A Modified Complex-Valued Encoding Greater Cane Rat Algorithm for Global Optimization and Constrained Engineering Applications
Abstract
1. Introduction
2. GCRA
2.1. Population Initialization
2.2. Exploration
2.3. Exploitation
| Algorithm 1 GCRA |
| Begin Step 1. Initialize GCR population and parameter Step 2. Quantify the fitness of each GCR, restructure the global optimum () Designate the fittest GCR as dominant male Restructure the remaining GCR based on via Equation (3) Step 3. while do for each GCR Restructure , , , , if Exploration Restructure GCR’s position via Equation (4) else Exploitation Restructure GCR’s position via Equation (9) end if end for Confirm if any solution exists outside the detect boundary and alter it Quantify the fitness of each GCR via a new position Restructure GCR’s position via Equation (5) Restructure and designate a new dominant male end while Return End |
3. CGCRA
3.1. Initializing CGCRA’s Population
3.2. Updating the CGCRA’s Position
3.2.1. Population Initialization
3.2.2. Exploration
3.2.3. Exploitation
3.3. Calculating the CGCRA’s Fitness
3.4. Portraying CGCRA’s Solution Procedure
| Algorithm 2 CGCRA |
| Begin Step 1. Initialize GCR population and parameter , , , restructure the real and imaginary parts via Equation (13), convert complex solution into real solution via Equations (22) and (23) Step 2. Quantify the fitness of each GCR, restructure the global optimum () Designate the fittest GCR as the dominant male Restructure the remaining GCR based on via Equations (14) and (15) Step 3. while do for each GCR Restructure , , , , if Exploration Restructure real and imaginary parts of position via Equations (16) and (18) else Exploitation Restructure real and imaginary parts of position via Equations (20) and (21) end if end for Confirm if any solution exists outside the detect boundary and alter it Quantify the fitness of each GCR via a new position Restructure GCR’s position via Equations (17) and (19) Convert complex solutions into real solutions via Equations (22) and (23) Restructure and designate a new dominant male end while Return End |
3.5. Complexity Analysis
4. Simulation Test and Result Analysis for Benchmark Functions
4.1. Experimental Configuration
4.2. Benchmark Functions
4.3. Parameter Settings
4.4. Simulation Test and Result Analysis
4.5. Convergence Analysis
4.6. Boxplot Analysis
4.7. Exploration and Exploitation Analysis
4.8. Wilcoxon Rank-Sum Test
5. CGCRA for Engineering Designs
5.1. Car Side Impact
5.2. Multiple Disc Clutch Brake
5.3. Rolling Element Bearing
5.4. Gear Train
5.5. Three-Bar Truss
5.6. Tubular Column
5.7. Piston Lever
5.8. Cantilever Beam
5.9. Speed Reducer
5.10. Pressure Vessel
5.11. Tension/Compression Spring
5.12. Welden Beam
6. Conclusions and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Wang, J.; Wang, W.; Hu, X.; Qiu, L.; Zang, H. Black-Winged Kite Algorithm: A Nature-Inspired Meta-Heuristic for Solving Benchmark Functions and Engineering Problems. Artif. Intell. Rev. 2024, 57, 98. [Google Scholar] [CrossRef]
- Mohammadzadeh, A.; Mirjalili, S. Eel and Grouper Optimizer: A Nature-Inspired Optimization Algorithm. Clust. Comput. 2024, 27, 12745–12786. [Google Scholar] [CrossRef]
- Peraza-Vázquez, H.; Peña-Delgado, A.; Merino-Treviño, M.; Morales-Cepeda, A.B.; Sinha, N. A Novel Metaheuristic Inspired by Horned Lizard Defense Tactics. Artif. Intell. Rev. 2024, 57, 59. [Google Scholar] [CrossRef]
- Wu, X.; Li, S.; Jiang, X.; Zhou, Y. Information Acquisition Optimizer: A New Efficient Algorithm for Solving Numerical and Constrained Engineering Optimization Problems. J. Supercomput. 2024, 80, 25736–25791. [Google Scholar] [CrossRef]
- Sowmya, R.; Premkumar, M.; Jangir, P. Newton-Raphson-Based Optimizer: A New Population-Based Metaheuristic Algorithm for Continuous Optimization Problems. Eng. Appl. Artif. Intell. 2024, 128, 107532. [Google Scholar] [CrossRef]
- Fu, Y.; Liu, D.; Chen, J.; He, L. Secretary Bird Optimization Algorithm: A New Metaheuristic for Solving Global Optimization Problems. Artif. Intell. Rev. 2024, 57, 123. [Google Scholar] [CrossRef]
- Zhang, H.; San, H.; Sun, H.; Ding, L.; Wu, X. A Novel Optimization Method: Wave Search Algorithm. J. Supercomput. 2024, 80, 16824–16859. [Google Scholar] [CrossRef]
- Al-Betar, M.A.; Awadallah, M.A.; Braik, M.S.; Makhadmeh, S.; Doush, I.A. Elk Herd Optimizer: A Novel Nature-Inspired Metaheuristic Algorithm. Artif. Intell. Rev. 2024, 57, 48. [Google Scholar] [CrossRef]
- Han, M.; Du, Z.; Yuen, K.F.; Zhu, H.; Li, Y.; Yuan, Q. Walrus Optimizer: A Novel Nature-Inspired Metaheuristic Algorithm. Expert Syst. Appl. 2024, 239, 122413. [Google Scholar] [CrossRef]
- Lian, J.; Hui, G. Human Evolutionary Optimization Algorithm. Expert Syst. Appl. 2024, 241, 122638. [Google Scholar] [CrossRef]
- Abdollahzadeh, B.; Khodadadi, N.; Barshandeh, S.; Trojovskỳ, P.; Gharehchopogh, F.S.; El-kenawy, E.-S.M.; Abualigah, L.; Mirjalili, S. Puma Optimizer (PO): A Novel Metaheuristic Optimization Algorithm and Its Application in Machine Learning. Clust. Comput. 2024, 27, 5235–5283. [Google Scholar] [CrossRef]
- Agushaka, J.O.; Ezugwu, A.E.; Saha, A.K.; Pal, J.; Abualigah, L.; Mirjalili, S. Greater Cane Rat Algorithm (GCRA): A Nature-Inspired Metaheuristic for Optimization Problems. Heliyon 2024, 10, e31629. [Google Scholar] [CrossRef] [PubMed]
- Bálint, D.; Jäntschi, L. Comparison of Molecular Geometry Optimization Methods Based on Molecular Descriptors. Mathematics 2021, 9, 2855. [Google Scholar] [CrossRef]
- Sörensen, K. Metaheuristics—The Metaphor Exposed. Int. Trans. Oper. Res. 2015, 22, 3–18. [Google Scholar] [CrossRef]
- Miao, F.; Mao, L. A Dual-Stage Framework for Lithium-Ion Battery State of Health Prediction Using Multi-Strategy Optimization for Decomposition and Neuro-Fuzzy Networks. J. Energy Storage 2026, 149, 120353. [Google Scholar] [CrossRef]
