Li, Xinli, Han, Changxing, Lu, Gang, Yan, Yong (2021) Online Dynamic Prediction of Potassium Concentration in Biomass Fuels through Flame Spectroscopic Analysis and Recurrent Neural Network Modelling. Fuel, 304 . p. 121376. ISSN 0016-2361. (doi:10.1016/j.fuel.2021.121376) (KAR id:88981)
PDF
Author's Accepted Manuscript
Language: English |
|
Download this file (PDF/3MB) |
|
Request a format suitable for use with assistive technology e.g. a screenreader | |
PDF
Publisher pdf
Language: English
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
|
|
Download this file (PDF/14MB) |
Preview |
Request a format suitable for use with assistive technology e.g. a screenreader | |
Official URL: http://www.journals.elsevier.com/fuel/ |
Abstract
Biomass fuels are widely used as a renewable source for heat and power generation. Alkali metals in a biomass fuel have an significant impact on furnace safety as such metals lead to fouling and slagging in the furnace and corrosion of water pipes. This paper presents a technique for dynamic predicting Potassium (K) concentration in a biomass fuel based on spectroscopic analysis and different recurrent neural networks. A miniature spectrometer is employed to acquire the spectroscopic signals of K in different biomass fuels, including peanut shell, willow, corn cob, corn straw and wheat straw, and their blends. The spectroscopic features of K are extracted. The factors that influence the spectral intensity of K in the biomass fuels are investigated. A basic recurrent neural network (RNN), and its variants, i.e., long short-term memory neural network (LSTM-NN) and deep recurrent neural network (DRNN), are constructed using the spectroscopic signal of K from the spectrometer. The performances of the neural networks for the dynamic prediction of K concentration are compared and analysed theoretically and experimentally. It is found that the relative error in the K concentration prediction through the use of the DRNN model is within 6.34% whilst the LSTM-NN and RNN models give errors slightly greater than this.
Item Type: | Article |
---|---|
DOI/Identification number: | 10.1016/j.fuel.2021.121376 |
Uncontrolled keywords: | biomass; potassium concentration; dynamic prediction; flame spectroscopy; recurrent neural networks |
Subjects: | T Technology > TA Engineering (General). Civil engineering (General) > TA165 Engineering instruments, meters etc. Industrial instrumentation |
Divisions: | Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Engineering and Digital Arts |
Depositing User: | Yong Yan |
Date Deposited: | 02 Jul 2021 08:58 UTC |
Last Modified: | 04 Jul 2023 10:57 UTC |
Resource URI: | https://kar.kent.ac.uk/id/eprint/88981 (The current URI for this page, for reference purposes) |
- Link to SensusAccess
- Export to:
- RefWorks
- EPrints3 XML
- BibTeX
- CSV
- Depositors only (login required):