Cogeneration Systems Performance Analysis as a Sustainable Clean Energy and Water Source Based on Energy Hubs Using the Archimedes Optimization Algorithm
Abstract
:1. Introduction
- ▪
- Proposing a methodology to address integrations among EH components and energy networks, while satisfying different system constraints. Economic and environmental objective functions are considered to address the configuration and optimal operation of the EH system. Moreover, seeking to address reliability enhancement for electrical, thermal, and drinking water as vital requirements.
- ▪
- Applying the AOA and GA to optimally solve the optimization problem to maximize the total SW and minimize emissions. Moreover, analyzing the performance of CHP units and verifying their effectiveness with EHs.
- ▪
- Verifying the effectiveness of the proposed method in a short-term situation; a day is examined within one hour.
2. Energy Hub (EH) Modelling
2.1. PV Unit Output Power Modelling
2.2. WT Output Power Modelling
2.3. ESSs Model
2.4. CHP Model
2.5. EHP Model
2.6. GB Model
2.7. WD Unit Modelling
3. Uncertainty Analysis of RESs
4. Thermal Generation Emissions
5. Problem Formulation and Methodology
5.1. Objective Function
- Conventional power generators’ operating cost can be represented by a quadratic form as [36]:
- CHP generator operation cost can be represented by a quadratic form as [32]:
- The operating cost of a heat-only unit (HOU) can be represented by a quadratic form as [36]:
- Because of the uncertainty of the available RESs at any given time, the factors for overestimating and underestimating the available RESs must be included in the model. The overestimation factor can be easily explained in that if a certain amount of RES power is assumed and that power is not available at the assumed time, then the power must be purchased from an alternative source or the loads must be disposed of. In the case of an underestimation penalty, if the available RES power is more than was assumed, then that power will be wasted, and it is reasonable for the system operator to pay a cost to the RES power product for the wastage of available capacity. Surplus RES power is usually sold to neighboring utilities, or by rapid redistribution. The output of non-RES generators is correspondingly reduced. Only if this cannot be achieved should the phantom load resistors be connected to “waste” the excess power. Obviously, these actions can be modeled by a simple minimization penalty cost function as [36]:
- The operating cost of charge/discharge of ESSs can be represented by different models but this paper deals with a simple linear function, as the ESSs should be considered as a load when being charged and be considered as a generation source when discharging to the network [40]:
- The operating cost of EHP can be represented by a linear function as [37]:
- The operating cost of GB can be represented by a linear function as [41]:
- The operating cost of a WD unit can be represented by a linear function as [42]:
- The operating cost of the water grid (WG) can be represented in a linear form as [35]:
- Electrical power balance
- 2.
- Heating power balance
- 3.
- Water balance
- 4.
- Line flow and bus voltage limits:
- 5.
- Ramp rate limits for thermal generator, CHP, EHP, GB, WD, WG, and HOU:
- 6.
- Real operating power limits for wind, PV, CHPs, EHP, and WD units:
- 7.
- Heat limits for CHPs, HOUs, EHP, and GB:
- 8.
- Charging/discharging limits of ESSs:
- 9.
- Initial and final energy in ESSs:
5.2. Optimization Algorithm
5.3. Proposed Stochastic Planning Structure
5.4. EH Methodology to Satisfy Electrical, Thermal, and Water Demand
5.4.1. A proposed Methodology to Satisfy Electrical Requirements
5.4.2. A Proposed Methodology to Satisfy Thermal Requirements
5.4.3. A Proposed Methodology to Satisfy Water Requirements
6. Simulation Results and Discussion
6.1. Simulation Setup
6.2. Case Studies
- ▪
- In case 1 (base case), there is no EH and the loads are fed directly from electricity, HOU, and WG, respectively. This case was studied to explore the impact of EH on total SW, emissions, and losses. As reported in Table 3, total SW, emissions, and electrical and heat losses are 275,467.99 USD, 5638.27 kg, 3.05 MWh, and 108.27 MWhth, respectively. Additionally, there is no electrical power or water sold to the electricity grid and water network, respectively. The total electrical demand, in this case, is 2466.4 MWh (the base load curve).
- ▪
- In case 2, CHP was integrated with the EH to show the effect of this unit on the performance parameters. The main source to supply heating demand requirements is the CHP unit during the day because of the low price of natural gas as shown in Figure 10a,b. With the integration of the CHP unit, SW increased by 5.71% and emissions decrease by 9.97%, respectively, compared with the base case. Additionally, the elastic part of the electrical demand supplied by the hub increased by 0.7% and the hub sold 23.2 MWh to the electricity grid.
- ▪
- In case 3, EHP, GB, WD units, and ESSs are added to the CHP in the previous case. This case results in an increase of 3151.24 MWh in the electrical demand because of adding the EHP and WD units. So, the total SW increased to 336,786.09 USD. On the other hand, total emissions increased a little compared to the base case. Figure 11 presents the results for this case.
- ▪
- In the last case (case 4), CHP, RESs, ESSs, EHP, WD, and GB are operating at the same time. This configuration enables the EH not only to meet demand requirements but also to sell electricity and water to the electrical and water networks during light load (11 AM to 5 PM in the electrical system and 1 AM to 10 AM in the water network) as shown in Figure 12a–c. So, compared with the base case, all performance parameters are improved, and total SW and emissions are 379,648 USD and 4603 kg. In addition, the total electrical demand supplied by the hub increased to 4269.82 and the hub sold 512.26 MWh to the electricity grid and 149.4 m3 to the water network.
