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Article

Research on Load Optimal Dispatch for High-Temperature CHP Plants through Grey Wolf Optimization Algorithm with the Levy Flight

1
China Huaneng Group Co., Ltd., Beijing 100031, China
2
Xi’an Thermal Power Research Institute Co., Ltd., Xi’an 710054, China
3
Huaneng International Power Co., Ltd., Dezhou Power Plant, Dezhou 253000, China
4
Key Laboratory of Low-Grade Energy Utilization Technologies and Systems, Ministry of Education, School of Energy and Power Engineering, Chongqing University, Chongqing 400030, China
*
Authors to whom correspondence should be addressed.
Processes 2022, 10(8), 1546; https://doi.org/10.3390/pr10081546
Submission received: 13 July 2022 / Revised: 2 August 2022 / Accepted: 5 August 2022 / Published: 7 August 2022

Abstract

:
The combined heating and power (CHP) plants are considered one of the promising methods to support the goal of “Carbon Peak and Carbon Neutrality”. It is an important means to take heat and power load optimal dispatch (LOD) to further reduce the energy consumption of CHP plants. To achieve a better load dispatch scheme, this paper employs a potent algorithm by integrating the grey wolf optimization (GWO) algorithm and the Levy flight (i.e., Levy–GWO algorithm) to overcome premature convergence. Moreover, the constraint condition processing method is also proposed to handle the system constraints for ensuring the results within feasible zones. To confirm the effectiveness of this algorithm, it is tested on two widely used test systems (Test system I and Test system II). The accuracy of the used algorithm is proved by comparing the obtained results and reported data in other literature. Results show that the Levy–GWO algorithm can be used to obtain relatively lower power generation costs, with the values of 9231.41 $/h (Test system I) and 10,111.79 $/h (Test system II). The proposed constraint processing method effectively solves the problem that load optimal dispatch scheduling is difficult to solve due to the existence of multiple constraints. In addition, the comparison results indicate that the Levy–GWO algorithm owns a better robustness and convergence effect and has a promising application for solving LOD problems.

