4.7 Article

A Flame Imaging-Based Online Deep Learning Model for Predicting NOx Emissions From an Oxy-Biomass Combustion Process

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2021.3132998

关键词

Predictive models; Combustion; Fires; Biological system modeling; Data models; Atmospheric modeling; Deep learning; Condition monitoring; flame temperature map; NOx prediction; online deep learning; oxy-biomass combustion

资金

  1. Biomass and Fossil Fuel Research Alliance (BF2RA) under Grant BF2RA Project 30
  2. U.K. Carbon Capture and Storage Research Centre (UKCCSRC) Pilot-Scale Advanced Capture Technology (PACT) Facility by the Department for Business, Energy & Industrial Strategy
  3. U.K. Carbon Capture and Storage Research Centre (UKCCSRC) Pilot-Scale Advanced Capture Technology (PACT) Facility by Engineering and Physical Sciences Research Council, U.K.

向作者/读者索取更多资源

In this study, an online deep learning model is proposed to predict NOx emissions from oxy-biomass combustion processes. The model is capable of predicting NOx emissions under seen and unseen conditions, and achieves improved accuracy through the introduction of a new objective function.
To reduce NOx (nitrogen oxide) emissions from fossil fuel and biomass-fired power plants, online prediction of NOx emissions is important in the plant operation. Data-driven models have been developed to predict NOx emissions from various combustion processes with good accuracy. However, such models have initially been built based on known combustion conditions, which are historically seen. For new conditions, which are unseen, these models usually perform unwell. In this study, an online deep learning (ODL) model is proposed to predict NOx emissions from an oxy-biomass combustion process for seen and unseen combustion conditions based on source deep learning and condition recognition models. The ODL model is mainly built based on unseen combustion conditions. A new objective function that consists of regression loss and distillation loss is introduced in the ODL model to improve the prediction accuracy. The ODL model is examined using boiler operation data, flame temperature maps, and NOx data obtained under a range of oxy-biomass combustion conditions on an Oxy-Fuel Combustion Test Facility. Flame images acquired using a dedicated imaging system are used for computing the temperature distribution of the flame through two-color pyrometry. The results demonstrate that the proposed model is capable of predicting NOx emissions under seen and unseen conditions with a mean absolute percentage error of less than 3%, for the first, second, and third updates.

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