Hydrogen-Enriched Compressed Natural Gas Network Simulation for Consuming Green Hydrogen Considering the Hydrogen Diffusion Process
Abstract
:1. Introduction
- (1)
- A power flow calculation model for the isothermal steady-state natural gas network is established and solved by the finite element node method, which provides initial calculation values of gas pressure and flow rate for the hydrogen diffusion dynamic simulation of hydrogen injection in the natural gas network.
- (2)
- For three types of renewable energy power production scenarios of hydropower stations, wind farms, and PV power stations, the mathematical model of the surplus electric power that can be used for hydrogen production by water electrolysis for each type is established. Among them, hydropower output is related to the head, water flow rate, and unit efficiency, and the output can be considered stable within a dispatching day; wind power output considers the superposition of four velocities of base wind velocity, gust wind velocity, ramp wind velocity, and noise wind velocity; PV power output considers the superposition of the two components of the intraday light component and the random weakening component.
- (3)
- The effects of two factors, convection, and diffusion, on the dynamic change process of hydrogen concentration are analyzed. The convection–diffusion model with variable diffusion coefficient considering the change of diffusion coefficient and the convection–diffusion model with constant diffusion coefficient suitable for convection-dominated scenarios are established; solving methods based on the central difference and upwind difference scheme are proposed.
- (4)
- The dynamic distribution of hydrogen concentration in pipelines under different hydrogen injection modes is simulated on a seven-node natural gas network. Based on the simulation analysis, the hydrogen blending simulation of the studied natural gas network belongs to the convection-dominated problem, so the convection–diffusion model with constant diffusion coefficient is adopted to solve it. In addition, the upwind difference scheme is chosen to solve the simulation model. Although the truncation error is high, the negative hydrogen concentration caused by the central difference scheme can be avoided.
- (5)
- To compare the influence of different renewable energy output characteristics on the distribution of hydrogen concentration and the safety of pipeline operation, hydrogen blending stations using hydropower, wind power, and solar power to produce hydrogen are set up at three nodes in the natural gas network. Furthermore, three scenarios of “high penetration of solar power”, “high penetration of wind power”, and “balanced penetration of solar power and wind power” are set up, respectively. The simulation results show that in the solar-power-dominated scenario, the hydrogen concentration exceeds the limit for more time and the overall hydrogen production is low. In contrast, hydropower and wind power are more compatible with hydrogen production by water electrolysis, and the hydrogen concentration in natural gas pipelines is more evenly distributed.
2. Steady-State Simulation of Natural Gas Network
2.1. Modeling of Isothermal Steady-State Natural Gas Network
2.2. Solving Method
3. Modeling of Hydrogen Production in Different Scenarios
3.1. Power Output of Hydropower Station
3.2. Power Output of Wind Farm
- The base wind velocity VA can be approximated by the Weibull distribution parameter, which is derived from the wind measurement data of the wind farm.
- b.
- For the gust wind velocity VB, the abrupt change of wind velocity can be expressed by (19):
- c.
- For the gust wind velocity VB, the abrupt change of wind velocity can be expressed by (19):
- d.
- For the noise wind velocity VD, the randomness is generally represented by random noise, as shown in (21):
3.3. Power Output of PV Power Station
- The intraday light component SA describes the process of the light intensity changing from weak to strong and then weak again in a day, which can be expressed by (24):
- b.
- The random weakening component SB describes the change of light intensity caused by the meteorological factor of dark clouds and is simulated using random number generation. Divide the time from sunrise to sunset into equal parts, and generate random numbers for each part to simulate whether dark clouds appear. Then, the light intensity of part i can be calculated by (25):
4. Dynamic Simulation of Hydrogen Concentration in Natural Gas Network
4.1. Fundamental of Fluid Dynamics
4.1.1. Convection
4.1.2. Diffusion
4.2. Hydrogen Diffusion Model Based on Convective–Diffusion Equation
4.2.1. Convective–Diffusion Model with Variable Diffusion Coefficient
4.2.2. Convective–Diffusion Model with Constant Diffusion Coefficient
4.3. Changes of Diffusion Coefficient in HCNG
4.4. Solving Method
4.4.1. Central Difference
4.4.2. Upwind Difference
4.5. Overall Simulation Process
5. Case Study
5.1. Case Description
5.2. Steady State Simulation of the Natural Gas Network
5.3. Simulation Model Validation—Single Pipe Example
5.4. Simulation Results of Differernt Hydrogen Production-Blending Scenarios
5.4.1. Scenario I: High Penetration of Solar Power
5.4.2. Scenario II: High Penetration of Wind Power
5.4.3. Scenario III: Balanced Penetration of Solar Power and Wind Power
5.4.4. Comparison and Analysis of the Three Scenarios
- (1)
- Scenario I: The light resources were relatively sufficient and the wind resources were relatively poor. The hydrogen concentration of Pipe 3 and Pipe 4 did not exceed the limit, but the hydrogen concentration of Pipe 5 and Pipe 6 exceeded the limit to a certain extent due to the light intensity at noon, and it happened nearly 50% of the time in a day. In addition, the problem of the hydrogen concentration violation was most serious in Scenario I, while the average hydrogen concentration level of the whole network was the lowest throughout the simulation period.
