Leveraging long short-term memory networks and transfer learning for the soft-measurement of flue gas flowrate from coal-fired boilers
Jiahui Lu
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Search for more papers by this authorCorresponding Author
Hongjian Tang
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Correspondence
Hongjian Tang and Lunbo Duan, Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing 211102, China.
Email: [email protected] and [email protected]
Search for more papers by this authorCorresponding Author
Lunbo Duan
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Correspondence
Hongjian Tang and Lunbo Duan, Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing 211102, China.
Email: [email protected] and [email protected]
Search for more papers by this authorJiahui Lu
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Search for more papers by this authorCorresponding Author
Hongjian Tang
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Correspondence
Hongjian Tang and Lunbo Duan, Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing 211102, China.
Email: [email protected] and [email protected]
Search for more papers by this authorCorresponding Author
Lunbo Duan
Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing, 211102 China
Correspondence
Hongjian Tang and Lunbo Duan, Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment, Southeast University, Nanjing 211102, China.
Email: [email protected] and [email protected]
Search for more papers by this authorAbstract
The dynamic operation and deep peak-shaving of power-generating units cause significant fluctuations in flue gas flowrate, thus affecting the accuracy of CO2 emissions measured by continuous emission monitoring systems (CEMS). This study established a long short-term memory network with an attention mechanism (LSTM-AM) for the soft measurement of the flue gas flowrate in real-time. First, flue gas flowrate data and continuous operation parameters over 25 days were sampled from a typical 660 MW coal-fired boiler in China. Then, a carbon balance model was established to verify the data reliability. The LSTM-AM model was trained and testified at the 660 MW coal-fired boiler. Results show that the LSTM-AM model significantly surpassed the pristine LSTM model without attention, the convolutional neural network (CNN) with LSTM, and the static support vector regression (SVR) model in the real-time prediction of flue gas flowrate. Finally, the LSTM-AM model was generalized to a 630 MW coal-fired power unit via transfer learning, which was further demonstrated to outperform the model re-trained from scratch. This work manifests the feasibility of deep learning for the soft measurement of flue gas flowrate, which is promising to solve data-lagging issues when measuring CO2 emissions from coal-fired power plants.
REFERENCES
- 1Yang R, Wang W. Potential of China's national policies on reducing carbon emissions from coal-fired power plants in the period of the 14th five-year plan. Heliyon. 2023; 9(9):e19868. doi:10.1016/j.heliyon.2023.e19868
- 2 The Paris agreement. https://unfccc.int/files/essential_background/convention/application/pdf/english_paris_agreement.pdf
- 3Yang M, Liu YS. Research on the potential for China to achieve carbon neutrality: a hybrid prediction model integrated with elman neural network and sparrow search algorithm. J Environ Manage. 2023; 329:117081. doi:10.1016/j.jenvman.2022.117081
- 4Tao Y, Wen Z, Xu L, et al. Technology options: can Chinese power industry reach the CO2 emission peak before 2030? Resour Conserv Recycling. 2019; 147: 85-94. doi:10.1016/j.resconrec.2019.04.020
- 5 Bp statistical review of world energy 2021. https://www.bp.com/en/global/corporate/energy-economics/statistical-review-of-world-energy/downloads.html
- 6Agency I E. Global energy review: CO2 emissions in 2021. https://www.iea.org/reports/global-energy-review-co2-emissions-in-2021-2
- 7Jahnke J A. Continuous emission monitoring, F, 2022 [C].
- 8Norfleet SK, Muzio LJ, Martz TD. An examination of bias in method 2 measurements under controlled non-axial flow conditions. In: Proceedings of the II Acid Rain & Electric Utilities Conference, Scottsdale, Az, F Jan 21–22, 1997. Pittsburgh; 1997.
