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- 2020 Virtual AIChE Annual Meeting
- Computing and Systems Technology Division
- Real-Time Optimization of Operations
- (745b) Improved Modifier-Adaptation Schemes Using Gaussian Processes for Real-Time Optimization
Modifier Adaptation [1,2] has its origins in the technique of Integrated System Optimization and Parameter Estimation [3], but differs in the fact that no parameter estimation is required. These RTO schemes have the ability to reach plant optimality upon convergence, despite the presence of structural plant-model mismatch. However, this comes at the cost of having to estimate gradient terms from process measurements.
This work investigates a new class of modifier-adaptation schemes [4,5], which embed a physical model in order to minimize risk during the exploration, in combination with machine learning techniques to capture the plant-model mismatch in a non-parametric way. In optimizing an uncertain process, a successful modifier-adaptation system must accommodate two conflicting objectives: First, it must optimize the system as well as possible; Second, it must ensure that enough information is known about the system to allow accurate and reliable gradient estimates. In essence, this problem is similar to the dual control problem [6], which has been studied extensively since the early 1960s. It has been well-known that the exact dual-control problem for nonlinear systems is computationally intractable. We present an RTO algorithm that uses Gaussian processes as workhorse, and that relies on trust-region ideas in order to expedite and robustify convergence [7]. The size of the trust region is adjusted based on the Gaussian processesâ ability to capture the plant-model mismatch in the cost and constraints. We furthermore exploit the variance term of the Gaussian processes to maintain sufficient excitation. Finally, we illustrate this new modifier-adaptation scheme on several benchmark problems and compare its performance to other RTO approaches.
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