- (2)
- Scenario II: The wind resource was relatively sufficient, and the light resource was relatively poor. When the hydrogen concentration in the system was at its highest, it was close to the upper limit but did not exceed the limit, and the system was in a safe operation state all the time.
- (3)
- Scenario III: Lighting resources and wind resources were relatively balanced, and the hydrogen concentrations of Pipe 3 and Pipe 4 still did not exceed the limit. Similar to Scenario I, the hydrogen concentration in Pipe 5 and Pipe 6 exceeded the limit at noon and partly during periods in the afternoon. However, the hydrogen concentration in Pipe 5 and Pipe 6 exceeded the limit for a significantly shorter period of time than in Scenario I.
- (1)
- Solar power was greatly affected by the light intensity in the day, and too much hydrogen production near the peak of light intensity could easily lead to the hydrogen concentration violation. Meanwhile, the overall hydrogen production by solar power was relatively low, which classifies the hydrogen production mode into an uneven one. When the surplus renewable energy was mainly solar power, absorbing it with hydrogen production by water electrolysis showed certain limitations, which may bring risks to the safe and stable operation of natural gas pipelines.
- (2)
- Compared with hydrogen production by solar power, hydrogen production by hydropower and wind power were relatively stable hydrogen production modes. Among them, hydropower was the most stable and adjustable, and the output could even be considered unchanged within a dispatching day. Compared with solar power, wind power could produce a higher overall hydrogen amount in one day, and the difference between the wind peak and the wind valley was not that large. It was a relatively even hydrogen production mode. In conclusion, it is highly feasible to absorb surplus wind power using hydrogen production by water electrolysis.
- (3)
- By virtue of the instinctive complementary characteristics of solar and wind power, the solar–wind power balance scenario can improve the problem of hydrogen concentration exceeding the limit in the solar-power-dominated scenario. In addition, the renewable energy that can be used for hydrogen production is also related to the characteristics of local electricity demand. The design and dispatch of local hydrogen production-blending systems need to comprehensively consider the complementary characteristics of solar and wind power, as well as the matching between the renewable energy generation and local electricity load.
- (4)
- The simulation research in this paper did not consider the energy storage technology. If equipped with the electricity storage and gas storage technologies, the problems of power to hydrogen (P2H) and pipeline transportation of HCNG could be better matched. From another perspective, the simulation work in this paper also demonstrated the necessity of planning and designing energy storage facilities when carrying out hydrogen blending of natural gas pipelines in areas where solar power is dominant.
6. Conclusions
- under the solar-power-dominated hydrogen production-blending scenario, the overall hydrogen production is low while the hydrogen concentration exceeds the permitted limit for nearly 50% of the time in a day;
- the hydrogen concentration in each pipeline of the natural gas network does not exceed the limit in the wind-power-dominated scenario;
- in the solar–wind power balance scenario, the overrun time of the hydrogen concentration in Pipe 5 and Pipe 6 decreases to 91.24% and 91.99% of the solar-power-dominated scenario.
