Varna Fevzi Tugrul, Husbands Phil
AI Group, Department of Informatics, University of Sussex, Brighton BN1 9RH, UK.
Biomimetics (Basel). 2024 Sep 5;9(9):538. doi: 10.3390/biomimetics9090538.
This paper presents two novel bio-inspired particle swarm optimisation (PSO) variants, namely biased eavesdropping PSO (BEPSO) and altruistic heterogeneous PSO (AHPSO). These algorithms are inspired by types of group behaviour found in nature that have not previously been exploited in search algorithms. The primary search behaviour of the BEPSO algorithm is inspired by eavesdropping behaviour observed in nature coupled with a cognitive bias mechanism that enables particles to make decisions on cooperation. The second algorithm, AHPSO, conceptualises particles in the swarm as energy-driven agents with bio-inspired altruistic behaviour, which allows for the formation of lending-borrowing relationships. The mechanisms underlying these algorithms provide new approaches to maintaining swarm diversity, which contributes to the prevention of premature convergence. The new algorithms were tested on the 30, 50 and 100-dimensional CEC'13, CEC'14 and CEC'17 test suites and various constrained real-world optimisation problems, as well as against 13 well-known PSO variants, the CEC competition winner, differential evolution algorithm L-SHADE and the recent bio-inspired I-CPA metaheuristic. The experimental results show that both the BEPSO and AHPSO algorithms provide very competitive performance on the unconstrained test suites and the constrained real-world problems. On the CEC13 test suite, across all dimensions, both BEPSO and AHPSO performed statistically significantly better than 10 of the 15 comparator algorithms, while none of the remaining 5 algorithms performed significantly better than either BEPSO or AHPSO. On the CEC17 test suite, on the 50D and 100D problems, both BEPSO and AHPSO performed statistically significantly better than 11 of the 15 comparator algorithms, while none of the remaining 4 algorithms performed significantly better than either BEPSO or AHPSO. On the constrained problem set, in terms of mean rank across 30 runs on all problems, BEPSO was first, and AHPSO was third.
本文提出了两种新颖的受生物启发的粒子群优化(PSO)变体,即有偏窃听粒子群优化算法(BEPSO)和利他异构粒子群优化算法(AHPSO)。这些算法的灵感来源于自然界中发现的群体行为类型,而这些行为类型此前尚未在搜索算法中得到应用。BEPSO算法的主要搜索行为受到自然界中观察到的窃听行为以及一种认知偏差机制的启发,该机制使粒子能够做出合作决策。第二种算法AHPSO,将群体中的粒子概念化为具有受生物启发的利他行为的能量驱动智能体,这允许形成借贷关系。这些算法背后的机制为维持群体多样性提供了新方法,有助于防止过早收敛。新算法在30维、50维和100维的CEC'13、CEC'14和CEC'17测试套件以及各种约束实际优化问题上进行了测试,并且与13种著名的PSO变体、CEC竞赛获胜者、差分进化算法L-SHADE以及最近受生物启发的I-CPA元启发式算法进行了对比。实验结果表明,BEPSO和AHPSO算法在无约束测试套件和约束实际问题上均具有极具竞争力的性能。在CEC13测试套件上,在所有维度上,BEPSO和AHPSO在统计上均显著优于15种比较算法中的10种,而其余剩下的5种算法均未显著优于BEPSO或AHPSO。在CEC17测试套件上,在50维和100维问题上,BEPSO和AHPSO在统计上均显著优于15种比较算法中的11种,而其余剩下的4种算法均未显著优于BEPSO或AHPSO。在约束问题集上,就所有问题30次运行的平均排名而言,BEPSO排名第一,AHPSO排名第三。