Nayak Janmenjoy, Naik Bighnaraj, Dinesh Paidi, Vakula Kanithi, Dash Pandit Byomakesha
Department of Computer Science and Engineering, Aditya Institute of Technology and Management (AITAM), K Kotturu, Tekkali, 532201 Andhra Pradesh India.
Department of Computer Application, Veer Surendra Sai University of Technology, Burla, 768018 Odisha India.
SN Comput Sci. 2020;1(6):311. doi: 10.1007/s42979-020-00320-x. Epub 2020 Sep 26.
Since the past decades, most of the nature inspired optimization algorithms (NIOA) have been developed and become admired due to their effectiveness for resolving a variety of complex problems of dissimilar domain. Firefly algorithm (FA) is well-known, yet efficient nature inspired swarm intelligence (SI) based metaheuristic algorithm. Since from its initiation, FA has become well-liked between the researchers due to its competence and turn out to be an interesting technique for the practitioners as well as researchers for solving the problems of numerous fields of research such as classifications, clustering, neural networks, biomedical engineering, healthcare as well as other research domain. Moreover, there is an outstanding track record of FA in solving biomedical engineering (BME) and healthcare (HC) problems. Abundant complexities have been worked out with the assist of FA and its variants. By taking these particulars into concern, in this paper, a first ever in-depth analysis has been addressed on the variants, importance, applications as well as enhancements of FA in BME as well as HC. The major intention behind this investigative work is to motivate the researchers to improve and innovate new solutions for multifaceted problems of healthcare and biomedical engineering using FA.
在过去几十年中,大多数受自然启发的优化算法(NIOA)已被开发出来,并因其在解决不同领域的各种复杂问题方面的有效性而备受推崇。萤火虫算法(FA)是一种著名的、基于受自然启发的群体智能(SI)的高效元启发式算法。自其诞生以来,FA因其能力在研究人员中广受欢迎,并成为从业者和研究人员解决众多研究领域问题(如分类、聚类、神经网络、生物医学工程、医疗保健以及其他研究领域)的一项有趣技术。此外,FA在解决生物医学工程(BME)和医疗保健(HC)问题方面有着出色的记录。借助FA及其变体已经解决了许多复杂性问题。考虑到这些细节,本文首次对FA在BME和HC中的变体、重要性、应用以及改进进行了深入分析。这项研究工作背后的主要目的是激励研究人员使用FA为医疗保健和生物医学工程的多方面问题改进和创新新的解决方案。