2021 Annual Meeting
(417a) Nested Sampling Algorithm for Probabilistic Design Space Definition with Recourse Action
Authors
As a consequence of these developments, interest in numerical tools capable of characterising a probabilistic design space has grown significantly. Existing algorithms either approximate the design space with a set of samples [6,7] or seek to inscribe a given shape inside the design space of interest [8,9]. As the use of process analytical technology and advanced process controls are becoming commonplace in modern pharmaceutical manufacturing, the ability to consider recourse system variables during design space definition is paramount [10]. There is, therefore, a need for algorithms which rigorously account for model uncertainty and recourse actions, whilst simultaneously remain general and tractable for solving a wide range of practical problems.
This talk presents an extension to the nested sampling algorithm for probabilistic design space definition [6] that enables processes with recourse variables. The main idea entails the combination of adaptive sampling of the critical process parameter (CCP) space, with a recourse optimization problem that maximizes the feasibility probability for each CPP realization. The former is based on the nested sampling algorithm implemented in the Python package DEUS [6]. The latter approximates the chance constraints via Monte Carlo sampling of the uncertain model parameters, and it considers either a mixed-integer programming formulation or its continuous relaxation for computational tractability [5], both implemented in Pyomo. The approach is illustrated for several steady-state design space problems, where the recourse action is essentially acting as a perfect control. Comparisons are also made with the counterpart design space problems without recourse action to demonstrate the potential benefits (see Figure).
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