Publication | Open Access
Simulation–Optimization Framework for the Digital Design of Pharmaceutical Processes Using Pyomo and PharmaPy
11
Citations
21
References
2022
Year
Numerical AnalysisEngineeringIndustrial EngineeringDerivative-based OptimizationSimulationStochastic SimulationPde-constrained OptimizationDrug DesignComputer-aided EngineeringPharmaceutical TechnologySystems EngineeringDigital DesignModeling And SimulationSimulation–optimization FrameworkProcess OptimizationProcess DesignPharmacokinetic ModelingDesignProcess SimulatorProcess Systems EngineeringProcess Simulation ModelProcess ControlComputer-aided Drug DesignMedicineDerivative-based Frameworks
The problem of performing model-based process design and optimization in the pharmaceutical industry is an important and challenging one both computationally and in choice of solution implementation. In this work, a framework is presented to directly utilize a process simulator via callbacks during derivative-based optimization. The framework allows users with little experience in translating mechanistic ODEs and PDEs to robust, fully discretized algebraic formulations, required for executing simultaneous equation-oriented optimization, to obtain mathematically guaranteed optima at a competitive solution time when compared with existing derivative-free and derivative-based frameworks. The effectiveness of the framework in accuracy of optimal solution as well as computational efficiency is analyzed on on two case studies: (i) an integrated 2-unit reaction synthesis train used for the synthesis of an anti-cancer active pharmaceutical ingredient, and (ii) a more complex flowsheet representing a common synthesis-purification-isolation train of a pharmaceutical manufacturing processes.
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pyomo.dae: a modeling and automatic discretization framework for optimization with differential and algebraic equations Bethany L. Nicholson, John D. Siirola, Jean‐Paul Watson, Mathematical Programming Computation Numerical AnalysisMathematical ProgrammingAlgebraic EquationsEngineeringContinuous Optimization | 2017 | 171 |
2008 | 161 |
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