1. Introduction

Recently, “carbon peak and carbon neutrality” has become one of the hot topics with the increasing concern about global warming [1]. Accordingly, the energy industry is affected greatly, owing to its biggest carbon emission [2,3]. To reduce carbon emissions, many efforts have been denoted to achieve it, such as low-grade heat recovery [4,5], utilization of clean energy [6,7], energy storage [8,9], and the development of advanced power cycles [10,11]. It is also a possible scheme to develop a combined heating and power plant, owing to its higher energy conversion efficiency [12,13]. According to the reported literature, the energy efficiency of CHP units can achieve 70% and above [14], and the costs will reduce by 20%~30% compared to those of conventional plants [15].
Moreover, to pursue a lower cost and reduce fuel consumption, the CHP plants have to deal with the load optimal dispatch (LOD) problem, providing an economic allocation of heating and power load instructions during the actual operation. A good load optimal dispatch (LOD) contributes to energy saving and consumption reduction well, which is reported to save 0.5% ~ 1.5% fuel in practical production [16,17]. The practical production load of the CHP system has real-time characteristics, which will significantly influence the performance of the high-temperature thermodynamic system. Thus, reasonable load distribution is also of great significance to the safe and stable operation of the CHP plants.
Unlike the condensing power plants with obvious thermal characteristics, the CHP plants have more complex thermodynamic characteristics because of the strong coupling relationship of the heating and power loads. Accordingly, the LOD problem of CHP plants is more complex than that of condensing power plants. Generally, it is a non-convex and non-linear optimization problem with multiple constraints [18]. In the past, conventional mathematical algorithms have been used to address the LOD problems for CHP plants, which can preliminarily provide the LOD solutions [19,20]. However, due to the limitations of these algorithms, they cannot solve the nonlinear non-convexity optimization problem caused by the operation characteristics of CHP plants, resulting in a general optimization effect and a long solution time.
In this context, much attention is attracted by swarm intelligence optimization algorithms, which have the advantages of easy programming and parallel searchability. In other words, the swarm intelligence optimization algorithms can quickly find the optimal solution under multiple constraint conditions. Several classic intelligent optimization algorithms have been employed to solve the LOD problem. Song et al. [19] introduced the genetic algorithm (GA) to obtain the optimal LOD solutions. Their results demonstrated its effectiveness. Basu [21] compared the optimal costs obtained from the differential evolution (DE) algorithm, particle swarm optimization algorithm (PSO) and evolutionary programming (EP). According to his study, the DE-based method achieved the lowest cost. Then, the LOD solutions provided by bee colony optimization and artificial immune system were discussed in another similar research work by Basu [22,23]. However, if using a poor constraint processing approach, the location of the ideal results may be outside the practicable operation range of the involved CHP plant. Thus, the researchers also focus on the constraint processing approach to deal with complex constraints, especially the feasible operation region of the cogeneration unit. Narang et al. [24] proposed a hybrid algorithm that integrates civilized swarm optimization and Powell’s pattern search. They reported that the obtained results were found to be satisfactory. Moradi-Dalvand et al. [25] presented a two-stage model to handle the nonconvex feasible operation regions. In their study, the linear approximation method was used to split nonconvex feasible operation regions into convex regions. Moreover, Chen et al. [26] introduced a novel constraint processing approach named the “repair technique” to guide the solutions toward feasible operation regions. Additionally, the external penalty parameters were proved as a good method for handling constraints [27].
Based on the above studies, it could be concluded that, compared to conventional algorithms, the accuracy of optimization is strengthened by using intelligence optimization algorithms. It is also of great importance to combine a good constraint processing approach with the algorithms. Meanwhile, it is worth noting that no one intelligence optimization algorithm can efficiently solve all types of optimization problems with the best performance [28,29]. Therefore, it is still necessary to improve relevant algorithms and explore better intelligent optimization algorithms based on swarm intelligence algorithms to solve practical problems.
The grey wolf optimizer (GWO) algorithm is a powerful algorithm proposed by Mirjalili et al. in 2014 [30]. Their study suggests that the GWO algorithm performs well in the global optimization of complex functions. Accordingly, it is more adaptable to complex constraints and unknown space search in practical engineering optimization [31,32]. Theoretically, it is also suitable for obtaining an optimal LOD solution for the CHP plants. However, the GWO algorithm is easy to jump out of the local optimal when facing high-dimensional problems, such as LOD problems. Introducing the Levy flights to the GWO algorithm is a good choice to avoid these problems [33]. However, the performance of the potential combinations of the above two algorithms is not explored in solving LOD problems.
To fill this research gap, this paper improved the GWO algorithm by the combined Levy–GWO algorithm at first. What is more, both the optimization algorithms and constraint processing methods have obvious impacts on providing the LOD solutions based on the above discussions. Additionally, the constraint condition processing methods are also proposed according to the characteristics of the total power and heat loads. Then, the constraint condition processing methods are combined with the Levy–GWO algorithm to provide a better solution to the LOD problem. To test the performance of the algorithm, two test systems consisting of different units are selected to optimize the load distribution. Finally, a comprehensive comparative study is performed to study the performance of GWO and Levy–GWO algorithms.
The main contributions and novelty of this work can be summarized below:
(1)
To solve the LOD problems better, an improved Levy–GWO algorithm is proposed to boost the ability of global and local searches in solution space.
(2)
To deal with the complex constraints, a new constraint handling method is devised to achieve strictly feasible solutions.
(3)
The effectiveness of the proposed approach is proved by two test plants, from simple to complex.

2. Mathematical Model of LOD Problem

2.1. Description of the Objective Function

A CHP plant typically is composed of three different kinds of power or heating units, i.e., the pure condensed unit (producing power), the cogeneration unit (producing heating and power), and the pure heating unit (producing heating). Generally, solving a LOD problem requires achieving the lowest operating cost (fcost) for the CHP plant under the total load requirements, and the objective function is expressed as [20]
min f cost = i = 1 l C i ( P j ) + j = 1 m C j ( P j , H j ) + k = 1 n C k ( H k )
P and H stand for the production of power and heating, respectively, while C stands for the operating cost function, which can be written as follows [20]:
{ C i ( P i ) = a i + b i P i + c i P i 2 + | d i sin ( e i ( P i min P i ) ) | C j ( P j , H j ) = a j + b j P j + c j P j 2 + d j H j + e j H j 2 + f j P j H j C k ( H k ) = a k + b k H k + c k H k 2
The following constraints also should be adhered to:
{ P i , min P i P i , max H i , min H i H i , max
{ j = 1 m H c o n , j + k = 1 n H h , k = H d i = 1 l P c o n , i + j = 1 m Q c o g , j = P d
The unit of pure condensing, cogeneration and heating is represented by the subscripts con, cog, and h, respectively. The production limitations of each unit are indicated by the subscripts min and max, while the total load of heat and power are indicated by the subscripts Hd (MWth) and Pd (MW), respectively.
In particular, if the active network loss (PL) is taken into account, then Equation (4) will be changed as follows [29]:
{ j = 1 m H c o n , j + k = 1 n H h , k = H d i = 1 l P c o n , i + j = 1 m Q c o g , j = P d + P L P L = i = 1 l + m j = 1 l + m P i B i , j P j
PL is the system active power loss, and B is the coefficient matrix.

