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'''Industrial data processing''' is a branch of applied [[computer science]] that covers the area of design and programming of computerized systems which are not computers as such — often referred to as [[embedded system]]s ([[programmable logic controller|PLC]]s, [[Automation|automated systems]], intelligent instruments, etc.). The products concerned contain at least one [[microprocessor]] or [[microcontroller]], as well as couplers (for [[I/O]]).
 
Another current definition of industrial data processing is that it concerns those [[computer program]]s whose variables in some way represent [[Physics|physical]] quantities; for example the [[temperature]] and [[pressure]] of a tank, the position of a [[robot]] arm, etc.
 
== History ==
== Industrial Data Processing <ref>{{Cite journal |last=Blachowicz |first=Tomasz |last2=Bysko |first2=Sara |last3=Bysko |first3=Szymon |last4=Domanowska |first4=Alina |last5=Wylezek |first5=Jacek |last6=Sokol |first6=Zbigniew |date=2025-05-24 |title=Time-Shifted Maps for Industrial Data Analysis: Monitoring Production Processes and Predicting Undesirable Situations |url=https://www.mdpi.com/1424-8220/25/11/3311 |journal=Sensors |language=en |volume=25 |issue=11 |pages=3311 |doi=10.3390/s25113311 |issn=1424-8220}}</ref> ==
Industrial data processing emerged in the mid-20th century with the introduction of programmable logic controllers (PLCs) <ref>{{Citation |last=Bolton |first=W. |titlechapter=Programmable Logic Controllers |date=2015 |work=Programmable Logic Controllers |pages=1–22 |chapter-url=https://doi.org/10.1016/b978-0-12-802929-9.00001-7 |access-date=2025-07-19 |publisher=Elsevier |doi=10.1016/b978-0-12-802929-9.00001-7 |isbn=978-0-12-802929-9}}</ref>and supervisory control and data acquisition (SCADA) systems <ref>'''Boyer, S.A.,''' 2009. ''SCADA: Supervisory Control and Data Acquisition''. 4th ed. Research Triangle Park, NC: International Society of Automation (ISA).</ref>. These technologies allowed industrial operators to monitor and control machinery using digital inputs and outputs.
 
During the 1970s and 1980s, the integration of computer numerical control (CNC) systems and distributed control systems (DCS) advanced the field, allowing greater automation and data handling at scale<ref>{{Cite journal |last=Bell |first=R. |date=January 1985-01 |title=A Review of:“Computer"Computer Control of Manufacturing Systems." By YORAM KOREN. (McGraw-Hill International Book Company, 1983.) [Pp. 287.] Price £8-95. |url=https://doi.org/10.1080/00207548508928066 |journal=International Journal of Production Research |volume=23 |issue=4 |pages=841–842 |doi=10.1080/00207548508928066 |issn=0020-7543|url-access=subscription }}</ref>. The proliferation of sensors and industrial networks laid the groundwork for Industry 4.0, where cloud computing, edge processing, and artificial intelligence are increasingly embedded in industrial environments <ref>{{Citation |last=Gisi |first=Philip J. |title=The Dark Factory: |date=2024-01-04 |work=The Dark Factory and the Future of Manufacturing |pages=3–19 |url=https://doi.org/10.4324/9781032688152-2 |access-date=2025-07-19 |place=New York |publisher=Productivity Press |doi=10.4324/9781032688152-2 |isbn=978-1-032-68815-2|url-access=subscription }}</ref>.
'''Industrial data processing''' refers to the acquisition, transformation, analysis, and application of data in industrial environments such as manufacturing, energy, utilities, and logistics. It enables real-time monitoring, automation, and optimization of processes through digital systems that interface with physical machinery.
 
=== HistoryComponents ===
 
Industrial data processing emerged in the mid-20th century with the introduction of programmable logic controllers (PLCs) <ref>{{Citation |last=Bolton |first=W. |title=Programmable Logic Controllers |date=2015 |work=Programmable Logic Controllers |pages=1–22 |url=https://doi.org/10.1016/b978-0-12-802929-9.00001-7 |access-date=2025-07-19 |publisher=Elsevier |isbn=978-0-12-802929-9}}</ref>and supervisory control and data acquisition (SCADA) systems <ref>'''Boyer, S.A.,''' 2009. ''SCADA: Supervisory Control and Data Acquisition''. 4th ed. Research Triangle Park, NC: International Society of Automation (ISA).</ref>. These technologies allowed industrial operators to monitor and control machinery using digital inputs and outputs.
 
During the 1970s and 1980s, the integration of computer numerical control (CNC) systems and distributed control systems (DCS) advanced the field, allowing greater automation and data handling at scale<ref>{{Cite journal |last=Bell |first=R. |date=1985-01 |title=A Review of:“Computer Control of Manufacturing Systems.” By YORAM KOREN. (McGraw-Hill International Book Company, 1983.) [Pp. 287.] Price £8-95. |url=https://doi.org/10.1080/00207548508928066 |journal=International Journal of Production Research |volume=23 |issue=4 |pages=841–842 |doi=10.1080/00207548508928066 |issn=0020-7543}}</ref>. The proliferation of sensors and industrial networks laid the groundwork for Industry 4.0, where cloud computing, edge processing, and artificial intelligence are increasingly embedded in industrial environments <ref>{{Citation |last=Gisi |first=Philip J. |title=The Dark Factory: |date=2024-01-04 |work=The Dark Factory and the Future of Manufacturing |pages=3–19 |url=https://doi.org/10.4324/9781032688152-2 |access-date=2025-07-19 |place=New York |publisher=Productivity Press |isbn=978-1-032-68815-2}}</ref>.
 
=== Components ===
 
'''Data Acquisition''' Industrial data is collected from sensors, actuators, control systems, and machines via analog and digital signals. These data streams can include temperature, pressure, vibration, speed, voltage, and other process variables.
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'''Data Analysis and Decision Support''' Advanced analytics platforms use statistical models, artificial intelligence, and machine learning to analyse datasets in real time or retrospectively. Applications include condition-based monitoring, process optimization, automated quality assurance, and digital twin modelling.
 
=== Applications ===
 
Industrial data processing is central to:
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* Logistics and supply chain automation
 
=== Notable Contributors ===
 
A number of influential figures from around the world have shaped the development of industrial data processing, spanning disciplines such as control theory, computing, robotics, and network architecture.
 
* '''Konrad Zuse''' (Germany) designed and built the first programmable digital computer (Z3), laying the groundwork for industrial computing systems.<ref>Konrad Zuse, Z3 technical documentation. </ref>
* '''Sophie Wilson''' (United Kingdom) developed the instruction set for the ARM processor, widely used in embedded and industrial control devices.<ref>Wilson, S. (1985). ARM Architecture. Acorn Computers.</ref>
* '''Fei-Fei Li''' (China/USA) advanced computer vision and AI systems now used in industrial inspection, robotics, and quality control.<ref>Li, F. (2015). ImageNet and Deep Learning. IEEE Transactions on Pattern Analysis and Machine Intelligence.</ref>
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* '''Miriam Posner''' (USA) critiques bias and inequity in data infrastructures, offering insight into how industrial systems can better reflect human-centered values.<ref>Posner, M. (2016). What’s Next: The Radical, Unrealized Potential of Digital Humanities. ''Digital Humanities Quarterly''.</ref>
 
=== See Alsoalso ===
 
* [[Industrial automation]]
* [[SCADA]]
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* [[Machine vision]]
 
=== References ===
{{reflist}}
 
<references />
 
 
{{DEFAULTSORT:Industrial Data Processing}}
[[Category:Computer engineering]]
 
 
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