- Liu, Y.; Miao, F. Robust Urban Air Quality Index Prediction for Pollution Management via Entropy-Guided Multiscale Denoising and Optimization-Driven Neuro-Fuzzy Modeling. Urban Clim. 2026, 65, 102788. [Google Scholar] [CrossRef]
- Miao, F.; Li, H. Real-Time Path Planning for Unmanned Aerial Vehicles in Complex Three-Dimensional Dynamic Environments Using an Enhanced Fuzzy Neural Fluid Dynamical System. Eng. Appl. Artif. Intell. 2026, 164, 113274. [Google Scholar] [CrossRef]
- Zhang, J.; Jin, A.; Zhang, T. A Hybrid Nonlinear Greater Cane Rat Algorithm with Sine–Cosine Algorithm for Global Optimization and Constrained Engineering Applications. Biomimetics 2025, 10, 629. [Google Scholar] [CrossRef]
- Chen, Y.; Tian, Z.; Zhang, K.; Zhao, F.; Zhao, A. An Improved Greater Cane Rat Algorithm with Adaptive and Global-Guided Mechanisms for Solving Real-World Engineering Problems. Biomimetics 2025, 10, 612. [Google Scholar] [CrossRef]
- Alshammari, A.; Ahmad, N.; Alzaidi, M.S.A.; Asklany, S.A.; Al Sultan, H.; AL-Gamdi, N.; Aljabri, J.; Sharif, M.M. Artificial Intelligence with Greater Cane Rat Algorithm Driven Robust Speech Emotion Recognition Approach. Alex. Eng. J. 2025, 121, 426–435. [Google Scholar] [CrossRef]
- Malathi, G.; Deepika, J.; Kavitha, M.; Sivakumar, S. Greater Cane Rat Algorithm and Dimension-Augmented Physics-Informed Neural Network Integrated Control Strategy for Converter in Grid-Tied PV System. J. Renew. Sustain. Energy 2025, 17, 065505. [Google Scholar] [CrossRef]
- Hu, C.; Gong, H.; Li, H.; Ma, L. Optimized Short-Term Wind Power Forecasting Based on a Combination Feature Selection and Greater Cane Rat Algorithm. Wind Eng. 2025, 49, 1384–1398. [Google Scholar] [CrossRef]
- AboRas, K.M.; El-Banna, M.H.; Megahed, A.I.; Hammad, M.R. Optimal Maximum Power Point Tracking Strategy Based on Greater Cane Rat Algorithm for Wind Energy Conversion System. Sci. Rep. 2025, 15, 32474. [Google Scholar] [CrossRef] [PubMed]
- Karra, S.R.; Kakhandki, A.L. Towards Robust Adaptive Federated Learning: Unsupervised Multidomain Face Recognition with Greater Cane Rat Algorithm and Weighted Fused Extreme Learning Machine. Iran. J. Comput. Sci. 2025, 8, 2083–2099. [Google Scholar] [CrossRef]
- Ekinci, S. Greater Cane Rat Algorithm-Based Real PIDD2 Controller Design Strategy for Temperature Regulation of Electric Furnaces. Proc. Inst. Mech. Eng. Part C J. Mech. Eng. Sci. 2026, 240, 16–31. [Google Scholar] [CrossRef]
- Isham, M.F.; Raheimi, A.; Kamal, M.H.; Saufi, M.S.R.M. Machine Fault Diagnosis via Advanced Extreme Learning Machine Optimized with Greater Cane Rat Algorithm. J. Mech. Sci. Technol. 2026, 40, 1921–1931. [Google Scholar] [CrossRef]
- Du, C.; Zhang, J.; Fang, J. An Innovative Complex-Valued Encoding Black-Winged Kite Algorithm for Global Optimization. Sci. Rep. 2025, 15, 932. [Google Scholar] [CrossRef]
- Zhang, J.; Zhang, T.; Wang, D.; Zhang, G.; Kong, M.; Li, Z.; Chen, R.; Xu, Y. A Complex-Valued Encoding Golden Jackal Optimization for Multilevel Thresholding Image Segmentation. Appl. Soft Comput. 2024, 165, 112108. [Google Scholar] [CrossRef]
- Miao, F.; Wu, Y.; Yan, G.; Si, X. Dynamic Multi-Swarm Whale Optimization Algorithm Based on Elite Tuning for High-Dimensional Feature Selection Classification Problems. Appl. Soft Comput. 2025, 169, 112634. [Google Scholar] [CrossRef]
- Miao, F.; Wu, Y.; Yan, G.; Si, X. A Memory Interaction Quadratic Interpolation Whale Optimization Algorithm Based on Reverse Information Correction for High-Dimensional Feature Selection. Appl. Soft Comput. 2024, 164, 111979. [Google Scholar] [CrossRef]
- Zhong, C.; Li, G.; Meng, Z.; Li, H.; Yildiz, A.R.; Mirjalili, S. Starfish Optimization Algorithm (SFOA): A Bio-Inspired Metaheuristic Algorithm for Global Optimization Compared with 100 Optimizers. Neural Comput. Appl. 2025, 37, 3641–3683. [Google Scholar] [CrossRef]
- Zhao, W.; Wang, L.; Mirjalili, S. Artificial Hummingbird Algorithm: A New Bio-Inspired Optimizer with Its Engineering Applications. Comput. Methods Appl. Mech. Eng. 2022, 388, 114194. [Google Scholar] [CrossRef]
- Azizi, M.; Aickelin, U.; Khorshidi, H.A.; Shishehgarkhaneh, M.B. Energy Valley Optimizer: A Novel Metaheuristic Algorithm for Global and Engineering Optimization. Sci. Rep. 2023, 13, 226. [Google Scholar] [CrossRef]
- Jia, H.; Li, Y.; Wu, D.; Rao, H.; Wen, C.; Abualigah, L. Multi-Strategy Remora Optimization Algorithm for Solving Multi-Extremum Problems. J. Comput. Des. Eng. 2023, 10, 1315–1349. [Google Scholar] [CrossRef]
- Zhao, S.; Zhang, T.; Cai, L.; Yang, R. Triangulation Topology Aggregation Optimizer: A Novel Mathematics-Based Meta-Heuristic Algorithm for Continuous Optimization and Engineering Applications. Expert Syst. Appl. 2024, 238, 121744. [Google Scholar] [CrossRef]
- Abdel-Basset, M.; Mohamed, R.; Azeem, S.A.A.; Jameel, M.; Abouhawwash, M. Kepler Optimization Algorithm: A New Metaheuristic Algorithm Inspired by Kepler’s Laws of Planetary Motion. Knowl.-Based Syst. 2023, 268, 110454. [Google Scholar] [CrossRef]
- Guo, Z.; Liu, G.; Jiang, F. Chinese Pangolin Optimizer: A Novel Bio-Inspired Metaheuristic for Solving Optimization Problems. J. Supercomput. 2025, 81, 517. [Google Scholar] [CrossRef]
- Lang, Y.; Gao, Y. Dream Optimization Algorithm (DOA): A Novel Metaheuristic Optimization Algorithm Inspired by Human Dreams and Its Applications to Real-World Engineering Problems. Comput. Methods Appl. Mech. Eng. 2025, 436, 117718. [Google Scholar] [CrossRef]
- Wang, W.; Tian, W.; Xu, D.; Zang, H. Arctic Puffin Optimization: A Bio-Inspired Metaheuristic Algorithm for Solving Engineering Design Optimization. Adv. Eng. Softw. 2024, 195, 103694. [Google Scholar] [CrossRef]
- Luan, T.M.; Khatir, S.; Tran, M.T.; De Baets, B.; Cuong-Le, T. Exponential-Trigonometric Optimization Algorithm for Solving Complicated Engineering Problems. Comput. Methods Appl. Mech. Eng. 2024, 432, 117411. [Google Scholar] [CrossRef]
