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Showing records 245 to 269 of 43292. [First] Page: 1 7 8 9 10 11 12 13 14 15 Last
Optimization of steam power systems in industrial parks considering the distributed heat supply and auxiliary steam turbines
Lingwei Zhang, Yufei Wang.
June 27, 2025 (v1)
Keywords: Distributed heat supply, Steam power systems, Steam turbines.
In the steam power system for the centralized heat supply in an industrial park, heat demands of all consumers are satisfied by the energy station, leading to the high steam delivery costs caused by the several distant enterprises. Additionally, the number of steam levels is limited due to the trade-off between distance-related costs and heat cascaded utilization, thus some consumers are supplied with heat at higher temperature than that of required, resulting in the low energy efficiency. To deal with the above problems, this work proposes an optimization model for steam power systems (SPSs) in industrial parks, which incorporates the distributed heat supply and auxiliary steam turbines (ASTs). Field erected boilers (FEBs) can independently supply heat to consumers, thereby avoiding the excessive pipeline costs. ASTs are used for the re-depressurization of steam received by consumers, which can increase the electricity generation capacity and improve the temperature matching of heat s... [more]
Optimization of the Power Conversion System for a Pulsed Fusion Power Plant with Multiple Heat Sources using a Dynamic Process Model
Oliver M. G. Ward, Federico Galvanin, Nelia Jurado, Daniel Blackburn, Robert J. Warren, Eric S. Fraga.
June 27, 2025 (v1)
Keywords: Dynamic Modelling, Energy Conversion, Energy Storage, Fusion Power, Modelica, Optimization.
The optimization of the power conversion system, responsible for thermal-to-electrical energy conversion, for a pulsed fusion power plant is presented. A spherical tokamak is modelled as three heat sources, all pulsed, with different stream temperatures and available amounts of heat. A thermal energy storage system is considered in the design to compensate for the lack of thermal power during a dwell. Thermal storage enables continued power generation during a dwell and can avoid thermal transients in sensitive components like turbomachines. Multiple lower grade heat sources are integrated into the process through parallel preheating trains. The evaluation of a dynamic model of the power conversion system is used to define an objective function with multiple criteria. A bi-objective optimization problem is defined to investigate the trade-off between the size of the thermal energy storage system and the variability in turbine power output during a dwell. The set of non-dominated design... [more]
Control of the WWTP Water Line Using Traditional and Model Predictive Approaches
Gheorghe A. Bodescu, Romina G. Daraban, Norbert B. Mihály, Castelia E. Cristea, Elisabeta C. Timi?, Anton A. Kiss, Vasile M. Cristea.
June 27, 2025 (v1)
Keywords: Effluent Quality, Energy, Greenhouse Gas Emissions, Model Predictive Control, Supervisory Control, Wastewater.
Wastewater treatment and resources recovery from large wastewater flowrates of the municipalities and circular bio-based economy ask for efficient control solutions. The paper presents solutions for operating the wastewater treatment plant, based on advanced process control methods aimed to merge the benefits of the cooperation between the lower-level regulatory control loops and the upper-level model predictive control strategy. The lower-level is designed to regulate the nitrification in the aerated bioreactors by controlling the Dissolved Oxygen or the ammonia concentration and to control the denitrification in the anoxic reactor by controlling the nitrates concentration. The model predictive controller either sets the setpoints of the regulatory layer or directly manipulates the air and nitrate recycle flow rates. The plant performance results obtained using the regulatory Proportional and Integral control are compared to the direct or the supervisory model predictive control outco... [more]
Revenue Optimization for Dynamic Operation of a Hybrid Solar Thermal Power Plant
Dibyajyoti Baidya, Mani Bhushan, Sharad Bhartiya.
June 27, 2025 (v1)
Keywords: Dynamic Modelling, Linear Fresnel Reflector, Optimization, Parabolic Trough Collector.