- 9Crowley C, Shinder II, Moldover MR. The effect of turbulence on a multi-hole pitot calibration. Flow Meas Instrument. 2013; 33: 106-109. doi:10.1016/j.flowmeasinst.2013.05.007
10.1016/j.flowmeasinst.2013.05.007 Google Scholar
- 10Kang W, Trang ND, Lee SH, et al. Experimental and numerical investigations of the factors affecting the S-type pitot tube coefficients. Flow Meas Instrument. 2015; 44: 11-18. doi:10.1016/j.flowmeasinst.2014.11.006
10.1016/j.flowmeasinst.2014.11.006 Google Scholar
- 11Johnson A N, Boyd J T, Harman E, et al. Design and capabilities of NIST’ s scale-model smokestack simulator (SMSS), F, 2015.
- 12Johnson A N, Shinder I I, Filla B J, et al. Non nulling measurements of flue gas flows in a coal-fired power plant stack, F, 2019.
- 13Liu X, Bansal RC. Integrating multi-objective optimization with computational fluid dynamics to optimize boiler combustion process of a coal fired power plant. Appl Energy. 2014; 130: 658-669. doi:10.1016/j.apenergy.2014.02.069
- 14Wu J-P-I, Liu C. Layout of measuring points for flue gas flow velocity in coal-fired power plants based on CFD technology. J Phys: Conf Ser. 2023; 2441(1): 2441. doi:10.1088/1742-6596/2441/1/012056
10.1088/1742-6596/2441/1/012056 Google Scholar
- 15Su X, Zhang S, Yin Y, Xiao W. Prediction model of permeability index for blast furnace based on the improved multi-layer extreme learning machine and wavelet transform. J Franklin Inst. 2018; 355(4): 1663-1691. doi:10.1016/j.jfranklin.2017.05.001
10.1016/j.jfranklin.2017.05.001 Google Scholar
- 16Tuttle JF, Vesel R, Alagarsamy S, Blackburn LD, Powell K. Sustainable NOx emission reduction at a coal-fired power station through the use of online neural network modeling and particle swarm optimization. Control Eng Practice. 2019; 93: 104167. doi:10.1016/j.conengprac.2019.104167
10.1016/j.conengprac.2019.104167 Google Scholar
- 17Blackburn LD, Tuttle JF, Powell KM. Real-time optimization of multi-cell industrial evaporative cooling towers using machine learning and particle swarm optimization. J Clean Prod. 2020; 271: 122175. doi:10.1016/j.jclepro.2020.122175
10.1016/j.jclepro.2020.122175 Google Scholar
- 18Libbrecht MW, Noble WS. Machine learning applications in genetics and genomics. Nat Rev Genet. 2015; 16(6): 321-332. doi:10.1038/nrg3920
- 19Szegedy C, Liu W, Jia Y, et al. Going deeper with convolutions. Arxiv; 2014.
- 20Zeiler MD, Ranzato M, Monga R, et al. On rectified linear units for speech processing, Proceedings of the IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP), Vancouver, Canada, F May 26–31, 2013 [C]. New York; 2013.
- 21Krzywanski J, Czakiert T, Blaszczuk A, Rajczyk R, Muskala W, Nowak W. A generalized model of SO2 emissions from large- and small-scale CFB boilers by artificial neural network approach: part 1. The mathematical model of SO2 emissions in air-firing, oxygen-enriched and oxycombustion CFB conditions. Fuel Process Technol. 2015; 137: 66-74. doi:10.1016/j.fuproc.2015.04.012
- 22Li SH, Zhu HX, Zhu M, et al. Combustion tuning for a gas turbine power plant using data-driven and machine learning approach. J Eng Gas Turbines Power-Trans ASME. 2021; 143(3): 7. doi:10.1115/1.4050020
10.1115/1.4050020 Google Scholar
- 23Ma Y, He P-J, Lü F, et al. Machine learning-based prediction of the CO2 concentration in the flue gas and carbon emissions from a waste incineration plant. ACS ES&T Eng. 2024; 4(3): 737-747. doi:10.1021/acsestengg.3c00461
- 24Desell TJ, ElSaid AA, Lyu Z, Stadem D, Patwardhan S, Benson S. Long term predictions of coal fired power plant data using evolved recurrent neural networks. Automatisierungstechnik. 2020; 68(2): 130-139. doi:10.1515/auto-2019-0116
10.1515/auto-2019-0116 Google Scholar
- 25Wu Z, Zhang Y, Dong Z. Prediction of NOx emission concentration from coal-fired power plant based on joint knowledge and data driven. Energy. 2023; 271:127044. doi:10.1016/j.energy.2023.127044
- 26Yang G, Wang Y, Li X. Prediction of the NOx emissions from thermal power plant using long-short term memory neural network. Energy. 2020; 192:116597. doi:10.1016/j.energy.2019.116597
- 27Song MY, Xue JZ, Gao SH, et al. Prediction of NOx concentration at SCR inlet based on BMIFS-LSTM. Atmos. 2022; 13(5): 14. doi:10.3390/atmos13050686
10.3390/atmos13050686 Google Scholar
- 28Liu X, Qi H, Ren M, et al. A prediction method of NOx in thermal power plants using GC-LSTM neural network. Chin Autom Congr (CAC). 2020; 2020: 3508-3512.