- Singh, N.; Kaur, J. Hybridizing Sine–Cosine Algorithm with Harmony Search Strategy for Optimization Design Problems. Soft Comput. 2021, 25, 11053–11075. [Google Scholar] [CrossRef]
- Yildiz, B.S.; Pholdee, N.; Bureerat, S.; Yildiz, A.R.; Sait, S.M. Enhanced Grasshopper Optimization Algorithm Using Elite Opposition-Based Learning for Solving Real-World Engineering Problems. Eng. Comput. 2022, 38, 4207–4219. [Google Scholar] [CrossRef]
- Zhao, W.; Wang, L.; Zhang, Z. Artificial Ecosystem-Based Optimization: A Novel Nature-Inspired Meta-Heuristic Algorithm. Neural Comput. Appl. 2020, 32, 9383–9425. [Google Scholar] [CrossRef]
- Askari, Q.; Saeed, M.; Younas, I. Heap-Based Optimizer Inspired by Corporate Rank Hierarchy for Global Optimization. Expert Syst. Appl. 2020, 161, 113702. [Google Scholar] [CrossRef]
- Zhao, W.; Zhang, Z.; Wang, L. Manta Ray Foraging Optimization: An Effective Bio-Inspired Optimizer for Engineering Applications. Eng. Appl. Artif. Intell. 2020, 87, 103300. [Google Scholar] [CrossRef]
- Abualigah, L.; Abd Elaziz, M.; Sumari, P.; Geem, Z.W.; Gandomi, A.H. Reptile Search Algorithm (RSA): A Nature-Inspired Meta-Heuristic Optimizer. Expert Syst. Appl. 2022, 191, 116158. [Google Scholar] [CrossRef]
- Dhiman, G.; Garg, M.; Nagar, A.; Kumar, V.; Dehghani, M. A Novel Algorithm for Global Optimization: Rat Swarm Optimizer. J. Ambient Intell. Humaniz. Comput. 2021, 12, 8457–8482. [Google Scholar] [CrossRef]
- Ahmadianfar, I.; Heidari, A.A.; Gandomi, A.H.; Chu, X.; Chen, H. RUN beyond the Metaphor: An Efficient Optimization Algorithm Based on Runge Kutta Method. Expert Syst. Appl. 2021, 181, 115079. [Google Scholar] [CrossRef]
- Emami, H. Stock Exchange Trading Optimization Algorithm: A Human-Inspired Method for Global Optimization. J. Supercomput. 2022, 78, 2125–2174. [Google Scholar] [CrossRef] [PubMed]
- Bai, J.; Li, Y.; Zheng, M.; Khatir, S.; Benaissa, B.; Abualigah, L.; Wahab, M.A. A Sinh Cosh Optimizer. Knowl.-Based Syst. 2023, 282, 111081. [Google Scholar] [CrossRef]
- Bai, J.; Nguyen-Xuan, H.; Atroshchenko, E.; Kosec, G.; Wang, L.; Wahab, M.A. Blood-Sucking Leech Optimizer. Adv. Eng. Softw. 2024, 195, 103696. [Google Scholar] [CrossRef]
- Sadeeq, H.T.; Abdulazeez, A.M. Giant Trevally Optimizer (GTO): A Novel Metaheuristic Algorithm for Global Optimization and Challenging Engineering Problems. IEEE Access 2022, 10, 121615–121640. [Google Scholar] [CrossRef]
- Ezugwu, A.E.; Agushaka, J.O.; Abualigah, L.; Mirjalili, S.; Gandomi, A.H. Prairie Dog Optimization Algorithm. Neural Comput. Appl. 2022, 34, 20017–20065. [Google Scholar] [CrossRef]
- Jia, H.; Rao, H.; Wen, C.; Mirjalili, S. Crayfish Optimization Algorithm. Artif. Intell. Rev. 2023, 56, 1919–1979. [Google Scholar] [CrossRef]
- Falahah, I.A.; Al-Baik, O.; Alomari, S.; Bektemyssova, G.; Gochhait, S.; Leonova, I.; Malik, O.P.; Werner, F.; Dehghani, M. Frilled Lizard Optimization: A Novel Bio-Inspired Optimizer for Solving Engineering Applications. Comput. Mater. Contin. 2024, 79, 3631. [Google Scholar] [CrossRef]
- Zolfi, K. Gold Rush Optimizer: A New Population-Based Metaheuristic Algorithm. Oper. Res. Decis. 2023, 33, 113–150. [Google Scholar] [CrossRef]
- Bouaouda, A.; Hashim, F.A.; Sayouti, Y.; Hussien, A.G. Pied Kingfisher Optimizer: A New Bio-Inspired Algorithm for Solving Numerical Optimization and Industrial Engineering Problems. Neural Comput. Appl. 2024, 36, 15455–15513. [Google Scholar] [CrossRef]
















| Comparative Dimension | Swarm Intelligence | Evolutionary Computation | Physics/Chemistry/Mathematics-Inspired Optimizers | Human Behavior-Inspired Approaches |
|---|---|---|---|---|
| Inspiration source | Individual collaboration and information sharing, foraging, predation, migration, and division | Biological genetics, variation, natural selection, species evolution, survival of the fittest | Physical phenomena, chemical reactions, inherent mathematical properties | Human social behavior, cognitive decision-making patterns, cultural evolution characteristics, brainstorming |
| Operational logic | Individual self-organizing collaboration, relying on individual historical optimality and population global optimality to guide solution refresh | Realize intergenerational evolution and promote the population towards an optimal direction through selection, crossover, and mutation | Physical energy/force field changes, chemical reaction logic; mathematical rules of neighborhood search, taboo, perturbation | Imitate human trial and error, individual learning, group communication, experience reference to complete iterative updates of solutions |
| Exploration and exploitation tendency | Overall balance, classic algorithms have excellent balance, new algorithms tend to explore globally | Strong global exploration, moderate local exploitation | Physics/chemistry: strong exploration, weak exploitation, pure mathematics: strong exploitation, weak exploration | Balance exploration and exploitation, flexible dynamic adjustment |
| Information interaction | Individual high-frequency interaction, global optimal dominance, high interaction intensity | Intergenerational cross fusion, global information sharing, medium to high interaction intensity | Physics/chemistry: particle indirect field interaction, low intensity, pure mathematics: no interaction | Imitative weak interaction without strong global guidance |
| Parameter sensitivity | Medium parameter scale, most parameters are sensitive, parameter tuning relies on experience | Medium parameter scale, crossover and variation parameters have a significant impact on performance | Physics/chemistry: multiple parameters, high sensitivity, pure mathematics: few parameters | Few parameters, some algorithms have no additional adjustable parameters |
