Discriminability Analysis of Characterization Parameters in Micro-Leakage of Turbocharged Boiler’s Evaporation Tube
Abstract
:1. Introduction
2. Overview of a Supercharged Boiler System
3. Evaporator Tube Leakage Fault Model and Model Verification
3.1. Simulation Assumptions and Module Division
3.2. Mathematical Model of Leakage
3.3. Mathematical Model of the Combustion Products
3.4. Correction of Flue Gas Physical Properties Parameters
3.5. Energy Conservation of Fuels
3.6. Simulation Verification
4. Simulation Experiments and Analysis of Simulation Results
4.1. Simulation Experiment Design
NO. | Parameters Name | Compare in Which Figure | Location in Figure 1 Schematic Flow Diagram of System |
---|---|---|---|
1 | leak steam mass flow of riser tubes | Figure 5 | leak steam(Yellow arrow) |
2 | Fuel supply mass flow | Figure 6 | NO.1 Fuel |
3 | Air supply mass flow | Figure 7 | NO.2 Air |
4 | Excess air coefficient | Figure 8 | NO.2 Air /NO.1 Fuel |
5 | Flue gas temperature at of superheater outlet | Figure 9 | NO.12 Flue gas’ temperature at NO.6 Superheater’s outlet |
6 | Carrying water Proportion of flue gas | Figure 10 | (NO.3 + leak steam)/(NO.1 + NO.2) |
7 | Furnace pressure | Figure 11 | NO.4 Furnace’s pressure |
8 | Speed of Turbocharger Unit | Figure 12 | NO.13 Turbocharger Unit’s speed |
9 | Steam drum water level | Figure 13 | NO.8 Steam drum’s water level |
10 | Steam drum pressure | Figure 14 | NO.8 Steam drum’s steam pressure |
11 | Superheated steam consumption mass flow | Figure 15 | NO.6 Superheater’s outlet steam flow |
12 | Water supply mass flow | Figure 16 | NO.11 Feed Water |
13 | Superheated steam temperature | Figure 17 | NO.6 Superheater’s steam temperature |
14 | Saturated steam consumption mass flow | Figure 18 | NO.9 Saturated steam |
4.2. Combustion Balance Analysis
4.3. Steam-Water Balance Analysis
5. Conclusions
- (1)
- The mathematical model of evaporation tube micro-leakage conforms to the fault mechanism and experience. The variable load dynamic response characteristics of the main parameters are consistent with those described in References [19,20,21,22,23], and the fault simulation phenomena are consistent with those described in References [3,4,40].
- (2)
- The reasons for poor discriminability of the micro-leakage fault have been found: In the case of micro-leakage, most of the characterization parameters can still tend to balance after 300 s and the dynamic response characteristics are similar to those of load increase.
- (3)
- Two points should be suggested to distinguish the micro-leakage fault of evaporation. First, there are four highly distinguishable parameters, which are the speed of the turbocharger unit, the air supply flow, the flue gas temperature at the superheater outlet, and the furnace pressure. When the micro-leakage fault is triggered, the first three parameters have a large disturbance. They show a trend of decreasing first and then increasing in a short period of time, unlike the normal load-changing condition. The fourth parameter, furnace pressure, rises abnormally fast after failure. Second, under the normal working condition of varying loads, the main parameters are commonly 300 s to stabilize; common stability parameter values should be recorded because, in the micro-leakage fault where evaporation occurs, a steady-state increment of the failure is larger than a normal steady increment under variable load conditions by 2 to 3 times.
- (4)
- As the leakage fault increases, the disturbance amplitude of the characteristic parameters becomes larger. In addition, the stability of the steam system becomes worse, and fault discrimination becomes more obvious.
- (5)
- The research method can be extended to various types of boiler pipe leakage. The research results can provide enough reliable samples for fault diagnosis research, and the suggestions to distinguish the micro-leakage fault of evaporation can be used for early fault detection and late fault diagnosis of the crew.
