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Application of the Artificial Fish School Algorithm and Particle Filter Algorithm in the Industrial Process Control Particle Filtering Algorithm for Industrial Process Control

机译:人工鱼类算法和粒子滤波算法在工业过程控制粒子滤波算法中的应用

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The Industrial Internet of Things (IIoT) is of strategic importance in the new era of industrial big data, creating a brand-new industrial ecosystem. Considering the unknown parameters in the IIoT-based industrial process control systems, this paper combines the artificial fish swarm algorithm (AFSA) and the particle filtering (PF) algorithm into the AFSA-PF algorithm based on the self-organizing state space (SOSS) model. The AFSA-PF algorithm not only can estimates the system state but also can make the sampling distribution of the unknown parameter to move the true parameter distribution. Ultimately, the true values of the unknown parameters are identified. In this way, the system model can gradually approximate the actual IIoT-based industrial process control system.
机译:工业互联网(IIOT)在工业大数据新时代,创造了一个全新的工业生态系统,这是一个战略意义。考虑到基于IIOT的工业过程控制系统中的未知参数,本文将人工鱼类群(AFSA)和粒子滤波(PF)算法基于自组织状态空间(SOSS)结合到AFSA-PF算法中模型。 AFSA-PF算法不仅可以估计系统状态,还可以使未知参数的采样分布移动True参数分布。最终,识别未知参数的真实值。以这种方式,系统模型可以逐渐近似于基于IIOT的工业过程控制系统。

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