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首页> 外文期刊>Simulation modelling practice and theory: International journal of the Federation of European Simulation Societies >An accurate interest matching algorithm based on prediction of the space-time intersection of regions for the distributed virtual environment
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An accurate interest matching algorithm based on prediction of the space-time intersection of regions for the distributed virtual environment

机译:基于分布式虚拟环境区域时空交点预测的精确兴趣匹配算法

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摘要

Interest matching is an important data-filtering mechanism for a large-scale distributed virtual environment. Many of the existing algorithms perform interest matching at discrete timesteps. Thus, they may suffer the missing-event problem: failing to report the events between two consecutive timesteps. Some algorithms solve this problem, by setting short timesteps, but they have a low computing efficiency. Additionally, these algorithms cannot capture all events, and some spurious events may also be reported. In this paper, we present an accurate interest matching algorithm called the predictive interest matching algorithm, which is able to capture the missing events between discrete timesteps. The PIM algorithm exploits the polynomial functions to model the movements of virtual entities, and predict the time intervals of region overlaps associated with the entities accurately. Based on the prediction of the space-time intersection of regions, our algorithm can capture all missing events and does not report the spurious events at the same time. To improve the runtime performance, a technique called region pruning is proposed and used in our algorithm. In experiments, we compare the new algorithm with the frequent interest matching algorithm and the space-time interest matching algorithm on the HLA/RTI distributed infrastructure. The results prove that although an additional matching effort is required in the new algorithm, it outperforms the baselines in terms of event-capturing ability, redundant matching avoidance, runtime efficiency and scalability. (C) 2016 Elsevier B.V. All rights reserved.
机译:兴趣匹配是大型分布式虚拟环境的重要数据过滤机制。许多现有算法在离散时间步执行兴趣匹配。因此,他们可能会遇到丢失事件的问题:无法在两个连续的时间步之间报告事件。一些算法通过设置较短的时间步来解决此问题,但是它们的计算效率很低。此外,这些算法无法捕获所有事件,并且可能还会报告一些虚假事件。在本文中,我们提出了一种精确的兴趣匹配算法,称为预测兴趣匹配算法,该算法能够捕获离散时间步之间的缺失事件。 PIM算法利用多项式函数对虚拟实体的运动进行建模,并准确预测与实体相关联的区域重叠的时间间隔。基于对区域的时空交叉点的预测,我们的算法可以捕获所有丢失的事件,并且不会同时报告虚假事件。为了提高运行时性能,提出了一种称为区域修剪的技术并将其用于我们的算法中。在实验中,我们将新算法与频繁兴趣匹配算法和时空兴趣匹配算法在HLA / RTI分布式基础结构上进行了比较。结果证明,尽管在新算法中需要额外的匹配工作,但是在事件捕获能力,避免冗余匹配,运行时效率和可伸缩性方面,它优于基线。 (C)2016 Elsevier B.V.保留所有权利。

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