Development of the diagnostic matrix as components of the intellectual production system
DOI: 10.31673/2412-4338.2019.036370
Abstract
It has become clear to manufacturers of technological equipment, including packaging, that more functional, flexible and productive machines connected to the information network of the company are required in order to increase production efficiency. For this purpose, in recent years, more and more companies in the area of packaging equipment manufacturers, suppliers of parts and aggregates adjust the range of their products to new requirements. In recent decades, the main trend in the development of industrial production has been the gradual transition from integrated scientific and production complexes, based on the wide application of flexible automation means, to the use of intelligent manufacturing systems. Automated manufacturing systems expansion involves the production of industrial equipment control and guidance through methods of analyzing large data ranges, the principles of artificial intelligence for the automatic optimization of production process elements, and also for the self-diagnosis of manufacturing systems.
Digital technologies help create special databases for their state description of performance and for data analysis to determine sources that lead to efficiency losses, and are often used to provide the effectiveness of such systems. The main attention in this article is paid on the developing a solution for the intellectualization of packaging technology systems by analyzing the diagnostic matrix of the symptoms of the object. Using the diagnostic matrix considered in the article, the problem of localization of one of the ten possible malfunctions of an object using four diagnostic parameters is solved. This approach can be used in proactive maintenance of equipment.
Keywords: intellectual production systems, digital technologies, diagnostic matrix, intelligent control systems.
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