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Showing records 455 to 479 of 504. [First] Page: 1 16 17 18 19 20 21 Last
Kernel-based estimation of wind farm power probability density considering wind speed and wake effects due to wind direction
Samuel Martínez-Gutiérrez, Daniel Sarabia, Alejandro Merino
June 27, 2025 (v1)
Keywords: kernel estimators, Wake effect, wind farm power distribution
This study compares the probability density function (PDF) of the power generated by a wind farm obtained analytically with the PDF considering the wake effect between wind turbines, a phenomenon that reduces the power generation capacity of wind farms. Instead of considering the wake effect in the analytical method, which is complex and difficult to solve, it has been proposed to use kernel estimators to obtain the PDF. To calculate it, a wind farm power output data set has been used. This data set was generated using historical wind speed and direction data and the Katic multiple wake model. Discrepancies between the analytical PDF and PDF fitted with the kernel estimators, can lead to an overstatement of the annual available energy by 4 an 9 %, depending on the complexity of the wind farm layout. These inconsistencies can have significant implications for production planning, wind farm design, and integration of wind power into the grid. Therefore, this analysis underscores the nece... [more]
A 2D Axisymmetric Transient State CFD Modelling of a Fixed-bed Reactor for Ammonia Synthesis
Leonardo Bravo, Camilo Rengifo, Martha Cobo, Manuel Figueredo
June 27, 2025 (v1)
Power-to-Ammonia technology offers sustainable pathways for energy storage and chemical production, with fixed-bed reactors being critical components for efficient synthesis. Understanding reactor dynamics under varying conditions is essential for optimizing these systems, particularly when integrated with intermittent renewable energy sources. This study aims to develop and validate a 2D axisymmetric CFD model for analysing the dynamic response of a ruthenium-catalysed ammonia synthesis reactor to thermal perturbations. The model incorporates detailed reaction kinetics, multicomponent mass transport, and heat transfer mechanisms to predict system behaviour under transient conditions. Results reveal that a step increase in wall temperature from 400°C to 430°C enhances NH3 concentration by 136% (from 2.2 to 5.1 vol.%), with rapid system stabilization achieved within 0.5 seconds. The thermals response maintains consistent heat transfer patterns, exhibiting ~400K differentials between inl... [more]
High-pressure Membrane Reactor for Ammonia Decomposition: Modeling, Simulation and Scale-up using a Python-Aspen Custom Modeler Interface
Leonardo A. C. Avilez, Antonio E. Bresciani, Claudio A. O. Nascimento, Rita M. B. Alves
June 27, 2025 (v1)
Keywords: Ammonia decomposition, Hydrogen, Membrane reactor, Modeling and simulation, Reactor design
One of the current challenges for hydrogen-related technologies is its storage and transportation. The low volumetric density and low boiling point require high-pressure and low-temperature conditions for effective transport and storage. A potential solution to these challenges involves storing hydrogen in chemical compounds that can be easily transported and stored, with hydrogen being released through decomposition processes. Ammonia stands out as a promising hydrogen carrier due to its high hydrogen content (17.8% by weight), relatively mild liquefaction conditions (~10 bar at 25°C), and the availability of a well-established storage and transportation infrastructure. The objective of this study was to develop a mathematical model to analyze and design a membrane fixed-bed reactor (MFBR) for large-scale ammonia decomposition. The kinetic model for the Ru-K/CaO catalyst was obtained from the literature and validated using the experimental data reported in the original study. This ca... [more]
Dynamic Operability Analysis of modular heterogeneous electrolyzer plants using system co-simulation
Michael Große, Isabell Viedt, Hannes Lange, Leon Urbas
June 27, 2025 (v1)
Keywords: Co-Simulation, Hydrogen, Matlab, Modelling & Simulations, Process Control, Process Operations