Solar Thermal Power Plants (STPPs) use solar energy for large-scale electricity production but face significant operational challenges. These include variations in solar radiation, cloud cover, electricity demand fluctuations, and the need for frequent shutdowns if energy storage is inadequate. Deciding an optimal STPP operating conditions is challenging due to these factors. While revenue maximization has been used as an objective in existing literature, current models are often static and fail to capture the dynamic nature of STPPs. In contrast, this work proposes a dynamic model-based revenue optimization approach that accounts for plant dynamics and operational constraints, such as solar radiation variability and changing electricity demand. The objective function is designed to maximize revenue while considering power generation and fluctuating electricity prices. A simulation model of 1 MWe hybrid solar thermal power plant in Gurgaon, India, featuring two solar fields—Parabolic T... [more]
Evaluation of the Controllability of Distillation with Multiple Reactive Stages
Josué J. Herrera Velázquez, J. Rafael Alcántara Avila, Salvador Hernández, Julián Cabrera Ruiz.
June 27, 2025 (v1)
Keywords: Dynamic Behaviour, Process Control, Reactive Distillation, Silane, Singular Value Decomposition.
Intensified schemes, such as reactive distillation, have been proposed to produce silane (SiH4). Several studies have been carried out around this intensified scheme focusing directly on its improvement in energy or economic criteria. However, these mentioned criteria do not ensure that the scheme is also optimal from the control point of view. There is a direct compromise between the economic criterion and the control criterion. Thus, the best controllable scheme is not necessarily the most economical and vice versa. Analyses have been proposed to evaluate the controllability of steady-state processes using open-loop with Singular Value Decomposition (SVD) under quantitative a criterion such as A? + ?sm with simplified first-order transfer functions. This work considers four feasible designs with multiple reactive zones and evaluates their controllability from their open-loop dynamic responses obtained from Aspen Dynamics® by calculating the condition number for different frequency ra... [more]
Utilizing ML Surrogates in CAPD: Case Study of an Amine-based Carbon-Capture Process
Florian Baakes, Gustavo Chaparro, Thomas Bernet, George Jackson, Amparo Galindo, Claire S. Adjiman.
June 27, 2025 (v1)
Anthropogenic carbon-dioxide emissions, exceeding 51 billion tons annually, are a major driver of global climate impacts. Aqueous amine scrubbing offers an effective carbon-capture solution, but the energy-intensive thermal regeneration step of the process significantly increases costs, limiting large-scale adoption. To address these challenges, computational optimization of process and molecular design is promising but often too resource-intensive, emphasizing the need for efficient surrogate models. Specifically, we develop a surrogate model based on an artificial neural network (ANN) that is employed to replace rigorous phase-equilibrium computations performed with the SAFT-? Mie group contribution method within a steady-state aqueous amine carbon-capture process model. Our ANN is trained on 32,768 vapour–liquid equilibrium data points of a quaternary mixture of water, monoethanolamine, carbon dioxide, and nitrogen over industrially relevant temperature, pressure, and composition ra... [more]
Enhancing Consumer Engagement in Plastic Waste Reduction: A Stackelberg Game
Chunyan Si, Yee Van Fan, Monika Dokl, Lidija Cucek, Zdravko Kravanja, Petar Sabev Varbanov.
June 27, 2025 (v1)
Subject: Environment
Keywords: Circular Economy, Government initiatives Consumer behavior, Plastic Waste Reduction, Stackelberg Game.
Circular economy is recognized as one of the most effective strategies for promoting plastic sustainability. However, its implementation requires to enhance consumer engagement, which remains a primary target of regulatory initiatives designed to promote plastic circular economy. To ensure sustained consumer participation, it is essential to evaluate and optimize various incentives, including regulatory policies, voluntary programs, and market-related mechanisms. This study applies Stackelberg Game Approach to quantitatively capture the strategic interactions between the authorities (as the leader) and consumers (as followers). The model incorporates key consumer behaviors, i.e., "use less," "use longer," and "recycling", to reflect their role in advancing plastic circular economy goals. By integrating factors such as governmental utility (gains of benefits), consumer utility (welfare), and plastic waste reduction, the model identifies the optimal intensities of various public initiati... [more]
Systematic design of structured packings based on shape optimization
Alina Dobschall, Elvis Michaelis, Mirko Skiborowski.