6.3. Proposed Algorithm Validation
7. Conclusions
- ▪
- In case 4, all performance parameters were improved; the total SW and emissions are 379,648 USD and 4603 kg. Additionally, the total electrical demand supplied by the hub increased to 4269.82 MWh; the hub sold 512.26 MWh to the electricity grid and 149.4 m3 to the water network.
- ▪
- All operating parameters of the system (case 4) were improved by applying the AOA to solve the optimization problem. Total emissions and electrical/heat losses were reduced by 6.76%, 14.52%, and 2.34%, respectively, and total electrical demand, total SW, electrical power sold to the grid, and amount of water sold to the water network were increased by 4.06%, 20.49%, and 7.03%, respectively, compared to case 4 solved with GA.
- ▪
- The number of emissions was converted to cost by using a penalty factor h. The aim was achieved and emissions were reduced, which in turn reduced all associated social and environmental aspects.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
A. Abbreviations | Maximum and minimum power outputs of cogeneration generator (MW) | ||
AOA | Archimedes optimization algorithm | Maximum installed capacity of the EHP unit (MW) | |
CHP | Combined heat and power | Maximum installed capacity of the WD unit (MW) | |
ED | Electric demand | Maximum and minimum heat outputs of the CHP generator (MWth) | |
EH | Energy hub | Maximum and minimum heat outputs of HOU (MWth) | |
EHP | Electric heat pump | Maximum installed capacity of the EHP unit (MWth) | |
ES | Electric storage | Maximum installed capacity of GB unit (MWth) | |
ESS | Energy storage system | Maximum apparent power flow limit in the ith line (MVA) | |
GA | Genetic algorithm | Maximum and minimum voltage limits of the ith bus (p.u) | |
GAMS | General algebraic modeling language | Heat generation cost coefficients of HOU | |
GB | Gas boiler | Cut-in speed, cut-out speed, and rated speed (m/s) | |
HD | Heat demand | GB coefficient of performance | |
HOU | Heat only unit | Performance coefficient of WD (m3/MW) | |
HS | Heat storage | PV cell efficiency | |
MILP | Mixed integer linear programming | parameters | |
MINLP | Mixed-integer nonlinear programming | Electrical, heat, and water consumed cost | |
NSGA-II | Non-dominated sorting genetic algorithm-II | of WT and PV generator | |
PSO | Particle swarm optimization | C. Variables | |
PV | Photovoltaic | Highest predictable value of operating cost ($) | |
QPSO | Quantum Particle Swarm Optimization | ESS power cost ($) | |
RES | Renewable energy resource | Power absorbed by EHP cost ($) | |
SW | Social welfare | Natural gas absorbed by GB cost ($) | |
WD | Water desalination | Produced heat by HOU cost ($) | |
WG | Water grid | Power absorbed by WD cost ($) | |
WR | Water demand | Total cost of water produced from WG ($) | |
WS | Water storage | Corresponding cost of emissions ($) | |
WT | Wind turbine | Total cost of power produced from grid ($) | |
B. Input values | Total cost of energy produced from CHP ($) | ||
Emission coefficients of the thermal generators | Total cost of WT and PV generators ($) | ||
Conventional generator cost coefficients | Total value of emissions (kg) | ||
CHP generation cost coefficients | Highest estimated value for emissions (kg) | ||
EHP unit cost coefficient ($/MW) | (kW/m2) | ||
GB unit cost coefficient ($/MW) | (MW) | ||
Form factor | |||
Over-estimation cost coefficient of WT and PV generators ($/MW) | Consumed electricity by WD (MW) | ||
Under-estimation cost coefficient of WT and PV generators ($/MW) | Power of the thermal generator (MW) | ||