In the upcoming decades, the scale-up of hydrogen production will play a crucial role for the integration of renewable energy into energy system. One scale-up strategy is the numbering-up of standardized electrolysis units in modular plant concepts. The use of modular plants can support the integration of different technologies into heterogeneous electrolyzer plants to leverage technology-specific advantages and counteract disadvantages. This work focuses on the analysis of technical operability of large-scale modular electrolyzer plants in heterogeneous plant layouts using co-simulation. Developed process models of low-temperature electrolysis components are combined in Simulink as shared environment. Strategies to control process parameters, like temperatures, pressures and flowrates in the subsystems and the overall plant, are developed and presented. An operability analysis is carried out to verify the functionality of the presented plant layout and control strategies. The dynamic... [more]
Techno – Economic Evaluation of Incineration, Gasification, and Pyrolysis of Refuse Derived Fuel
Matej Koritár, Maroš Križan, Juma Haydary
June 27, 2025 (v1)
Keywords: gasification, incineration, pyrolysis, refuse derived fuel
New ways of reducing environmental impact of solid waste are constantly developed. Thermochemical conversion with focus on material or energy recovery is one of the viable options. To make the feedstock properties more suitable for such a process, refuse derived fuel (RDF) is created. Although several studies have focused on thermochemical conversion in recent years, only few have comprehensively compared the main aspects of incineration, gasification, and pyrolysis processes from multiple aspects. This study focuses on mathematical modeling of these three processes in the Aspen Plus environment. Comparison from economic, safety, and environmental viewpoints was performed. As a base for the calculations, 10 t/h of RDF was selected. All three processes demonstrated the suitability to be used for energy recovery. Pyrolysis showed the greatest potential for material recovery. Payback period was used as a parameter of economic comparison with pyrolysis being the most profitable process. Ba... [more]
Transferring Graph Neural Networks for Soft Sensor Modeling using Process Topologies
M.F. Theisen, G.M.H. Meesters, A.M. Schweidtmann
June 27, 2025 (v1)
Keywords: Data-driven modeling, Digital twins, Transfer learning
Data-driven soft sensors help in process operations by providing real-time estimates of otherwise hard to measure process quantities, e.g., viscosities or product concentrations. Currently, soft sensors need to be developed individually per plant. Using transfer learning, machine learning based soft sensors could be re-used and fine-tuned across plants and applications. However, transferring data-driven soft sensor models is in practice often not possible, because the fixed input structure of standard soft sensor models prohibits transfer if, e.g., the sensor information is not identical in all plants. We propose a topology-aware graph neural network approach for transfer learning of soft sensor models across multiple plants. In our method, plants are modeled as graphs: Unit operations are nodes, streams are edges, and sensors are embedded as attributes. Our approach brings two advantages for transfer learning: First, we not only include sensor data but also crucial information on the... [more]
Synthesis of Liquid Mixture Separation Networks Using Multi-Material Membranes
Harshit Verma, Christos T. Maravelias
June 27, 2025 (v1)
Subject: Materials
Keywords: Liquid Mixture Separations, Membrane Network Synthesis, Mixed-Integer Nonlinear Programming, Superstructure-based Optimization
The synthesis of membrane networks to recover components from liquid mixture is challenging due to an extensive array of feasible network configurations and the added complexity of modeling membrane permeators caused by nonidealities in liquid mixtures. We present a mixed-integer nonlinear programming (MINLP) framework for synthesizing membrane networks to recover multiple components from liquid mixtures. First, we develop a physics-based nonlinear surrogate model to accurately describe crossflow membrane permeation. Second, we propose a richly connected superstructure to represent numerous potential network configurations. Third, the two aforementioned elements are integrated into an MINLP model to determine the optimal network configuration. Finally, the effectiveness of the proposed approach is demonstrated through a range of applications.
