Genetic Algorithms

遗传算法
  • 文章类型: Journal Article
    这项研究的主要目标是1)回顾2013年至2022年之间软计算概念在人为因素和人体工程学(HFE)领域的应用文献2)强调未来的发展和趋势。已经研究了多种软计算方法和技术,因为它们能够有效地解决HFE中的各种应用。这些技术包括模糊逻辑,人工神经网络,遗传算法,和他们的组合。这些方法在HFE中的应用已在406篇论文中选出的104篇文章中得到了强调。这项研究的结果有助于解决复杂性的挑战,模糊,以及通过应用软计算方法进行人为因素和人体工程学研究的不精确性。
    The main objectives of this study were to 1) review the literature on the applications of soft computing concepts to the field of human factors and ergonomics (HFE) between 2013 and 2022 and 2) highlight future developments and trends. Multiple soft computing methods and techniques have been investigated for their ability to address various applications in HFE effectively. These techniques include fuzzy logic, artificial neural networks, genetic algorithms, and their combinations. Applications of these methods in HFE have been highlighted in one hundred and four articles selected from 406 papers. The results of this study help address the challenges of complexity, vagueness, and imprecision in human factors and ergonomics research through the application of soft computing methodologies.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

  • 文章类型: Journal Article
    人工智能在日常生活中的应用正变得无处不在和不可避免。在那广阔的田野里,一个特殊的地方属于多参数优化的仿生/生物启发算法,它们在许多领域都有用途。新的方法和进展正在加速发布。正因为如此,尽管该领域有很多调查和评论,他们很快就过时了。因此,重要的是要跟上当前的发展。在这次审查中,我们首先考虑生物启发的多参数优化方法的可能分类,因为专门针对该领域的论文相对较少,并且经常相互矛盾。我们继续详细描述一些更突出的方法,以及最近出版的。最后,我们考虑在两个相关的广泛领域使用仿生算法,即微电子学(包括电路设计优化)和纳米光子学(包括光子晶体等结构的逆设计,纳米等离子体结构和超材料)。我们试图保持这个广泛的调查自成一体,这样它不仅可以用于相关领域的学者,还有所有对这个有吸引力的地区的最新发展感兴趣的人。
    The application of artificial intelligence in everyday life is becoming all-pervasive and unavoidable. Within that vast field, a special place belongs to biomimetic/bio-inspired algorithms for multiparameter optimization, which find their use in a large number of areas. Novel methods and advances are being published at an accelerated pace. Because of that, in spite of the fact that there are a lot of surveys and reviews in the field, they quickly become dated. Thus, it is of importance to keep pace with the current developments. In this review, we first consider a possible classification of bio-inspired multiparameter optimization methods because papers dedicated to that area are relatively scarce and often contradictory. We proceed by describing in some detail some more prominent approaches, as well as those most recently published. Finally, we consider the use of biomimetic algorithms in two related wide fields, namely microelectronics (including circuit design optimization) and nanophotonics (including inverse design of structures such as photonic crystals, nanoplasmonic configurations and metamaterials). We attempted to keep this broad survey self-contained so it can be of use not only to scholars in the related fields, but also to all those interested in the latest developments in this attractive area.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

       PDF(Pubmed)

  • 文章类型: Journal Article
    NeuroEvolution(NE)是指使用进化计算(EC)算法优化人工神经网络(ANN)的一系列方法。增强拓扑的神经进化(NEAT)被认为是该领域最有影响力的算法之一。它发明18年后,已经提出了过多的方法,在不同方面扩展了NEAT。在这篇文章中,我们提出了一个系统的文献综述(SLR)来列出和分类NEAT成功的方法。我们的审查协议通过合并两个主要电子数据库的发现来识别232篇论文。应用确定论文相关性并评估其质量的标准,产生了本文介绍的61种方法。我们的评论文章提出了一种将NEAT的继任者分为三个集群的新分类方案。基于NEAT的方法根据1)是否考虑特定于搜索空间或健身环境的问题进行分类,2)它们是否结合了来自NE和另一个领域的原则,或3)进化人工神经网络的特定特性。聚类支持研究人员1)了解使他们能够实现的最新技术,2)探索新的研究方向或3)将其提出的方法与最新技术进行基准测试,如果他们有兴趣比较,和4)将自己定位在域中或5)选择最适合其问题的方法。
    NeuroEvolution (NE) refers to a family of methods for optimizing Artificial Neural Networks (ANNs) using Evolutionary Computation (EC) algorithms. NeuroEvolution of Augmenting Topologies (NEAT) is considered one of the most influential algorithms in the field. Eighteen years after its invention, a plethora of methods have been proposed that extend NEAT in different aspects. In this article, we present a systematic literature review (SLR) to list and categorize the methods succeeding NEAT. Our review protocol identified 232 papers by merging the findings of two major electronic databases. Applying criteria that determine the paper\'s relevance and assess its quality, resulted in 61 methods that are presented in this article. Our review article proposes a new categorization scheme of NEAT\'s successors into three clusters. NEAT-based methods are categorized based on 1) whether they consider issues specific to the search space or the fitness landscape, 2) whether they combine principles from NE and another domain, or 3) the particular properties of the evolved ANNs. The clustering supports researchers 1) understanding the current state of the art that will enable them, 2) exploring new research directions or 3) benchmarking their proposed method to the state of the art, if they are interested in comparing, and 4) positioning themselves in the domain or 5) selecting a method that is most appropriate for their problem.
    导出

    更多引用

    收藏

    翻译标题摘要

    我要上传

    求助全文

公众号