Placement of Combined Heat, Power and Hydrogen Production Fuel Cell Power Plants in a Distribution Network
Abstract
:1. Introduction
1.1. Literature Review
1.2. Contributions
2. Placement of FCPPs in Distributed Networks
2.1. Objective Functions
2.1.1. Operating Cost of Energy
2.1.2. Emission
2.1.3. Voltage Deviation
2.2. Constraints
2.2.1. Bus Voltage Limits
2.2.2. Active Power Output of FCPPs
3. Multi-Objective Approach for Pareto Optimal Solutions
- Repository is not full
- The answer is not dominated by any of the solutions in the repository.
4. Best Compromise Solution
5. PSO Algorithm
5.1. Original PSO Algorithm
5.2. Modified PSO Algorithm
5.3. Fuzzy Adaptive PSO
∆ω | Ω | |||
S | M | L | ||
NFV | S | ZE | NE | NE |
M | PE | NE | NE | |
L | PE | ZE | NE |
6. Implementing FAMPSO for Placement of FCPPs
- Step 1: Data Input, including cost coefficients of FCPPs, emission coefficients of FCPPs, network data, thermal and electrical loads, number of population, initial value of inertia weight and values of learning factors.
- Step 2: Generation of initial population Xj and an initial velocity Velj, which must satisfy constraints, as follows:
- Step 3: Evaluation of objective functions. The objective functions (Equation (1), Equation (11), and Equation (14)) are calculated for each particle using the result of load flow distribution.
- Step 4: Select .
- Step 5: Non-dominated solutions of initial population are determined and stored in the repository.
- Step 6: Select .
- Step 7: Set i = 1.
- Step 8: Update velocity and position.
- Step 9: Implement mutation as described in Section 5.2.
- Step 10: Select the non-dominate solutions. If the particle i is a non-dominated solution, it is stored in the repository.
- Step 11: If all of the individuals are selected, go to Step 12, otherwise set up i = i + 1 and return to Step 8.
- Step 12: Update . is updated when one of the following conditions is satisfied, otherwise it would be the same as the previous mentioned population:
- If the current individual dominates the former , it is considered as .
- If no one dominates another, the one that its normalized membership function is greater will be considered as .
- Step 13: Update . For updating , non-dominated solutions in the repository are sorted with respect to the value of and the solution which has the biggest value of is selected as .
- Step 14: Update the inertia weight . In this algorithm, the suitable selection of inertia weight is updated by the fuzzy rules described in Section 5.3.
- Step 15: Check the termination criteria. If the termination criterion is met, finish the algorithm, otherwise go to Step 7 and repeat the process.
7. Simulation Results
Parameter | Value |
---|---|
Cost of substation active power Csub ($/kWh) | 0.035 |
Price of natural gas for FCPPs Cn1 ($/kWh) | 0.04 |
Fuel price for thermal loads Cn2 ($/kWh) | 0.05 |
operation and maintenance cost of FCPPs OM ($/h) | 19.32 |
Hydrogen selling price CHs ($/kg) | 1.8 |
Emission coefficients (gr/kWh) | ||
---|---|---|
Emission type | Substation | FCPP |
NO x | 3 | 0.015 |
SO2 | 6 | 0.024 |
- Strategy 1: Neglecting the effect of hydrogen and thermal energy produced by FCPPs and supplying thermal loads just with natural gas.
- Strategy 2: Considering the effect of thermal energy on supplying thermal loads.
- Strategy 3: Considering the effect of Hydrogen production by FCPP.
- Strategy 4: Investigating the effect of both thermal supplement and hydrogen production.
