Pareto frontier optimization in soccer simulation using normalized normal constraint

Darius Andana Haris
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Abstract

Attacking is one of the popular tactics usually chosen by a soccer coach. With attacking effectively, chances to score goals can be enhanced as many as possible. Better attack needs good ball passing, and that is the purpose and focus of this research. Previous robotic soccer simulations employed simple weighting method with simple criteria and does not produce optimal ball passing. To overcome this problem this research proposes a set of criteria representing a more realistic situation. This set of criteria is formulated in and appropriate objective function which is optimized using pareto frontier and Normalized Normal Constraint. From the result of this experiment, it can be seen that this proposed method has a realibility of 20% higher that that of the previous method. And it has a better passing success rate with a 75% ball possession. Rather than that of the previous method with a 25% ball possession.
基于归一化正态约束的足球模拟Pareto边界优化
进攻是足球教练常用的战术之一。通过有效的进攻,可以尽可能多地增加进球的机会。更好的进攻需要好的传球,这是本研究的目的和重点。以往的机器人足球仿真采用简单的加权方法,标准简单,不能得到最优的传球结果。为了克服这一问题,本研究提出了一套代表更现实情况的标准。该准则用一个合适的目标函数表示,并利用pareto边界和归一化正态约束进行优化。从实验结果可以看出,该方法的可靠性比之前的方法提高了20%。当控球率为75%时,它的传球成功率更高。而不是以前25%控球的方法。
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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