Discharging and charging cost of the ith ESSs ($/MW) | Electrical and heating outputs of the CHP (MW/MWth) | ||
EHP coefficient of performance | Scheduled output of WT and PV generator (MW) | ||
Operating cost of WT and PV generators ($/MW) | Discharging and charging power of the ith ESSs (MW) | ||
Down-ramp rate and up-ramp rate limit of the ith unit | ES power (MW) | ||
Maximum and minimum limit energy of ESSs (MWh) | Total power losses (MW) | ||
Initial energy of the ith ESSs (MWh) | |||
ℎ | Penalty rate factor ($/kg) | ||
Scale factor | Power of HS (MWth) | ||
WD unit cost coefficient ($/MW) | Heat loss (MWth) | ||
Cost coefficient of the WG ($/m3) | (MWth) | ||
Output loads, coupling matrix, input energy carriers | (MWth) | ||
PV and WT rated power (MW) | Flow of apparent power in ith line (MVA) | ||
Available PV and WT power (MW) | (m/s) | ||
Electrical, heat, and water demand | Volume of the water produced from the WG (m3) | ||
Maximum and minimum power limits of ESSs (MW) | Produced water by WD (m3) | ||
PV output power at maximum solar radiation (MW) | Volume of water storage (m3) |
Appendix A
Parameter | Unit | Value | Parameter | Unit | Value | ||
CHP | $ | 1250 | Grid | $ | 550 | ||
$/MW | 14.5 | $/MW | 8.1 | ||||
$/MW2 | 0.0345 | $/MW2 | 0.00028 | ||||
$/MWth | 4.2 | HOU | $ | 100 | |||
$/MWth2 | 0.03 | $/MWth | 0.1 | ||||
$/MW.MWth | 0.031 | $/MWth2 | 0.001 | ||||
EHP | COP | - | 2.5 | WD | m3/MW | 3.03 | |
MW | 40 | MW | 60 | ||||
$/MW | 3.25 | $/MW | 2.66 | ||||
HS | - | 1 | WG | $/m3 | 4 | ||
- | 1 | WS | - | 0.9 | |||
MWhth | 8 | - | 0.9 | ||||
MWhth | 60 | m3/h | 8 | ||||
MWhth | 12 | m3/h | 40 | ||||
ES | - | 0.9 | m3/h | 10 | |||
- | 0.9 | ||||||
MWh | 3.3 | ||||||
MWh | 30 | ||||||
MWh | 3.3 |
References
- Mohamed, M.A.; Almalaq, A.; Mahrous Awwad, E.; El-Meligy, M.A.; Sharaf, M.; Ali, Z.M. An Effective Energy Management Approach within a Smart Island Considering Water-Energy Hub. IEEE Trans. Ind. Appl. 2020, 9994, 1–8. [Google Scholar] [CrossRef]
- Jalili, M.; Sedighizadeh, M.; Sheikhi Fini, A. Optimal operation of the coastal energy hub considering seawater desalination and compressed air energy storage system. Therm. Sci. Eng. Prog. 2021, 25, 101020. [Google Scholar] [CrossRef]
- Klemeš, J.J.; Van Fan, Y.; Jiang, P. COVID-19 pandemic facilitating energy transition opportunities. Int. J. Energy Res. 2021, 45, 3457–3463. [Google Scholar] [CrossRef] [PubMed]
- Buheji, M.; da Costa Cunha, K.; Beka, G.; Mavrić, B.; Leandro do Carmo de Souza, Y.; Souza da Costa Silva, S.; Hanafi, M.; Chetia Yein, T. The Extent of COVID-19 Pandemic Socio-Economic Impact on Global Poverty. A Global Integrative Multidisciplinary Review. Am. J. Econ. 2020, 10, 213–224. [Google Scholar] [CrossRef]
- Bilgen, S.; Keleş, S.; Sarikaya, I.; Kaygusuz, K. A perspective for potential and technology of bioenergy in Turkey: Present case and future view. Renew. Sustain. Energy Rev. 2015, 48, 228–239. [Google Scholar] [CrossRef]
- Bhatia, S.C. Advanced Renewable Energy Systems; CRC Press: Boca Raton, FL, USA, 2014. [Google Scholar]
- Sani, M.M.; Sani, H.M.; Fowler, M.; Elkamel, A.; Noorpoor, A.; Ghasemi, A. Optimal energy hub development to supply heating, cooling, electricity and freshwater for a coastal urban area taking into account economic and environmental factors. Energy 2022, 238, 121743. [Google Scholar] [CrossRef]
- Mansouri, S.A.; Javadi, M.S.; Ahmarinejad, A.; Nematbakhsh, E.; Zare, A.; Catalao, J.P. A coordinated energy management framework for industrial, residential and commercial energy hubs considering demand response programs. Sustain. Energy Technol. Assess. 2021, 47, 101376. [Google Scholar] [CrossRef]