| Distinctive merits | Good parallelism, strong robustness, compatible with continuous/combinatorial optimization problems | Highly versatile, adaptable to continuous, discrete, and mixed variables, flexible coding, mature theory | Physics/chemistry: diversified ways to escape from local optima, pure mathematics: simple implementation, fast speed, high local accuracy | Intuitive inspiration, simple rules, low entry barriers, strong engineering practicality, few parameters |
| Insufficient defects | Ubiquitous metaphorical abstraction, high-dimensional premature convergence, limited generality, easy search stagnation, weak theoretical foundation | Slow convergence speed, weak local mining, easy to fall into local optima, insufficient diversity | Physics/chemistry: metaphorically stiff, poorly interpretable, pure mathematics: search delay, not suitable for large-scale high-dimensional applications | Excessive proliferation of metaphors, severe homogenization, weak theoretical foundation, lack of convergence proof, performance degradation in strongly constrained scenarios |
| Applicable scenarios | Continuous optimization, combinatorial optimization, large-scale high-dimensional multimodal optimization | Suitable for continuous optimization, parameter optimization, feature selection, automatic program generation | Suitable for multi-modal global optimization and combinatorial optimization | Suitable for combining optimization with prior knowledge or memory mechanisms (travel agents, scheduling) |
| Individual | |||||
|---|---|---|---|---|---|
| Real part | |||||
| Imaginary part | |||||
| Chromosome structure |
| Benchmark Functions | Dim | Range | |
|---|---|---|---|
| 30 | [−100, 100] | 0 | |
| 30 | [−10, 10] | 0 | |
| 30 | [−100, 100] | 0 | |
| 30 | [−100, 100] | 0 | |
| 30 | [−30, 30] | 0 | |
| 30 | [−100, 100] | 0 | |
| 30 | [−1.28, 1.28] | 0 | |
| 30 | [−5.12, 5.12] | 0 | |
| 30 | [−32, 32] | 0 | |
| 30 | [−600, 600] | 0 | |
| 30 | [−50, 50] | 0 | |
| 30 | [−50, 50] | 0 | |
| 2 | [−65, 65] | 0.998 | |
| 4 | [−5, 5] | 0.000307 | |
| 2 | [−5, 5] | −1.0316 | |
| 2 | [−5.12, 5.12] | −1 | |
| 2 | [−2, 2] | 3 | |
| 4 | [0, 10] | −10.1532 | |
| 4 | [0, 10] | −10.4029 | |
| 4 | [0, 10] | −10.5364 | |
| 2 | −1 | ||
| 2 | [−100, 100] | −1 | |
| 10 | [−10, 10] | 0 |
| Function | Result | BKA | EGO | HLOA | IAO | NRBO | SBOA | WSA | EHO | WO | HEOA | PO | GCRA | CGCRA |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Best | 1.0 × 10−218 | 0 | 0 | 0 | 0 | 0 | 0 | 5.83 × 10−22 | 0 | 1.2 × 10−200 | 0 | 0 | 0 | |
| Worst | 2.8 × 10−183 | 0 | 0 | 0 | 0 | 0 | 0 | 4.01 × 10−17 | 0 | 5.7 × 10−158 | 0 | 0 | 0 | |
| Mean | 9.4 × 10−185 | 0 | 0 | 0 | 0 | 0 | 0 | 1.47 × 10−18 | 0 | 1.9 × 10−159 | 0 | 0 | 0 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 7.31 × 10−18 | 0 | 1.0 × 10−158 | 0 | 0 | 0 | |
| Best | 8.9 × 10−112 | 0 | 3.2 × 10−263 | 0 | 0 | 5.1 × 10−185 | 2.6 × 10−157 | 3.14 × 10−14 | 2.9 × 10−196 | 2.81 × 10−92 | 9.8 × 10−277 | 0 | 0 | |
| Worst | 1.60 × 10−98 | 0 | 4.4 × 10−244 | 0 | 1.6 × 10−305 | 4.1 × 10−164 | 6.1 × 10−152 | 3.06 × 10−10 | 4.0 × 10−167 | 3.96 × 10−79 | 2.4 × 10−266 | 0 | 0 | |
| Mean | 5.3 × 10−100 | 0 | 1.5 × 10−245 | 0 | 5.8 × 10−307 | 1.4 × 10−165 | 2.5 × 10−153 | 1.16 × 10−11 | 1.4 × 10−168 | 1.52 × 10−80 | 9.6 × 10−268 | 0 | 0 | |
| Std | 2.90 × 10−99 | 0 | 0 | 0 | 0 | 0 | 1.1 × 10−152 | 5.57 × 10−11 | 0 | 7.22 × 10−80 | 0 | 0 | 0 | |
| Best | 3.5 × 10−216 | 0 | 0 | 0 | 0 | 1.4 × 10−241 | 0 | 0.971331 | 0 | 9.7 × 10−215 | 0 | 0 | 0 | |
| Worst | 6.6 × 10−176 | 0 | 0 | 0 | 0 | 1.0 × 10−206 | 3.7 × 10−304 | 41.9567 | 0 | 6.5 × 10−207 | 0 | 0 | 0 | |
| Mean | 2.2 × 10−177 | 0 | 0 | 0 | 0 | 3.5 × 10−208 | 1.2 × 10−305 | 8.686946 | 0 | 4.0 × 10−208 | 0 | 0 | 0 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 10.34673 | 0 | 0 | 0 | 0 | 0 | |
| Best | 3.7 × 10−108 | 0 | 2.1 × 10−269 | 0 | 3.1 × 10−306 | 2.5 × 10−152 | 1.6 × 10−164 | 3.376950 | 8.8 × 10−187 | 4.34 × 10−58 | 1.1 × 10−276 | 0 | 0 | |
| Worst | 3.90 × 10−80 | 0 | 9.6 × 10−246 | 0 | 5.7 × 10−298 | 3.8 × 10−132 | 4.0 × 10−153 | 21.59668 | 1.3 × 10−155 | 4.64 × 10−48 | 1.2 × 10−268 | 0 | 0 | |
| Mean | 1.30 × 10−81 | 0 | 3.2 × 10−247 | 0 | 2.6 × 10−299 | 1.6 × 10−133 | 3.4 × 10−154 | 10.60969 | 4.2 × 10−157 | 2.30 × 10−49 | 4.9 × 10−270 | 0 | 0 | |
| Std | 7.11 × 10−81 | 0 | 0 | 0 | 0 | 7.1 × 10−133 | 9.8 × 10−154 | 4.459371 | 2.3 × 10−156 | 8.94 × 10−49 | 0 | 0 | 0 | |
| Best | 24.20335 | 26.05616 | 1.72 × 10−6 | 28.67618 | 26.37176 | 22.95210 | 15.95264 | 3.374669 | 2.83 × 10−7 | 0.233185 | 0.002288 | 2.75 × 10−10 | 0 | |
| Worst | 28.91707 | 28.74295 | 28.70629 | 28.80147 | 28.80720 | 23.85777 | 20.44314 | 85.53233 | 0.039644 | 3.088819 | 25.58633 | 2.16 × 10−5 | 5.97 × 10−30 | |
| Mean | 25.97674 | 27.07346 | 22.94440 | 28.72847 | 27.55347 | 23.38635 | 18.37509 | 45.34290 | 0.006135 | 0.820575 | 23.90461 | 4.33 × 10−6 | 5.77 × 10−31 | |
| Std | 1.015639 | 0.623372 | 11.66838 | 0.023729 | 0.836825 | 0.253120 | 1.114409 | 29.87031 | 0.009105 | 0.610651 | 4.540633 | 5.28 × 10−6 | 1.54 × 10−30 | |
| Best | 3.12 × 10−5 | 3.128740 | 2.28 × 10−6 | 0.166554 | 1.492294 | 1.14 × 10−15 | 0 | 4.63 × 10−22 | 1.84 × 10−8 | 0.000351 | 3.46 × 10−11 | 8.46 × 10−11 | 3.30 × 10−27 | |
| Worst | 3.996742 | 5.048849 | 0.000384 | 2.628649 | 3.291359 | 1.69 × 10−13 | 0 | 4.20 × 10−19 | 0.000227 | 1.020627 | 1.37 × 10−8 | 1.12 × 10−6 | 1.77 × 10−21 | |
| Mean | 0.331191 | 4.137628 | 9.60 × 10−5 | 0.749069 | 2.270967 | 2.66 × 10−14 | 0 | 5.96 × 10−20 | 4.38 × 10−5 | 0.125299 | 2.17 × 10−9 | 7.51 × 10−8 | 1.07 × 10−22 | |
| Std | 0.871799 | 0.432878 | 9.28 × 10−5 | 0.530287 | 0.412345 | 3.56 × 10−14 | 0 | 9.02 × 10−20 | 5.61 × 10−5 | 0.204138 | 3.20 × 10−9 | 2.06 × 10−7 | 3.51 × 10−22 | |
| Best | 1.13 × 10−5 | 3.01 × 10−7 | 9.79 × 10−6 | 1.17 × 10−6 | 7.41 × 10−6 | 2.79 × 10−5 | 7.15 × 10−6 | 0.015880 | 9.22 × 10−6 | 3.85 × 10−6 | 1.62 × 10−6 | 3.08 × 10−6 | 2.52 × 10−8 | |
| Worst | 0.000320 | 4.22 × 10−5 | 0.000433 | 0.000108 | 0.000355 | 0.000404 | 0.000114 | 0.109753 | 0.000756 | 0.000416 | 0.000179 | 0.000134 | 1.32 × 10−5 | |
