An Optimization Method of Steam Turbine Load Resilient Adjustment by Characterizing Dynamic Changes in Superheated Steam Energy
Abstract
:1. Introduction
2. Theoretical Analysis of Coordinated Control and Unit Energy Storage
- (1)
- In the existing control system, the coordination mode based on BF (boiler following) can quickly track the load deviation, which is mainly reflected in the adjustment of the steam pressure during the turbine regulation process. The change in the working medium in this section is instantaneous energy storage in the superheated steam section. In the logic design, the change in pressure can be directly linked to the adjustment in the fuel system. The most intuitive phenomenon of the adjustment in the air and flue gas system is the heat absorption change in the drum and water wall. The change in the working medium in this section pertains to basic energy storage. This is the reason why instantaneous energy storage can increase basic energy storage.
- (2)
- Similar to the analysis in (1), when no load adjustment is performed, the function of the drum and water wall as the basic energy storage system is to convert the undersaturated water into saturated water and then into saturated steam, finally entering the superheated steam system. Therefore, when the system enters the adjustment stage, the superheated steam, as well as the instantaneous energy, can realize the function of instantaneous regulation, and the basic energy storage value can determine whether there is a sudden pressure drop/rise, or even an overpressure/cross pressure during the adjustment process. Therefore, the energy storage system of the water wall and drum is the basic energy storage system that determines the instantaneous regulation capability of the superheated steam.
- (3)
- When energy is transferred from the boiler to the turbine, the main steam temperature is more sensitive to the combustion of the boiler and can quickly react to the input and disturbance of fuel. The change in the steam flow mainly reflects the evaporation capacity of the boiler, which is greatly affected by the load setting. The change in steam pressure (taking the boiler turbine as an example) is greatly affected by the control valve, which also reflects the ability of the unit to adjust the load quickly.
3. Calculation of Superheated Steam Energy Signal
- (1)
- The difference in effective energy between the two load points was calculated, the difference between the two loads was converted into energy, and the energy difference between the two load points was obtained. The calculation is as follows:
- (2)
- The equivalent load deviation under a different regulation amplitude corresponds to a specific load point based on the actual data of the unit.
4. Data Processing and Calculation Result Analysis
4.1. Calculation and Analysis of Energy Signal under Continuous Load Change
4.2. Comparison of Superheated Steam Energy Model Output under Stable State and Load Change State under the Same Load Output of the Unit
5. Unit Model Optimization and Field Data Simulation Comparison
6. Conclusions
- (1)
- A large number of real-world operation data on thermal power units were collected. Classification processing and analysis revealed that the energy variation in the superheated steam before the valve was regulated directly related to its temperature, pressure, and flow value. On this basis, the effective energy of superheated steam before the regulating valve was calculated. This energy indicates the size of the superheated steam’s instantaneous energy storage, which also determines the load regulation capacity of the unit.
- (2)
- Compared with the traditional control strategy optimization method that only uses load and pressure signals, this method of calculating the instantaneous storage energy of superheated steam integrates the change characteristics of the main steam temperature, which can better reflect the energy transfer in the furnace combustion process. This was added to the coordination system as a feedforward signal to improve the furnace-side adjustment speed, which could also be used to correct the deviation of the load and pressure and reduce the overshoot problem caused by the rapid adjustment of the load. The instantaneous maximum pressure deviation was reduced by 60%, and the instantaneous maximum load deviation was reduced by 90%.
- (3)
- This method makes full use of the field unit operating data, reoptimizes the simulation model, and improves the accuracy of the simulation experiment. Large load change signals were added to the simulation model. The comparison between the simulation results and the actual unit response curve verified the effectiveness of the proposed compensation method.