2.2. Method for Processing Constraint

It can be found that there are many constraint conditions when dispatching the load distribution of a CHP plant. Therefore, to prevent the occurrence of the local optimal solution, the treatment of constraint conditions is also very important. In detail, these constraints can be divided into two types: one is the global constraints and the other the individual constraints. The following methods are used in this paper to handle those constraints.
(1)
Cogeneration unit load constraints (individual constraints)
The typical load feasible region of cogeneration units is displayed in Figure 1, which is an irregular polygonal shape. The following measures are taken in this paper to satisfy the inequality constraints of cogeneration units: To satisfy the inequality constraints, during the optimization process, for the case where the individual location is out of the feasible range (regions 1–3), it is necessary to randomly generate a new value Pnew on the boundary, then the Hnew value is obtained by the boundary curve formula so as to obtain the new individual position. Conversely, the individual value does not need any adjustment when it is within the feasible range.
(2)
Total load constraints of the heating and power networks (global constraints)
Intelligent algorithms usually encounter situations where some individuals do not satisfy the global constraints because intelligent algorithms have the characteristics of the random updates of individuals. In this paper, Equation (1) is transformed into a new fitness function, which adds the global constraints of total demands (heating and power) as penalty terms, as follows:
F = f cost + R 1 ( i = 1 l P i + j = 1 m P j P D P L ) 2 + R 2 ( j = 1 m H j + k = 1 n H k H D ) 2
R1 and R2 are penalty factors. Therefore, the solution of the LOD problem is to meet the constraints (i.e., Equations (3) and (5)) while maintaining the minimal value of Equation (6). The heat and power provided by each unit are the independent variables.

3. Solution Methods

3.1. Classic Grey Wolf Algorithm

The hierarchy and foraging behavior of the grey wolves—a classed social hierarchy made up of α, β, δ, and ω—are the roots of the traditional GWO algorithm. As shown in Figure 2, the α wolves are regarded as the leader of the wolf groups, which means that the group follows their instructions. The β and δ wolves help the alphas make choices, while the ω is the lowest ranked grey wolf. Generally, the wolves α, β and δ own the greatest information on the prey, while the other wolves (ω) are updated using their current locations. In addition, the GWO approach consists of three basic steps: encircling, hunting, and attacking the prey [30]. When solving optimization problems, the best fitness solution is regarded as the α wolfs, and the followed solutions are β, δ, and ω, respectively. Then, here are more details about the three steps.
(1)
Encircling prey.
In the process of predation, the behavior of grey wolves encircling prey is calculated by using the following equations [30]:
D = | C X P ( t ) X ( t ) |
X ( t + 1 ) = X P ( t ) A D
D , X and X P represent the direction, position vector for grey wolf, and the position vector of prey, while C and A are the oscillation and convergence factors, which are calculated by [30]
C = 2 r 1
A = 2 a r 2 a
a reduces from 2 to 0 during the iterations. r 1 and r 2 are the random vectors which are from 0 to 1.
(2)
Hunting.
When the grey wolf finds its prey, the α wolf leads the β and δ packs to progressively encircle the prey. Assuming the α, β and δ wolves have all the prey information, the information they have is used to update the location of ω wolves. According to the decreasing order of fitness of the three optimal solutions, the distance between any wolf X and the three optimal wolves is as follows [30]:
{ D α = | C 1 X α ( t ) X ( t ) | D β = | C 2 X β ( t ) X ( t ) | D δ = | C 3 X δ ( t ) X ( t ) |
Utilizing the subsequent formulae, one can utilize these distances to determine the wolf’s new location. Thus, by repeatedly using the two operators of encircling and hunting, the prey or the optimal solution is located [30].
{ X 1 = X α A 1 D α X 2 = X β A 2 D β X 3 = X δ A 3 D δ
X ( t + 1 ) = X 1 + X 2 + X 3 3

