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Statistical process control

Statistical process control (SPC) or statistical quality control (SQC) is the application of statistical methods to monitor and control the quality of a production process. This helps to ensure that the process operates efficiently, producing more specification-conforming products with less waste scrap. SPC can be applied to any process where the "conforming product" (product meeting specifications) output can be measured. Key tools used in SPC include run charts, control charts, a focus on continuous improvement, and the design of experiments. An example of a process where SPC is applied is manufacturing lines.

"SQc" redirects here. For other uses, see SQC (disambiguation).

SPC must be practiced in two phases: The first phase is the initial establishment of the process, and the second phase is the regular production use of the process. In the second phase, a decision of the period to be examined must be made, depending upon the change in 5M&E conditions (Man, Machine, Material, Method, Movement, Environment) and wear rate of parts used in the manufacturing process (machine parts, jigs, and fixtures).


An advantage of SPC over other methods of quality control, such as "inspection," is that it emphasizes early detection and prevention of problems, rather than the correction of problems after they have occurred.


In addition to reducing waste, SPC can lead to a reduction in the time required to produce the product. SPC makes it less likely the finished product will need to be reworked or scrapped.

ANOVA Gauge R&R

Distribution-free control chart

Electronic design automation

Industrial engineering

Process Window Index

Process capability index

Quality assurance

Reliability engineering

Six sigma

Stochastic control

Total quality management

MIT Course - Control of Manufacturing Processes

Guthrie, William F. (2012). . National Institute of Standards and Technology. doi:10.18434/M32189.

"NIST/SEMATECH e-Handbook of Statistical Methods"