An Effective Strategy for Monitoring Slagging Location and Severity on the Waterwall Surface in Operation Coal-Fired Boilers
Abstract
:1. Introduction
2. Model and Methods
2.1. Mathematical Description of the Effect of Slagging on Waterwall Surface Temperature
2.2. A Waterwall Surface Temperature Monitoring Method
2.3. The Slagging Temperature Index
2.4. Slagging Digital Image Monitoring System and Image Recognition Method
3. Results and Discussion
3.1. Waterwall Surface Temperature Variation Trends in Different Locations
3.2. Slagging Deposit Process in an Operation Boiler
3.3. Slagging Area Spread in the Slagging Deposit Process
3.4. Relationship between Thickness Growth and Area Increase in the Slagging Deposit Process
4. Conclusions
- (1)
- It was demonstrated that the measured waterwall surface temperature rose instantly, about 80–100 °C, at the location of waterwall surface slagging and only about 10–20 °C at the clean location at the moment of soot-blowing. The process of slagging deposit growth consisted of four stages. The slagging temperature index in stage III fluctuated in the range of about 90–110 °C as the slag deposit growth had stabilized. In stage IV, the temperature rapidly dropped below 60 °C due to a decline in the number and diameter of irregular pores inside the slag deposits, as well as the development of a densely sintered layer and slag layer. These findings, which have not been reported in other literature, can be used to determine the location and severity of slagging on the surface of the waterwall.
- (2)
- A digital image monitoring system was used to obtain the slagging images and gather quantitative data regarding the proportion of slagging in the local area of the waterwall surface at different times, effectively verifying the growth process of slagging deposits. It was found that the thickness growth and the area increase in slagging deposits were alternating in four stages. An intelligent soot-blowing strategy optimization system was developed based on the methods in this paper to guide the automatic and accurate operation of each soot blower around the furnace. It has been verified that the soot-blowing frequency and steam consumption can be reduced under the premise of avoiding serious slagging on the waterwall surface.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Nomenclature | subscripts | ||
A | heat exchange area, [m2] | cond | conduction |
Δh | enthalpy increments, [kJ/kg] | conv | convection |
k | attenuation coefficient | f | flame |
n | number of waterwall tubes | f,sll | flame to slagging layer |
Q | radiation heat transfer quantity, [W] | f,w | flame to waterwall |
q | mass flow, [kg/s] | inl | initial layer |
R | equivalent radius, [m] | rad | radiation |
T | temperature, [°C] | si | slagging index |
X | radiation angle coefficient | sil | sintered layer |
Greek Symbol | sll | slagging layer | |
δ | thickness, [m] | w | waterwall |
ε | emissivity | superscripts | |
λ | conductivity, [W/m·K] | a | assumed |
σ | blackbody radiation constant, [W/(m2·K4] | m | measured |
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Parameters | Value | |
---|---|---|
Coal heating value (MJ/kg) | 22.34 | |
Coal moisture (wt % ar) | 15.1 | |
Proximate analysis of coal (wt %, ar) | Ash | 10.38 |
Volatile matter | 27.48 | |
Fixed carbon | 47.04 | |
Ultimate analysis of coal (wt %, ar) | C | 60.46 |
H | 3.60 | |
O | 9.28 | |
N | 0.85 | |
S | 0.30 | |
Ash fusion temperature (°C) | DT | 1200 |
ST | 1240 | |
HT | 1250 | |
FT | 1270 | |
Slag composition (wt %) | Na | 2.32 |
Mg | 2.46 | |
Al | 6.08 | |
Si | 25.07 | |
K | 1.40 | |
Ca | 44.63 | |
Ti | 0.22 | |
Fe | 17.82 |
Parameter | T1 | T2 | T3 | T4 | T5 | T6 | T7 | T8 | T9 |
---|---|---|---|---|---|---|---|---|---|
Slagging area proportion (%) | 46.38 | 0.37 | 2.80 | 5.57 | 11.38 | 19.52 | 25.63 | 56.79 | 0.78 |
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Li, P.; Li, K.; Zhou, Y.; Li, Q.; Shi, Z.; Zhong, W. An Effective Strategy for Monitoring Slagging Location and Severity on the Waterwall Surface in Operation Coal-Fired Boilers. Energies 2023, 16, 7925. https://doi.org/10.3390/en16247925
Li P, Li K, Zhou Y, Li Q, Shi Z, Zhong W. An Effective Strategy for Monitoring Slagging Location and Severity on the Waterwall Surface in Operation Coal-Fired Boilers. Energies. 2023; 16(24):7925. https://doi.org/10.3390/en16247925
Chicago/Turabian StyleLi, Pei, Ke Li, Yonggang Zhou, Qingyi Li, Zifu Shi, and Wei Zhong. 2023. "An Effective Strategy for Monitoring Slagging Location and Severity on the Waterwall Surface in Operation Coal-Fired Boilers" Energies 16, no. 24: 7925. https://doi.org/10.3390/en16247925
APA StyleLi, P., Li, K., Zhou, Y., Li, Q., Shi, Z., & Zhong, W. (2023). An Effective Strategy for Monitoring Slagging Location and Severity on the Waterwall Surface in Operation Coal-Fired Boilers. Energies, 16(24), 7925. https://doi.org/10.3390/en16247925