Strategies | Cost ($) | CPU time (s) | FCCPs locations (Bus Number) | Total electrical energy generation in a day (kW) |
---|---|---|---|---|
Strategy 1 | 8.6574 × 103 | 176.3 | 64,61,62,65 | 6 × 103, 6 × 103, 6 × 103, 1.346 × 103 |
Strategy 2 | 7.6996 × 103 | 181.6 | 64.62,61,65 | 6 × 103, 6 × 103, 6 × 103, 1.716 × 103 |
Strategy 3 | 8.6569 × 103 | 179.4 | 64,61,62,65 | 6 × 103, 6 × 103, 6 × 103, 1.345 × 103 |
Strategy 4 | 7.5472 × 103 | 184.2 | 61,64,62,65 | 6 × 103, 6 × 103, 6 × 103, 1.404 × 103 |
Strategies | Total electrical energy generation by hydrogen production in a day (kW) | Total thermal energy generation in a day (kW) | ||||||
---|---|---|---|---|---|---|---|---|
FCCP1 | FCCP1 | FCCP1 | FCCP4 | FCCP1 | FCCP2 | FCCP3 | FCCP 4 | |
Strategy 1 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
Strategy 2 | 0 | 0 | 0 | 0 | 6.0432 × 103 | 6.0432 × 103 | 6.0432 × 103 | 1.1794 × 103 |
Strategy 3 | 0 | 0 | 0 | 4.6547 × 103 | 0 | 0 | 0 | 0 |
Strategy 4 | 0 | 0 | 0 | 4.5959 × 103 | 6.0432 × 103 | 6.0432 × 103 | 6.0432 × 103 | 4.067 × 103 |
Objective | Emission (gr) | Voltage deviation (pu) | CPU time (s) | FCCPs locations (Bus Number) | Total electrical energy generation in a day (kW) |
---|---|---|---|---|---|
Emission | 6.3132 × 105 | … | 129.2 | 62,64,63,61 | 6 × 103, 6 × 103, 6 × 103, 6 × 103 |
Voltage deviation | … | 0.3636 | 126.4 | 25,27,65,26 | 6 × 103, 6 × 103, 6 × 103, 6 × 103 |
Strategies | Cost ($) | Emission (gr) | Voltage deviation (pu) | CPU time (s) | FCCPs locations (Bus Number) | Total electrical generation in a day (kW) |
---|---|---|---|---|---|---|
Strategy 1 | 9.0838 × 103 | 6.3553 × 105 | 0.4156 | 236.2 | 20,65,63,59 | 6 × 103, 6 × 103, 6 × 103, 5.815 × 103 |
Strategy 1 | 7.9386 × 103 | 6.3687 × 105 | 0.3857 | 238.7 | 62,25,63,19 | 6 × 103,6 × 103, 6 × 103,6 × 103 |
Strategy 3 | 8.9432 × 103 | 6.4551 × 105 | 0.3993 | 240.8 | 64,17,18,63 | 6 × 103, 6 × 103, 6 × 103, 5.11 × 103 |
Strategy 4 | 7.8233 × 103 | 6.3856 × 105 | 0.4168 | 241.3 | 61,59,23,65 | 6 × 1103, 6 × 103, 6 × 103, 5.505 × 103 |
Results obtained for thermal energy & hydrogen production for FCPPs by multi objective optimization. | ||||||||
---|---|---|---|---|---|---|---|---|
Strategies | Total electrical energy generation by hydrogen production in a day (kW) | Total thermal energy generation in a day (kW) | ||||||
FCCP 1 | FCCP 2 | FCCP 3 | FCCP 4 | FCCP 1 | FCCP 2 | FCCP 3 | FCCP 4 | |
Strategy 1 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
Strategy 2 | 0 | 0 | 0 | 0 | 6.0432 × 103 | 6.0432 × 103 | 6.0432 × 103 | 6.0432 × 103 |
Strategy 3 | 0 | 0 | 0 | 889.4078 | 0 | 0 | 0 | |
Strategy 4 | 0 | 0 | 0 | 494.7211 | 6.0432 × 103 | 6.0432 × 103 | 6.0432 × 103 | 5.5693 × 103 |
- Case I: considering the f1 function
- Case II: considering the f2 function
- Case III: considering the f3 function
- Case IV: considering f1, f2 and f3 functions
Cases | Importance | f1 (kW) | f2 (gr) | f3 (pu) | ||
---|---|---|---|---|---|---|
w1 | w2 | w3 | ||||
Case I | - | - | - | 7.5472 × 103 | 6.7561 × 105 | 0.4716 |
Case II | - | - | - | 7.9170 × 103 | 6.3132 × 105 | 0.4377 |
Case III | - | - | - | 7.9656 × 103 | 6.4380 × 105 | 0.3636 |
Case IV | 0.33 | 0.33 | 0.33 | 7.8233 × 103 | 6.3856 × 105 | 0.4168 |
0.4 | 0.4 | 0.2 | 7.7192 × 103 | 6.4308 × 105 | 0.45 | |
0.4 | 0.2 | 0.4 | 7.6783 × 103 | 6.4972 × 105 | 0.419 | |
0.2 | 0.4 | 0.4 | 7.9239 × 103 | 6.3310 × 105 | 0.4071 | |
0.8 | 0.1 | 0.1 | 7.5620 × 103 | 6.7642 × 105 | 0.4431 | |
0.1 | 0.8 | 0.1 | 7.9184 × 103 | 6.3168 × 105 | 0.4408 | |
0.1 | 0.1 | 0.8 | 7.9636 × 103 | 6.4328 × 105 | 0.3638 |
- -
- In Cases I–III, when each objective is minimized individually, its value is the best one among the cases. Also, it can be seen that when each objective reaches its minimum value, the value of the other objectives will increase with respect to their minimum (when they are minimized in a single objective optimization process).
