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Accelerating fuzzy cellular automata for modeling crowd dynamics

机译:加速模糊蜂窝自动机建模人群动态

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Pedestrian and crowd dynamics are physical phenomena that are fundamentally characterized by nonlinear complexity. In the same time, the need of modern way of living seeks for such dynamics real time modeling also enabling computationally efficient and affordable solutions for sake of safety and easiness of people located in gathering places all over the world. Towards this direction, Cellular Automata (CAs), a parallel computational model combining macro- and microscopic inherent attributes that could severely help with adequate modeling of the aforementioned dynamics, are one of the best compromises among different competing computational techniques. In order to overcome CM deterministic nature, in this paper the incorporation of fuzzy logic principles in a CA model that simulates crowd dynamics and crowd evacuation processes, with the usage of a Mamdani type fuzzy inference system, is proposed. More specifically, basic concepts of fuzzy logic such as linguistic variables and if-then rules are attributed to the proposed CA model to preserve fuzzy consequents and fuzzy antecedents thus resulting in a realistic and rather efficient modeling approach. Furthermore, in the paper the implementation of fuzziness in CA dynamics is tackled with the acceleration of the proposed model through fully parallel execution on Graphics Processing Units (GPU). The GPU implementation of the fuzzy CA model is analyzed in full detail and stressed against CPU corresponding implementation resulting to an important speed up of fuzzy CA execution. This is further explored through the GPU applications of the fuzzy CA model in a real building, namely the museum 'CONSTANTIN XENAKIS', in Serres. Greece. (C) 2018 Elsevier B.V. All rights reserved.
机译:行人和人群动态是物理现象,其基本上是非线性复杂性的特征。同时,需要现代生活方式寻求这种动态的实时建模,也能够实现有关位于世界各地的收集地点的人们的安全和容易的计算效率和实惠的解决方案。朝向这种方向,蜂窝自动机(CAS),组合宏观和微观固有属性的并行计算模型可以严重帮助上述动态的充分建模,是不同竞争计算技术的最佳折衷之一。为了克服CM确定性性质,在本文中,提出了模拟CA模型中的模糊逻辑原理,以模拟人群动态和人群疏散流程,利用Mamdani型模糊推理系统。更具体地说,模糊逻辑的基本概念,如语言变量和IF-DON规则归因于所提出的CA模型,以保护模糊后果和模糊前一种,从而导致了一种现实和相当有效的建模方法。此外,在本文中,通过在图形处理单元(GPU)上的完全并行执行,通过完全并行执行来加速CA动态的模糊性的实现。以完整的细节分析模糊CA模型的GPU实现,并对CPU进行压力,这导致模糊CA执行的重要加速。通过在真实建筑中的模糊CA模型的GPU应用进一步探索这一点,即博物馆在Serres中的博物馆“康宁Xenakis”。希腊。 (c)2018年elestvier b.v.保留所有权利。

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