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Control of the Pyrolysis Fraction Cleaning Process Using a Neural Network

机译:使用神经网络控制热解馏分清洁过程

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The process of purification of the pyrolysis fraction from acetylene compounds is one of the stages in the production of butadiene. The efficiency of purification of the pyrolysis fraction from acetylene compounds and the selectivity of the reaction are affected by the volumetric feed rate of the fraction, the mass concentration of butadiene before hydrogenation, the mass content of alpha-acetylene compounds, the content of pure acetylene, and hydrogen consumption. Artificial neural networks are selected for the development of a process control system due to the fact that they are fault tolerant. In a neural network, information is distributed throughout the network, which means if a neuron fails, the behavior of the network will be changed slightly, the behavior of neurons will change, but the network itself continues to function successfully. It is necessary to develop a neural network to control the process of purification of the pyrolysis fraction from acetylene compounds. To minimize the loss of butadiene, it is proposed to use a more efficient control system that will take into account the optimal ratio of butadiene to acetylene and the flow rate of the fraction, which significantly affect the yield of butadiene. As a result of the training, a neural network was obtained which, without reconfiguring the connection weights, generates output signals when any set of input signals from the training set is fed to the network input.
机译:由乙炔化合物纯化热解级分的过程是丁二烯生产的阶段之一。从乙炔化合物纯化热解馏分的效率和反应的选择性受馏分的体积进料速率,氢化前丁二烯的质量浓度,α-乙炔化合物的质量含量,纯乙炔的含量的影响和氢消耗。由于它们具有容错性,因此选择了人工神经网络来开发过程控制系统。在神经网络中,信息分布在整个网络中,这意味着,如果神经元发生故障,网络的行为将略有变化,神经元的行为将发生变化,但网络本身将继续成功运行。有必要开发一种神经网络来控制从乙炔化合物中纯化热解级分的过程。为了使丁二烯的损失最小化,建议使用更有效的控制系统,该系统将考虑到丁二烯与乙炔的最佳比例以及馏分的流速,这会显着影响丁二烯的收率。训练的结果是,获得了一个神经网络,该神经网络无需重新配置连接权重,即可将来自训练集的任何一组输入信号馈入网络输入时生成输出信号。

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