Exergy-Based Optimization of a CO2 Polygeneration System: A Multi-Case Study
Abstract
:1. Introduction
- Large-scale industrial systems find a wide application in complex manufacturing processes such as petrochemicals, textiles, and food processing, where three energetic effects (electricity, heat (in the form of steam), and cooling) are required simultaneously. The production of chemical substances is also possible. Polygeneration is a sustainable solution for urban areas as district energy systems. These systems can be designed as a synergy between the energy and non-energy sectors by centralizing energy production and distribution.
- Middle-scale systems are well-known for their application in hospitals, university campuses, and small manufacturing plants. The number of residential, business, and commercial buildings that use air conditioning intensively has increased dramatically in recent years. A large amount of cold is required for servers (equipment for IT-related technologies, etc.). This is a global problem that needs attention.
- Small-scale systems often belong to off-grid solutions [4]. Such systems have high design flexibility and the highest potential for integration of renewable sources (solar and wind) up to 100%. This approach addresses the challenges of renewable energy variability by providing a consistent energy supply through complementary sources. Small-scale off-grid systems contribute positively to the net zero emissions scenario. A considerable boost in system efficiency has been observed in polygeneration systems.
- To describe the simulation and automation processes as the prerequisites for optimization;
- To evaluate comprehensively the polygeneration system with CO2 as the working fluid to identify the decision variables;
- To describe the optimization procedures and associated algorithms;
- To conduct single and multi-objective optimization;
- To conduct a comparative study between evaluated and reported solar-driven and waste heat-driven polygeneration systems.
2. System Description
- A power sub-cycle is composed of a compressor for the power cycle (CM–P), a heat exchanger (HE), and an expander (EX). The “driving energy” (for example, solar energy, heat from biomass combustion, waste heat, etc.) for the entire system is supplied to the HE.
- A refrigeration sub-cycle includes a throttling valve (TV), an evaporator (EVAP), and a compressor for the refrigeration cycle (CM–R). The refrigeration capacity is generated within the EVAP.
3. System Simulation and Automation
4. System Evaluation
- Heater (HE) and gas cooler (GC) are compact printed circuit heat exchangers made of stainless steel. Therefore, the cost of such a heat exchanger is estimated by its weight [28]:
- Turbomachinery of the power sub-cycle (CM-P and EX) [29]:
- Turbomachinery of the refrigeration sub-cycle (CM_R) [30]:
- The cost of the throttling valve (TV) equals 100 EUR [17], and the costs of the mixer and the splitter are neglected.
5. System Optimization
- The differential evolution (DE) algorithm was introduced in 1997 [31]. The DE algorithm is similar to the genetic algorithm but modified for more straightforward implementation, less computation time, reliability, and robustness.
- The particle swarm optimization (PSO) algorithm was first suggested in 1995 [32]. The potential candidates in this algorithm are called particles. A group of particles work together to continuously improve their individual and collective performance on a given optimization task [33]. In addition, less computational effort is required for solving moderate-dimensional problems. It is also robust and straightforward. PSO is an excellent option for solving high-dimensional optimization problems.
- Objective functions
- ○
- Single-objective parametric optimization:
- ○
- Multi-objective parametric optimization:
- Set of decision variables:
- Constraints of decision variables:
- Casehot for the hot climate operation with an average environmental temperature of 35 °C;
- Casecold for the cold climate operation with an average environmental temperature of 5 °C.
6. Results and Discussion
6.1. Single-Objective Parametric Optimization
6.2. Multi-Objective Parametric Optimization
6.3. Comparative Analysis with Solar-Driven Polygeneration Systems
7. Conclusions
- The polygeneration system demonstrates sustainability benefits by simultaneously producing multiple energy effects, i.e., power, heat, and refrigeration capacities.
- The polygeneration system exhibits adaptability for a wide range of thermally driven applications, from solar-thermal to waste heat utilization.
- Parametric optimization methods, encompassing single- and multi-objective optimization, were applied to optimize the polygeneration system. Two operation conditions, Casehot and Casecold, were selected for thorough evaluation and optimization.
- Single-objective optimization was completed using alternative optimization algorithms: DE (differential evolution) and PSO (particle swarm optimization). The implementation and impact of these algorithms on results are reported and discussed.
- Both optimization algorithms performed effectively, consistently indicating the need to increase ΔTpinch,HE, maintain ΔTpinch,GC, and augment ΔTpinch,EVAP. Higher values for the isentropic efficiency of turbomachines correlated with improved optimization outcomes, with PREX around 3. The optimal value of pMerging slightly increased, remaining significantly distant from the critical point of CO2.
- The PSO algorithm demonstrated a shorter optimization process duration compared to the DE algorithm.