- hydrogen production by hydropower and wind power are relatively stable hydrogen production modes compared with that by solar power;
- the instinctive complementary characteristics of solar and wind power as well as the local electrical load curve deserve attention to smooth the hydrogen concentration distribution in natural gas pipelines.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
A | Node-pipeline matrix, dimensionless |
aij | Element of A |
Awt | Area swept by the wind turbine blades, m2 |
Apv | Area of PV panels, m2 |
Awb | Scale parameter of Weibull distribution, dimensionless |
B | Loop-pipeline matrix, dimensionless |
bnj | Element of B |
Cm | Hydrogen concentration, kg/m3 |
Cwind | Wind energy utilization coefficient, dimensionless |
D | Diffusion coefficient, m2/s |
d | Inner diameter of the pipe, mm |
F | Turbulent scale, m |
fm | Mass fraction which varies between 0 and 1, dimensionless |
fv | Volume fraction which varies between 0 and 1, dimensionless |
G | Diagonal admittance matrix, dimensionless |
gij | Element of G |
H | Effective head, m |
J | Diffusion flux, kg/m2·s |
KN | Surface roughness coefficient, 0.004, dimensionless |
Kwb | Shape parameter of Weibull distribution, dimensionless |
L | Length of the pipe, m |
MA, MB | Molecular weights of components A and B, g/mol |
N | Convection flux, kg/(m2·s) |
Nsam | Number of spectral sampling points, dimensionless |
p | Total pressure, Pa |
Phydro,out | Power output of the hydropower station, MW |
Phydro-H | Hydropower output that can be used to produce hydrogen, MW |
Maximum output of the hydropower station integrated into the grid, MW | |
Psolar,out | Power output of the PV power station, MW |
Psolar-H | Solar power output that can be used to produce hydrogen, MW |
Maximum output of the PV power station integrated into the grid, MW | |
Pwind,out | Power output of the wind farm, MW |
Pwind-H | Wind power output that can be used to produce hydrogen, MW |
Maximum output of the wind farm integrated into the grid, MW | |
Q | Branch flow vector, m3/s |
Qwater | Water flow rate, m3/s |
S | Pipeline flow resistance coefficient matrix, dimensionless |
SA | The light component of light intensity, W/m2 |
SB | The random weakening component of light intensity, W/m2 |
Ssolar | Light intensity, W/m2 |
Maximum light intensity statistical value under certain local weather, W/m2 | |
T | Fluid Temperature, K |
t | Index to time, min |
Tn | Absolute temperature under standard conditions, 273.15 K |
T1G | The time when the abrupt change starts, min |
TG | The change period, min |
T1R | Start time of the gradual change, min |
T2R | End time of the gradual change, min |
TR | Holding time after the gradual change, min |
Tr | Sunrise time, min |
Td | Sunset time, min |
u | Fluid velocity variable that varies along the pipeline, m/s |
VA | Base wind velocity, m/s |
VB | Gust wind velocity, m/s |
VC | Ramp wind velocity, m/s |
VD | Noise wind velocity, m/s |
Vwind | Wind velocity acting on the wind turbine, m/s |
x | Index to pipeline length, m |
Xi | A parameter that obeys the Bernoulli distribution, dimensionless |
Z | Compressibility factor, dimensionless |
ηhydro | Efficiency of the power station unit, dimensionless |
ηm | Efficiency of MPPT, dimensionless |
ηpv | Efficiency of PV panels, dimensionless |
γ | Specific weight of water, 9810 N/m3 |
Γ | Gamma function, dimensionless |
ωi | Angular frequency of sampling point i, rad/s |
φi | A random variable obeying a uniform distribution between [0, 2π], rad/s |
μ | Average wind velocity at the relative height, m/s |
ρ | fluid density, kg/m3 |
ρair | Air density, kg/m3 |
λ | Friction resistance coefficient of pipelines, dimensionless |
λl | Weakening degree of the cloud to the light intensity, dimensionless |
θ | Angle of incidence of PV panels, ° |
α | Fluid velocity, m/s |
v | Gas flow rate, m/s |
ξ | A parameter that is only related to temperature and gas species, Pa·m2/s |
κ1 | The empirical constant for low pressure networks, dimensionless |
