Publications
To cite IDAES, please use this reference:
The IDAES process modeling framework and model library—Flexibility for process simulation and optimization, Lee, A., Ghouse, J. H., Eslick, J.C., Laird, C.D., Siirola, J.D., Zamarripa, M.A., Gunter, D., Shinn, J. H., Dowling, A. W., Bhattacharyya, D., Biegler, L. T., Burgard, A. P., & Miller, D.C. (2021). The IDAES process modeling framework and model library—Flexibility for process simulation and optimization. Journal of Advanced Manufacturing and Processing, 3(3), 1-30. https://doi.org/10.1002/amp2.10095
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- All
- Book/Book Chapter
- Journal Articles/Technical Reports
HybridTuner: Tuning with hybrid derivative-free optimization initialization strategies
Advanced-multi-step Moving Horizon Estimation
Backward stepwise elimination: Approximation guarantee, a batched GPU algorithm, and empirical investigation
Model development, validation, and part-load optimization of an MEA-based post-combustion CO2 capture process under part-load and variable capture operations
A perspective on nonlinear model predictive control
The IDAES process modeling framework and model library—Flexibility for process simulation and optimization
Decomposing optimization-based bounds tightening problems via graph partitioning
A generalized cutting-set approach for nonlinear robust optimization in process systems engineering applications
- All
- Book/Book Chapter
- Journal Articles/Technical Reports
Serial advanced-multi-step nonlinear model predictive control using an extended sensitivity method
A discussion on practical considerations with sparse regression methodologies
Model order reduction in chemical process optimization
Nonlinear optimization strategies for process separations and process intensification
Nonlinear model predictive control of the hydraulic fracturing process
Sensitivity-assisted multistage nonlinear model predictive control with online scenario adaptation.
A framework for the optimization of chemical looping combustion processes
A multi-objective reactive distillation optimization model for Fischer–Tropsch synthesis
Dynamic optimization of natural gas pipeline networks with demand and composition uncertainty
Dynamic optimization for gas blending in pipeline networks with gas interchangeability control
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- Book/Book Chapter
- Journal Articles/Technical Reports
An overview of process intensification methods
Parallel cyclic reduction decomposition for dynamic optimization problems
Modern modeling paradigms using generalized disjunctive programming
Optimization-based design of active and stable nanostructured surfaces
Nonlinear programming formulations for nonlinear and economic model predictive control
Automated learning of chemical reaction networks
Optimization opportunities in product development: perspective from a manufacturing company
PARMEST: Parameter estimation via Pyomo
Dynamic optimization of natural gas network with rigorous thermodynamics under uncertainty
A framework for optimizing oxygen vacancy formation in doped perovskites
Effective Generalized Disjunctive Program optimization models for modular process synthesis
Kaibel column: Modeling, optimization, and conceptual design of multi-product dividing wall columns.
Dynamic real-time optimization for a CO2 capture process
- All
- Book/Book Chapter
- Journal Articles/Technical Reports
Large-scale optimization formulations and strategies for nonlinear model predictive control
Benchmarking ADMM in nonconvex NLPs
GPU parameter tuning for tall and skinny dense linear least squares problems
Deterministic electric power infrastructure planning: Mixed-integer programming model and nested decomposition algorithm
A framework for modeling and optimizing dynamic systems under uncertainty
Effective GDP optimization models for modular process synthesis
Pyomo.dae: A modeling and automatic discretization framework for optimization with differential and algebraic equations
- All
- Book/Book Chapter
- Journal Articles/Technical Reports
A Framework for Modeling and Optimizing Dynamic Systems Under Uncertainty
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- Book/Book Chapter
- Journal Articles/Technical Reports