3.2. Levy-GWO Algorithm

As said before, based on the improvement of swarm intelligence algorithms and exploring better intelligent optimization algorithms, practical problems can be better solved. In contrast, the traditional location update method weakens the global searchability, while the traditional GWO algorithm has limited local optimization capabilities. Thus, to deal with that issue, the following steps are used in this study.
(1)
Nonlinear convergence of control factor a.
In this work, rather than using the a, which converges linearly from 2 to 0, the nonlinear convergence approach is applied.
a = 2 ( 1 e i max   _ i t e r   1 e 1 )
(2)
Individual position update strategy
As mentioned before, the GWO algorithm is vulnerable to settling into a local optimum. Thus, the method of position update is improved by adopting the Levy flight here [33], which can be expressed as
X i ( t + 1 ) = X i ( t ) + γ L ( λ ) , 1 < i n
λ is the step control variable. is a point-to-point product. L ( λ ) is a column-dimensional distribution function.
Based on the above discussion, Figure 3 illustrates the computation procedure to solve a LOD problem.

4. Results and Discussions

Two different test systems with differing levels of computing difficulty are solved to evaluate the viability and efficacy of the involved algorithm. The simulation is built in MATLAB software and implemented on the same PC. The best outcome is used as the final result after each system has been performed independently 50 times.

4.1. Test System I

Test system I consist of four units, namely two cogeneration units (unit 2 and 3) and one power-only (unit 1), and one heat-only unit (unit 4), which was proposed by Guo et al. in 1996 [20]. For the sake of simplicity, test system I neglects the valve-point effects and transmission loss. Table 1 lists the relevant parameters for various unit operating cost functions, and Figure 4 displays the feasible operation region of cogeneration units 2 and 3.
Table 2 summarizes the optimal results obtained from the proposed algorithm. It is noted that the PD and HD are 200 MW and 115 MWth, respectively, which are kept the same as in the literature [19]. The optimization algorithm used in this paper is the reliability of the comparison with the results of the literature [19]. The results from Table 2 show that the generation costs obtained from the Levy–GWO algorithm are close to the reported data. Moreover, the optimization results of the GWO algorithm and the Levy–GWO algorithm are better than those of the GA and PSO algorithms. In general, the Levy–GWO algorithm can be used to obtain the minimum cost, owning 9231.41 $/h. What is more, the penalty factor does strengthen the constraint of the equation because the GWO and Levy–GWO algorithms can better satisfy the constraint of the equation.

4.2. Test System II

Moreover, this paper chooses another system consisting of seven units as test system II, which includes two cogeneration units (units 5 and 6) and four power-only (units 1–4), and one heat-only unit (unit 7). However, in test system II, the valve-point effects and transmission losses are considered. Accordingly, Table 3 lists the relevant parameters for various unit operating cost functions. Figure 4 also displays the feasible operation region of the two cogeneration.
According to Ref. [21], test system II has a power load (PD) of 600 MW and a heat load (HD) of 150 MWth. The lowest cost ($ 10,117.79) may be obtained with the Levy–GWO method, as shown in Table 4. When compared to the lowest figure of $ 10,317 in the literature, which provided data [21], there is a reduction of $ 205.21. The Ptotal and Htotal values of the Levy–GWO algorithm are found to be quite near the provided power and heating demand when compared to the outcomes produced by other algorithms. In other words, it further supports the penalty factor method’s significant impact on meeting the equation’s restriction.