- Structure optimization of the polygeneration system including a polytechnological approach with many smart technologies within optimization [38];
- The environmental assessment of the polygeneration system;
- Implementing the polygeneration systems to the local electrical grids;
- The potential of mixtures as working fluids (including the CO2-based mixtures) to enhance system performance by adjusting their type and application scenarios.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
A | heat transfer area, m2 |
c | specific cost (per unit of exergy), USD/GJ |
cost rate, USD/h | |
COP | coefficient of performance, - |
exergy rate, kW | |
f | factor, - |
M | exponent, - |
T | temperature, °C or K |
TIT | temperature at the inlet of expander, °C or K |
PEC | purchased equipment cost, USD |
PR | pressure ratio, - |
X | characteristic of equipment (m2 or kW) |
V | volume, m3 |
power, kW | |
ε | exergy efficiency, - |
η | isentropic efficiency,- |
Subscripts and superscripts | |
av | average |
Cooling | cold production |
D | exergy destruction |
Heating | heat production |
ex | per unit of exergy |
F | fuel |
k | the serial number of components |
L | exergy losses |
m | related to material |
Merging | merging pressure of the power and refrigeration cycles |
net | power as the product of the overall system |
P | exergy product |
p | related to pressure |
0 | reference state |
pinch | pinch point |
tot | overall system |
Abbreviations | |
CM–P | compressor in power sub-cycle |
CM–R | compressor in refrigeration sub-cycle |
CO2 | carbon dioxide |
DE | differential evolution |
EVAP | evaporator |
EX | expander |
GC | gas cooler |
HE | heat exchanger |
MIX | mixer |
ORC | Organic Rankine cycle |
PSO | particle swarm optimization |
SPLIT | splitter |
TV | throttling valve |
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Parameter | Description | Unit | Initial Value | Optimal Values | Error (%) | |
---|---|---|---|---|---|---|
DE | PSO | |||||
∆Tpinch,HE | The pinch point temperature in the HE | K | 20 | 33 | 26 | 21.2 |
∆Tpinch,GC | The pinch point temperature in the GC | K | 5 | 5 | 6 | 20.0 |
∆Tpinch,EVAP | The pinch point temperature in the EVAP. | K | 5 | 8 | 9 | 12.5 |
η,EX | Isentropic efficiency of EX | % | 90 | 98 | 98 | 0.0 |
η,CM–P | Isentropic efficiency of the CM-P | % | 85 | 94 | 95 | 1.1 |
η,CM–R | Isentropic efficiency of the CM-R | % | 85 | 95 | 95 | 0.0 |
pMerging | Merging pressure, p3 | bar | 77 | 80 | 82 | 2.5 |
PREX | Pressure ration in EX | - | 2.6 | 3.1 | 3.0 | 2.7 |
Optimum average product cost per unit of exergy | USD/GJex | 53.26 | 39.60 | 39.56 | 0.1 | |
Execution time | time | s | - | 1820 | 1633 | 10.3 |
Parameter | Description | Unit | Initial Value | Optimal Values | Error (%) | |
---|---|---|---|---|---|---|
DE | PSO | |||||
∆Tpinch,HE | The pinch point temperature in the HE | K | 20 | 29 | 29 | 0.0 |
∆Tpinch,GC | The pinch point temperature in the GC | K | 5 | 7 | 6 | 14.3 |
∆Tpinch,EVAP | The pinch point temperature in the EVAP. | K | 5 | 10 | 4 | 60.0 |
η,EX | Isentropic efficiency of EX | % | 90 | 97 | 98 | 1.0 |
η,CM–P | Isentropic efficiency of the CM-P | % | 85 | 91 | 91 | 0.0 |
η,CM–R | Isentropic efficiency of the CM-R | % | 85 | 91 | 92 | 1.1 |
pMerging | Merging pressure, p3 | bar | 77 | 87 | 88 | 1.1 |
PREX | Pressure ration in EX | - | 2.6 | 2.9 | 2.8 | 1.9 |
Optimum average product cost per unit of exergy | USD/GJex | 31.39 | 26.76 | 27.03 | 1.0 | |
Execution time | Time | s | - | 1944 | 1699 | 12.6 |
Ref. | System Specification | Results Specification | (kW) | εtot (−) | (USUSD/ GJex) |
---|---|---|---|---|---|
[33] | solar-driven | evaluation | 145.8 | 0.215 | 77.31 |
[25] | solar-biomass-driven | optimization | 370.1 | 0.200 | 176.73 |
[34] | solar-driven with thermal storage | evaluation | 228.9 | 0.282 | NA |
[35] | solar-geothermal-gas-driven | evaluation | 330.4 | 0.267 | NA |
[36] | desalination | evaluation | NA | 0.249 | 20.97 |
[37] | solar-driven | evaluation | 48.3 | 0.411 | 61.2 |
this work, Casehot | single-objective optimization | 205.0 | 0.533 | 31.20 | |
this work, Casecold | single-objective optimization | 205.0 | 0.314 | 46.80 |
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Tashtoush, B.; Luo, J.; Morosuk, T. Exergy-Based Optimization of a CO2 Polygeneration System: A Multi-Case Study. Energies 2024, 17, 291. https://doi.org/10.3390/en17020291
Tashtoush B, Luo J, Morosuk T. Exergy-Based Optimization of a CO2 Polygeneration System: A Multi-Case Study. Energies. 2024; 17(2):291. https://doi.org/10.3390/en17020291
Chicago/Turabian StyleTashtoush, Bourhan, Jing Luo, and Tatiana Morosuk. 2024. "Exergy-Based Optimization of a CO2 Polygeneration System: A Multi-Case Study" Energies 17, no. 2: 291. https://doi.org/10.3390/en17020291
APA StyleTashtoush, B., Luo, J., & Morosuk, T. (2024). Exergy-Based Optimization of a CO2 Polygeneration System: A Multi-Case Study. Energies, 17(2), 291. https://doi.org/10.3390/en17020291