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Soft Sensor for Carbon Content of Spent Catalyst in a Continuous Reforming Plant Using LSSVM-GA

机译:使用LSSVM-GA的连续重整装置中废催化剂碳含量的软传感器

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Continuous catalytic reforming (CCR) is an important process in hydrocarbon processing to convert low-octane gasoline blending components to high-octane components for use in high-performance gasoline fuels or as source of aromatics. Carbon deposition rate is a critical performance factor of reforming catalyst and carbon content of spent catalyst would directly influence the subsequent catalyst regeneration; thus it is imperative to monitor the carbon content of spent catalyst in real time. In this paper a soft sensor is proposed using least squares support vector machine (LSSVM) with genetic algorithm (GA) to solve the industrial problem for online estimating the carbon content of spent catalyst in an existing CCR plant, wherein the GA is used to select the free parameters of the LSSVM model. The LSSVM with traditional grid algorithm and artificial neural network (ANN) are also applied to model two soft sensors using the same data sets for comparison. The simulation results show that GA shows outstanding performance than traditional grid algorithm for selecting free parameters of LSSVM; the proposed LSSVMGA soft sensor can achieve smallest errors and shortest computing comparing with LSSVM and ANN. Then the proposed soft sensor is applied to the existing CCR plant; the predictive values are satisfactory.
机译:连续催化重整(CCR)是烃加工中将低辛烷值汽油调合组分转化为高辛烷值组分以用于高性能汽油燃料或用作芳烃来源的重要过程。碳沉积速率是重整催化剂的关键性能因素,废催化剂的碳含量将直接影响后续催化剂的再生。因此,必须实时监控废催化剂的碳含量。本文提出了一种使用最小二乘支持向量机(LSSVM)和遗传算法(GA)的软传感器,以解决在线估算现有CCR工厂中废催化剂碳含量的工业问题,其中GA用于选择LSSVM模型的免费参数。具有传统网格算法和人工神经网络(ANN)的LSSVM也可用于使用相同数据集对两个软传感器进行建模以进行比较。仿真结果表明,与传统的网格算法相比,遗传算法在选择最小二乘支持向量机的自由参数方面表现优异。与LSSVM和ANN相比,所提出的LSSVMGA软传感器可以实现最小的误差和最短的计算。然后将拟议的软传感器应用于现有的CCR工厂;预测值令人满意。

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