4.3. Performance Comparison between GWO Algorithm and Levy–GWO Algorithm

The results of the above two test systems confirm that the Levy–GWO algorithm has a reliable performance in solving the LOD problem. In other words, the necessity of improving the intelligent algorithm is confirmed as well. Therefore, based on the results of test system II, this section carried out a further comparison of the performance of GWO and Levy–GWO algorithms.
Figure 5 and Figure 6 display the trace of the individual optimization of cogeneration unit 5 with GWO and Levy–GWO algorithms, respectively. For the GWO algorithm, the entire feasible region is almost filled with individual particles, but for the Levy–GWO algorithm, the feasible region is only covered by a few individual particles. This phenomenon indicates, owing to the Levy flight, the approximate range in which the optimal individual can be found by the Levy–GWO algorithm. Then the Levy–GWO algorithm starts fine-tuning in this range. In addition, it is clear from the two figures that no single particle exceeds the unit’s power or thermal load limits, demonstrating that the constraint processing approach suggested has a very positive impact on the way inequality constraints are handled.
Figure 7 shows the results of the repeatability of the two algorithms. The figure shows that the Levy–GWO algorithm can achieve greater economic benefits because its minimum value is lower than the GWO algorithm. Moreover, the Levy–GWO algorithm has better robustness because the distribution interval of the optimization results is narrower.
In addition, it is also necessary to compare the convergence of the GWO and Levy–GWO algorithms. Figure 8 indicates the convergence curves of involved optimization algorithms. The figure shows that in the initial stage of the optimization, the GWO algorithm converges faster than the Levy–GWO algorithm. However, due to the Levy flight location updates method, the Levy–GWO algorithm converges stronger and shows the randomness of the individuals. In the later optimization process, the convergence speed of the Levy–GWO algorithm began to accelerate because the optimal region was clearly defined and finally achieved a better convergence effect with a lower optimal value. Moreover, the results indicate that the next necessary step is to achieve a better convergence speed of the algorithm.

5. Conclusions

Aiming at solving the LOD problems of CHP plants to lower energy consumption, this paper used a new hybrid intelligence algorithm called the Levy–GWO algorithm. The Levy–GWO algorithm as well as the constraint processing approach based on the actual load optimal distribution were utilized to obtain an optimal dispatch of the load for CHP plants. The algorithm performance was tested and compared based on two different test plants with 3 and 7 units. Finally, the GWO algorithm and Levy–GWO algorithm were used to optimize and compare the performances of the CHP plants. The main conclusions are as follows.
(1)
The optimization results of Test systems 1 and 2 show that the two GWO algorithms used in this article can be used to solve the power plant LOD problem. It is proved that the improved strategy of the algorithm strengthens the ability of the search performance.
(2)
By comparing with the literature results, the optimized operating cost of the Levy–GWO algorithm is lower, showing better performance than the GWO algorithm. The proposed Levy–GWO algorithm can effectively reduce the cost from $ 9265.1 to CNY 9231.41 in the 3-unit CHP plants, and the cost of the 7-unit plants decreases from $ 10,317 to $ 10,111.79 with respect to the reported data.
(3)
The tested results also show that the constraint processing method also brings advantages to solving the LOD problem, ensuring that the obtained solution is within the practicable operation range.

Author Contributions

Conceptualization, L.Y. and F.Y.; methodology, J.L. and J.Z.; validation, Y.L., Y.S. and Y.W.; formal analysis, Y.W.; investigation, X.Y.; resources, J.L.; data curation, Y.L.; writing—original draft preparation, Y.W. and X.Y.; writing—review and editing, L.Y. and F.Y.; supervision, L.Y. and F.Y. All authors have read and agreed to the published version of the manuscript.