June 27, 2025 (v1)
Keywords: CFD simulation, optimization-based design, structured packings.
Distillation is not only a widely-used but also an energy-intensive separation process, in which internals such as structured packings play an important role. Increasing mass transfer efficiency by designing improved structured packings in order to provide a large interfacial area while enabling low pressure drop is one promising approach to quickly reduce the energy requirements of vacuum distillation where low pressure drop is important for separation efficiency and thermal stability of the processed media. The current work presents an innovative method to optimize structured packings by means of constrained shape optimization on the basis of computational fluid dynamics simulations to minimize the pressure drop while maintaining a constant specific surface area. To solve the fluid dynamic optimization problem, a gradient-based local optimization algorithm in a continuous adjoint formulation is utilized. The shape optimization is applied for a commonly used Rombobak packing, and test... [more]
Analysis of Control Properties as a Sustainability Indicator in Intensified Processes for Levulinic Acid Purification
Tadeo E. Velázquez-Sámano, Heriberto Alcocer-García, Eduardo Sánchez-Ramírez, Carlos R. Caceres-Barrera, Juan G. Segovia-Hernández.
June 27, 2025 (v1)
Keywords: Bioproducts, Control, Distillation, Stochastic Optimization.
The evaluation of control properties in industrial processes is essential to achieve sustainability, a very relevant topic today. This study emphasizes the importance of control studies to ensure that processes are efficient, operable and safe. While strategies such as process intensification can reduce the size, cost, and consumption of energy, it can present challenges in control and operability. This work focuses on the evaluation of the control properties of schemes with different degrees of intensification for the purification of levulinic acid, with the aim of identifying designs with the best control properties and the best economic and environmental indicators. The schemes were designed under a systematic synthesis strategy and optimized using the hybrid method of differential evolution with a tabu list, considering the total annual cost and Eco-indicator 99. An open-loop study analyzed the relationship between manipulable variables and output variables using total condition nu... [more]
Integrating Dynamic Risk Assessment with Explicit Model Predictive Control via Chance-Constrained Programming
Sahithi Srijana Akundi, Yuanxing Liu, Austin Braniff, Beatriz Dantas, Shayan S Niknezhad, Faisal Khan, Yuhe Tian, Efstratios N Pistikopoulos.
June 27, 2025 (v1)
Keywords: Bayesian risk analysis, Chance-constrained programming, Dynamic risk assessment, Model Predictive Control, Multi-parametric programming, Safety-aware control.
Maintaining operational efficiency while ensuring safety is a longstanding challenge in industrial process control, particularly in high-risk environments. This paper presents a novel Dynamic Risk-Informed Explicit Model Predictive Control (R-eMPC) framework that integrates safety and operational objectives using probabilistic constraints and real-time risk assessments. Unlike traditional approaches, this framework dynamically adjusts safety thresholds based on Bayesian updates, ensuring a balanced trade-off between reliability and efficiency. The validation of this approach is illustrated through a case study on tank level control, a safety-critical process where maintaining the liquid level within predefined safety limits is paramount. The results demonstrate the framework’s capability to optimize performance while maintaining robust safety margins. By emphasizing adaptability and computational efficiency, this research provides a scalable solution for integrating safety into real-ti... [more]
Physics-based and data-driven hybrid modelling and dynamic adaptive multi-objective optimization of chemical reactors for CO2 capture via enhanced weathering
Yalun Zhao, Jin Xuan, Lei Xing.
June 27, 2025 (v1)
Keywords: Carbon Dioxide Capture, Chemical reactors, Data-driven, Enhanced weathering, Optimization.
