Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow

Over the past decades, attention has been brought to the importance of indoor air quality and the serious threat of bio-aerosol contamination towards human health. A novel idea to transport hazardous particles away from sensitive areas is to automatically control bio-aerosol concentrations, by utili...

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Main Author: Wredh, Simon
Format: Others
Language:English
Published: Uppsala universitet, Signaler och system 2020
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-420056
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spelling ndltd-UPSALLA1-oai-DiVA.org-uu-4200562020-09-30T05:49:11ZNeural Network Based Model Predictive Control of Turbulent Gas-Solid Corner FlowengWredh, SimonUppsala universitet, Signaler och system2020computational fluid dynamicsmachine learningsystem identificationcontrol theorymulti-phase flowgas-solid flowranslagrangian particle trackingneural networkmodel predictive controlbio-aerosolControl EngineeringReglerteknikFluid Mechanics and AcousticsStrömningsmekanik och akustikOver the past decades, attention has been brought to the importance of indoor air quality and the serious threat of bio-aerosol contamination towards human health. A novel idea to transport hazardous particles away from sensitive areas is to automatically control bio-aerosol concentrations, by utilising airflows from ventilation systems. Regarding this, computational fluid dynamics (CFD) may be employed to investigate the dynamical behaviour of airborne particles, and data-driven methods may be used to estimate and control the complex flow simulations. This thesis presents a methodology for machine-learning based control of particle concentrations in turbulent gas-solid flow. The aim is to reduce concentration levels at a 90 degree corner, through systematic manipulation of underlying two-phase flow dynamics, where an energy constrained inlet airflow rate is used as control variable. A CFD experiment of turbulent gas-solid flow in a two-dimensional corner geometry is simulated using the SST k-omega turbulence model for the gas phase, and drag force based discrete random walk for the solid phase. Validation of the two-phase methodology is performed against a backwards facing step experiment, with a 12.2% error correspondence in maximum negative particle velocity downstream the step. Based on simulation data from the CFD experiment, a linear auto-regressive with exogenous inputs (ARX) model and a non-linear ARX based neural network (NN) is used to identify the temporal relationship between inlet flow rate and corner particle concentration. The results suggest that NN is the preferred approach for output predictions of the two-phase system, with roughly four times higher simulation accuracy compared to ARX. The identified NN model is used in a model predictive control (MPC) framework with linearisation in each time step. It is found that the output concentration can be minimised together with the input energy consumption, by means of tracking specified target trajectories. Control signals from NN-MPC also show good performance in controlling the full CFD model, with improved particle removal capabilities, compared to randomly generated signals. In terms of maximal reduction of particle concentration, the NN-MPC scheme is however outperformed by a manually constructed sine signal. In conclusion, CFD based NN-MPC is a feasible methodology for efficient reduction of particle concentrations in a corner area; particularly, a novel application for removal of indoor bio-aerosols is presented. More generally, the results show that NN-MPC may be a promising approach to turbulent multi-phase flow control. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-420056UPTEC F, 1401-5757 ; 20046application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic computational fluid dynamics
machine learning
system identification
control theory
multi-phase flow
gas-solid flow
rans
lagrangian particle tracking
neural network
model predictive control
bio-aerosol
Control Engineering
Reglerteknik
Fluid Mechanics and Acoustics
Strömningsmekanik och akustik
spellingShingle computational fluid dynamics
machine learning
system identification
control theory
multi-phase flow
gas-solid flow
rans
lagrangian particle tracking
neural network
model predictive control
bio-aerosol
Control Engineering
Reglerteknik
Fluid Mechanics and Acoustics
Strömningsmekanik och akustik
Wredh, Simon
Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
description Over the past decades, attention has been brought to the importance of indoor air quality and the serious threat of bio-aerosol contamination towards human health. A novel idea to transport hazardous particles away from sensitive areas is to automatically control bio-aerosol concentrations, by utilising airflows from ventilation systems. Regarding this, computational fluid dynamics (CFD) may be employed to investigate the dynamical behaviour of airborne particles, and data-driven methods may be used to estimate and control the complex flow simulations. This thesis presents a methodology for machine-learning based control of particle concentrations in turbulent gas-solid flow. The aim is to reduce concentration levels at a 90 degree corner, through systematic manipulation of underlying two-phase flow dynamics, where an energy constrained inlet airflow rate is used as control variable. A CFD experiment of turbulent gas-solid flow in a two-dimensional corner geometry is simulated using the SST k-omega turbulence model for the gas phase, and drag force based discrete random walk for the solid phase. Validation of the two-phase methodology is performed against a backwards facing step experiment, with a 12.2% error correspondence in maximum negative particle velocity downstream the step. Based on simulation data from the CFD experiment, a linear auto-regressive with exogenous inputs (ARX) model and a non-linear ARX based neural network (NN) is used to identify the temporal relationship between inlet flow rate and corner particle concentration. The results suggest that NN is the preferred approach for output predictions of the two-phase system, with roughly four times higher simulation accuracy compared to ARX. The identified NN model is used in a model predictive control (MPC) framework with linearisation in each time step. It is found that the output concentration can be minimised together with the input energy consumption, by means of tracking specified target trajectories. Control signals from NN-MPC also show good performance in controlling the full CFD model, with improved particle removal capabilities, compared to randomly generated signals. In terms of maximal reduction of particle concentration, the NN-MPC scheme is however outperformed by a manually constructed sine signal. In conclusion, CFD based NN-MPC is a feasible methodology for efficient reduction of particle concentrations in a corner area; particularly, a novel application for removal of indoor bio-aerosols is presented. More generally, the results show that NN-MPC may be a promising approach to turbulent multi-phase flow control.
author Wredh, Simon
author_facet Wredh, Simon
author_sort Wredh, Simon
title Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
title_short Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
title_full Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
title_fullStr Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
title_full_unstemmed Neural Network Based Model Predictive Control of Turbulent Gas-Solid Corner Flow
title_sort neural network based model predictive control of turbulent gas-solid corner flow
publisher Uppsala universitet, Signaler och system
publishDate 2020
url http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-420056
work_keys_str_mv AT wredhsimon neuralnetworkbasedmodelpredictivecontrolofturbulentgassolidcornerflow
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