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Knowledge discovery from Industrial databases

机译:从工业数据库中发现知识

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摘要

The proliferation of large masses of data has created many new opportunities for those working in science, engineering and business. The field of data mining (DM) and knowledge discovery from databases (KDD) has emerged as a new discipline in engineering and computer science. In the modern sense of DM and KDD the focus tends to be on extracting information characterized as "knowledge" from data that can be very complex and in large quantities. Industrial engineering, with the diverse areas it comprises, presents unique opportunities for the application of DM and KDD, and for the development of new concepts and techniques in this field. Many industrial processes are now automated and computerized in order to ensure the quality of production and to minimize production costs. A computerized process records large masses of data during its functioning. This real-time data which is recorded to ensure the ability to trace production steps can also be used to optimize the process itself. A French truck manufacturer decided to exploit the data sets of measures recorded during the test of diesel engines manufactured on their production lines. The goal was to discover "knowledge" in the data of the test engine process in order to significantly reduce (by about 25%) the processing time. This paper presents the study of knowledge discovery utilizing the KDD method. All the steps of the method have been used and two additional steps have been needed. The study allowed us to develop two systems: the discovery application is implemented giving a real-time prediction model (with a real reduction of 28%) and the "discovery support environment" now allows those who are not experts in statistics to extract their own knowledge for other processes.
机译:大量数据的扩散为从事科学,工程和商业工作的人们创造了许多新的机会。数据挖掘(DM)和数据库知识发现(KDD)领域已成为工程和计算机科学领域的一门新兴学科。在DM和KDD的现代意义上,重点趋向于从非常复杂和大量的数据中提取特征为“知识”的信息。工业工程包括其不同领域,为DM和KDD的应用以及该领域新概念和技术的发展提供了独特的机会。现在,许多工业过程已实现自动化和计算机化,以确保生产质量并最大程度地降低生产成本。一个计算机化的过程在其运行期间会记录大量数据。为确保追踪生产步骤的能力而记录的实时数据也可用于优化流程本身。一家法国卡车制造商决定利用在其生产线上制造的柴油发动机测试期间记录的测量数据集。目的是发现测试引擎过程数据中的“知识”,以便显着减少(约25%)处理时间。本文介绍了利用KDD方法进行知识发现的研究。该方法的所有步骤均已使用,并且还需要两个附加步骤。该研究使我们能够开发两个系统:实施发现应用程序以提供实时预测模型(实际减少了28%),并且“发现支持环境”现在允许那些不是统计学专家的人提取自己的信息其他过程的知识。

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