Deep neural-network laser absorption spectroscopy tomography for combustion diagnosis
Files
Item Status
Embargo End Date
Date
Authors
Fu, Yalei
Abstract
Reactive flows are present in many industrial applications, particularly in energy-generation
systems, where they directly impact combustion efficiency and environmental
pollution. Therefore, effective diagnosis of reactive flows is crucial, involving
the monitoring of physical and chemical parameters such as flow velocity, temperature,
and species concentration. Specifically, measuring temperature and species
concentration can greatly reduce harmful emissions and improve fuel efficiency. Given
the highly dynamic and complex nature of reactive flows, measurement techniques
are required to be accurate, robust, and have a fast response.
In most industrial applications, probe-based sensing methods, such as thermocouples
and gas samplers, have gained significant attention due to their simplicity
in setup and measurement. However, these point-wise detection methods suffer
from limited spatial and temporal resolutions. The advent of Laser Absorption
Spectroscopy (LAS) provides a superior approach for diagnosing reactive flows.
Due to its non-intrusive nature, fast response and robustness, LAS has become
increasingly popular in industrial settings. Utilizing an emitter-receiver configuration,
LAS measures the Line-of-Sight (LoS) laser intensity, which is partially absorbed
by the target gas, and infers temperature and species concentration from it. This
technique exhibits a temporal resolution of Kilo Hertz and above, benefiting from
the quick scanning ability of tunable diode lasers for specific absorption spectra.
Despite the above advantages, achieving rapid and accurate measurements remains
challenging due to the time-consuming laser signal post-processing. Therefore,
accelerating this process is essential.
In addition, LAS can produce spatially resolved images of gas properties when
combined with tomography. This is achieved by employing multiple LoS measurements
from different projection angles, known as LAS tomography. However, physical
constraints of optical access in industrial combustors often result in insufficient
laser beams for LAS tomography, leading to rank deficiency in tomographic inverse
problems and thus inaccurate diagnostic results. Recent advancements in deep
learning techniques demonstrate great potential for addressing these complex tasks.
Previous studies have shown that applying deep learning techniques to LAS and LAS
tomography can enhance both the measurement speed and accuracy. Therefore, the
objective of this thesis is to design applicable and effective deep learning algorithms
for LAS signal post-processing and tomography in reactive flow diagnosis.
In this thesis, a novel deep learning-based hybrid neural network model has been
developed for signal post-processing to predict path-average temperature of a Gas
Turbine Engine (GTE). This model integrates Wavelength Modulation Spectroscopy
(WMS) with fundamental physical absorption principles. By effectively extracting both
temporal and spatial features from the spectral lineshape, the model provides reliable
temperature predictions and ensures high industrial applicability.
For LAS tomography, two training sets are established to simulate the reactive flows
of an annular combustor with ten injectors using customized multiple Gaussian
profiles and a modeled circular burner simulated by the Fire Dynamics Simulator
(FDS), respectively, rather than the typical Gaussian-shaped phantoms. Based on the
comprehensive training sets, a Convolutional Neural Network (CNN)-based algorithm
has been designed to reconstruct temperature distributions. This newly introduced
method has been validated through numerical simulations, demonstrating good
accuracy and sensitivity in monitoring the dynamic combustion process.
Although the simulation can mimic the dynamics of reactive flows to some extent, the
reconstruction results may be suboptimal due to unpredictable discrepancies between
real-world data and simulations. To address this challenge, this thesis proposes an
innovative untrained neural network for LAS tomography called the Model-Informed
Double Image Prior (MI-DIP). For the first time, this network introduces a dualpath
architecture for dataset-free, joint reconstruction of two-dimensional temperature
and species concentration. The developed network closely imitates the problem
formulation of LAS tomography and regularizes the inverse problem using its physical
model and inherent priors, thereby stabilizing the image reconstruction process.
This approach has been validated through both numerical simulations and lab-scale
experiments, demonstrating its ability to reconstruct the temperature and water vapor
concentration profiles of the flames. The results highlight improved imaging accuracy
and enhanced resistance to noise, showcasing the potential of the MI-DIP to provide
reliable diagnostics in complex, dynamic environments.
This item appears in the following Collection(s)