- Xu, X.; Hu, W.; Liu, W.; Du, Y.; Huang, R.; Huang, Q.; Chen, Z. Look-ahead risk-constrained scheduling for an energy hub integrated with renewable energy. Appl. Energy 2021, 297, 117109. [Google Scholar] [CrossRef]
- Karkhaneh, J.; Allahvirdizadeh, Y.; Shayanfar, H.; Galvani, S. Risk-constrained probabilistic optimal scheduling of FCPP-CHP based energy hub considering demand-side resources. Int. J. Hydrogen Energy 2020, 45, 16751–16772. [Google Scholar] [CrossRef]
- Shahinzadeh, H.; Moradi, J.; Gharehpetian, G.B.; Abedi, M.; Hosseinian, S.H. Multi-Objective Scheduling of CHP-Based Microgrids with Cooperation of Thermal and Electrical Storage Units in Restructured Environment. In Proceedings of the 2018 Smart Grid Conference (SGC), Sanandaj, Iran, 28–29 November 2018; pp. 1–10. [Google Scholar] [CrossRef]
- Moradi, S.; Ghaffarpour, R.; Ranjbar, A.M.; Mozaffari, B. Optimal integrated sizing and planning of hubs with midsize/large CHP units considering reliability of supply. Energy Convers. Manag. 2017, 148, 974–992. [Google Scholar] [CrossRef]
- Zafarani, H.; Taher, S.A.; Shahidehpour, M. Robust operation of a multicarrier energy system considering EVs and CHP units. Energy 2020, 192, 116703. [Google Scholar] [CrossRef]
- Rastegar, M.; Fotuhi-Firuzabad, M.; Lehtonen, M. Home load management in a residential energy hub. Electr. Power Syst. Res. 2015, 119, 322–328. [Google Scholar] [CrossRef]
- Xie, S.; Wang, X.; Qu, C.; Wang, X.; Guo, J. Impacts of different wind speed simulation methods on conditional reliability indices. Int. Trans. Electr. Energy Syst. 2015, 25, 359–373. [Google Scholar] [CrossRef]
- Davatgaran, V.; Saniei, S.; Mortazavi, S.S. Optimal bidding strategy for an energy hub in energy market. Energy 2018, 148, 482–493. [Google Scholar] [CrossRef]
- Zhang, L.; Zhu, Y. Modeling of CHP-EHP coupled energy station considering load side flexibility. In Proceedings of the IEEE International Conference on Energy Internet, ICEI 2019, Nanjing, China, 21–31 May 2019; pp. 71–74. [Google Scholar] [CrossRef]
- Mirhedayati, A.S.; Shahinzadeh, H.; Nafisi, H.; Gharehpetian, G.B.; Benbouzid, M.; Shaneh, M. CHPs and EHPs Effectiveness Evaluation in a Residential Multi-Carrier Energy Hub. In Proceedings of the 2021 25th Electrical Power Distribution Conference (EPDC), Karaj, Iran, 18–19 May 2021; pp. 42–47. [Google Scholar] [CrossRef]
- Nosratabadi, S.M.; Jahandide, M.; Guerrero, J.M. Robust scenario-based concept for stochastic energy management of an energy hub contains intelligent parking lot considering convexity principle of CHP nonlinear model with triple operational zones. Sustain. Cities Soc. 2020, 68, 102795. [Google Scholar] [CrossRef]
- Tay, Z.X.; Lim, J.S.; Alwi, S.R.W.; Manan, Z.A. Optimal Planning for the Cogeneration Energy System using Energy Hub Model. Chem. Eng. Trans. 2021, 88, 349–354. [Google Scholar] [CrossRef]
- Shahrabi, E.; Hakimi, S.M.; Hasankhani, A.; Derakhshan, G.; Abdi, B. Developing optimal energy management of energy hub in the presence of stochastic renewable energy resources. Sustain. Energy Grids Netw. 2021, 26, 100428. [Google Scholar] [CrossRef]
- Teng, Y.; Sun, P.; Leng, O.; Chen, Z.; Zhou, G. Optimal Operation Strategy for Combined Heat and Power System Based on Solid Electric Thermal Storage Boiler and Thermal Inertia. IEEE Access 2019, 7, 180761–180770. [Google Scholar] [CrossRef]
- Zhou, Y.; Cao, S. Quantification of energy flexibility of residential net-zero-energy buildings involved with dynamic operations of hybrid energy storages and diversified energy conversion strategies. Sustain. Energy Grids Netw. 2020, 21, 100304. [Google Scholar] [CrossRef]
