB C717 AE01 ABB UBC717AE01 OVERVOLTAGE MEASU OVVP
UNS 0017A-P ABB UNS0017A-P HIEE305106R0001 FIRING UNIT
LD CCB-01 ABB LDCCB-01 ONVERTER CONTROL BOARD
PP C380 AE01 ABB PPC380AE01
PP C902 AE01 ABB PPC902AE01 processor fieldbus
PP C322 AE ABB PC BOARD PPC322 AE
Reviews
There are no reviews yet.