Funding

This research is supported by the Huaneng Group Headquarters Science & Technology Project “Research and Development of HNKJ21-H79 Intelligent Heating Operation Optimization System Based on Plant Level Economic Operation Scheduling”.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors would like to acknowledge their colleagues from the Key Laboratory of Low-Grade Energy Utilization Technologies and Systems, Ministry of Education for their perspectives and suggestions related to data collection and statistical analysis.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Fankhauser, S.; Smith, S.M.; Allen, M.; Axelsson, K.; Hale, T.; Hepburn, C.; Kendall, J.M.; Khosla, R.; Lezaun, J.; Mitchell-Larson, E.; et al. The meaning of net zero and how to get it right. Nat. Clim. Chang. 2022, 12, 15–21. [Google Scholar] [CrossRef]
  2. Hoegh-Guldberg, O.; Jacob, D.; Taylor, M.; Guillén Bolaños, T.; Bindi, M.; Brown, S.; Camilloni, I.A.; Diedhiou, A.; Djalante, R.; Ebi, K. The human imperative of stabilizing global climate change at 1.5 C. Science 2019, 365, eaaw6974. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Davis, S.J.; Lewis, N.S.; Shaner, M.; Aggarwal, S.; Arent, D.; Azevedo, I.L.; Benson, S.M.; Bradley, T.; Brouwer, J.; Chiang, Y.-M.; et al. Net-zero emissions energy systems. Science 2018, 360, eaas9793. [Google Scholar] [CrossRef] [Green Version]
  4. Liu, C.; Wang, S.; Zhang, C.; Li, Q.; Xu, X.; Huo, E. Experimental study of micro-scale organic Rankine cycle system based on scroll expander. Energy 2019, 188, 115930. [Google Scholar] [CrossRef]
  5. Chen, X.; Liu, C.; Li, Q.; Wang, X.; Wang, S. Dynamic behavior of supercritical organic Rankine cycle using zeotropic mixture working fluids. Energy 2020, 191, 116576. [Google Scholar] [CrossRef]
  6. Olabi, A.; Abdelkareem, M.A. Renewable energy and climate change. Renew. Sustain. Energy Rev. 2022, 158, 112111. [Google Scholar] [CrossRef]
  7. Mathew, M. Nuclear energy: A pathway towards mitigation of global warming. Prog. Nucl. Energy 2022, 143, 104080. [Google Scholar] [CrossRef]
  8. Hu, J.; Liu, C.; Li, Q.; Shi, X. Molecular simulation of thermal energy storage of mixed CO2/IRMOF-1 nanoparticle nanofluid. Int. J. Heat Mass Transf. 2018, 125, 1345–1348. [Google Scholar] [CrossRef]
  9. Li, Q.; Xiao, Y.; Shi, X.; Song, S. Rapid evaporation of water on graphene/graphene-oxide: A molecular dynamics study. Nanomaterials 2017, 7, 265. [Google Scholar] [CrossRef]
  10. Pashchenko, D.; Mustafin, R.; Karpilov, I. Ammonia-fired chemically recuperated gas turbine: Thermodynamic analysis of cycle and recuperation system. Energy 2022, 252, 124081. [Google Scholar] [CrossRef]
  11. Tang, J.; Zhang, Q.; Zhang, Z.; Li, Q.; Wu, C.; Wang, X. Development and performance assessment of a novel combined power system integrating a supercritical carbon dioxide Brayton cycle with an absorption heat transformer. Energy Convers. Manag. 2022, 251, 114992. [Google Scholar] [CrossRef]
  12. Wang, S.; Zhang, L.; Liu, C.; Liu, Z.; Lan, S.; Li, Q.; Wang, X. Techno-economic-environmental evaluation of a combined cooling heating and power system for gas turbine waste heat recovery. Energy 2021, 231, 120956. [Google Scholar] [CrossRef]
  13. Xiao, T.; Liu, C.; Wang, X.; Wang, S.; Xu, X.; Li, Q.; Li, X. Life cycle assessment of the solar thermal power plant integrated with air-cooled supercritical CO2 Brayton cycle. Renew. Energ. 2022, 182, 119–133. [Google Scholar] [CrossRef]
  14. Kazda, K.; Li, X. A critical review of the modeling and optimization of combined heat and power dispatch. Processes 2020, 8, 441. [Google Scholar] [CrossRef] [Green Version]
  15. Haakana, J.; Tikka, V.; Lassila, J.; Partanen, J. Methodology to analyze combined heat and power plant operation considering electricity reserve market opportunities. Energy 2017, 127, 408–418. [Google Scholar] [CrossRef]
  16. Wu, C.; Xu, X.; Li, Q.; Li, X.; Liu, L.; Liu, C. Performance assessment and optimization of a novel geothermal combined cooling and power system integrating an organic flash cycle with an ammonia-water absorption refrigeration cycle. Energy Convers. Manag. 2021, 227, 113562. [Google Scholar] [CrossRef]