- 29Thameem M, Raj A, Berrouk A, Jaoude MA, AlHammadi AA. Artificial intelligence-based forecasting model for incinerator in sulfur recovery units to predict SO2 emissions. Environ Res. 2024; 249:118329. doi:10.1016/j.envres.2024.118329
- 30Yin Z, Yang CL, Yuan XL, et al. NOx concentration prediction in coal-fired power plant based on CNN-LSTM algorithm. Front Energy Res. 2023; 10: 10.
10.3389/fenrg.2022.1054427 Google Scholar
- 31Bahdanau D, Cho K, Bengio Y. Neural machine translation by jointly learning to align and translate. Arxiv; 2016.
- 32Wang LL, Cao Z, de Melo G, et al. Relation classification via multi-level attention CNNs. In: Proceedings of the 54th Annual Meeting of the Association-for-Computational-Linguistics (ACL), Berlin, Germany, F Aug 07–12, 2016 [C]. Stroudsburg; 2016.
- 33Liu J, Wang G, Hu P, et al. Global context-aware attention LSTM networks for 3D action recognition. In: Proceedings of the 30th IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), Honolulu, HI, F Jul 21–26, 2017 [C]. New York; 2017.
10.1109/CVPR.2017.391 Google Scholar
- 34Wang X, Liu W, Wang Y, Yang G. A hybrid NOx emission prediction model based on CEEMDAN and AM-LSTM. Fuel. 2022; 310:122486. doi:10.1016/j.fuel.2021.122486
- 35Pang C, Duan D, Zhou Z, et al. An integrated LSTM-AM and SPRT method for fault early detection of forced-oxidation system in wet flue gas desulfurization. Process Safety Environ Protection. 2022; 160: 242-254. doi:10.1016/j.psep.2022.01.062
- 36Taylor ME, Stone P, Liu YX. Transfer learning via inter-task mappings for temporal difference learning. J Mach Learn Res. 2007; 8: 2125-2167.
- 37Kadamala K, Chambers D, Barrett E. Enhancing HVAC control systems through transfer learning with deep reinforcement learning agents. Smart. Energy. 2024; 13:100131. doi:10.1016/j.segy.2024.100131
10.1016/j.segy.2024.100131 Google Scholar
- 38Devlin J, Chang MW, Lee K, et al. BERT: Pre-training of deep bidirectional transformers for language understanding. In: Proceedings of the Conference of the North-American-Chapter of the Association-for-Computational-Linguistics - Human Language Technologies (NAACL-HLT), Minneapolis, MN, F Jun 02–07, 2019 [C]. Assoc Computational Linguistics-Acl; 2019.
- 39Tan MX, Le QV. EfficientNet: rethinking model scaling for convolutional neural networks. In: Proceedings of the 36th International Conference on Machine Learning (ICML), Long Beach, CA, F Jun 09–15, 2019 [C]. Jmlr-Journal Machine Learning Research; 2019.
- 40Raffel C, Shazeer N, Roberts A, et al. Exploring the limits of transfer learning with a unified text-to-text transformer. J Mach Learn Res. 2020; 21: 67.