- Zhang, H.; Cao, Q.; Gao, H.; Wang, P.; Zhang, W.; Yousefi, N. Optimum design of a multi-form energy hub by applying particle swarm optimization. J. Clean. Prod. 2020, 260, 121079. [Google Scholar] [CrossRef]
- Wang, J.; Liu, Y.; Ren, F.; Lu, S. Multi-objective optimization and selection of hybrid combined cooling, heating and power systems considering operational flexibility. Energy 2020, 197, 117313. [Google Scholar] [CrossRef]
- Ren, F.; Wang, J.; Zhu, S.; Chen, Y. Multi-objective optimization of combined cooling, heating and power system integrated with solar and geothermal energies. Energy Convers. Manag. 2019, 197, 111866. [Google Scholar] [CrossRef]
- Shahzad, M.W.; Burhan, M.; Ng, K.C. Pushing desalination recovery to the maximum limit: Membrane and thermal processes integration. Desalination 2017, 416, 54–64. [Google Scholar] [CrossRef]
- Nazari-Heris, M.; Mohammadi-Ivatloo, B.; Asadi, S. Optimal operation of multi-carrier energy networks with gas, power, heating, and water energy sources considering different energy storage technologies. J. Energy Storage 2020, 31, 101574. [Google Scholar] [CrossRef]
- Ramos-Teodoro, J.; Gil, J.D.; Roca, L.; Rodríguez, F.; Berenguel, M. Optimal water management in agro-industrial districts: An energy hub’s case study in the southeast of Spain. Processes 2021, 9, 333. [Google Scholar] [CrossRef]
- Mokaramian, E.; Shayeghi, H.; Sedaghati, F.; Safari, A. Four-Objective Optimal Scheduling of Energy Hub Using a Novel Energy Storage, Considering Reliability and Risk Indices. J. Energy Storage 2021, 40, 102731. [Google Scholar] [CrossRef]
- Mostafavi Sani, M.; Noorpoor, A.; Shafie-Pour Motlagh, M. Optimal model development of energy hub to supply water, heating and electrical demands of a cement factory. Energy 2019, 177, 574–592. [Google Scholar] [CrossRef]
- Eladl, A.A.; El-Afifi, M.I.; Saeed, M.A.; El-Saadawi, M.M. Optimal operation of energy hubs integrated with renewable energy sources and storage devices considering CO2 emissions. Int. J. Electr. Power Energy Syst. 2019, 117, 105719. [Google Scholar] [CrossRef]
- Geidl, M. Integrated Modeling and Optimization of Multi-Carrier Energy Systems. Ph.D. Thesis, ETH Zurich, Zurich, Switzerland, 2007. [Google Scholar]
- Hasankhani, A.; Hakimi, S.H. Stochastic energy management of smart microgrid with intermittent renewable energy resources in electricity market. Energy 2021, 219, 119668. [Google Scholar] [CrossRef]
- Mokaramian, E.; Shayeghi, H.; Sedaghati, F.; Safari, A.; Alhelou, H.H. A CVaR-Robust-based multi-objective optimization model for energy hub considering uncertainty and E-fuel energy storage in energy and reserve markets. IEEE Access 2021, 9, 109447–109464. [Google Scholar] [CrossRef]
- Eladl, A.A.; ElDesouky, A.A. Optimal economic dispatch for multi heat-electric energy source power system. Int. J. Electr. Power Energy Syst. 2018, 110, 21–35. [Google Scholar] [CrossRef]
- Neves, D.; Silva, C.A. Modeling the impact of integrating solar thermal systems and heat pumps for domestic hot water in electric systems—The case study of Corvo Island. Renew. Energy 2014, 72, 113–124. [Google Scholar] [CrossRef]
- Damodaran, S.K.; Kumar, T.K.S. Economic and emission generation scheduling of thermal power plant incorporating wind energy. In Proceedings of the IEEE Region 10 International Conference TENCON, Penang, Malaysia, 5–8 November 2017; pp. 1487–1492. [Google Scholar] [CrossRef]
- Hetzer, J.; David, C.Y.; Bhattarai, K. An economic dispatch model incorporating wind power. IEEE Trans. Energy Convers. 2008, 23, 603–611. [Google Scholar] [CrossRef]