Data-Driven Modelling of Biogas Production Using Multi-Task Gaussian Processes
Benaissa Dekhici, Michael Short
June 27, 2025 (v1)
Keywords: Anaerobic Digestion, Biogas Production, Data-driven Modelling, Mechanistic Modeling, Multi-Task Gaussian Process, Predictive Analytics
This study introduces the novel application of a Multi-Task Gaussian Process (MTGP) model to predict biogas production and critical anaerobic digestion (AD) performance indicators (soluble COD, volatile fatty acids (VFAs)), addressing feedstock variability and dynamic process behavior. We compare the MTGP against the widely used mechanistic AM2 model to evaluate its accuracy and applicability for probabilistic modeling in AD systems. The MTGP framework leverages multi-output correlations and uncertainty quantification, trained on experimental data, achieving superior predictive performance over AM2in this study, with lower RMSE (SCOD: 0.32 g/L; VFAs: 0.87 mmol/L; biogas: 0.15 L/day) and higher R² values (SCOD:0.91, VFAs:0.94, biogas :0.88) under the conditions tested. While AM2 provides biochemical insights, its reliance on unvalidated assumptions may limits robustness. The flexibility of MTGP and precision suggest its potential for real-world applications such as Bayesian Optimization... [more]
Dimple Shape Design to Enhance Heat Transfer in Plate Heat Exchangers
Mitchell J. Stolycia, Lande Liu
June 27, 2025 (v1)
Keywords: Ansys Fluent, Computational Fluid Dynamics, Dimple, Heat transfer enhancement, Plate Heat Exchangers
This article studies four dimple shapes: spherical, smoothed-spherical, normal distribution, and error distribution and how they enhance heat transfer on a plate within a plate heat exchanger using computational fluid dynamics. The dimple that showed the greatest efficiency of heat transfer was the normal distribution dimple, giving a temperature increase of 7.5 times of the smoothed-spherical and 15% more than the error distribution dimple shape. This was primarily due to the large increase in the turbulent kinetic energy caused by the eddies created upon the flow over the normal distribution shape. With the normal distribution shape being found to be the most effective in enhancing heat transfer, a layout of multiple normal distribution dimples based on the stage of flow development was also studied. It was found that a fully developed flow resulted in 9.5% more efficiency than half developed flow and 31% more efficient than placing dimples directly next to each other.
Surrogate Modeling of Twin-Screw Extruders Using a Recurrent Deep Embedding Network
Po-Hsun Huang, David Shan-Hill Wong, Yen-Ming Chen, Chih-Yu Chen, Meng-Hsin Chen, Yuan Yao
June 27, 2025 (v1)
Keywords: deep learning, surrogate modeling, twin-screw extruder
Optimizing twin-screw extruder (TSE) performance is critical in the plastics industry but is often resource-intensive. This study introduces a novel surrogate modeling approach using a Recurrent Deep Embedding Network (RDEN) that integrates deep autoencoders with recurrent neural networks to capture sequential dependencies and physical relationships in TSE processes. Leveraging Progressive Latin Hypercube Sampling (PLHS), the RDEN achieves robust predictions of key process variable, like mean residence time. Results demonstrate the model’s accuracy, generalization capabilities, and potential for automated screw design optimization.
Numerical Analysis of the Hydrodynamics of Proximity Impellers using the SPH Method
Maria Soledad Hernández-Rivera, Karen Guadalupe Medina-Elizarraraz, Jazmín Cortez-González, Rodolfo Murrieta-Dueñas, Carlos E. Alvarado-Rodríguez, José de Jesús Ramírez-Minguela, Juan Gabriel Segovia Hernández
June 27, 2025 (v1)
Keywords: Computational Fluid Dynamics, homogenization, hydrodynamics, Proximity impellers, SPH
Mixing is a critical operation in numerous industrial processes, traditionally performed in agitated tanks to ensure homogenization. Despite its importance, the design of tanks and impellers is often neglected during agitation system selection, resulting in excessive energy consumption and inefficient mixing. To mitigate these challenges, Computational Fluid Dynamics (CFD) serves as a powerful tool for analyzing tank hydrodynamics and quantifying mixing times. CFD employs mathematical models to simulate mass, heat, and momentum transport phenomena within fluid systems. Among the latest advancements in modeling stirred tank hydrodynamics is Smoothed Particle Hydrodynamics (SPH), a mesh-free Lagrangian approach that tracks individual particles characterized by properties such as mass, position, velocity, and pressure. SPH provides significant advantages over traditional mesh-based methods by accurately capturing fluid behavior through particle interactions. In this study, the performance... [more]
Computational Intelligence Applied to the Mathematical Modeling of the Esterification of Fatty Acids with Sugars