| Mean | 9.57 × 10−5 | 1.41 × 10−5 | 0.000116 | 2.01 × 10−5 | 9.64 × 10−5 | 0.000152 | 4.68 × 10−5 | 0.052797 | 0.000123 | 7.35 × 10−5 | 5.68 × 10−5 | 4.11 × 10−5 | 2.87 × 10−6 | |
| Std | 6.39 × 10−5 | 1.35 × 10−5 | 0.000114 | 2.09 × 10−5 | 8.05 × 10−5 | 9.22 × 10−5 | 2.95 × 10−5 | 0.026017 | 0.000143 | 8.82 × 10−5 | 5.13 × 10−5 | 2.87 × 10−5 | 3.89 × 10−6 | |
| Best | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 14.92438 | 0 | 29.43536 | 0 | 0 | 0 | |
| Worst | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 45.76807 | 0 | 52.11550 | 0 | 0 | 0 | |
| Mean | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 28.38948 | 0 | 31.08455 | 0 | 0 | 0 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 7.024402 | 0 | 4.451099 | 0 | 0 | 0 | |
| Best | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 3.39 × 10−11 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | |
| Worst | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 5.055769 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | |
| Mean | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 2.130817 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | 4.44 × 10−16 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.994608 | 0 | 0 | 0 | 0 | 0 | |
| Best | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | |
| Worst | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.319056 | 0 | 0.333289 | 0 | 0 | 0 | |
| Mean | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.022654 | 0 | 0.033246 | 0 | 0 | 0 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.059112 | 0 | 0.065364 | 0 | 0 | 0 | |
| Best | 2.80 × 10−6 | 0.242068 | 8.17 × 10−7 | 0.008252 | 0.102783 | 2.01 × 10−17 | 1.34 × 10−30 | 9.35 × 10−20 | 2.75 × 10−9 | 0.000981 | 1.24 × 10−11 | 2.88 × 10−13 | 1.57 × 10−32 | |
| Worst | 0.803968 | 0.540176 | 0.103695 | 0.223576 | 0.368533 | 2.81 × 10−15 | 0.207317 | 1.255514 | 7.37 × 10−6 | 0.734796 | 1.51 × 10−9 | 1.11 × 10−8 | 1.57 × 10−32 | |
| Mean | 0.086193 | 0.395390 | 0.006917 | 0.078206 | 0.191518 | 3.68 × 10−16 | 0.024189 | 0.280662 | 5.04 × 10−7 | 0.159756 | 1.75 × 10−10 | 1.54 × 10−9 | 1.57 × 10−32 | |
| Std | 0.195793 | 0.081230 | 0.026304 | 0.048780 | 0.061997 | 5.29 × 10−16 | 0.052247 | 0.379074 | 1.35 × 10−6 | 0.224742 | 2.74 × 10−10 | 2.36 × 10−9 | 5.57 × 10−48 | |
| Best | 0.111943 | 0.117460 | 3.93 × 10−6 | 0.124931 | 1.403198 | 5.02 × 10−16 | 7.73 × 10−31 | 1.92 × 10−22 | 3.02 × 10−8 | 5.83 × 10−5 | 2.81 × 10−11 | 2.27 × 10−11 | 1.35 × 10−32 | |
| Worst | 2.995549 | 1.026511 | 0.463738 | 2.980248 | 2.979620 | 0.196254 | 0.010987 | 3.597465 | 4.44 × 10−5 | 0.004473 | 0.010987 | 1.70 × 10−7 | 1.35 × 10−32 | |
| Mean | 1.315111 | 0.539558 | 0.022082 | 2.444998 | 1.994001 | 0.032608 | 0.001099 | 0.402937 | 5.93 × 10−6 | 0.001439 | 0.000366 | 3.35 × 10−8 | 1.35 × 10−32 | |
| Std | 0.741137 | 0.225103 | 0.085605 | 1.000037 | 0.419754 | 0.053517 | 0.003353 | 1.021875 | 9.18 × 10−6 | 0.001230 | 0.002006 | 4.60 × 10−8 | 5.57 × 10−48 | |
| Best | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | 0.998004 | |
| Worst | 2.982105 | 1.038265 | 12.67051 | 0.998004 | 2.982105 | 0.998004 | 1.992031 | 5.928845 | 0.998004 | 12.67051 | 0.998004 | 0.998004 | 0.998004 | |
| Mean | 1.064141 | 0.999779 | 4.725066 | 0.998004 | 1.593234 | 0.998004 | 1.031138 | 2.184934 | 0.998004 | 7.534543 | 0.998004 | 0.998004 | 0.998004 | |
| Std | 0.362246 | 0.007372 | 3.861381 | 0 | 0.924773 | 0 | 0.181484 | 1.668560 | 3.02 × 10−16 | 5.268548 | 0 | 2.20 × 10−12 | 1.24 × 10−16 | |
| Best | 0.000307 | 0.000308 | 0.000307 | 0.000307 | 0.000307 | 0.000307 | 0.000307 | 0.000307 | 0.000308 | 0.000308 | 0.000307 | 0.000675 | 0.000307 | |
| Worst | 0.020363 | 0.000367 | 0.095598 | 0.000307 | 0.020363 | 0.020363 | 0.001223 | 0.001643 | 0.000429 | 0.000325 | 0.001223 | 0.001674 | 0.000307 | |
| Mean | 0.001140 | 0.000316 | 0.006857 | 0.000307 | 0.003139 | 0.002374 | 0.000521 | 0.000742 | 0.000315 | 0.000314 | 0.000369 | 0.001619 | 0.000307 | |
| Std | 0.003657 | 1.17 × 10−5 | 0.018388 | 1.27 × 10−19 | 0.006880 | 0.006103 | 0.000394 | 0.000383 | 2.23 × 10−5 | 4.77 × 10−6 | 0.000232 | 0.000215 | 1.15 × 10−9 | |
| Best | −1.03163 | −1.03161 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03070 | −1.03163 | |
| Worst | −1.03163 | −1.03034 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.02868 | −1.03138 | −1.03163 | −0.76772 | −1.03163 | |
| Mean | −1.03163 | −1.03131 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03163 | −1.03150 | −1.03157 | −1.03163 | −0.97326 | −1.03163 | |
| Std | 6.58 × 10−16 | 0.000276 | 5.13 × 10−16 | 6.78 × 10−16 | 6.05 × 10−16 | 6.78 × 10−16 | 6.32 × 10−16 | 6.78 × 10−16 | 0.000548 | 6.71 × 10−5 | 6.65 × 10−16 | 0.061576 | 6.58 × 10−16 | |
| Best | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | |
| Worst | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.93625 | −1 | −1 | −1 | −1 | −1 | |
| Mean | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.98512 | −1 | −1 | −1 | −1 | −1 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.027426 | 0 | 0 | 0 | 1.66 × 10−11 | 0 | |
| Best | 3 | 3 | 3 | 3 | 3 | 3 | 3 | 3 | 3 | 3.000008 | 3 | 3.02067 | 3 | |
| Worst | 3 | 3.000452 | 3 | 3 | 3 | 3 | 3 | 3 | 3 | 4.07082 | 3 | 32.68452 | 3 | |
| Mean | 3 | 3.000070 | 3 | 3 | 3 | 3 | 3 | 3 | 3 | 3.041238 | 3 | 15.85923 | 3 | |
| Std | 1.49 × 10−15 | 0.000113 | 2.86 × 10−14 | 1.88 × 10−15 | 4.26 × 10−15 | 5.34 × 10−16 | 1.57 × 10−15 | 2.91 × 10−15 | 1.77 × 10−14 | 0.195209 | 2.20 × 10−15 | 11.36096 | 1.27 × 10−15 | |
| Best | −10.1532 | −9.66200 | −10.1532 | −10.1532 | −10.1532 | −10.1532 | −10.1532 | −10.1532 | −10.1532 | −10.1522 | −10.1532 | −10.1532 | −10.1532 | |
| Worst | −10.1532 | −5.02191 | −2.63047 | −5.05520 | −2.63047 | −10.1532 | −5.05520 | −2.68286 | −10.1532 | −5.98821 | −10.1532 | −10.1512 | −10.1527 | |
