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Self Learning Real Time Expert System

机译:自学实时专家系统

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摘要

In a Power plant with a Distributed Control System ( DCS ), process parameters are continuously stored in databases at discrete intervals. The data contained in these databases may not appear to contain valuable relational information but practically such a relation exists. The large number of process parameter values are changing with time in a Power Plant. These parameters are part of rules framed by domain experts for the expert system. With the changes in parameters there is a quite high possibility to form new rules using the dynamics of the process itself. We present an efficient algorithm that generates all significant rules based on the real data. The association based algorithms were compared and the best suited algorithm for this process application was selected. The application for the Learning system is studied in a Power Plant domain. The SCADA interface was developed to acquire online plant data
机译:在具有分布式控制系统(DCS)的电厂中,过程参数以离散的间隔连续存储在数据库中。这些数据库中包含的数据可能看起来不包含有价值的关系信息,但实际上存在这种关系。在电厂中,大量的过程参数值会随着时间而变化。这些参数是领域专家为专家系统制定的规则的一部分。随着参数的变化,很有可能使用过程本身的动力学来形成新规则。我们提出了一种有效的算法,该算法可基于真实数据生成所有重要规则。比较了基于关联的算法,并选择了最适合该流程应用程序的算法。学习系统的应用程序在电厂领域中进行了研究。开发了SCADA界面来获取在线工厂数据

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