353080 An Optimization Framework for Designing Input Signals for Plant Testing
353080 An Optimization Framework for Designing Input Signals for Plant Testing
Tuesday, April 1, 2014: 3:30 PM
Elmwood (Hilton New Orleans Riverside)
The plant test is a critically important step in the development of model-based process controllers such as MPC, since the resulting data becomes the basis for identifying a multivariable dynamic model of the plant. A range of testing approaches are used in practice that entail both manual and automatic (computer-generated) test signal designs, most often in open loop, but increasingly in closed loop. The testing in industry continues to rely on uncorrelated input signals, either tested manually one input at a time or generated randomly to achieve a low level of spatial correlation between any two inputs (e.g., PRBS); However, such signals are statistically optimal only when the constraint bounds are limited to the inputs. Academic investigations have shown the benefits of designs which lead to correlated, higher-amplitude input signals.
References
- Darby, M.L. and M. Nikolaou, Multivariable system identification for integral controllability. Automatica, 2009. 45(10): p. 2194-2204.
See more of this Session: Advanced Process Control and Optimization
See more of this Group/Topical: Topical 7: 17th Topical on Refinery Processing
See more of this Group/Topical: Topical 7: 17th Topical on Refinery Processing