Enhanced weathering (EW) of alkaline minerals in chemical reactors with a controlled environment is recognized as a promising approach for gigaton-level carbon dioxide removal. However, reactor configuration and operating conditions must be optimized to balance the interfacial areas between gas, liquid and solid phases prior to industrial application. We developed a physics-based and data-driven hybrid modelling approach, coupled with multi-objective optimization, to study and compare three typical chemical reactors, i.e., trickle bed, packed bubbling columns, and stirred slurry reactors, and the optimal design to improve CO2 capture rate and reduce energy and water consumptions. Then an adaptive optimization is proposed to dynamically adjust the operating of the reactors in response to intermittent CO2 emission and renewable energy supply. Results indicated that forced stirring enhances CO2 capture rates by accelerating mass transport but increases energy consumption. Trickle bed reac... [more]
Optimization of Heat Transfer Area for Multiple Effects Desalination (MED) Process
Salih M. Alsadaie, Sana I. Abukanisha, Amhamed A. Omar, Iqbal M. Mujtaba.
June 27, 2025 (v1)
Keywords: gProms, Heat Transfer Area, MED Desalination, Modelling and Simulations, Optimization.
Seawater desalination is considered as the only available solution that can cope with the increasing demand for freshwater around the world. Improving the desalination techniques may help to cut off the cost and increase sustainability. In this paper, a mathematical model describing the MED process is developed within gPROMs software. The model includes all the necessary mass and energy balance equations together with thermodynamic and physical properties equations. The model predictions are validated against the actual plant data before using the model for optimizing the process to achieve minimum heat transfer area. For two different operating conditions (summer and winter) and a fixed production demand, the heat transfer area is minimised while optimising different parameters of the MED process. The results showed that a 10.4% reduction in the heat transfer area can be achieved under summer operating conditions and around 26% decrease in the heat transfer area can be met under winte... [more]
Enhancing Energy Efficiency of Industrial Brackish Water Reverse Osmosis Desalination Process using Waste Heat
Alanood A. Alsarayreh, Mudhar A. Al-Obaidi, Iqbal M. Mujtaba.
June 27, 2025 (v1)
Keywords: Arab Potash Company, Brackish water desalination, Reverse Osmosis process, Simulation, Specific energy consumption.
The Reverse Osmosis (RO) system has the potential as a vibrant technology to generate high-quality water from brackish water sources. Nevertheless, the progressive growth in water and electricity demands necessitates the development of a sustainable desalination technology. This can be achieved by reducing the specific energy consumption of the process, which would also reduce the environmental footprint. This study proposes the concept of reducing the overall energy consumption of a multistage multi-pass RO system of Arab Potash Company (APC) in Jordan via heating the feed brackish water. The utilisation of waste heat generated from different units of production plant of APC such as steam condensate supplied to a heat exchanger is a feasible technique to heat brackish water entering the RO system. To systematically assess the contribution of water temperature on the performance metrics including specific energy use, a generic model of RO system is developed. Model based simulation is... [more]
Machine Learning-Aided Robust Optimisation for Identifying Optimal Operational Spaces under Uncertainty
Sam Kay, Mengjia Zhu, Amanda Lane, Jane Shaw, Philip Martin, Dongda Zhang.
June 27, 2025 (v1)
Keywords: Dynamic optimisation, Machine Learning, Operational regions, Optimisation under uncertainty, Process control.
Process optimisation and quality control are crucial in process industries for minimising product waste and improving plant economics. Identifying robust operational regions that ensure both product quality and performance is particularly valued in industries. However, this task is complicated by operational uncertainties, which can lead to violations of product quality constraints and significant batch discards. We propose a novel robust optimisation strategy that integrates advanced machine learning and process systems engineering to systematically identify optimal operational regions under uncertainty. Our approach begins by using a process model to screen a broad operational space across various uncertainty scenarios, pinpointing promising control trajectories to satisfy process constraints and product quality. Machine learning is then employed to cluster these trajectories into sub-regions. Finally, a two-layer dynamic optimisation framework is employed to determine the optimal co... [more]
Accelerating Solvent Design Optimisation with Group-Contribution Machine Learning Surrogate Classifiers
Lifeng Zhang, Benoît Chachuat, Claire S. Adjiman.
