旋转机械预见性维修振动监测技术综述

Marcelo Romanssini, P. D. de Aguirre, Lucas Compassi-Severo, A. Girardi
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引用次数: 2

摘要

现代工业中的机器故障导致生产损失和竞争力下降。维护成本占最终产品制造成本的15%至60%,在重工业中,这些成本可能高达总生产成本的50%。预测性维修是工业生产中避免意外停机的有效技术。振动测量是旋转机械部件故障定位和预测的主要非侵入性方法。本文综述了用于收集和分析振动数据的技术和工具,以及用于解释和诊断旋转机械故障的方法。讨论了该技术的主要步骤,包括数据采集、数据传输、信号处理和故障检测。通过振动分析进行预测性维修是降低成本的关键策略,在现代工业中得到了广泛应用。
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A Review on Vibration Monitoring Techniques for Predictive Maintenance of Rotating Machinery
Machine failure in modern industry leads to lost production and reduced competitiveness. Maintenance costs represent between 15% and 60% of the manufacturing cost of the final product, and in heavy industry, these costs can be as high as 50% of the total production cost. Predictive maintenance is an efficient technique to avoid unexpected maintenance stops during production in industry. Vibration measurement is the main non-invasive method for locating and predicting faults in rotating machine components. This paper reviews the techniques and tools used to collect and analyze vibration data, as well as the methods used to interpret and diagnose faults in rotating machinery. The main steps of this technique are discussed, including data acquisition, data transmission, signal processing, and fault detection. Predictive maintenance through vibration analysis is a key strategy for cost reduction and a mandatory application in modern industry.
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