Prediction of Bubble Sizes in Bubble Columns with Machine Learning Methods
Philip Biessey, Hakan Bayer, Christin Theßeling, Eske Hilbrands, Marcus Grünewald
Abstract
Abstract Two Machine Learning algorithms – LASSO and Random Forest – are applied to derive regression models for the prediction of gas bubble diameters using supervised learning techniques. Experimental data obtained from wire‐mesh sensor (WMS) measurements in a deionized water/air system serve as the data base. Python libraries are used to extract features characterizing WMS measurement signals of single passing bubbles. Prediction accuracy is largely increased with the obtained regression models, compared to well‐established methods to predict bubble sizes based on WMS measurements.
Topics & Concepts
BubblePython (programming language)Lasso (programming language)Random forestComputer scienceRegression analysisArtificial intelligenceMachine learningParallel computingOperating systemWorld Wide WebFluid Dynamics and MixingMinerals Flotation and Separation TechniquesNon-Destructive Testing Techniques