June 27, 2025 (v1)
Keywords: Group contribution, Machine Learning, Optimisation, Phase stability, Solvent design.
Asserting the phase stability of multi-component mixtures is an important task in computer-aided mixture/blend design (CAMbD), but it is often hindered by the lack of reliable and tractable models. In this paper, we propose a group-contribution machine-learning (GC-ML) method to predict phase coexistence for a large set of ternary mixtures consisting of two solvents and one (fixed) solute. Each solvent is represented by a vector of functional group numbers, encoded by integer values. The solvent vectors are combined with mixture composition and temperature to form the input features to a GC-ML surrogate classifier, which distinguishes between four types of stable phase configurations as possible outputs: liquid (L), solid-liquid (SL), liquid-liquid (LL) or solid-liquid-liquid (SLL). To explore the performance of the trained GC-ML multi-classifier, it is embedded as a surrogate phase-stability constraint in the optimisation of an ibuprofen crystallisation process. A two-step solution s... [more]
A Bayesian optimization approach for data-driven Petlyuk distillation column
Alexander Panales-Pérez, Antonio Flores-Tlacuahuac, Luis Fabián Fuentes-Cortés, Miguel Angel Gutierrez-Limon, Mauricio Sales-Cruz.
June 27, 2025 (v1)
Recently, the focus on increasing process efficiency to reduce energy consumption has driven the adoption of alternative systems, such as Petlyuk distillation columns. It has been proven that, when compared to conventional distillation columns, these systems offer significant energy and cost savings. From an economic standpoint, achieving high-purity products alone does not ensure the feasibility of a process. Instead, balancing the trade-off between product purity and cost necessitates multi-objective optimization. While conventional optimization methods are effective, novel strategies like Bayesian optimization offer distinct advantages for handling complex systems. Bayesian optimization requires no explicit mathematical model and can efficiently optimize even when starting from a single initial point. However, as a black-box method, it demands a detailed analysis of hyperparameters, such as the acquisition function and the number of initial points, to ensure optimal performance. Thi... [more]
Probabilistic Model Predictive Control for Mineral Flotation using Gaussian Processes
Victor Dehon, Paulina Quintanilla, Antonio Del Rio Chanona.
June 27, 2025 (v1)
Keywords: Gaussian Processes, Machine Learning, Mineral Flotation, Model Predictive Control.
Recent advancements in machine learning and time series analysis have opened new avenues for improving predictive control in complex systems such as mineral flotation. Techniques leveraging multivariate predictive control in mineral flotation have seen significant progress in recent years. However, challenges in developing an accurate dynamic model that encapsulates both the pulp and froth phases have hindered further advancements. Now, with a readily available model containing equations that describe the physics of flotation froths, an opportunity for novel control strategies presents itself. In this study, a Gaussian Process (GP) Model Predictive Control (MPC) strategy is proposed to integrate uncertainty quantification directly into the control framework. By leveraging the probabilistic nature of GP models, this approach captures process variability and adapts dynamically to new data, ensuring continuous refinement of the GP model within the MPC strategy. Unlike previous implementat... [more]
Design of Microfluidic Mixers using Bayesian Shape Optimization
Rui Fonseca, Fernando Bernardo.
June 27, 2025 (v1)
Keywords: Computational Fluid Dynamics, Geometry Optimization, Micromixing, Multi-objective Optimization.
Microfluidic mixing has gained popularity in the Pharmaceutical Industry due to its application in the field of Nano-based Drug Delivery Systems (DDS). The flow conditions in Microfluidic mixers enable very efficient mixing conditions, which are crucial for the production of Nanoparticles by Flash Nanoprecipitation (FNP), as it enables reproducible production of particles with low-size variability. Mixer geometry is one of the most determinant factors, as it largely determines the flow patterns and the degree of contact between the two mixing streams. In this paper, a shape optimization methodology using Computational Fluid Dynamics (CFD) and Bayesian optimization is applied to the toroidal micromixer design, considering three different operating conditions. It consists of first defining a geometry solution space and then using Multi-Objective Bayesian optimization to explore the different designs. Mixer performance is evaluated with CFD simulations and two objective functions are cons... [more]
Advanced Regulatory Control Structure for Proton Exchange Membrane Water Electrolysis Systems
Marius Fredriksen, Johannes Jäschke.