  17. Vasebi, A.; Fesanghary, M.; Bathaee, S.M.T. Combined heat and power economic dispatch by harmony search algorithm. Int. J. Electr. Power Energy Syst. 2007, 29, 713–719. [Google Scholar] [CrossRef]
  18. Su, C.-T.; Chiang, C.-L. An incorporated algorithm for combined heat and power economic dispatch. Electr. Power Syst. Res. 2004, 69, 187–195. [Google Scholar] [CrossRef]
  19. Song, Y.H.; Xuan, Q.Y. Combined Heat and Power Economic Dispatch Using Genetic Algorithm Based Penalty Function Method. Electr. Mach. Power Syst. 1998, 26, 363–372. [Google Scholar] [CrossRef]
  20. Tao, G.; Henwood, M.I.; Ooijen, M.V. An algorithm for combined heat and power economic dispatch. IEEE Trans. Power Syst. 1996, 11, 1778–1784. [Google Scholar] [CrossRef]
  21. Basu, M. Combined Heat and Power Economic Dispatch by Using Differential Evolution. Electr. Power Compon. Syst. 2010, 38, 996–1004. [Google Scholar] [CrossRef]
  22. Basu, M. Artificial bee colony optimization for multi-area economic dispatch. Int. J. Electr. Power Energy Syst. 2013, 49, 181–187. [Google Scholar] [CrossRef]
  23. Basu, M. Artificial immune system for combined heat and power economic dispatch. Int. J. Electr. Power Energy Syst. 2012, 43, 1–5. [Google Scholar] [CrossRef]
  24. Narang, N.; Sharma, E.; Dhillon, J.S. Combined heat and power economic dispatch using integrated civilized swarm optimization and Powell’s pattern search method. Appl. Soft Comput. 2017, 52, 190–202. [Google Scholar] [CrossRef]
  25. Moradi-Dalvand, M.; Nazari-Heris, M.; Mohammadi-Ivatloo, B.; Galavani, S.; Rabiee, A. A two-stage mathematical programming approach for the solution of combined heat and power economic dispatch. IEEE Syst. J. 2019, 14, 2873–2881. [Google Scholar] [CrossRef]
  26. Chen, X.; Li, K.; Xu, B.; Yang, Z. Biogeography-based learning particle swarm optimization for combined heat and power economic dispatch problem. Knowl. -Based Syst. 2020, 208, 106463. [Google Scholar] [CrossRef]
  27. Alomoush, M.I. Optimal Combined Heat and Power Economic Dispatch Using Stochastic Fractal Search Algorithm. J. Mod. Power Syst. Clean Energy 2020, 8, 276–286. [Google Scholar] [CrossRef]
  28. Wolpert, D.H.; Macready, W.G. No free lunch theorems for optimization. IEEE Trans. Evol. Comput. 1997, 1, 67–82. [Google Scholar] [CrossRef] [Green Version]
  29. Ramachandran, M.; Mirjalili, S.; Nazari-Heris, M.; Parvathysankar, D.S.; Sundaram, A.; Charles Gnanakkan, C.A.R. A hybrid Grasshopper Optimization Algorithm and Harris Hawks Optimizer for Combined Heat and Power Economic Dispatch problem. Eng. Appl. Artif. Intell. 2022, 111, 104753. [Google Scholar] [CrossRef]
  30. Mirjalili, S.; Mirjalili, S.M.; Lewis, A. Grey Wolf Optimizer. Adv. Eng. Softw. 2014, 69, 46–61. [Google Scholar] [CrossRef] [Green Version]
  31. Sharma, I.; Kumar, V.; Sharma, S. A comprehensive survey on grey wolf optimization. Recent Adv. Comput. Sci. Commun. (Former. Recent Pat. Comput. Sci.) 2022, 15, 323–333. [Google Scholar] [CrossRef]
  32. Murlidhar, B.R.; Sinha, R.K.; Mohamad, E.T.; Sonkar, R.; Khorami, M. The effects of particle swarm optimisation and genetic algorithm on ANN results in predicting pile bearing capacity. International Journal of Hydromechatronics 2020, 3, 69–87. [Google Scholar] [CrossRef]
  33. Yang, X.; Suash, D. Cuckoo Search via Lévy flights. In Proceedings of the 2009 World Congress on Nature & Biologically Inspired Computing (NaBIC), Coimbatore, India, 9–11 December 2009; pp. 210–214. [Google Scholar]
Figure 1. Typical feasible region of the cogeneration unit.
Figure 1. Typical feasible region of the cogeneration unit.
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Figure 2. Social hierarchy of a pack of grey wolves [30].
Figure 2. Social hierarchy of a pack of grey wolves [30].
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Figure 3. Flow chart of solving the LOD problem through the Levy–GWO algorithm.
Figure 3. Flow chart of solving the LOD problem through the Levy–GWO algorithm.
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Figure 4. Feasible operation region of two cogeneration plants. (a) cogeneration unit 2 and (b) cogeneration unit 3.
