Dual-head marking performance optimisation via evolutionary solutions

J. Koh, S. Tiong, I. Aris, S. Mahmoud
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Abstract

This paper presents a new approach to optimise the performance of a multi-head marking system in terms of its marking speed. This processing method named as MMA (molecular marking optimisation algorithm) adopts the use of genetic algorithm. The advantage of the 'self evolving' nature of the genetic algorithm has been considered to discover the most relevant combination of features for each diagnosis considered. The knowledge acquired by the process is interpreted and mapped into vectors, which are kept in the database and used by the system to guide its reasoning process. The representation approach has been implemented via computer program in order to achieve optimised marking performance. Also, the performance of the new operators for evolutionary approaches to the time-based problem has been discussed in the paper
双头标记性能优化通过进化的解决方案
本文提出了一种优化多头打标系统在打标速度方面的性能的新方法。这种处理方法称为MMA(分子标记优化算法),采用遗传算法。遗传算法的“自我进化”特性的优势被认为是发现每个诊断考虑的最相关的特征组合。过程中获得的知识被解释并映射成向量,这些向量保存在数据库中,供系统使用来指导其推理过程。该表示方法已通过计算机程序实现,以达到最佳的标记性能。此外,本文还讨论了求解基于时间的问题的进化方法的新算子的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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