| Mean | −10.1532 | −5.64063 | −9.40027 | −6.24473 | −9.57780 | −10.1532 | −9.30353 | −9.06934 | −10.1532 | −9.12428 | −10.1532 | −10.1529 | −10.1531 | |
| Std | 5.67 × 10−15 | 1.550303 | 2.295176 | 2.193074 | 1.702071 | 6.68 × 10−15 | 1.932393 | 2.513613 | 6.02 × 10−12 | 1.153430 | 6.62 × 10−15 | 0.000462 | 0.000149 | |
| Best | −10.4029 | −5.08668 | −10.4029 | −10.4029 | −10.4029 | −10.4029 | −10.4029 | −10.4029 | −10.4029 | −10.4023 | −10.4029 | −10.4028 | −10.4028 | |
| Worst | −10.4029 | −5.03131 | −2.76590 | −5.08767 | −2.76590 | −5.08767 | −5.08767 | −2.75193 | −10.4029 | −6.83463 | −10.4029 | −10.3993 | −10.4020 | |
| Mean | −10.4029 | −5.07580 | −9.16103 | −8.27683 | −10.0572 | −10.2258 | −9.16271 | −9.92529 | −10.4029 | −9.64218 | −10.4029 | −10.4024 | −10.4027 | |
| Std | 1.23 × 10−15 | 0.011622 | 2.826183 | 2.648454 | 1.405289 | 0.970431 | 2.286539 | 1.822252 | 3.35 × 10−12 | 0.84445 | 8.08 × 10−16 | 0.000679 | 0.000196 | |
| Best | −10.5364 | −10.1955 | −10.5364 | −10.5364 | −10.5364 | −10.5364 | −10.5364 | −10.5364 | −10.5364 | −10.5339 | −10.5364 | −10.5363 | −10.5363 | |
| Worst | −10.5364 | −5.06838 | −2.42173 | −5.12848 | −8.12759 | −10.5364 | −5.12848 | −2.87114 | −10.5364 | −7.37302 | −10.5364 | −10.5310 | −10.5351 | |
| Mean | −10.5364 | −5.44653 | −9.50118 | −6.39033 | −10.3891 | −10.5364 | −9.63509 | −9.57866 | −10.5364 | −9.81742 | −10.5364 | −10.5357 | −10.5361 | |
| Std | 2.88 × 10−15 | 1.265408 | 2.692296 | 2.326399 | 0.561864 | 2.03 × 10−15 | 2.04987 | 2.489983 | 1.63 × 10−11 | 0.939153 | 2.36 × 10−15 | 0.001133 | 0.000311 | |
| Best | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | |
| Worst | −1 | −0.99956 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.99994 | −1 | −1 | −1 | |
| Mean | −1 | −0.99989 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.99999 | −1 | −1 | −1 | |
| Std | 0 | 0.000110 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 1.31 × 10−5 | 0 | 2.33 × 10−7 | 7.75 × 10−7 | |
| Best | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −1 | |
| Worst | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.99028 | −1 | −0.99028 | −0.99028 | −1 | −1 | |
| Mean | −1 | −1 | −1 | −1 | −1 | −1 | −1 | −0.99158 | −1 | −0.99644 | −0.99968 | −1 | −1 | |
| Std | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.003359 | 0 | 0.004762 | 0.001774 | 6.82 × 10−10 | 0 | |
| Best | 1.8 × 10−111 | 0 | 2.3 × 10−282 | 0 | 0 | 4.7 × 10−232 | 2.2 × 10−180 | 3.4 × 10−131 | 3.8 × 10−205 | 5.66 × 10−96 | 5.3 × 10−273 | 4.88 × 10−13 | 0 | |
| Worst | 3.50 × 10−79 | 0 | 2.3 × 10−239 | 0 | 0 | 1.16 × 10−31 | 1.93 × 10−5 | 2.05 × 10−15 | 1.8 × 10−171 | 0.313260 | 3.7 × 10−264 | 1.48 × 10−5 | 0 | |
| Mean | 1.17 × 10−80 | 0 | 7.7 × 10−241 | 0 | 0 | 4.30 × 10−33 | 2.47 × 10−6 | 3.53 × 10−16 | 6.2 × 10−173 | 0.025821 | 3.1 × 10−265 | 1.12 × 10−6 | 0 | |
| Std | 6.39 × 10−80 | 0 | 0 | 0 | 0 | 2.12 × 10−32 | 5.50 × 10−6 | 5.27 × 10−16 | 0 | 0.072874 | 0 | 3.44 × 10−6 | 0 |
| Function | CGCRA vs. BKA | CGCRA vs. EGO | CGCRA vs. HLOA | CGCRA vs. IAO | CGCRA vs. NRBO | CGCRA vs. SBOA | CGCRA vs. WSA | CGCRA vs. EHO | CGCRA vs. WO | CGCRA vs. HEOA | CGCRA vs. PO | CGCRA vs. GCRA |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1.21 × 10−12 | N/A | N/A | N/A | N/A | N/A | N/A | 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | N/A | |
| 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | 2.15 × 10−2 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | N/A | |
| 1.21 × 10−12 | N/A | N/A | N/A | N/A | 1.21 × 10−12 | 1.60 × 10−2 | 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | N/A | |
| 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | N/A | |
| 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | 6.46 × 10−12 | |
| 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 1.21 × 10−12 | 6.07 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | 3.02 × 10−11 | |
| 3.69 × 10−11 | 1.53 × 10−5 | 4.08 × 10−11 | 6.01 × 10−8 | 8.15 × 10−11 | 3.02 × 10−11 | 1.33 × 10−10 | 3.02 × 10−11 | 6.70 × 10−11 | 1.46 × 10−10 | 6.12 × 10−10 | 1.61 × 10−10 | |
| N/A | N/A | N/A | N/A | N/A | N/A | N/A | 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | N/A | |
| 2.88 × 10−6 | 3.02 × 10−11 | 3.02 × 10−11 | 2.83 × 10−8 | 3.02 × 10−11 | 3.99 × 10−4 | 2.02 × 10−8 | 3.02 × 10−11 | 1.62 × 10−2 | 3.02 × 10−11 | 1.91 × 10−2 | 2.26 × 10−3 | |
| N/A | N/A | N/A | N/A | N/A | N/A | N/A | 3.45 × 10−7 | N/A | 1.27 × 10−5 | N/A | N/A | |
| 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | |
| 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | |
| 6.65 × 10−1 | 3.16 × 10−12 | 1.16 × 10−10 | 8.14 × 10−2 | 5.47 × 10−5 | 8.14 × 10−2 | 1.86 × 10−2 | 5.59 × 10−4 | 3.55 × 10−9 | 3.16 × 10−12 | 8.14 × 10−2 | 3.15 × 10−12 | |
| 1.50 × 10−2 | 3.02 × 10−11 | 4.20 × 10−2 | 2.68 × 10−11 | 7.72 × 10−2 | 5.56 × 10−10 | 5.19 × 10−3 | 7.01 × 10−2 | 3.02 × 10−11 | 3.02 × 10−11 | 9.34 × 10−9 | 3.02 × 10−11 | |
| N/A | 3.15 × 10−12 | 2.49 × 10−7 | 8.14 × 10−2 | 1.58 × 10−2 | 8.14 × 10−2 | 1.73 × 10−2 | 8.14 × 10−2 | 7.72 × 10−11 | 3.15 × 10−12 | 6.54 × 10−1 | 3.15 × 10−12 | |
| N/A | N/A | N/A | N/A | N/A | N/A | N/A | 5.46 × 10−3 | N/A | N/A | N/A | 5.37 × 10−6 | |
| 7.31 × 10−1 | 1.58 × 10−11 | 1.15 × 10−10 | 2.61 × 10−5 | 3.81 × 10−2 | 5.06 × 10−3 | 8.06 × 10−2 | 5.54 × 10−4 | 3.71 × 10−11 | 1.58 × 10−11 | 5.02 × 10−3 | 1.58 × 10−11 | |
| 7.76 × 10−12 | 3.02 × 10−11 | 6.76 × 10−5 | 3.05 × 10−4 | 9.76 × 10−3 | 1.14 × 10−11 | 7.68 × 10−6 | 4.28 × 10−6 | 3.02 × 10−11 | 3.02 × 10−11 | 1.25 × 10−11 | 5.36 × 10−3 | |
| 1.33 × 10−11 | 3.02 × 10−11 | 7.48 × 10−2 | 1.83 × 10−2 | 5.71 × 10−5 | 3.15 × 10−10 | 3.66 × 10−4 | 4.23 × 10−9 | 3.02 × 10−11 | 3.69 × 10−11 | 6.32 × 10−12 | 1.44 × 10−2 | |
| 2.07 × 10−11 | 3.02 × 10−11 | 3.40 × 10−2 | 3.43 × 10−4 | 9.10 × 10−6 | 4.10 × 10−12 | 8.04 × 10−6 | 3.72 × 10−7 | 3.02 × 10−11 | 3.02 × 10−11 | 7.57 × 10−12 | 1.98 × 10−2 | |
