Chen Yi-Yuan, Young Kuu-Young
Department of Electrical and Control Engineering, National Chiao-Tung University, Hsinchu, Taiwan.
Int J Neural Syst. 2007 Jun;17(3):171-81. doi: 10.1142/S0129065707001044.
The self-organizing map (SOM), as a kind of unsupervised neural network, has been used for both static data management and dynamic data analysis. To further exploit its search abilities, in this paper we propose an SOM-based algorithm (SOMS) for optimization problems involving both static and dynamic functions. Furthermore, a new SOM weight updating rule is proposed to enhance the learning efficiency; this may dynamically adjust the neighborhood function for the SOM in learning system parameters. As a demonstration, the proposed SOMS is applied to function optimization and also dynamic trajectory prediction, and its performance compared with that of the genetic algorithm (GA) due to the similar ways both methods conduct searches.
自组织映射(SOM)作为一种无监督神经网络,已被用于静态数据管理和动态数据分析。为了进一步利用其搜索能力,本文针对涉及静态和动态函数的优化问题提出了一种基于SOM的算法(SOMS)。此外,还提出了一种新的SOM权重更新规则以提高学习效率;这可以在学习系统参数时动态调整SOM的邻域函数。作为示例,将所提出的SOMS应用于函数优化以及动态轨迹预测,并将其性能与遗传算法(GA)的性能进行比较,因为这两种方法进行搜索的方式相似。