Lorenzo G. Tonetti, Ruy de Sousa Jr
June 27, 2025 (v1)
Keywords: Artificial Neural Network, Biosurfactants, Fuzzy modeling
The mathematical modeling of enzymatic reactors for esterification of fatty acids with sugars in the production of biosurfactants has been a useful tool for studying and optimizing the process. In particular, artificial neural networks and fuzzy systems emerge as promising methods for developing models for those processes. In this work, regarding artificial neural networks application, coupling of networks to reactor mass balances was considered in hybrid models to infer reactant concentrations over time. Computationally, an algorithm was constructed incorporating material balances, neural reaction rates, and step-by-step numerical integration (employing the classical Runge-Kutta method). Besides, based on an available set of experimental data, fuzzy logic was applied for modeling and optimization of the conversion of esterification as a function of operational process parameters (such as time, temperature and molar ratio of substrates). All computational development was carried out us... [more]
Proceedings of the 35th European Symposium on Computer Aided Process Engineering (ESCAPE 35)
Jan Van Impe, Grégoire Léonard, Satyajeet Sheetal Bhonsale, Monika Polanska, Filip Logist
June 27, 2025 (v1)
Keywords: Artificial Intelligence, Education, Modelling, Numerical Methods, Optimization, Process Control, Process Design, Process Systems Engineering, Simulation
Contains 423 original peer-reviewed research articles presented at the 35th European Symposium on Computer Aided Process Engineering (ESCAPE 35). Subject categories include Modelling and Simulation, Sustainable Product Development and Process Design, Large Scale Design and Planning/Scheduling, Model Based Optimisation and Advanced Control, Concepts, Methods and Tools, Digitalization and AI, CAPEing with Societal Challenges, CAPE Education and Knowledge, PSE4Food and Biochemical, and PSE4BioMedical and (Bio)Pharma.
Design of biocarbon by-product utilization processes for ironmaking and steelmaking - Aspen Plus and ProMax Simulations
Jamie Rose, Giancarlo Dalle Ave, Thomas A. Adams II
May 9, 2025 (v2)
Keywords: Autothermal Reforming, Biocarbon, Blast Furnace, Direct Reduced Iron, Ironmaking, Pyrolysis, Shaft Furnace, Steelmaking, Waste-to-Energy
This submission contains an Aspen Plus V12.1 file (.bkp) and a ProMax V6 file (.pmx) as part of the publication "Design of biocarbon by-product utilization processes for ironmaking and steelmaking". The Aspen Plus file contains a simulation of an autothermal reforming reactor for a bio-oil model using an RGibbs block, as well as heat exchangers and condensers used for determining equipment and utility costs. The ProMax file contains a simulation of a carbon dioxide removal process using an absorber and stripper loop with recycled MDEA solvent.
Supplementary material. System analysis and optimization of replacing surplus refinery fuel gas by coprocessing with HTL bio-crude off-gas in oil refineries.
Erik Lopez-Basto, Eliana Lozano Sanchez, Samantha Elanor Tanzer, Andrea Ramirez Ramirez
March 14, 2025 (v1)
This study evaluates the introduction of Carbon Capture and Utilization (CCU) process in two Colombian refineries, focusing on their potential to reduce CO2 emissions and their associated impacts under a scenario aligned with the Net Zero Emissions by 2050 Scenario defined in the 2023 IEA report. The work uses a MILP programming tool (Linny-R) to model the operational processes of refinery sites, incorporating a net total cost calculation to optimize process performance over five-year intervals. This optimization was constrained by the maximum allowable CO2 emissions. The methodology includes the calculation of surplus refinery off-gas availability, the selection of products and CCU technologies, and the systematic collection of data from refinery operations, as well as scientific and industrial publications. The results indicate that integrating surplus refinery fuel gas (originally used for combustion processes) and HTL bio-crude off-gas (as a source of biogenic CO2) can significantl... [more]
Flow Simulation of Plastic Life Cycle Considering Carbon Renewability and Environmental Impact
Kota Chida, Heng Yi Teah, Yuichiro Kanematsu, Yasunori Kikuchi
March 14, 2025 (v1)
Subject: Environment
Keywords: Biomass-derived plastic, Carbon renewability, Flow analysis, Life Cycle Assessment, Recycling
This document is supplementary material for the full paper titled "Flow Simulation of Plastic Life Cycle Considering Carbon Renewability and Environmental Impact," submitted for the ESCAPE 35 conference. It includes a detailed explanation of the system boundary construction method used in the flow analysis, as well as the data sources for information such as the GHG emission intensities, which could not be explained in the main text.