- Wang, Z.; Zhong, J.; Chen, D.; Lu, Y.; Men, K. A multi-period optimal power flow model including battery energy storage. IEEE Power Energy Soc. Gen. Meet. 2013. [CrossRef]
- Najafi, A.; Falaghi, H.; Contreras, J.; Ramezani, M. Medium-term energy hub management subject to electricity price and wind uncertainty. Appl. Energy 2016, 168, 418–433. [Google Scholar] [CrossRef]
- Zhang, G.; Hu, W.; Cao, D.; Liu, W.; Huang, R.; Huang, Q.; Blaabjerg, F. Data-driven optimal energy management for a wind-solar-diesel-battery-reverse osmosis hybrid energy system using a deep reinforcement learning approach. Energy Convers. Manag. 2020, 227, 113608. [Google Scholar] [CrossRef]
- Hashim, F.A.; Hussain, K.; Houssein, E.H.; Mabrouk, M.S.; Al-Atabany, W. Archimedes optimization algorithm: A new metaheuristic algorithm for solving optimization problems. Appl. Intell. 2021, 51, 1531–1551. [Google Scholar] [CrossRef]
- Houssein, E.H.; Helmy, B.E.D.; Rezk, H.; Nassef, A.M. An enhanced Archimedes optimization algorithm based on Local escaping operator and Orthogonal learning for PEM fuel cell parameter identification. Eng. Appl. Artif. Intell. 2021, 103, 104309. [Google Scholar] [CrossRef]
Ref. | Year | PV | WT | CHP | EHP | GB | WD | ES | HS | WS | Demand | CO # | EA & | UA ¥ | Grid- Connected | SA ¤ |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
[1] | 2020 | ⨯ | ⨯ | ✓ | ⨯ | ✓ | ✓ | ✓ | ⨯ | ✓ | E-H-W * | ✓ | ⨯ | ✓ | ✓ | GA |
[2] | 2021 | ✓ | ✓ | ⨯ | ⨯ | ⨯ | ✓ | ⨯ | ✓ | ✓ | E-H-W | ✓ | ✓ | ✓ | ✓ | GAMS |
[12] | 2017 | ⨯ | ⨯ | ✓ | ⨯ | ✓ | ⨯ | ✓ | ✓ | ⨯ | E-H + | ✓ | ⨯ | ✓ | ✓ | MILP |
[16] | 2018 | ⨯ | ✓ | ✓ | ✓ | ✓ | ⨯ | ✓ | ⨯ | ⨯ | E-H | ✓ | ⨯ | ✓ | ✓ | MILP |
[19] | 2021 | ⨯ | ✓ | ✓ | ✓ | ✓ | ⨯ | ⨯ | ⨯ | ⨯ | E-H | ✓ | ✓ | ✓ | ✓ | MINLP |
[20] | 2021 | ⨯ | ⨯ | ✓ | ⨯ | ✓ | ⨯ | ✓ | ✓ | ⨯ | E-H | ✓ | ⨯ | ⨯ | ✓ | MILP-GAMS |
[21] | 2020 | ✓ | ✓ | ✓ | ⨯ | ✓ | ⨯ | ✓ | ✓ | ⨯ | E-H-C ⸸ | ✓ | ✓ | ✓ | ✓ | QPSO |
[22] | 2019 | ⨯ | ✓ | ✓ | ⨯ | ⨯ | ⨯ | ⨯ | ✓ | ⨯ | E-H | ✓ | ⨯ | ✓ | ✓ | - |
[23] | 2020 | ✓ | ✓ | ⨯ | ⨯ | ⨯ | ⨯ | ✓ | ⨯ | ⨯ | E-H-C | ⨯ | ⨯ | ⨯ | ✓ | - |
[24] | 2020 | ⨯ | ⨯ | ✓ | ⨯ | ⨯ | ⨯ | ⨯ | ⨯ | ⨯ | E-H | ✓ | ✓ | ⨯ | ✓ | PSO |
[25] | 2020 | ✓ | ⨯ | ⨯ | ✓ | ⨯ | ⨯ | ✓ | ⨯ | ✓ | E-H-C | ✓ | ✓ | ⨯ | ✓ | NSGA |
[26] | 2019 | ✓ | ⨯ | ⨯ | ✓ | ⨯ | ⨯ | ✓ | ⨯ | ⨯ | E-H-C | ✓ | ✓ | ⨯ | ✓ | NSGA-II |
Proposed | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | E-H-W | ✓ | ✓ | ✓ | ✓ | AOA |
Cases | Electricity/Heat/ Water Network | CHP | EHP | GB | RESs | WD | ESSs |
---|---|---|---|---|---|---|---|
Case 1 (base case) | ✓ | × | × | × | × | × | × |
Case 2 | ✓ | ✓ | × | × | × | × | × |
Case 3 | ✓ | ✓ | ✓ | ✓ | × | ✓ | ✓ |
Case 4 | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Case | SW ($) | Emissions (kg) | Energy Loss | Electrical Energy Requirement (MWh) | Power Sold to the Grid (MWh) | Water Sold to the Network (m3) | |
---|---|---|---|---|---|---|---|
Electrical (MWh) | Heat (MWhth) | ||||||
Case 1 (base case) | 275,467.99 | 5638.27 | 3.05 | 108.27 | 2466.40 | - | - |
Case 2 | 292,150.20 | 5075.92 | 2.71 | 128.20 | 2484.00 | 23.20 | - |
Case 3 | 336,786.09 | 5848.00 | 2.72 | 131.40 | 3151.24 | 90.44 | - |
Case 4 | 379,648.00 | 4603.00 | 4.12 | 131.04 | 4269.82 | 512.26 | 149.4 |
AOA Characteristics | |
Population Size | 50 |
C1 | 2 |
C2 | 6 |
C3 | 2 |
C4 | 0.5 |
Number of iterations | 100 |
GA Characteristics | |
Population size | 50 |
Number of iterations | 100 |
Hr. | Grid (MW) | PV (MW) | Wind (MW) | CHP-E (MW) | ES (MW) | HOU (MWth) | CHP-H (MWth) | EHP (MWth) | GB (MWth) | HS (MWth) | WG (m3) | WD (m3) | WS (m3) |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 8.69 | 0.00 | 43.84 | 85.10 | −3.52 | 20.31 | 37.53 | 15.93 | 25.19 | −11.23 | −5.59 | 118.33 | −12.23 |