- (4)
- The energy calculation method, when proposed, could be gradually refined. Through the collection and processing of big data, it can be applied to 600-MW and 1000-MW steam turbine units, especially for coal-fired units with a strong hysteresis, which demonstrates its application value.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable Name | Meaning of Variables |
---|---|
ΔN | Load difference |
Ni/Ns | Unit load at time i/s |
ΔQ(Ni,Ns) | Unit energy change as load changes from Ni to Ns |
ΔQN(Ni,Ns) | The energy required by the actual load change in the unit when the load changes from Ni to Ns |
ΔQSS(Ni,Ns) | The energy required to change the steam state of the unit when the load changes from Ni to Ns |
ΔNss | The equivalent load value of the energy required to change the steam state |
P/T/t | Pressure/Pressure and Kelvin temperature/Celsius |
qi/qs | Steam flow rate at time i/s |
H0/Hi | The initial enthalpy and the instantaneous enthalpy |
S0/Si | The initial entropy and the instantaneous entropy |
Esi (Ni, Pi) | The workable energy of steam at stable load Ni and pressure Pi |
Qssi | Steam working energy, combined with the flow rate qi of load point Ni |
Load | Main Steam Flow (t/h) | Main Steam Temperature (°C) | Main Steam Pressure (MPa) | Steam Enthalpy (KJ/KG) | Steam Entropy (KJ/(KG · K)) | Effective Energy (KJ/KG) | Total Energy (KJ) | Equivalent Load (MW) |
---|---|---|---|---|---|---|---|---|
264.13 | 826.5 | 54h0.069 | 16.368 | 3.34 × 103 | 6.715 | 19.273 | 1.59 × 107 | 4.425 |
266.09 | 852.9 | 537.464 | 15.721 | 3.34 × 103 | 6.722 | 21.772 | 1.85 × 107 | 5.159 |
268.11 | 908.6 | 534.766 | 15.521 | 3.33 × 103 | 6.720 | 14.368 | 1.30 × 107 | 3.626 |
270.48 | 924.1 | 534.837 | 15.544 | 3.33 × 103 | 6.720 | 14.175 | 1.31 × 107 | 3.639 |
271.27 | 930.7 | 535.093 | 15.496 | 3.34 × 103 | 6.722 | 16.340 | 1.52 × 107 | 4.225 |
274.29 | 931.7 | 535.032 | 15.491 | 3.33 × 103 | 6.722 | 16.184 | 1.50 × 107 | 4.189 |
276.04 | 935.9 | 535.131 | 15.555 | 3.33 × 103 | 6.720 | 15.217 | 1.42 × 107 | 3.956 |
278.00 | 859.8 | 539.395 | 16.112 | 3.34 × 103 | 6.718 | 21.782 | 2.03 × 107 | 5.663 |
280.06 | 940.6 | 536.227 | 15.647 | 3.34 × 103 | 6.721 | 17.990 | 1.69 × 107 | 4.700 |
282.05 | 945.1 | 537.164 | 15.738 | 3.34 × 103 | 6.721 | 20.098 | 1.89 × 107 | 5.276 |
284.42 | 936.3 | 537.473 | 15.832 | 3.34 × 103 | 6.720 | 19.413 | 1.81 × 107 | 5.050 |
Unit Status | Actual Power (MW) | Main Steam Flow (t/h) | Main Steam Temperature (°C) | Main Steam Pressure (MPa) | Instantaneous Energy (KJ/KG) |
---|---|---|---|---|---|
Steady load | 200.748 | 679.23 | 536.756 | 14.274 | 617,946,898.8 |
Load reduction | 200.713 | 715.93 | 537.964 | 14.918 | 652,071,612.4 |
Stable load reduced to 200 | 200.748 | 673.88 | 538.918 | 15.393 | 614,330,510.4 |
Load up | 200.713 | 726.51 | 540.813 | 14.314 | 667,724,775.8 |
200 MW to 220 Equivalent Load Deviation (MW) | Pressure Deviation (MPa) | Load Display Deviation (MW) | Flow Self Deviation (t/h) | Corresponding Adjustment Strategy |
---|---|---|---|---|
19.934 | 0.613 | 19.419 | keep | Keep the pressure and feed-back the load deviation |
10.454 | 0.735 | 19.454 | 36.7 | Maintain pressure and correct load deviation |
20.938 | −0.138 | 19.419 | −5.354 | Reduce the pressure and fine tune the load deviation |
6.106 | 1.217 | 19.454 | 47.283 | Increase pressure and correct load deviation |
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Shi, J.; Fan, S.; Li, J.; Cheng, J.; Wan, J.; E, P. An Optimization Method of Steam Turbine Load Resilient Adjustment by Characterizing Dynamic Changes in Superheated Steam Energy. Energies 2023, 16, 3324. https://doi.org/10.3390/en16083324
Shi J, Fan S, Li J, Cheng J, Wan J, E P. An Optimization Method of Steam Turbine Load Resilient Adjustment by Characterizing Dynamic Changes in Superheated Steam Energy. Energies. 2023; 16(8):3324. https://doi.org/10.3390/en16083324
Chicago/Turabian StyleShi, Jiakui, Shuangshuang Fan, Jiajia Li, Jiangnan Cheng, Jie Wan, and Peng E. 2023. "An Optimization Method of Steam Turbine Load Resilient Adjustment by Characterizing Dynamic Changes in Superheated Steam Energy" Energies 16, no. 8: 3324. https://doi.org/10.3390/en16083324
APA StyleShi, J., Fan, S., Li, J., Cheng, J., Wan, J., & E, P. (2023). An Optimization Method of Steam Turbine Load Resilient Adjustment by Characterizing Dynamic Changes in Superheated Steam Energy. Energies, 16(8), 3324. https://doi.org/10.3390/en16083324