Decarbonizing Quebec’s Chemical Sector: Bridging sector disparities with simplified modeling
Mélissa Lemire, Marie-Hélène Talbot, Rose-Marie Côté, Sylvain Larose
March 14, 2025 (v1)
Keywords: Decarbonization, Design Under Uncertainty, Energy Conversion, Modeling and Simulations
In Quebec, the chemical sector is rapidly changing, with old facilities closing and new ones opening. Similar situation is happening in other geographies as well. Utilities need to understand the energy needs of these industries, particularly as they transition towards decarbonization. By studying existing data, they can estimate energy requirements and identify alternative technologies such as heat pumps, electric boilers, biomass boilers, and green hydrogen. Two key indicators to measure decarbonization performance: the Decarbonization Efficiency Coefficient and the GHG Performance Indicator. Decarbonizing could significantly reduce energy use, depending on the selected technologies, leading to variations of 6.1 TWh for electricity and 3.5 TWh for biomass.
Process Design of an Industrial Crystallization Based on Degree of Agglomeration
YUNG-SHUN KANG
March 13, 2025 (v1)
Keywords: Batch Process, Crystallization, Dynamic Modelling, Population Balance Modeling
This study proposes a model-based approach utilizing a hybrid population balance model (PBM) to optimize temperature profiles for minimizing agglomeration and enhancing crystal growth. The PBM incorporates key mechanisms—nucleation, growth, dissolution, agglomeration, and deagglomeration—and is ap-plied to the crystallization of an industrial active pharmaceutical ingredient (API), Compound K. Parameters were estimated through prior design of experiments (DoE) and refined via additional thermocycle experiments. In-silico DoE simulations demonstrate that the hybrid PBM outperforms traditional methods in assessing process performance under agglomeration-prone conditions. Results confirm that thermocycles effectively reduce agglomeration and promote bulk crystal formation, though their efficiency plateaus be-yond a certain cycle number. This model-based approach provides a more robust strategy for agglomeration control compared to conventional methods, offering valuable insights for indus... [more]
DIGITAL SUPPLEMENTARY MATERIAL: Comparative Analysis of PharmHGT, GCN, and GAT Models for Predicting LogCMC in Surfactants.
Gabriela Theis Marchan, Teslim Olayiwola, Jose A Romagnoli
March 13, 2025 (v1)
Keywords: Critical Micelle Concentration, Graph Neural Networks, Machine Learning, Property Prediction
Predicting the critical micelle concentration (CMC) of surfactants is essential for optimizing their applications in various industries, including pharmaceuticals, detergents, and emulsions. In this study, we investigate the per-formance of graph-based machine learning models, specifically Graph Convolutional Networks (GCN), Graph At-tention Networks (GAT), and a graph-transformer model, PharmHGT, for predicting CMC values. We aim to de-termine the most effective model for capturing the structural and physicochemical properties of surfactants. Our results provide insights into the relative strengths of each approach, highlighting the potential advantages of transformer-based architectures like PharmHGT in handling molecular graph representations compared to traditional graph neural networks. This comparative study serves as a step towards enhancing the accuracy of CMC predictions, contributing to the efficient design of surfactants for targeted applications.
Digital supplementary material for the article entitled "The Paradigm of Water and Energy Integration Systems (WEIS): Methodology and Performance Indicators"
Castro Oliveira Miguel, Castro Oliveira Rita, Castro Pedro M., Matos Henrique A.
March 13, 2025 (v1)
Keywords: energy recovery, per-formance indicators, Sustainability, Water and energy integration systems, water-energy nexus
This document contains digital supplementary material (characterization of the case-studies, developed simulation models (and final configurations), optimisation models and post-processing assessments) related to the article entitled “The Paradigm of Water and Energy Integration Systems (WEIS): Methodology and Performance Indicators”, which is part of the peer reviewed conference proceeding of the 35th European Symposium on Computer Aided Process Engineering (ESCAPE 35). The present content has been adapted from the PhD thesis entitled "Simulation and Optimisation of Water and Energy Integration Systems (WEIS): An Innovative Approach for Process Industries".