2 | −7.68 | 0.00 | 48.92 | 85.00 | −3.95 | 29.00 | 37.51 | 15.93 | 6.37 | −12.88 | −13.83 | 88.25 | 12.58 |
3 | −16.15 | 0.00 | 49.87 | 85.01 | −5.81 | 21.03 | 37.51 | 15.99 | 10.37 | −14.06 | 11.80 | 86.62 | −18.92 |
4 | −12.82 | 0.00 | 65.55 | 85.01 | 2.60 | 24.84 | 37.50 | 10.79 | 6.11 | −7.48 | 2.96 | 76.90 | −0.36 |
5 | −45.59 | 0.00 | 95.00 | 85.00 | 1.98 | 37.48 | 37.50 | 4.54 | 16.62 | 8.93 | −1.55 | 86.92 | 1.63 |
6 | 18.01 | 0.00 | 47.75 | 85.01 | 0.26 | 26.81 | 37.51 | 12.44 | 20.47 | −9.55 | −46.37 | 131.52 | 9.34 |
7 | 3.20 | 15.98 | 64.12 | 85.00 | 0.03 | 21.12 | 37.50 | 13.85 | 12.61 | 9.31 | −34.85 | 133.29 | 2.06 |
8 | 14.17 | 17.57 | 56.05 | 85.00 | 4.39 | 44.70 | 37.50 | 6.62 | 14.92 | 8.55 | −26.89 | 135.94 | 0.45 |
9 | 4.44 | 36.21 | 55.09 | 85.02 | 0.00 | 31.21 | 37.50 | 14.21 | 9.97 | 11.79 | 0.77 | 111.25 | 0.48 |
10 | 36.60 | 50.92 | 34.33 | 85.03 | 0.00 | 33.21 | 37.52 | 14.63 | 22.49 | 4.51 | −20.37 | 135.18 | 0.69 |
11 | −14.67 | 60.45 | 56.52 | 85.02 | 0.00 | 35.59 | 37.50 | 11.03 | 17.03 | 3.90 | 12.57 | 111.93 | 0.00 |
12 | −52.25 | 33.73 | 62.70 | 85.07 | 0.00 | 63.19 | 37.51 | 3.86 | 6.50 | 1.26 | 39.22 | 85.18 | 0.10 |
13 | −58.47 | 64.17 | 61.34 | 85.04 | 0.00 | 77.26 | 37.51 | 3.61 | 17.98 | 0.17 | 43.18 | 94.82 | 0.00 |
14 | −38.49 | 57.30 | 93.09 | 85.01 | 0.00 | 80.59 | 37.50 | 8.73 | 24.20 | 3.16 | 66.21 | 83.79 | 0.00 |
15 | −40.87 | 53.02 | 83.59 | 85.14 | 0.00 | 91.68 | 37.52 | 3.88 | 14.81 | 2.06 | 79.19 | 70.81 | 0.00 |
16 | −16.40 | 44.29 | 59.84 | 85.03 | 0.00 | 93.49 | 37.51 | 3.56 | 14.43 | 3.03 | 83.61 | 70.89 | 0.00 |
17 | 10.10 | 39.38 | 61.74 | 85.00 | 0.00 | 80.94 | 37.53 | 5.97 | 14.04 | 0.00 | 91.29 | 63.21 | 0.00 |
18 | 12.12 | 0.00 | 63.65 | 85.01 | 0.00 | 87.14 | 37.50 | 7.55 | 23.10 | 0.00 | 91.55 | 70.45 | 0.00 |
19 | 31.11 | 0.00 | 71.25 | 85.02 | 0.00 | 102.84 | 37.52 | 2.77 | 8.85 | 0.00 | 85.64 | 64.36 | 0.00 |
20 | 28.41 | 0.00 | 73.13 | 85.01 | 0.00 | 80.31 | 37.50 | 9.79 | 8.62 | 0.00 | 44.10 | 93.90 | 0.00 |
21 | 17.68 | 0.00 | 61.75 | 85.00 | 0.00 | 30.60 | 37.51 | 15.99 | 21.01 | 0.00 | 40.87 | 83.63 | 0.00 |
22 | 38.54 | 0.00 | 59.85 | 85.00 | 0.00 | 21.92 | 37.52 | 10.06 | 28.60 | 0.00 | 19.50 | 100.50 | 0.00 |
23 | 2.86 | 0.00 | 57.95 | 85.00 | 0.00 | 48.03 | 37.54 | 3.86 | 15.82 | 0.00 | 31.93 | 80.57 | 0.00 |
24 | −4.01 | 0.00 | 53.20 | 85.01 | −0.24 | 39.86 | 37.51 | 3.41 | 14.03 | 0.00 | 17.42 | 92.08 | 0.00 |
Tot. | 255.93 | 473.01 | 1480.11 | 2040.55 | −4.26 | 1223.16 | 900.26 | 218.99 | 374.15 | 1.47 | 761.81 | 2270.3 | −4.18 |
Hr. | Grid (MW) | PV (MW) | Wind (MW) | CHP-E (MW) | ES (MW) | HOU (MWth) | CHP-H (MWth) | EHP (MWth) | GB (MWth) | HS (MWth) | WG (m3) | WD (m3) | WS (m3) |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | −21.73 | 0.00 | 64.13 | 85.00 | −6.00 | 40.98 | 37.50 | 2.00 | 16.24 | −8.93 | 6.27 | 119.98 | −25.75 |
2 | −14.61 | 0.00 | 46.78 | 86.25 | −1.21 | 8.75 | 38.95 | 3.03 | 27.15 | −1.47 | −20.18 | 89.84 | 17.34 |
3 | −15.61 | 0.00 | 49.88 | 89.65 | −0.24 | 16.37 | 37.50 | 4.51 | 24.93 | −12.01 | −8.90 | 88.40 | 0.00 |
4 | −4.29 | 0.00 | 40.32 | 85.04 | 6.00 | 31.79 | 38.12 | 4.97 | 5.00 | −8.00 | 18.71 | 85.55 | −24.76 |
5 | −22.34 | 0.00 | 63.14 | 85.26 | 0.00 | 36.89 | 41.01 | 2.07 | 23.69 | 1.81 | −1.79 | 87.53 | 1.26 |
6 | −28.69 | 0.00 | 87.24 | 85.74 | 0.00 | 44.12 | 38.45 | 5.71 | 5.00 | −5.84 | −1.25 | 95.75 | 0.00 |
7 | 24.79 | 12.23 | 39.95 | 85.00 | 0.00 | 36.21 | 37.50 | 4.76 | 5.00 | 10.92 | −19.69 | 120.19 | 0.00 |
