Low-Dimensional High-Fidelity Kinetic Models for NOX Formation by a Compute Intensification Method

02/21/2022
by   Mark Kelly, et al.
0

A novel compute intensification methodology to the construction of low-dimensional, high-fidelity "compact" kinetic models for NOX formation is designed and demonstrated. The method adapts the data intensive Machine Learned Optimization of Chemical Kinetics (MLOCK) algorithm for compact model generation by the use of a Latin Square method for virtual reaction network generation. A set of logical rules are defined which construct a minimally sized virtual reaction network comprising three additional nodes (N, NO, NO2). This NOX virtual reaction network is appended to a pre-existing compact model for methane combustion comprising fifteen nodes. The resulting eighteen node virtual reaction network is processed by the MLOCK coded algorithm to produce a plethora of compact model candidates for NOX formation during methane combustion. MLOCK automatically; populates the terms of the virtual reaction network with candidate inputs; measures the success of the resulting compact model candidates (in reproducing a broad set of gas turbine industry-defined performance targets); selects regions of input parameters space showing models of best performance; refines the input parameters to give better performance; and makes an ultimate selection of the best performing model or models. By this method, it is shown that a number of compact model candidates exist that show fidelities in excess of 75 performance targets, with one model valid to >75 ratios of 0.5-1.0. However, to meet the full fuel/air equivalence ratio performance envelope defined by industry, we show that with this minimal virtual reaction network, two further compact models are required.

READ FULL TEXT
research
02/16/2022

Toward Development of Machine Learned Techniques for Production of Compact Kinetic Models

Chemical kinetic models are an essential component in the development an...
research
03/15/2021

Toward Machine Learned Highly Reduce Kinetic Models For Methane/Air Combustion

Accurate low dimension chemical kinetic models for methane are an essent...
research
09/13/2017

Predicting Organic Reaction Outcomes with Weisfeiler-Lehman Network

The prediction of organic reaction outcomes is a fundamental problem in ...
research
12/19/2014

Reverse Engineering Chemical Reaction Networks from Time Series Data

The automated inference of physically interpretable (bio)chemical reacti...
research
04/28/2023

Parametric model order reduction for a wildland fire model via the shifted POD based deep learning method

Parametric model order reduction techniques often struggle to accurately...
research
08/03/2023

A Virtual Reality Game to Improve Physical and Cognitive Acuity

We present the Virtual Human Benchmark (VHB) game to evaluate and improv...
research
08/09/2021

ChemiRise: a data-driven retrosynthesis engine

We have developed an end-to-end, retrosynthesis system, named ChemiRise,...

Please sign up or login with your details

Forgot password? Click here to reset