Hybrid Sine Cosine Algorithm with Integrated Roulette Wheel Selection and Opposition-Based Learning for Engineering Optimization Problems

IF 2.9 4区 计算机科学
Vu Hong Son Pham, Nghiep Trinh Nguyen Dang, Van Nam Nguyen
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引用次数: 0

Abstract

Abstract The sine cosine algorithm (SCA) is widely recognized for its efficacy in solving optimization problems, although it encounters challenges in striking a balance between exploration and exploitation. To improve these limitations, a novel model, termed the novel sine cosine algorithm (nSCA), is introduced. In this advanced model, the roulette wheel selection (RWS) mechanism and opposition-based learning (OBL) techniques are integrated to augment its global optimization capabilities. A meticulous evaluation of nSCA performance has been carried out in comparison with state-of-the-art optimization algorithms, including multi-verse optimizer (MVO), salp swarm algorithm (SSA), moth-flame optimization (MFO), grasshopper optimization algorithm (GOA), and whale optimization algorithm (WOA), in addition to the original SCA. This comparative analysis was conducted across a wide array of 23 classical test functions and 29 CEC2017 benchmark functions, thereby facilitating a comprehensive assessment. Further validation of nSCA utility has been achieved through its deployment in five distinct engineering optimization case studies. Its effectiveness and relevance in addressing real-world optimization issues have thus been emphasized. Across all conducted tests and practical applications, nSCA was found to outperform its competitors consistently, furnishing more effective solutions to both theoretical and applied optimization problems.
结合轮盘选择和基于对立学习的混合正弦余弦算法用于工程优化问题
摘要:正弦余弦算法(SCA)在求解优化问题方面的有效性得到了广泛的认可,但在探索与利用之间的平衡方面遇到了挑战。为了改善这些限制,引入了一种新的模型,称为新正弦余弦算法(nSCA)。在这个先进的模型中,轮盘选择(RWS)机制和基于对手的学习(OBL)技术相结合,以增强其全局优化能力。对nSCA的性能进行了细致的评估,并与最先进的优化算法进行了比较,包括多宇宙优化器(MVO)、salp swarm算法(SSA)、蛾焰优化算法(MFO)、蚱蜢优化算法(GOA)和鲸鱼优化算法(WOA),以及原始SCA。我们对23个经典测试函数和29个CEC2017基准函数进行了比较分析,从而促进了全面的评估。通过在五个不同的工程优化案例研究中部署nSCA,进一步验证了nSCA的实用性。因此,强调了它在解决现实世界优化问题方面的有效性和相关性。在所有进行的测试和实际应用中,发现nSCA始终优于竞争对手,为理论和应用优化问题提供更有效的解决方案。
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来源期刊
International Journal of Computational Intelligence Systems
International Journal of Computational Intelligence Systems 工程技术-计算机:跨学科应用
自引率
3.40%
发文量
94
期刊介绍: The International Journal of Computational Intelligence Systems publishes original research on all aspects of applied computational intelligence, especially targeting papers demonstrating the use of techniques and methods originating from computational intelligence theory. The core theories of computational intelligence are fuzzy logic, neural networks, evolutionary computation and probabilistic reasoning. The journal publishes only articles related to the use of computational intelligence and broadly covers the following topics: -Autonomous reasoning- Bio-informatics- Cloud computing- Condition monitoring- Data science- Data mining- Data visualization- Decision support systems- Fault diagnosis- Intelligent information retrieval- Human-machine interaction and interfaces- Image processing- Internet and networks- Noise analysis- Pattern recognition- Prediction systems- Power (nuclear) safety systems- Process and system control- Real-time systems- Risk analysis and safety-related issues- Robotics- Signal and image processing- IoT and smart environments- Systems integration- System control- System modelling and optimization- Telecommunications- Time series prediction- Warning systems- Virtual reality- Web intelligence- Deep learning
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