8 | 44.97 | 15.06 | 29.42 | 85.00 | 0.00 | 53.16 | 38.17 | 3.17 | 18.11 | 0.00 | −34.33 | 131.25 | 12.58 |
9 | 36.84 | 36.23 | 35.04 | 85.36 | 0.00 | 31.62 | 37.50 | 9.37 | 17.71 | 8.80 | −32.00 | 132.22 | 12.28 |
10 | 5.00 | 46.71 | 49.85 | 89.67 | 0.00 | 32.63 | 38.71 | 9.28 | 18.72 | 12.91 | −20.35 | 135.85 | 0.00 |
11 | −17.91 | 59.81 | 47.22 | 85.00 | 0.00 | 51.15 | 37.50 | 11.23 | 5.00 | 0.00 | −0.44 | 124.94 | 0.00 |
12 | −34.19 | 51.63 | 46.75 | 87.02 | 0.00 | 45.82 | 38.25 | 3.65 | 25.02 | 0.00 | 6.69 | 117.81 | 0.00 |
13 | −89.16 | 64.18 | 81.70 | 88.01 | 0.00 | 81.19 | 43.49 | 6.65 | 5.00 | 0.00 | 38.28 | 99.72 | 0.00 |
14 | −45.57 | 48.86 | 77.34 | 85.00 | 0.00 | 87.96 | 37.50 | 10.76 | 17.85 | 0.00 | 42.39 | 107.61 | 0.00 |
15 | −47.54 | 52.72 | 65.86 | 85.28 | 0.00 | 88.09 | 37.89 | 3.62 | 20.52 | 0.00 | 21.35 | 128.65 | 0.00 |
16 | −24.46 | 36.80 | 56.46 | 85.00 | 0.00 | 94.72 | 37.50 | 2.00 | 17.96 | 0.00 | 30.90 | 123.60 | 0.00 |
17 | −9.85 | 29.96 | 61.75 | 85.00 | 0.00 | 61.80 | 37.50 | 10.00 | 29.41 | 0.00 | 59.18 | 95.32 | 0.00 |
18 | 15.42 | 0.00 | 63.63 | 85.23 | 0.00 | 75.21 | 49.37 | 4.40 | 26.68 | 0.00 | 61.12 | 100.88 | 0.00 |
19 | 51.59 | 0.00 | 46.20 | 85.00 | 0.00 | 71.96 | 50.41 | 9.50 | 20.46 | 0.00 | 41.40 | 108.60 | 0.00 |
20 | 4.35 | 0.00 | 72.89 | 88.23 | 0.00 | 87.47 | 37.95 | 2.77 | 8.17 | 0.00 | 6.69 | 131.31 | 0.00 |
21 | 17.57 | 0.00 | 54.48 | 94.34 | 0.00 | 44.30 | 41.41 | 9.46 | 9.92 | 0.00 | 19.27 | 105.23 | 0.00 |
22 | −13.50 | 0.00 | 59.64 | 89.10 | 0.00 | 35.40 | 41.86 | 3.50 | 17.33 | 0.00 | 34.92 | 85.08 | 0.00 |
23 | −1.23 | 0.00 | 47.02 | 85.15 | 0.00 | 51.81 | 39.13 | 6.42 | 7.71 | 0.00 | 35.89 | 76.61 | 0.00 |
24 | −16.60 | 0.00 | 46.15 | 86.22 | 0.00 | 35.79 | 37.50 | 2.00 | 19.66 | 0.00 | 6.59 | 102.91 | 0.00 |
Tot. | 200.53 | 454.18 | 1332.81 | 2075.53 | −1.45 | 1245.20 | 950.67 | 134.85 | 392.25 | −1.81 | 429.65 | 2594.82 | −7.05 |
Algorithm | SW (USD) | Emission (kg) | Energy Loss | Electrical Energy Demand (MWh) | Power Sold to the Grid (MWh) | Water Sold to the Network (m3) | Fitness Function | |
---|---|---|---|---|---|---|---|---|
Electrical (MWh) | Heat (MWhth) | |||||||
GA | 364,203.14 | 4936.9 | 4.82 | 134.18 | 4061.62 | 407.28 | 138.89 | 8.9286 × 106 |
AOA | 379,648.53 | 4603.0 | 4.12 | 131.04 | 4269.82 | 512.26 | 149.40 | 9.8439 × 106 |
Improvement (%) | 4.06% | 6.76% | 14.52% | 2.34% | 4.87% | 20.49% | 7.03% | 10.25% |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
El-Afifi, M.I.; Saadawi, M.M.; Eladl, A.A. Cogeneration Systems Performance Analysis as a Sustainable Clean Energy and Water Source Based on Energy Hubs Using the Archimedes Optimization Algorithm. Sustainability 2022, 14, 14766. https://doi.org/10.3390/su142214766
El-Afifi MI, Saadawi MM, Eladl AA. Cogeneration Systems Performance Analysis as a Sustainable Clean Energy and Water Source Based on Energy Hubs Using the Archimedes Optimization Algorithm. Sustainability. 2022; 14(22):14766. https://doi.org/10.3390/su142214766
Chicago/Turabian StyleEl-Afifi, Magda I., Magdi M. Saadawi, and Abdelfattah A. Eladl. 2022. "Cogeneration Systems Performance Analysis as a Sustainable Clean Energy and Water Source Based on Energy Hubs Using the Archimedes Optimization Algorithm" Sustainability 14, no. 22: 14766. https://doi.org/10.3390/su142214766
APA StyleEl-Afifi, M. I., Saadawi, M. M., & Eladl, A. A. (2022). Cogeneration Systems Performance Analysis as a Sustainable Clean Energy and Water Source Based on Energy Hubs Using the Archimedes Optimization Algorithm. Sustainability, 14(22), 14766. https://doi.org/10.3390/su142214766