Improving Real-Time Expert Control Systems Through Deep Data Mining Of Plant Data And Global Plant-Wide Energy Monitoring And Analysis

Society for Mining, Metallurgy & Exploration
L. B. Hales
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
4
File Size:
327 KB
Publication Date:
Jan 1, 2012

Abstract

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.
Citation

APA: L. B. Hales  (2012)  Improving Real-Time Expert Control Systems Through Deep Data Mining Of Plant Data And Global Plant-Wide Energy Monitoring And Analysis

MLA: L. B. Hales Improving Real-Time Expert Control Systems Through Deep Data Mining Of Plant Data And Global Plant-Wide Energy Monitoring And Analysis. Society for Mining, Metallurgy & Exploration, 2012.

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