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Modeling and control of complex industrial processes using artificial intelligence techniques

机译:用人工智能技术建模与控制复杂工业过程

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Complex industrial processes possess several critical features, such as uncertainty, nonlinearity, and large delay, which present significant challenges to the construction of real-time control models. This paper proposes a particle filter-based radial basis function (RBF) neural network to model and control complex industrial processes. The proposed method employs the particle filter technique for estimating the system's prior information to improve the RBF neural network's learning speed and expression capability, hence making real-time control possible with satisfactory static and dynamic performances. The proposed modeling method is applied to a real-life synthetic ammonia decarbonization process for performance evaluation. The simulation and experimental results illustrate that the proposed neural network system steadily refines the parameters as this real-life process proceeds and achieves a higher level of modeling accuracy than an existing method using a fuzzy neural network. The proposed method provides an effective approach to model and control similar complex industrial processes.
机译:复杂的工业过程具有几种关键特征,例如不确定性,非线性和大延迟,这对实时控制模型的构建具有显着的挑战。本文提出了一种基于粒子滤波器的径向基函数(RBF)神经网络,用于模拟和控制复杂的工业过程。所提出的方法采用粒子滤波技术来估计系统的先前信息,以提高RBF神经网络的学习速度和表达能力,因此可以采用令人满意的静态和动态性能来实时控制。所提出的建模方法应用于实际合成氨脱碳过程,用于性能评估。模拟和实验结果表明,当使用模糊神经网络的现有方法,所提出的神经网络系统稳定地改进参数并实现比现有方法更高的建模精度。该方法提供了一种有效的模型和控制类似复杂工业过程的方法。

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