An MILP model to identify optimal strategies to convert soybean straw into value-added products
Ivaldir José Tamagno Junior, Bruno F. Santoro, Omar Guerra, Moisés Teles dos Santos
March 12, 2025 (v1)
Subject: Optimization
Keywords: Biomass, Biorefinery, Optimization, Pyomo, Soybean
Soybean is a highly valuable global commodity due to its versatility and numerous derivative products. During harvest, all non-seed materials become “straw”. Currently, this waste is pri-marily used for low-value purposes such as animal feed, landfilling, and incineration. To address this, the present work proposes a conceptual biorefinery aimed at converting soybean straw into higher-value products. The study began with data collection to identify potential conversion routes. Based on this information, a superstructure was developed, comprising seven conversion routes: four thermochemical routes (pyrolysis, combustion, hydrothermal gasification, and lique-faction), two biological routes (fermentation and anaerobic fermentation), and one chemical route (alkaline extraction). Each process was evaluated based on product yields, conversion times, and associated capital and operating costs. Using this data, an MILP (Mixed-Integer Linear Program-ming) optimization model was built in Pyomo u... [more]
Closed-Loop Data-Driven Model Predictive Control For A Wet Granulation Process Of Continuous Pharmaceutical Tablet Production
Consuelo Del Pilar Vega Zambrano, Nikolaos A. Diangelakis, Vassilis M. Charitopoulos
March 12, 2025 (v3)
Subject: Uncategorized
Keywords: Continuous pharmaceutical manufacturing, Data-driven control, Quality by control
The document is the digital supplementary material for the article titled "Closed-Loop Data-Driven Model Predictive Control For A Wet Granulation Process Of Continuous Pharmaceutical Tablet Production", submitted to the ESCAPE 35 conference. It contains the state-space equations, mathematical formulation, and additional figures.
Modeling, simulation, and optimization in networked process decision-making in gasoline manufacturing
, , Ahmednooh Mahmoud, Menezes Brenno
February 1, 2025 (v1)
The proposed model focuses on yields and several properties, such as octane number (ON) pre-dictions, in the gasoline production. External streams such as ethanol and methyl terc-butyl ether (MTBE) are imported to the petroleum refinery complementing the gasoline production when boosting ON quality; these imports are considered exogenous independent variables (IVs). On the other hand, numerous trade-offs exist inside the refinery walls (the endogenous IVs) when producing the so-called pure petroleum-refined gasoline (PPRG). These diverse manufacturing IVs (endogenous factors) interplaying with out-of-refinery walls or exogenous options such as ethanol blending and banning MTBE for sustainable liquid fuels are simulated and optimized in NLP problems, whereby linear approaches are proposed in the tailored modeling and optimiza-tion in the search for optimal solutions.
Digital Supplementary Material: Short-Cut Correlations for CO2 Capture Technologies in Small-Scale Applications
So-mang Kim, Joanne Kalbusch, Grégoire Léonard
January 31, 2025 (v1)
Keywords: Carbon Capture, Short-cut Correlations, Small-scale carbon capture, Technoeconomic Analysis
The escalating urgency to address climate change has driven carbon capture (CC) technologies into the spotlight, particularly for large-scale emitters, which benefit from economies of scale. However, small-scale emitters account for a significant share of CO2 emissions, yet such applica-tions remain largely overlooked in the literature. While CC cost is often used as a key perfor-mance indicator (KPI) for CC technologies, the lack of standardized cost estimation methods leads to inconsistencies, complicating comparisons, and hindering the deployment of CC sys-tems. This study addresses these challenges by developing flexible short-cut correlations for selected CC technologies, providing estimates of the total equipment cost (TEC) and energy consumption specific to small-scale applications across various CO2 inlet concentrations (mol%) and capture scales (10 – 100 kt/y). The flexibility of the correlations enables the integration of various cost estimation methods available in the liter... [more]
Integrated LCA and Eco-design Process for Hydrogen Technologies: Case Study of the Solid Oxide Electrolyser.
Gabriel Magnaval, Tristan Debonnet, Manuele Margni
March 14, 2025 (v2)
Subject: Environment
Keywords: Eco-design Process, Life Cycle Assessment, Parametrized Life Cycle Inventory, Solid Oxide Electrolyser
This document contains digital supplementary material (LCA model including parametrized LCI with sources, unit processes and LCA results) related to the article "Integrated LCA and Eco-design Process for Hydrogen Technologies: Case Study of the Solid Oxide Electrolyser" which is submitted to the peer reviewed conference proceeding of the 35th European Symposium on Computer Aided Process Engineering (ESCAPE 35).
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