| 1.21 × 10−12 | 4.50 × 10−11 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 5.09 × 10−6 | 1.21 × 10−12 | 3.71 × 10−2 | |
| N/A | N/A | N/A | N/A | N/A | N/A | N/A | 1.97 × 10−11 | N/A | 1.35 × 10−4 | 3.33 × 10−2 | 1.70 × 10−8 | |
| 1.21 × 10−12 | N/A | 1.21 × 10−12 | N/A | N/A | 1.21 × 10−12 | 1.21 × 10−12 | 1.18 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 | 1.21 × 10−12 |
| Algorithm | Optimum Variables | Optimum Weight | |||||
|---|---|---|---|---|---|---|---|
| COA [38] | 0.5 | 1.2791 | 0.5 | 1.2739 | 1.2828 | 0.5 | |
| 0.5 | 0.2954 | 0.192 | 3.557 | 19.0792 | 25.2083 | ||
| HLOA [38] | 0.5 | 1.0669 | 0.8016 | 1.0704 | 0.504 | 1.4873 | |
| 0.5 | 0.192 | 0.192 | −29.9786 | 3.2119 | 23.6956 | ||
| AROA [38] | 0.5 | 1.5 | 0.5 | 1.2928 | 0.5 | 0.5 | |
| 0.5 | 0.192 | 0.3195 | 8.8265 | 23.0874 | 25.3642 | ||
| ETO [40] | 0.50282 | 1.2414 | 0.51604 | 1.2201 | 0.60334 | 1.3878 | |
| 0.5 | 0.74832 | 0.06747 | 2.2526 | −7.2818 | 23.2574 | ||
| SCHO [40] | 0.5 | 1.10286 | 0.87088 | 0.88643 | 0.52609 | 1.49992 | |
| 0.5 | 0.03508 | 0.19439 | −30 | −0.5913 | 23.7209 | ||
| GJO [40] | 0.5 | 1.20309 | 0.50327 | 1.28778 | 0.51053 | 1.5 | |
| 0.5 | 0.00000 | 9.5 × 10−5 | −22.115 | −0.0536 | 23.4052 | ||
| SCSO [34] | 0.502366774 | 1.23533939 | 0.5 | 1.223008761 | 0.515267967 | 1.39187245 | |
| 0.50003369 | 0.340647775 | 0.211950171 | 1.374158706 | −7.77399175 | 23.35787723 | ||
| SOA [34] | 0.500139239 | 1.254868587 | 0.5 | 1.205871077 | 0.739233716 | 0.772309974 | |
| 0.5 | 0.316999014 | 0.30308334 | 0.749660043 | 2.039711514 | 23.8070425 | ||
| SFOA [31] | 0.5 | 1.234 | 0.5 | 1.187 | 0.875 | 0.892 | |
| 0.4 | 0.345 | 0.192 | 1.5 | 0.572 | 23.5616 | ||
| BBO [31] | 0.663 | 1.157 | 0.5 | 1.211 | 0.875 | 0.882 | |
| 0.4 | 0.345 | 0.232 | 0.726 | 0.913 | 23.9386 | ||
| CGCRA | 0.5 | 1.1165 | 0.5 | 1.30214 | 0.5 | 1.5 | |
| 0.5 | 0.345 | 0.192 | −19.57243 | 0.02436 | 22.84351 | ||
| Algorithm | Optimum Variables | Optimum Weight | ||||
|---|---|---|---|---|---|---|
| APSO [41] | 76 | 96 | 1 | 840 | 3 | 0.337181 |
| IAPSO [41] | 70 | 90 | 1 | 900 | 3 | 0.31365661 |
| GOA [42] | 71 | 92 | 1 | 835 | 3 | 0.3355146 |
| GSA [43] | 72 | 92 | 2 | 815 | 3 | 0.3175771 |
| AEO [43] | 70 | 90 | 1 | 810 | 3 | 0.3136566 |
| AHA [32] | 70 | 90 | 1 | 840 | 3 | 0.3136566 |
| HBO [44] | 70 | 90 | 1 | 1000 | 3 | 0.3136566 |
| MRFO [45] | 70 | 90 | 1 | 835 | 3 | 0.3136566 |
| GA [45] | 72 | 92 | 1 | 918 | 3 | 0.321498 |
| DE [45] | 71 | 92 | 1 | 835 | 3 | 0.3355146 |
| CGCRA | 70 | 90 | 1 | 600 | 2 | 0.23525 |
| Algorithm | Optimum Variables | Optimum Cost | ||||
|---|---|---|---|---|---|---|
| HHO [46] | 125 | 21 | 11.09207 | 0.515 | 0.515 | |
| 0.4 | 0.6 | 0.3 | 0.050474 | 0.6 | 83,011.88 | |
| RSA [46] | 125.1722 | 21.29734 | 10.88521 | 0.515253 | 0.517764 | |
| 0.41245 | 0.632338 | 0.301911 | 0.024395 | 0.6024 | 83,486.64 | |
| RSO [47] | 125 | 21.41769 | 10.94027 | 0.515 | 0.515 | |
| 0.4 | 0.7 | 0.3 | 0.02 | 0.6 | 85,069.021 | |
| RUN [48] | 125.2142 | 21.59796 | 11.4024 | 0.515 | 0.515 | |
| 0.40059 | 0.61467 | 0.3053 | 0.02 | 0.63665 | 83,680.47 | |
| MGA [33] | 125.718 | 21.8745119 | 10.7770658 | 0.51500082 | 0.51500299 | |
| 0.405908353 | 0.65558802 | 0.30000415 | 0.07754492 | 0.6 | 83,912.87983 | |
| CGO [33] | 125 | 21.875 | 10.777009 | 0.515 | 0.515 | |
| 0.4 | 0.64620052 | 0.3 | 0.050152445 | 0.6 | 83,918.49253 | |
| EVO [33] | 125.7190556 | 21.4255902 | 10.6955328 | 0.515 | 0.515 | |
| 0.463182936 | 0.6999265 | 0.3 | 0.063431519 | 0.604213108 | 81,859.7415974 | |
| SELO [49] | 126.3521 | 21.0299 | 11 | 0.515 | 0.515 | |
| 0.4 | 0.6011 | 0.3 | 0.1 | 0.6004 | 83,805.29 | |
| LFD [49] | 126.3999 | 21 | 11 | 0.515 | 0.5251 | |
| 0.5 | 0.6 | 0.3 | 0.1 | 0.6 | 83,670.78 | |
| SETO [49] | 125.7227 | 21.4233 | 11 | 0.515 | 0.515 | |
| 0.4 | 0.7 | 0.3 | 0.1 | 0.6 | 85,539.19 | |
| CGCRA | 125.7523 | 21 | 11 | 0.515 | 0.515 | |
| 0.4513 | 0.6875 | 0.3 | 0.0768 | 0.6927 | 85,547.6324 | |
| Algorithm | Optimum Variables | Optimum Cost | |||
|---|---|---|---|---|---|
| RSO [37] | 39.3326 | 12 | 12 | 25.4127 | 4.5960 × 10−8 |
| ChOA [37] | 52.9669 | 19.2143 | 16.2824 | 40.9387 | 2.2210 × 10−17 |
| SOA [37] | 58.2626 | 12 | 42.0304 | 60 | 6.2215 × 10−16 |
| STOA [37] | 60 | 24.6745 | 20.9436 | 59.696 | 7.0004 × 10−15 |
| TSA [37] | 54.0750 | 18.1623 | 20.5854 | 47.9214 | 5.8199 × 10−16 |
| DOA [38] | 42.7327 | 16.2019 | 19.0945 | 48.7291 | 2.7009 × 10−12 |
| MSA [38] | 33.6104 | 12.8482 | 19.9977 | 52.698 | 2.3078 × 10−11 |
| HLOA [38] | 23.4796 | 12.4617 | 12.5 | 47.2468 | 9.9216 × 10−10 |
| MSROA [34] | 49.7 | 19.9 | 16.5 | 43.4 | 2.70 × 10−12 |
| SCSO [34] | 47.5 | 26.9 | 12 | 46.6 | 9.92 × 10−10 |
| CGCRA | 51 | 22 | 17 | 53 | 3.4762 × 10−18 |
| Algorithm | Optimum Variables | Optimum Weight | |
|---|---|---|---|
| BKA [1] | 0.788675 | 0.408248 | 263.895843 |
| TTAO [35] | 0.788688 | 0.408213 | 263.8958431 |
| SCHO [50] | 0.7886642 | 0.40827926 | 263.8958476 |
| APO [39] | 0.7887 | 0.4082 | 263.89584338 |
| BSLO [51] | 0.78867930 | 0.40823651 | 263.8958434 |
| FOX [51] | 0.78870269 | 0.4081704 | 263.8958523 |
| ARSCA [37] | 0.7887 | 0.4081 | 263.8958 |
| CPO [37] | 0.7885 | 0.4088 | 263.8959 |
| SBOA [6] | 0.789 | 0.409 | 264 |
| SFOA [31] | 0.78868 | 0.40825 | 263.89584 |
| CGCRA | 0.78651 | 0.41362 | 263.8556 |
| Algorithm | Optimum Variables | Optimum Cost | |
|---|---|---|---|
| KOA [36] | 5.4512 | 0.2920 | 26.499497 |
| FLA [36] | 5.4801 | 0.2905 | 26.563266 |
| COA [36] | 5.4511 | 0.2920 | 26.501823 |
| GTO [36] | 5.4512 | 0.2920 | 26.499497 |
| RUN [36] | 5.4512 | 0.2920 | 26.499497 |
| SMA [36] | 5.4512 | 0.2920 | 26.499538 |
| DO [36] | 5.4512 | 0.2920 | 26.499497 |
| POA [36] | 5.4512 | 0.2920 | 26.499497 |
| GSA [35] | 5.451163397 | 0.291965509 | 26.531364472 |
| TTAO [35] | 5.452181 | 0.291626 | 26.51816147 |
| CGCRA | 5.45128 | 0.29197 | 24.61613 |
| Algorithm | Optimum Variables | Optimum Weight | |||
