Stabilizing the Operation of Industrial Processes using Data Driven Techniques

M. Choudhury, Ian Alleyne
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引用次数: 2

Abstract

Poor performance of a control loop is usually caused by poor controller tuning, presence of disturbances, control loop interactions and/or loop nonlinearities. The presence of nonlinearities in control loops is one of the main reasons for poor performance of a linear controller designed based on linear control theory. In a control loop, nonlinearities may appear either in the control instruments such as valves and positioners or in the process. Among the control valve nonlinearities stiction, deadband, deadzone, hysteresis and saturation are most common. A nonlinear system often produces a non-Gaussian and nonlinear time series. The test of Gaussianity or nonlinearity of a control loop variable serves as a useful diagnostic aid towards diagnosing the causes of poor performance of a control loop. Ttwo indices, the Non-Gaussianity Index ( NGI ) and the Non-Linearity Index ( NLI ), developed in [1] are used to detect the possible presence of nonlinearity in the loop. These indices together with specific patterns in the process output ( pv ) vs. the controller output ( op ) plot can be conveniently used to diagnose the causes of poor control loop performance thus ensuring smooth operation of the plant. The method has been successfully applied to many industrial data sets. One of the interesting case studies is presented in this paper. The results of the analysis were confirmed and the results after the troubleshooting was performed are also presented. Keywords: Nonlinearities, stiction, performance monitoring, nonGaussianity, process industries, control valves DOI = 10.3329/cerb.v13i1.2995 Chemical Engineering Research Bulletin 13 (2009) 29-38
使用数据驱动技术稳定工业过程的运行
控制回路的不良性能通常是由控制器调谐不良、干扰、控制回路相互作用和/或回路非线性引起的。控制回路中非线性的存在是基于线性控制理论设计的线性控制器性能差的主要原因之一。在控制回路中,非线性可能出现在诸如阀门和定位器之类的控制仪器中,也可能出现在过程中。在控制阀的非线性中,最常见的是伸缩、死带、死区、滞回和饱和。非线性系统通常产生非高斯和非线性时间序列。控制回路变量的高斯性或非线性检验是诊断控制回路性能不佳原因的有用诊断辅助手段。非高斯性指数(NGI)和非线性指数(NLI)是在[1]中提出的两个指标,用于检测环路中可能存在的非线性。这些指标以及过程输出(pv)与控制器输出(op)图中的特定模式可以方便地用于诊断控制回路性能差的原因,从而确保工厂的顺利运行。该方法已成功地应用于许多工业数据集。提出了一个有趣的案例研究。对分析结果进行了验证,并给出了故障排除后的结果。关键词:非线性、粘滞作用,性能监控,nonGaussianity,流程工业、控制阀门DOI = 10.3329 / cerb.v13i1.2995化学工程研究公报13 (2009)
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