κ2 | The empirical constant for medium and high pressure networks, dimensionless |
Δω | Sampling step size, rad/s |
Δpab | Pressure drop between node a and node b, Pa |
ΣVA, ΣVB | Molecular diffusion volumes of components A and B, cm3/mol |
Appendix A
Pipe No. | Start Node | End Node | Length (m) | Diameter (mm) | Pipeline Flow Resistance Coefficient |
---|---|---|---|---|---|
1 | 7 | 1 | 27,000 | 660 | 0.01 |
2 | 1 | 2 | 22,500 | 660 | 0.015 |
3 | 2 | 4 | 18,000 | 500 | 0.005 |
4 | 2 | 3 | 18,000 | 500 | 0.01 |
5 | 4 | 5 | 36,000 | 330 | 0.02 |
6 | 4 | 6 | 27,000 | 330 | 0.015 |
Node No. | Gas Load (m3/s) |
---|---|
1 | 0 |
2 | 0 |
3 | 0 |
4 | 0.18 |
5 | 0.13 |
6 | 0.09 |
7 | 0 |
Appendix B
Gust Wind Velocity No. | Start Time | Duration | Maximum Wind Velocity (m/s) |
---|---|---|---|
1 | 4:00 | 6 h | 0.4 |
2 | 14:00 | 6 h | 0.3 |
3 | 22:00 | 1.5 h | 0.2 |
Ramp Wind Velocity No. | Start Time | End Time | Hold Time after Ramp | Maximum Wind Velocity (m/s) |
---|---|---|---|---|
1 | 3:00 | 16:00 | 5 h | 0.7 |
Sunrise Time | Sunset Time | Maximum Light Intensity Statistical Value (Lux) |
---|---|---|
5:30 | 17:30 | 27,000 |
Appendix C
Gust Wind Velocity No. | Start Time | Duration | Maximum Wind Velocity (m/s) |
---|---|---|---|
1 | 3:00 | 7 h | 0.4 |
2 | 12:00 | 8 h | 0.4 |
3 | 20:00 | 4 h | 0.2 |
Ramp Wind Velocity No. | Start Time | End Time | Hold Time after Ramp | Maximum Wind Velocity (m/s) |
---|---|---|---|---|
1 | 1:00 | 5:00 | 6 h | 0.9 |
2 | 12:00 | 18:00 | 5 h | 1.1 |
Sunrise Time | Sunset Time | Maximum Light Intensity Statistical Value (Lux) |
---|---|---|
5:30 | 17:30 | 15,000 |
Appendix D
Gust Wind Velocity No. | Start Time | Duration | Maximum Wind Velocity (m/s) |
---|---|---|---|
1 | 3:00 | 7 h | 0.4 |
2 | 12:00 | 8 h | 0.35 |
3 | 20:00 | 4 h | 0.2 |
Ramp Wind Velocity No. | Start Time | End Time | Hold Time after Ramp | Maximum Wind Velocity (m/s) |
---|---|---|---|---|
1 | 1:00 | 5:00 | 6 h | 0.8 |
2 | 12:00 | 18:00 | 5 h | 1 |
Sunrise Time | Sunset Time | Maximum Light Intensity Statistical Value (Lux) |
---|---|---|
5:30 | 17:30 | 21,000 |
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Pipe No. | Maximum Mass Concentration of H2 (%) | Start Time of Violation | End Time of Violation |
---|---|---|---|
1 | 1.37 | - | - |
2 | 1.37 | - | - |
3 | 1.92 | - | - |
4 | 1.92 | - | - |
5 | 3.57 | 556 min/09:16 | 1210 min/20:10 |
6 | 3.57 | 556 min/09:16 | 1258 min/20:58 |
Pipe No. | Maximum Mass Concentration of H2(%) | Start Time of Violation | End Time of Violation |
---|---|---|---|
1 | 1.37 | - | - |
2 | 1.37 | - | - |
3 | 2.51 | - | - |
4 | 2.51 | - | - |
5 | 3.03 | - | - |
6 | 3.03 | - | - |
Pipe No. | Maximum Mass Concentration of H2(%) | Start Time of Violation | End Time of Violation |
---|---|---|---|
1 | 1.37 | - | - |
2 | 1.37 | - | - |
3 | 2.20 | - | - |
4 | 2.20 | - | - |
5 | 3.42 | 537 min/08:57 | 1131 min/18:51 |
6 | 3.42 | 537 min/08:57 | 1180 min/19:40 |
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Qiu, Y.; Zhou, S.; Chen, J.; Wu, Z.; Hong, Q. Hydrogen-Enriched Compressed Natural Gas Network Simulation for Consuming Green Hydrogen Considering the Hydrogen Diffusion Process. Processes 2022, 10, 1757. https://doi.org/10.3390/pr10091757
Qiu Y, Zhou S, Chen J, Wu Z, Hong Q. Hydrogen-Enriched Compressed Natural Gas Network Simulation for Consuming Green Hydrogen Considering the Hydrogen Diffusion Process. Processes. 2022; 10(9):1757. https://doi.org/10.3390/pr10091757
Chicago/Turabian StyleQiu, Yue, Suyang Zhou, Jinyi Chen, Zhi Wu, and Qiteng Hong. 2022. "Hydrogen-Enriched Compressed Natural Gas Network Simulation for Consuming Green Hydrogen Considering the Hydrogen Diffusion Process" Processes 10, no. 9: 1757. https://doi.org/10.3390/pr10091757
APA StyleQiu, Y., Zhou, S., Chen, J., Wu, Z., & Hong, Q. (2022). Hydrogen-Enriched Compressed Natural Gas Network Simulation for Consuming Green Hydrogen Considering the Hydrogen Diffusion Process. Processes, 10(9), 1757. https://doi.org/10.3390/pr10091757