Combining self-optimizing control and extremum seeking for online optimization with application to Vapor Compression cycles
Autor: | Andrew G. Alleyne, Bryan Keating |
---|---|
Rok vydání: | 2016 |
Předmět: |
0209 industrial biotechnology
Mathematical optimization Engineering business.industry Control (management) Process (computing) Control variable Boundary (topology) 02 engineering and technology Function (mathematics) System model 020901 industrial engineering & automation 020401 chemical engineering Control theory Transient (oscillation) 0204 chemical engineering Actuator business |
Zdroj: | ACC |
DOI: | 10.1109/acc.2016.7526625 |
Popis: | The goal of online optimization is to find economizing input values that minimize the plant's steady-state operational cost. Often, the optimal value of these inputs is a function of the system's disturbances. For systems with a direct measurement of the operational cost function and multiple process outputs, there is a wealth of information that can be exploited for online optimizing feedback control. When extremum seeking control is applied to these systems, multiple potential process measurements unrelated to achieving system performance objectives present a choice of the extremum seeking controlled variable. In this paper, a Vapor Compression System moving boundary simulation model is employed to investigate the effectiveness of combining self-optimizing control with extremum seeking control. Results show that combining extremum seeking's ability to adapt to slowly varying disturbances under minimal assumptions about the system model with the transient performance guarantees provided by self-optimizing control improves optimization performance by nearly 60% relative to the case where extremum seeking directly controls an actuator input. |
Databáze: | OpenAIRE |
Externí odkaz: |