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A dynamic grouping strategy for implementation of the particle filter on a massively parallel computer

机译:在大型并行计算机上实现粒子过滤器的动态分组策略

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A practical way to implement the particle filter (PF) on a massively parallel computer is discussed. Although the PF is a useful tool for sequential Bayesian estimation, the PF tends to be computationally expensive in applying to high-dimensional problems because a enormous number of particles is required in order to appropriately approximate a PDF. One way to overcome this problem is to use large computing resources of a massively parallel computer. However, in implementing the PF on such a massively parallel computer, it is crucial to reduce the time cost for data transfer between different processing elements (PEs). In addition, in using a parallel computer with a multidimensional torus network topology, it is necessary to avoid data transfers between nodes distant from each other. The present study proposes a strategy in which the PEs in use are divided into small groups and the grouping is changed at each time step. The resampling is carried out within each group in parallel and data transfers between distant nodes never occur. Therefore, the time cost for data transfer would be greatly reduced and the efficiency is remarkably improved in comparison with the normal PF.
机译:讨论了一种在大型并行计算机上实现粒子过滤器(PF)的实用方法。尽管PF是用于顺序贝叶斯估计的有用工具,但是PF在应用到高维问题上时在计算上趋于昂贵,因为需要大量粒子才能适当地近似PDF。解决此问题的一种方法是使用大型并行计算机的大型计算资源。但是,在这样的大型并行计算机上实现PF时,至关重要的是减少不同处理元素(PE)之间数据传输的时间成本。另外,在使用具有多维圆环网络拓扑的并行计算机时,有必要避免彼此相距较远的节点之间的数据传输。本研究提出了一种策略,其中将使用中的PE分为小组,并在每个时间步长更改分组。重采样是在每个组中并行执行的,并且远距离节点之间不会发生数据传输。因此,与普通PF相比,将大大减少数据传输的时间成本,并且效率显着提高。

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