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基于离散PSO的软测量辅助变量选择算法
引用本文:李丽娟,宋坤,沈鑫,赵英凯.基于离散PSO的软测量辅助变量选择算法[J].系统仿真学报,2012,24(10):2121-2125.
作者姓名:李丽娟  宋坤  沈鑫  赵英凯
作者单位:南京工业大学自动化与电气工程学院,南京,210009
基金项目:国家自然科学基金(61203072);江苏省高校自然科学基金(09KJB510003)
摘    要:工业对象的复杂化带来了可测变量的增多,这些变量集合中大量冗余的信息会降低软测量建模的精度。针对这个问题,提出了基于离散PSO的软测量辅助变量选择算法。算法将传统PSO连续的优化过程通过对粒子位置的隶属度计算,将其离散成0或1。0、1分别表示某变量未被选中和被选中,每个粒子就代表一种变量选取情况。将PLS回归用于适应度函数的计算,有利于克服多元回归中多重共线问题。最后,将该算法用在了丙烯精馏塔塔顶丙烯浓度的软测量实验中,实验结果表明该方法有效,并提高了模型的预测精度。

关 键 词:离散粒子群优化算法  辅助变量选择  软测量  部分最小二乘法

Selection of Secondary Variables Based on Discrete PSO in Soft-sensing
LI Li-juan,SONG Kun,SHEN Xin,ZHAO Ying-kai.Selection of Secondary Variables Based on Discrete PSO in Soft-sensing[J].Journal of System Simulation,2012,24(10):2121-2125.
Authors:LI Li-juan  SONG Kun  SHEN Xin  ZHAO Ying-kai
Institution:(School of Automation and Electrical Engineering,Nanjing University of Technology,Nanjing 210009,China)
Abstract:The complication of the industrial objects leads to a large number of measurable variables.The redundant information in the variables set may reduce the precision of soft-sensing model.To solve this problem,an algorithm based on discrete PSO was proposed to select secondary variables.Traditional optimization process of continuous PSO was divided into 0 or 1 via the membership degree calculation of the particle.The value of 0 or 1 denotes whether a variable was selected.Each particle position would represent a kind of variables selection.The PLS used in the fitness function could overcome the problem of collinearity in multivariable regression.Finally,the proposed algorithm was applied in soft-sensing modeling to predict the propylene concentration.The experiment results indicate that the proposed algorithm can improve the precision of prediction.
Keywords:discrete PSO  selection of secondary variables  soft-sensing  PLS
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