论文标题

生物启发的优化:优化的元启发式算法

Bio-inspired Optimization: metaheuristic algorithms for optimization

论文作者

Game, Pravin S, Vaze, Vinod, M, Emmanuel

论文摘要

在今天和时间解决现实世界中的复杂问题已成为根本上至关重要的至关重要的任务。其中许多是组合问题,其中寻求最佳解决方案而不是精确的解决方案。发现传统优化方法对于小规模问题有效。但是,对于现实世界中的大规模问题,传统方法要么不会扩大或无法获得最佳解决方案,要么在运行漫长的时间后最终提供解决方案。即使是用来解决这些问题的早期基于人工智能的技术也无法给出可接受的结果。但是,过去二十年来,基于生物体中生物体的特征和行为,在AI中看到了许多新方法,这些方法被归类为生物启发或自然启发的优化算法。这些方法也被称为元位 - 武器优化方法,已在理论上被证明,并使用仿真以及用于创建许多有用的应用程序实现。由于易于理解,灵活,易于适应手头的问题,并且最重要的是,它们从本地Optima陷阱中脱颖而出,因此已广泛使用它们来解决许多工业和工程复杂的问题。这种本地的Optima避免属性有助于找到全球最佳解决方案。本文旨在了解自然如何启发许多优化算法,基本分类,主要是生物启发的优化算法,该算法最近发明了其应用。

In today's day and time solving real-world complex problems has become fundamentally vital and critical task. Many of these are combinatorial problems, where optimal solutions are sought rather than exact solutions. Traditional optimization methods are found to be effective for small scale problems. However, for real-world large scale problems, traditional methods either do not scale up or fail to obtain optimal solutions or they end-up giving solutions after a long running time. Even earlier artificial intelligence based techniques used to solve these problems could not give acceptable results. However, last two decades have seen many new methods in AI based on the characteristics and behaviors of the living organisms in the nature which are categorized as bio-inspired or nature inspired optimization algorithms. These methods, are also termed meta-heuristic optimization methods, have been proved theoretically and implemented using simulation as well used to create many useful applications. They have been used extensively to solve many industrial and engineering complex problems due to being easy to understand, flexible, simple to adapt to the problem at hand and most importantly their ability to come out of local optima traps. This local optima avoidance property helps in finding global optimal solutions. This paper is aimed at understanding how nature has inspired many optimization algorithms, basic categorization of them, major bio-inspired optimization algorithms invented in recent time with their applications.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源