June 27, 2025 (v1)
Keywords: Active Constraint Control, Advanced Regulatory Control, Modelling, PEM electrolysis.
Due to the intermittent nature of most renewable energy sources, developing good and flexible control structures for green electrolysis systems is crucial for maintaining efficient and safe plant operation. This work uses the “top-down” section of Skogestad’s plantwide control procedure to propose a suitable control architecture for PEM electrolysis systems based on advanced regulatory control. Advanced regulatory control structures, such as active constraint control, may offer several advantages over MPC and AI-based control methods as they are computationally less expensive, less affected by model accuracy, easier to scale, and offer fast disturbance rejection. In our approach, we first mapped the constraint regions for the system. Then, we reduce the complexity by reformulating the optimization problem slightly, to remove some constraint regions to obtain a simpler solution structure that gives a negligible loss. Finally, we propose an active constraint control architecture using PI... [more]
Optimal Design of Extraction-Distillation Hybrid Processes by Combining Equilibrium and Rate-Based Modeling
Kai F. Kruber, Anjali Kabra, Lukas Polte, Andreas Jupke, Mirko Skiborowski.
June 27, 2025 (v1)
Keywords: Hybrid Processes, Process Design, Superstructure Optimization.
Liquid-liquid extraction (LLX) is an essential technique for separating heat-sensitive, highly diluted, or azeotropic mixtures. However, the design and optimization of LLX processes can be challenging due to mass transfer limitations and complex fluid dynamics. While distillation can often be modeled using equilibrium-based (EQ-based) approaches with (constant) height equivalent to theoretical stage (HETS) values, these kinetic effects can limit the applicability of EQ-based LLX models for conceptual design. Non-equilibrium (NEQ) or rate-based modeling can account for detailed mass transfer and fluid dynamics but further increases the nonlinearity and complexity of the respective optimization problems, which should account for closed-loop solvent recovery. To successfully address these complexities, we propose an integrated methodology combining NEQ-based simulation with EQ-based superstructure optimization to design a hybrid extraction-distillation process. An NEQ model is first used... [more]
Multi-Model Predictive Control of a Distillation Column
Mehmet Arici, Wachira Daosud, Jozef Vargan, Miroslav Fikar.
June 27, 2025 (v1)
Keywords: Data-based Modeling, Distillation column, Model Predictive Control, Multiple Models.
Successful implementation of optimization-driven control techniques, such as model predictive control (MPC), is highly dependent on an accurate and detailed model of the process. As complexity in the system increases, linear approximation used in MPC may result in poor performance since a critical operating point is valid in only a small neighborhood of operation. To address this problem, this paper proposes a collaborative approach that combines linear and data-based models to predict state variables individually. The outputs of these models, along with constraints, are then incorporated into the MPC algorithm. For data-based process model, a multi-layered feed-forward network is used. Additionally, the offset-free technique is applied to eliminate steady-state errors resulting from model-process mismatch. To demonstrate the results, a binary distillation column process which is multivariable and inherently nonlinear is chosen as testbed. We compare the performance of the proposed met... [more]
Safe Bayesian Optimization in Process System Engineering
Donggyu Lee, Ehecatl Antonio del Rio Chanona.
June 27, 2025 (v1)
Keywords: Data-Driven Optimization, Model Uncertainty, Safe Bayesian Optimization.