Figure 4. Feasible operation region of two cogeneration plants. (a) cogeneration unit 2 and (b) cogeneration unit 3.
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Figure 5. The individual optimization trace of cogeneration unit 5 with GWO algorithm.
Figure 5. The individual optimization trace of cogeneration unit 5 with GWO algorithm.
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Figure 6. The individual optimization trace of cogeneration unit 5 with Levy–GWO algorithm.
Figure 6. The individual optimization trace of cogeneration unit 5 with Levy–GWO algorithm.
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Figure 7. The distribution of calculated results of GWO and Levy–GWO algorithms.
Figure 7. The distribution of calculated results of GWO and Levy–GWO algorithms.
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Figure 8. Convergence curve of GWO and Levy–GWO algorithms.
Figure 8. Convergence curve of GWO and Levy–GWO algorithms.
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Table 1. Characteristic parameters of test system I.
Table 1. Characteristic parameters of test system I.
UnitCost Function CoefficientLoad Limitation (Unit)
abcdef
1 /50////[0, 150] (MW)
2 265014.50.03454.20.0300.0311Shown as Figure 4a
3 125036.00.04350.60.0270.011Shown as Figure 4b
4 /23.4////[0, 2695.2] (MWt/h)
Table 2. Calculation results of different optimization algorithms for test system I.
Table 2. Calculation results of different optimization algorithms for test system I.
ItemsPSO [19]GA [19]GWO Levy–GWO
P1 (MW)0.0500.050
P2 (MW)195.43159.23159.97159.74
P3 (MW)40.5740.774040.25
H2 (MWt/h)39.9739.9440.0040.00
H3 (MWt/h)75.0375.0675.0075.00
H4 (MWt/h)0000
Ptotal (MW)200.05200200.02199.99
Htotal (MWt/h)115115.83115.00115.00
Cost ($/h)9265.19267.219250.929231.41
Table 3. Characteristic parameters of test system II [21].
Table 3. Characteristic parameters of test system II [21].
UnitCost Function CoefficientLoad Limitation (Unit)Active Power Loss Coefficient Matrix
abcdef
1252.00.0081000.042/[0, 75] (MW) B = { 49 , 14 , 15 , 15 , 20 , 25 14 , 45 , 16 , 20 , 18 , 19 15 , 16 , 39 , 10 , 12 , 15 15 , 20 , 10 , 40 , 14 , 11 20 , 18 , 12 , 14 , 35 , 17 25 , 19 , 15 , 11 , 17 , 39 } × 10 6
2601.80.0031400.040/[20, 150] (MW)
31002.10.00121600.038/[30, 175] (MW)
41202.00.0011800.037/[40, 250] (MW)
5265014.50.03454.20.0300.0311Shown Figure 4a
6125036.00.04350.60.0270.011Shown Figure 4b
79502.01090.038///[0,2695.2] (MWth)
Table 4. Calculation results of different optimization algorithms for test system II.
Table 4. Calculation results of different optimization algorithms for test system II.
ItemsPSO [21]EP [21]DE [21]GWOLevy–GWO
P1 (kW)18.4661.3644.2155.8251.78
P2 (kW)124.2695.1298.5497.4298.73
P3 (kW)112.7899.94112.69122.04113.05
P4 (kW)209.82208.73209.77209.67210.05
P5 (kW)98.8198.898.8292.5693.50
P6 (kW)44.0144.0044.0040.1240.00
H5 (MWt/h)57.9218.0712.5436.7531.39
H6 (MWt/h)32.7677.5578.3573.1574.99
H7 (MWt/h)59.3254.3759.1140.9543.63
Ptotal (MWt/h)600.00600.01599.99600.08599.99
Htotal (MWt/h)150.00150.00149.99149.95150.01
PL (MWt/h)8.147.968.047.557.54
Cost ($/h)10,61310,39010,31710,174.4910,111.79
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Wang, Y.; Yu, X.; Yang, L.; Li, J.; Zhang, J.; Liu, Y.; Sun, Y.; Yan, F. Research on Load Optimal Dispatch for High-Temperature CHP Plants through Grey Wolf Optimization Algorithm with the Levy Flight. Processes 2022, 10, 1546. https://doi.org/10.3390/pr10081546

AMA Style

Wang Y, Yu X, Yang L, Li J, Zhang J, Liu Y, Sun Y, Yan F. Research on Load Optimal Dispatch for High-Temperature CHP Plants through Grey Wolf Optimization Algorithm with the Levy Flight. Processes. 2022; 10(8):1546. https://doi.org/10.3390/pr10081546

Chicago/Turabian Style

Wang, Yang, Xiaobing Yu, Li Yang, Jie Li, Jun Zhang, Yonglin Liu, Yongjun Sun, and Fei Yan. 2022. "Research on Load Optimal Dispatch for High-Temperature CHP Plants through Grey Wolf Optimization Algorithm with the Levy Flight" Processes 10, no. 8: 1546. https://doi.org/10.3390/pr10081546

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