Studying Different Variants of PBIL to Solve a Real-World FAP Problem in GSM Networks

J. M. Chaves-González, M. A. Vega-Rodríguez, D. Domínguez-González, J. Gómez-Pulido, J. M. Sánchez-Pérez
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引用次数: 2

Abstract

In this paper we study different versions of the PBIL (population-based incremental learning) algorithm to evaluate and try to improve the results obtained by the standard version of the algorithm when it is used to solve a realistic-sized frequency assignment problem (FAP). PBIL is based on genetic algorithms and competitive learning, being a population evolution model based on probabilistic models. On the other hand, it is important to point out that frequency planning is a very important task for current GSM operators. The FAP problem consists in trying to minimize the number of interferences (or conflicts in the communications) caused when a limited number of frequencies has to be assigned to a quite high number of transceivers (and there are much more transceivers than frequencies). In the work presented here we take as initial point the results obtained with the standard version of PBIL and we perform on the one hand a complete study with six variations of the algorithm (PBIL-negativeLR, PBIL-different, etc.) and on the other hand a hybridization between PBIL and a local search method. Our final goal is to discover which approach can compute the most accurate frequency plans for real-world instances.
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研究PBIL的不同变体以解决GSM网络中的实际FAP问题
在本文中,我们研究了不同版本的PBIL(基于群体的增量学习)算法,以评估并尝试改进标准版本算法在解决实际规模的频率分配问题(FAP)时获得的结果。PBIL是基于遗传算法和竞争学习的种群进化模型,是一种基于概率模型的种群进化模型。另一方面,必须指出频率规划是当前GSM运营商的一项非常重要的任务。FAP问题在于,当必须将有限数量的频率分配给相当多的收发器(收发器的数量远远超过频率)时,试图将干扰(或通信中的冲突)的数量最小化。在这里的工作中,我们以标准版本的PBIL获得的结果为出发点,我们一方面对该算法的六种变体(PBIL-negative velr, PBIL-different等)进行了完整的研究,另一方面将PBIL与局部搜索方法进行了杂交。我们的最终目标是发现哪种方法可以为现实世界的实例计算出最准确的频率计划。
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