2017 Annual Meeting
(571g) Artificial Neural Networks for Flare Modeling and Set Point Determination
Authors
Vijaya Damodara - Presenter, Lamar University
Daniel Chen, Lamar University
Helen H. Lou, Lamar University
Arokiaraj Alphones, Lamar University
Christopher Martin, Lamar University
Xianchang Li, Lamar University
The refineries and chemical industries are mandated to meet the EPAâs regulations for flare performance, i.e., smokeless flaring while maintaining a minimum combustion zone heating value of 270 BTU/scf and NHVdil >22 Btu/ft^2 for all steam/air/non-assisted flares. While field tests of the many flare operation parameters are expensive, it is highly efficient to use mathematical models to analyse data and develop the right tools to make decisions in the real plant scenario. Modelling flare data using artificial neural networks to achieve the desired combustion efficiency (CE) and eliminate smoke can be done robustly. Selected flare data obtained from various flare tests having a wide range of exit velocity, heating value, and fuel composition have been analysed and the most influencing independent variables are chosen. Both steam and air assisted flares were modelled using the neural network toolbox in MATLAB with high correlation coefficients of greater than 0.95. Determining the set point (amount of steam/air/make-up fuel required) at the Incipient Smoke Point (ISP) and for smokeless flaring has been performed as a part of this study. Desirable operating inputs can be set for the ISP (NHVdil >22 BTU/ft2 & Opacity<Opacity ISP) and for smokeless flaring with a high CE (>96.5).