WSEAS Transactions on Information Science and Applications
Print ISSN: 1790-0832, E-ISSN: 2224-3402
Volume 22, 2025
Deep Reinforcement Learning-Based AI-Powered Techniques for Gas Hold-Up Prediction in Stirred and Sparged Reactors
Authors: ,
Abstract: Gas hold-up is the volume fraction of gas in a gas-liquid mixture, the design of gas-liquid contactors and bioreactors. Gas hold-up prediction in stirred and sparging reactors is a problem that involves predicting the volume fraction of gas in a gas-liquid phase. The Reinforcement Learning problem includes an agent discovering an unidentified atmosphere to accomplish an objective and can be designated by the expansion of predictable increasing compensation. Measuring and adjusting gas hold-up in enthused and spared apparatuses is serious for attracting the competence and presentation of a variety of requests, such as biochemical processes, fermentation, and wastewater treatment. Gas hold-up that is the gas volume ratio in the liquid phase affects reactor productivity, mass transfer rate, and kinetics of the reaction. To generate and appliance a Deep Reinforcement Learning (DRL) structure. To increase the accuracy of gas hold-up predictions and permit real-time adaptive regulator systems the development will use DRLs urbane competencies to imprisonment the complicated diminuendos of multiphase stream schemes. The Z-Score with IQR (Interquartile Range) method was used in the learning to remove after the data. A DRL negotiator that can forecast and recover hydrodynamic possessions is to pardon the planned learning goals to progress. The assumed precise associations of this DRL procedure purpose to the escalation of the exactness correctness and competence of gas hold-up value forecasts in flashed and stimulated devices. The DRL method's aptitude to forecast and enhance gas hold-up in these apparatuses will be inspected using MATLAB. The findings show that Mixture Velocity (m/s)" varies from 0.4 to 2.2 meters per subsequent, Liquid Holdup and goes from 0.905 to 0.955. The approaching probability of the investigation is the allowance of the industrialized DRL structure to a wider assortment of multiphase device schemes and manufacturing procedures.
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Keywords: Deep Reinforcement Learning, Gas hold-up prediction, Gas-Liquid Mixture, IQR (Interquartile Range), Sparged, Stirred Reactors
Pages: 333-343
DOI: 10.37394/23209.2025.22.28