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{{Short description|Mathematical optimization approach}}
'''Chance Constrained Programming (CCP)''' is a [[mathematical optimization]] approach used to handle problems under uncertainty. It was first introduced by [[Abraham Charnes|Charnes]] and [[William W. Cooper|Cooper]] in 1959 and further developed by Miller and Wagner in 1965.<ref>{{cite journal |last1=Charnes |first1=Abraham |last2=Cooper |first2=William W. |title=Chance-Constrained Programming |journal=Management Science |date=1959 |volume=6 |issue=1 |pages=
== Theoretical Background ==
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== Solution Approaches ==
To solve CCP problems, the [[stochastic optimization]] problem is often relaxed into an equivalent deterministic problem. There are different approaches depending on the nature of the problem:
* '''Linear CCP''': For linear systems, the feasible region is typically convex, and the problem can be solved using [[linear programming]] techniques.
* '''Nonlinear CCP''': For nonlinear systems, the main challenge lies in computing the probabilities and their gradients. These problems often require [[
* '''Dynamic Systems''': Dynamic systems involve time-dependent uncertainties, and the solution approach must account for the [[propagation of uncertainty]] over time.<ref name=pu/>
== Practical Applications ==
Chance constrained programming is used in engineering for process optimisation under uncertainty and production planning and in finance
=== Process Optimization Under Uncertainty ===
CCP is used in [[chemical engineering|chemical]] and [[process engineering]] to optimize operations considering uncertainties in operating conditions and model parameters. For example, in optimizing the design and operation of chemical plants, CCP helps in achieving desired performance levels while accounting for uncertainties in feedstock quality, demand, and environmental conditions.<ref name=pu>{{cite journal |last1=Pu |first1=Pu |last2=Arellano-Garcia |first2=Harvey |last3=Wozny |first3=Günter |title=Chance constrained programming approach to process optimization under uncertainty |journal=Computers and Chemical Engineering |date=2008 |volume=32 |issue=
=== Production Planning and Operations ===
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{{Reflist}}
[[Category:Stochastic optimization]]
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