Streaming big data for failure prediction in mechanical engineering
Authors: Pavlov A.M. | |
Published in issue: #3(56)/2021 | |
DOI: 10.18698/2541-8009-2021-3-679 | |
Category: Economics and Production Organization |
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Keywords: big data, fault prediction, predictive equipment maintenance, mechanical engineering, productivity improvement, intelligent management |
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Published: 23.03.2021 |
In today’s industrial scenario, big data processing plays a leading role in improving business efficiency - reducing equipment maintenance costs and increasing productivity. An increasing number of machine tools are equipped with intelligent devices (such as sensors and actuators) that monitor the condition of the machine in real time and take corrective action before the quality of the workpiece is reduced or the machine is damaged. However, many manufacturing companies are still not taking advantage of big data coming from manufacturing systems. In some cases, big data analytics is an unexplored problem because it is believed to take time and resources. Moreover, the real benefits of real-time industrial data processing are usually underestimated. The article focuses on the component manufacturing process, as well as a description of the main developments and lessons learned when setting up a big data analytical platform for processing and analyzing data from sensors of numerically controlled machines.
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