Safe Bayesian Optimization (Safe BO) has demonstrated significant promise in enhancing data-driven optimization strategies in safety-critical settings, where model discrepancies, noisy measurements, and unknown safety constraints are prevalent. Despite these advancements, there still remains a limited understanding on the effectiveness and applicability of these Safe BO methods, particularly within process system engineering. Specifically, this study adapts and examines Safe Exploration for Optimization with Gaussian Processes (SafeOpt), Goal-oriented Safe Exploration (GoOSE), Gaussian Processes with Trust Region (GPs-TR) and Adversarially Robust Gaussian Processes (StableOpt). Methods such as SafeOpt and GoOSE face challenges in managing continuous systems due to their reliance on system discretization and together with StableOpt, lack the capability to manage multiple safety constraints. Thus, this work presents a comprehensive evaluation of state-of-the-art safe BO methods, with our... [more]
Learning-based Control Approach for Nanobody-scorpion Antivenom Optimization
Juan Camilo Acosta-Pavas, David Camilo Corrales, Susana María Alonso Villela, Balkiss Bouhaouala-Zahar, Georgios Georgakilas, Konstantinos Mexis, Stefanos Xenios, Theodore Dalamagas, Antonis Kokossis, Michael O'donohue, Luc Fillaudeau, César Arturo Aceves-Lara.
June 27, 2025 (v1)
Keywords: EColi, Model Predictive Control, Protein production, Reinforcement Learning, TD3.
One market scope of bioindustries is the production of recombinant proteins for its application in serotherapy. However, its process's monitoring and optimization present limitations. There are different approaches to optimize bioprocess performance; one is using model-based control strategies such as Model Predictive Control (MPC). Another strategy is learning-based control, such as Reinforcement Learning (RL). In this work, an RL approach was applied to maximize the production of recombinant proteins in E. coli at the induction phase using as a control variable the substrate feed flow rate (Fin). The RL model was trained using the actor-critic Twin-Delayed Deep Deterministic (TD3) Policy Gradient agent. The reward corresponded to the maximum value of protein productivity. The environment was represented with a dynamic hybrid model. The optimization was evaluated by stages of two hours to check the protein productivity performance. Afterwards, the results were compared with an MPC app... [more]
Design of Process Systems for Flexibility and Resilience Using Multi-Parametric Programming
Natasha J. Chrisandina, Eleftherios Iakovou, Efstratios N. Pistikopoulos, Mahmoud M. El-Halwagi.
June 27, 2025 (v1)
Keywords: Design Under Uncertainty, Flexibility, Multiscale Modelling, Optimization, Resilience.
Process systems are negatively impacted by manufacturing uncertainties, and increasingly by unknown-unknown disruptive events. To this effect, systems need to be designed with the inherent flexibility and resilience to overcome the impacts of uncertainties and disruptions respectively as it is more challenging to retrofit existing systems with such capabilities. To this end, we propose a methodology based on flexibility analysis to systematically explore the feasibility of design alternatives under parameter uncertainty and discrete disruption scenarios simultaneously. Multi-parametric programming is utilized to generate explicit relationships between design decisions and the resulting system’s ability to maintain feasible operations under uncertainty and disruptive events. We capture this ability by introducing the Combined Flexibility-Resilience Index (CFRI), which describes the likelihood that the system is feasible under the relevant uncertainty and disruption sets. With explicit f... [more]
A simple model for control and optimisation of a produced water re-injection facility
Rafael D. De Oliveira, Edmary Altamiranda, Gjermund Mathisen, Johannes Jäschke.
June 27, 2025 (v1)
Keywords: Control, Modelling, Optimisation, Subsea, Water Injection.
Model-based control and optimisation strategies can play a key role in improving energy efficiency and reducing emissions into produced water re-injection facilities. However, building a model that adequately describes the plant is challenging and can also be used in online decision-making procedures. This work proposes a simple model based on a real water re-injection facility operating on the Norwegian continental shelf. The results demonstrate the model's flexibility, which could be fitted to different plant operating points while being fast to solve when embedded in optimisation problems. The developed model is expected to aid the implementation of strategies like self-optimising control and real-time optimisation on produced water re-injection facilities.
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