先进的统计计算电容断层扫描作为监测和控制工具

K. Grudzień, A. Romanowski, D. Sankowski, R. Aykroyd, Richard A. Williams
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引用次数: 6

摘要

高级统计建模,如贝叶斯框架是一种强大的方法,并在物理现象建模方面提供了很大的灵活性。不幸的是,它通常与非常耗时和消耗资源的计算相关联。因此,过去的工程师都避免使用它。如今,计算机能力的快速发展使这些方法成为可能。这里报道的算法是基于应用于贝叶斯建模的马尔可夫链蒙特卡罗(MCMC)方法。重要的因素是高度迭代的方法可以直接估计所需的参数,从而省略了图像重建的阶段。这一特性具有使基于过程层析成像的自动工业过程控制系统实现可行的重要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced statistical computing for capacitance tomography as a monitoring and control tool
Advanced statistical modelling such as Bayesian framework is a powerful methodology and gives great flexibility in terms of physical phenomena modelling. Unfortunately it is usually associated with very time and resource consuming computing. Therefore it was avoided by engineers in the past. Nowadays, rapid development of computer capabilities enables use of such methods. Algorithms reported here are based on Markov chain Monte Carlo (MCMC) methods applied to Bayesian modelling. The important factor is highly iterative approach enabling direct desired parameters estimation, hence omitting the phase of image reconstruction. This property has an important feature of making feasible implementation of automatic industrial process control systems based on process tomography.
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