Author Contributions
Funding
Conflicts of Interest
Nomenclature
C | Total admittance of evaporation pipe leakage |
P1 | Steam pressure in evaporation pipe |
P2 | Boiler furnace pressure |
Flue gas mass flow at furnace outlet, kg/s | |
Fuel flow, kg/s | |
Atomizing steam flow, kg/s | |
Airflow, kg/s | |
Leakage steam flow of evaporation pipe, kg/s | |
Oxygen mass percentage required for complete combustion of unit mass fuel, kg/kg | |
Oxygen quality in the air, kg/s | |
Mass percentage of water in fuel, %; | |
, , , , | Mass flow of O2, H2O, CO2, SO2 and N2 in flue gas, kg/s |
, , , | Mass flow of H2O, CO2, SO2 and N2 in intake air, kg/s |
Oxygen quality in the intake air, kg/s | |
Fuel quantity involved in combustion, kg/s | |
Mass flow of CO2 in flue gas, kg/s | |
Mass flow of CO in flue gas, kg/s | |
, , , , | Mass percentage of carbon, hydrogen, oxygen, sulfur, and nitrogen in fuel, % |
Molar flow of flue gas, mol/s | |
, , , , , | It is the molar ratio of oxygen, water vapor, carbon dioxide, carbon monoxide, sulfur dioxide, and nitrogen in flue gas, % |
Density of flue gas, kg/m3 | |
Flue gas pressure, MPa | |
Flue gas temperature, K | |
Dynamic viscosity of flue gas, Pa·s | |
Kinematic viscosity of flue gas, m2/s | |
, , , , | It refers to the mass fraction of oxygen, water vapor, carbon dioxide, sulfur dioxide, and nitrogen in the flue gas, % |
Thermal conductivity of flue gas, W/(m2·K) | |
The thermal conductivity of each component is a function of T, W/(m2·K) | |
Molar fraction of each component, % | |
Molar mass of each component, g/mol | |
Molar mass of each component | |
Effective heat input into furnace, kJ; | |
Specific heat of fuel, kJ/(kg·°C) | |
Fuel inlet temperature, °C | |
Specific heat of air at constant pressure, kJ/(kg·°C) | |
Air temperature, °C; | |
Low temperature calorific value of oil,kJ/kg | |
Theoretical combustion temperature, °C | |
Specific heat of flue gas at constant pressure, kJ/(kg·°C) |
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No. | Experimental Identification | Disturbance Variable | Value |
---|---|---|---|
1 | Fault1 | Leakage admittance ratio | 0.05% |
2 | Fault2 | Leakage admittance ratio | 0.1% |
3 | Fault3 | Leakage admittance ratio | 0.5% |
4 | Mload1 | Load rise of main turbine | 10% |
5 | Mload2 | Load reduction of main turbine | −10% |
6 | Sload1 | Turbine generator loading | 100% |
7 | Sload2 | Turbine generator unloading | 0% |
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Li, D.; Xia, S.; Geng, J.; Meng, F.; Chen, Y.; Zhu, G. Discriminability Analysis of Characterization Parameters in Micro-Leakage of Turbocharged Boiler’s Evaporation Tube. Energies 2022, 15, 8636. https://doi.org/10.3390/en15228636
Li D, Xia S, Geng J, Meng F, Chen Y, Zhu G. Discriminability Analysis of Characterization Parameters in Micro-Leakage of Turbocharged Boiler’s Evaporation Tube. Energies. 2022; 15(22):8636. https://doi.org/10.3390/en15228636
Chicago/Turabian StyleLi, Dongliang, Shaojun Xia, Jianghua Geng, Fankai Meng, Yutao Chen, and Guoqing Zhu. 2022. "Discriminability Analysis of Characterization Parameters in Micro-Leakage of Turbocharged Boiler’s Evaporation Tube" Energies 15, no. 22: 8636. https://doi.org/10.3390/en15228636
APA StyleLi, D., Xia, S., Geng, J., Meng, F., Chen, Y., & Zhu, G. (2022). Discriminability Analysis of Characterization Parameters in Micro-Leakage of Turbocharged Boiler’s Evaporation Tube. Energies, 15(22), 8636. https://doi.org/10.3390/en15228636