|---|---|---|---|---|---|
| GTO [52] | 0.05 | 2.052859 | 119.6392 | 4.089713 | 8.41270 |
| MFO [52] | 0.05 | 2.041514 | 120 | 4.083365 | 8.412698 |
| WOA [52] | 0.051874 | 2.045915 | 119.9579 | 4.085849 | 8.449975 |
| AOA [53] | 0.05 | 0.125073578 | 120 | 4.116042166 | 7.738 |
| CGO [53] | N/A | N/A | N/A | N/A | 8.41281381 |
| MGA [53] | N/A | N/A | N/A | N/A | 8.41340665 |
| TTAO [35] | 0.05 | 2.041514 | 4.083027 | 120 | 8.412698323 |
| MVO [2] | 0.05 | 2.046900355 | 4.095582502 | 119.92924 | 8.57509432 |
| ALO [2] | 0.05 | 2.051360067 | 4.102693186 | 118.821159 | 8.53445096 |
| CS-EO [2] | 0.05 | 2.041514 | 4.083027 | 120 | 8.412698 |
| CGCRA | 0.05 | 0.13721 | 120 | 4.12642 | 4.69621 |
| Algorithm | Optimum Variables | Optimum Weight | ||||
|---|---|---|---|---|---|---|
| COA [54] | 6.01725731 | 5.30715098 | 4.49125555 | 3.508156789 | 2.149913022 | 1.33996 |
| APO [39] | 6.0160 | 5.3092 | 4.4943 | 3.5015 | 2.1527 | 1.33995636 |
| ASO [37] | 6.0378 | 5.3076 | 4.4870 | 3.4991 | 2.1425 | 1.34 |
| ChOA [37] | 5.9364 | 5.2961 | 4.4700 | 3.4297 | 2.1106 | 1.3424 |
| GJO [37] | 6.0054 | 5.3041 | 4.5090 | 3.4991 | 2.1562 | 1.34 |
| RSO [37] | 7.2404 | 4.6475 | 3.9739 | 9.1907 | 1.8512 | 1.6788 |
| STOA [37] | 6.0236 | 5.3252 | 4.5124 | 3.5176 | 2.0994 | 1.3402 |
| TSA [37] | 5.9426 | 5.3743 | 4.4655 | 3.5156 | 2.1830 | 1.3404 |
| CPO [37] | 6.0233 | 5.3196 | 4.4780 | 3.5097 | 2.1436 | 1.34 |
| HEOA [10] | 6.12 | 5.28 | 4.46 | 3.51 | 2.12 | 1.34 |
| CGCRA | 5.9637 | 4.8871 | 4.4753 | 3.4764 | 2.1469 | 1.3068 |
| Algorithm | Optimum Variables | Optimum Weight | ||||||
|---|---|---|---|---|---|---|---|---|
| GTO [39] | 3.5 | 0.7 | 17 | 7.3 | 7.7153 | 3.3502 | 5.2867 | 2994.47106615 |
| APO [39] | 3.5 | 0.7 | 17 | 7.3 | 7.7153 | 3.3502 | 5.2867 | 2994.47106615 |
| BSLO [51] | 3.5 | 0.7 | 17 | 7.3 | 7.71532 | 3.35021 | 5.28665 | 2994.4711 |
| FOX [51] | 3.50025 | 0.7 | 17 | 7.30002 | 7.71587 | 3.35023 | 5.28666 | 2994.525 |
| DOA [38] | 3.5012 | 0.7001 | 17.0029 | 7.3461 | 7.7752 | 3.3533 | 5.2890 | 2999.7 |
| DCS [38] | 3.5212 | 0.7005 | 17.0096 | 7.3641 | 7.8017 | 3.4337 | 5.2916 | 3034.3 |
| HLOA [38] | 3.5001 | 0.7 | 17.0015 | 7.3 | 7.7693 | 3.3555 | 5.2867 | 2999.9 |
| AROA [38] | 3.6 | 0.7 | 17 | 7.7798 | 7.9876 | 3.3681 | 5.5 | 3189.8 |
| EHO [8] | 3.5 | 0.7 | 17 | 7.3 | 7.71532 | 3.350215 | 5.286654 | 2994.471066 |
| ROA [34] | 3.4896748 | 0.7 | 17 | 7.822051 | 7.828591 | 3.347885 | 5.278705 | 2995.685341 |
| CGCRA | 3.5 | 0.7 | 17 | 7.3 | 7.71623 | 3.35132 | 5.28664 | 2994.4234 |
| Algorithm | Optimum Variables | Optimum Cost | |||
|---|---|---|---|---|---|
| BSLO [51] | 0.778169 | 0.3846492 | 40.31962 | 200 | 5885.3328 |
| FOX [51] | 0.780559 | 0.3860622 | 40.43913 | 198.5199 | 5894.5033 |
| EHO [8] | 12.450698 | 6.154387 | 40.319619 | 200 | 5885.332774 |
| ETO [40] | 0.7865062 | 0.3917354 | 40.54479 | 199.1287 | 5984.8509 |
| FLO [55] | 0.7780271 | 0.3845792 | 40.312284 | 200 | 5882.8955 |
| GRO [56] | 0.7787153 | 0.384967 | 40.347943 | 199.6061 | 5886.4068 |
| PKO [57] | 0.7781686414 | 0.3846491626 | 40.31961872 | 200 | 5885.332774 |
| ROA [34] | 0.708996562 | 2.867704095 | 40.32129317 | 200 | 13,048.04256 |
| MSROA [34] | 0.773374321 | 0.374874166 | 41.83662957 | 180.1871401 | 5807.849903 |
| SBOA [6] | 0.785 | 0.388 | 40.7 | 195 | 5890 |
| CGCRA | 0.776832 | 0.373267 | 39.985692 | 199.996241 | 5798.2139 |
| Algorithm | Optimum Variables | Optimum Weight | ||
|---|---|---|---|---|
| APO [39] | 0.0517 | 0.3567 | 11.2890 | 0.01266523 |
| BSLO [51] | 0.051669 | 0.356226 | 11.31788 | 0.0126652 |
| FOX [51] | 0.051983 | 0.363808 | 10.88657 | 0.0126686 |
| EGO [2] | 0.05 | 0.3157863675 | 14.29092052 | 0.0126611 |
| EHO [8] | 0.051746 | 0.358097 | 11.208557 | 0.012665 |
| FLO [55] | 0.0516891 | 0.3567177 | 11.288966 | 0.0126652 |
| LFD [56] | 0.0517 | 0.3575 | 11.2442 | 0.0127 |
| BBOA [56] | 0.051344 | 0.334881 | 12.6223 | 0.012667 |
| GRO [56] | 0.0517082206 | 0.35717883 | 11.2619852 | 0.012665 |
| SBOA [6] | 0.0517 | 0.357 | 11.3 | 0.0127 |
| CGCRA | 0.0507 | 0.3548 | 11.3736 | 0.01257 |
| Algorithm | Optimum Variables | Optimum Cost | |||
|---|---|---|---|---|---|
| BSLO [51] | 0.20573 | 3.47049 | 9.03662 | 0.20573 | 1.72485 |
| FOX [51] | 0.20696 | 3.4519 | 9.01778 | 0.20711 | 1.73142 |
| HOA [8] | 0.261132 | 3.185937 | 7.846510 | 0.286110 | 2.096170 |
| ETO [40] | 0.18213 | 2.4358 | 9.5821 | 0.18321 | 1.4774 |
| FLO [55] | 0.2057296 | 3.4704887 | 9.0366239 | 0.2057296 | 1.7248523 |
| IAO [4] | 0.19883 | 3.33740 | 9.19200 | 0.19883 | 1.67020 |
| PKO [57] | 0.2057296398 | 3.470488666 | 9.03662391 | 0.2057296398 | 1.724852309 |
| MadDE [6] | 0.199 | 3.34 | 9.19 | 0.199 | 1.67 |
| RIME [6] | 0.376 | 2.14 | 6.48 | 0.4 | 2.35 |
| SBOA [6] | 0.199 | 3.34 | 9.19 | 0.199 | 1.67 |
| CGCRA | 0.197954 | 3.424315 | 9.031867 | 0.201218 | 1.667165 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 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.
Share and Cite
Xu, Y.; Wu, Y.; Zhang, J. A Modified Complex-Valued Encoding Greater Cane Rat Algorithm for Global Optimization and Constrained Engineering Applications. Biomimetics 2026, 11, 413. https://doi.org/10.3390/biomimetics11060413
Xu Y, Wu Y, Zhang J. A Modified Complex-Valued Encoding Greater Cane Rat Algorithm for Global Optimization and Constrained Engineering Applications. Biomimetics. 2026; 11(6):413. https://doi.org/10.3390/biomimetics11060413
Chicago/Turabian StyleXu, Yubao, Yuebo Wu, and Jinzhong Zhang. 2026. "A Modified Complex-Valued Encoding Greater Cane Rat Algorithm for Global Optimization and Constrained Engineering Applications" Biomimetics 11, no. 6: 413. https://doi.org/10.3390/biomimetics11060413
APA StyleXu, Y., Wu, Y., & Zhang, J. (2026). A Modified Complex-Valued Encoding Greater Cane Rat Algorithm for Global Optimization and Constrained Engineering Applications. Biomimetics, 11(6), 413. https://doi.org/10.3390/biomimetics11060413