- -
- Objectives f1 and f2 are conflicting. To minimize the emissions, FCPPs should generate more active power, so the energy costs will be increased. The results of Cases I, II, and IV-3, 4, 5 and 6 support this fact.
- -
- Objectives f1 and f3 are conflicting. For instance, in case IV when = 0.8 and = 0.1, the cost function and voltage deviation are 7.5620 × 103 $ and 0.4431 pu, respectively; in contrast when = 0.1 and = 0.8, the cost and voltage deviation are 7.9636 × 103 $ and 0.3638 pu, respectively. The results of cases I, III and IV 2 and 4 confirm the above statements.
- -
- The objectives f2 and f3 have similar interests. In cases IV-3 and 4 when the importance of f2 is fixed and the importance of f3 is increased, the value of f2 decreases.
- -
- In cases I and II when the value of f2 is decreased, the value of f3 is also decreased.
- -
- In case IV when the importance of f1 is decreased the values of f2 and f3 are increased.
- -
- Case IV-1 has a suitable tradeoff between all objective functions.
8. Conclusions
Nomenclature
active power produced by the substation of network | |
active power generated by FCPPj during time t | |
price of purchasing natural gas for FCPPs | |
fuel price for thermal loads | |
maximum power of FCPP | |
equivalent electric power for hydrogen production during time t | |
efficiency of FCPPj during time t | |
total number of FCPPs | |
total number of buses | |
thermal load demand of bus i | |
produced thermal by FCPP in bus i if there is a FCPP in this bus during time t | |
operation and maintenance cost of FCPPs | |
cost of substation active power | |
hydrogen selling price | |
the total time | |
the location of FCPPn | |
thermal energy to electrical energy ratio | |
part load ratio of FCPPj (equal to electrical generated power/maximum power) | |
a conversion factor (kg of hydrogen/kW of electric power), where and is the cell operating voltage, | |
optimization variable | |
emission produced by grid during time t | |
emission produced by FCPPj units during time t | |
emission coefficient of grid | |
emission coefficient of grid | |
emission coefficient of FCPP units | |
emission coefficient of FCPP units | |
nominal voltage | |
voltage magnitude of the bus i during time t | |
lowest voltages of each bus | |
highest voltages of each bus | |
minimum of active power produced by FCPPj during time t | |
maximum of active power produced by FCPPj during time t | |
lower bound of each objective function | |
upper bounds of each objective function | |
membership function of each objective function | |
normalized membership value of each particle in the repository | |
number of objective function | |
number of non-dominated solutions in the repository | |
weight of kth objective function | |
current velocity of particle j at iteration | |
modified velocity of particle j at iteration | |
random number between 0 and 1 | |
current position of particle j at iteration | |
mutant vector of particle j at iteration | |
the trial vector | |
normalized fitness value |
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Farjah, E.; Bornapour, M.; Niknam, T.; Bahmanifirouzi, B. Placement of Combined Heat, Power and Hydrogen Production Fuel Cell Power Plants in a Distribution Network. Energies 2012, 5, 790-814. https://doi.org/10.3390/en5030790
Farjah E, Bornapour M, Niknam T, Bahmanifirouzi B. Placement of Combined Heat, Power and Hydrogen Production Fuel Cell Power Plants in a Distribution Network. Energies. 2012; 5(3):790-814. https://doi.org/10.3390/en5030790
Chicago/Turabian StyleFarjah, Ebrahim, Mosayeb Bornapour, Taher Niknam, and Bahman Bahmanifirouzi. 2012. "Placement of Combined Heat, Power and Hydrogen Production Fuel Cell Power Plants in a Distribution Network" Energies 5, no. 3: 790-814. https://doi.org/10.3390/en5030790
APA StyleFarjah, E., Bornapour, M., Niknam, T., & Bahmanifirouzi, B. (2012). Placement of Combined Heat, Power and Hydrogen Production Fuel Cell Power Plants in a Distribution Network. Energies, 5(3), 790-814. https://doi.org/10.3390/en5030790