首页> 外文会议>Society for Mining, Metallurgy Exploration Annual Meeting and Exhibit >IMPROVING REAL-TIME EXPERT CONTROL SYSTEMS THROUGH DEEP DATA MINING OF PLANT DATA AND GLOBALPLANT-WIDE ENERGY MONITORING AND ANALYSIS
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IMPROVING REAL-TIME EXPERT CONTROL SYSTEMS THROUGH DEEP DATA MINING OF PLANT DATA AND GLOBALPLANT-WIDE ENERGY MONITORING AND ANALYSIS

机译:通过植物数据的深层数据挖掘改善实时专家控制系统,全球化的全球化能量监测和分析

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Expert control of grinding and flotation plants has been successfully used in the minerals industry since the 1970's. The earliest of these systems were written in a hard-coded fashion in FORTRAN, BASIC or Pascal. Second generation systems were built using the first experimental expert system shells that were being developed in the artificial intelligence community. Later systems were deployed in expert systems designed for real-time processing plants that also include the ability to model the process with neural network models and optimize setpoint selection through the use of genetic algorithms. [1,2]In spite of the fact that significant performance increases have been achieved using these systems they are not perfect and can be improved. They suffer from the static nature of their rules and to a degree the process models. There is an opportunity to further increase system performance by systematically taking advantage of the tremendous amount of data produced by the expert system to improve the design, the heuristic rules, the model topologies and the use of the models.Data mining refers to extracting or mining knowledge from large amounts of data where the objective is to automatically analyze, classify and summarize the data to automatically discover and characterize trends in it and to automatically flag anomalies. [3]Clearly, modern process control systems are capable of collecting vast amounts of data. Without a doubt, these data contain important information on the operation of our plants and their ultimate optimization. Coupling the information mined from these data with Expert Control Systems should produce more effective control and greater knowledge of the grinding process and the flotation process.Now, with the advent of effective monitoring of entire minerals plant electric consumption it is possible to not only optimize plant production in real-time it is possible to analyze total plant electrical consumption and incorporate it into the plant control logic thereby improving the overall plant economic performance. This is particularly important with the ever more complex power contracts that plants operate under.
机译:研磨和浮选厂的专家控制已经在矿产行业自上世纪70年代成功地使用。最早的这些系统都是写在FORTRAN,BASIC或Pascal硬编码的方式。第二代系统中使用是在人工智能界正在开发的第一个实验专家系统外壳建成。后来系统分别部署在专为实时处理植物还包括通过使用遗传算法与神经网络模型和优化设定值选择过程模型的能力,专家系统。 [1,2]尽管如此显著的性能提升已经使用这些系统,他们是不完美的实现,可以改善的事实。他们从自己的规则的静态性质,并在一定程度上流程模型受到影响。有系统地采取由专家系统产生的数据量巨大的优势,提高设计,启发式规则,模型拓扑结构和使用models.Data挖掘的契机,进一步提高系统性能指的是提取或采矿从大量的数据的知识,其中的目标是自动分析,分类和汇总数据自动发现,并在其中,并自动标记异常特征分析趋势。 [3]显然,现代过程控制系统能够收集大量的数据的。毫无疑问,这些数据包含在我们的工厂和他们的最终优化操作的重要信息。耦合从这些数据与专家控制系统开采的信息应该产生更有效的控制和研磨工艺的更多的知识和浮选process.Now,具有的有效的监测整个矿物质植物电力消耗的出现有可能不仅优化工厂生产实时它可以分析整个工厂电力消耗,并将其整合进厂控制逻辑,从而提高了整个工厂的经济表现。这与植物下运行日益复杂的电力合同尤为重要。

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