Research on Fault Warning for Small and Medium Sized Equipment Based on AdaBoost SVM

Quanbin Wang
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Abstract

With the establishment of modern enterprise production systems, enterprises attach more importance to the management of machinery and equipment. Using certain technologies to predict possible faults in machine production and repairing machinery and equipment in advance based on predictions is an important guarantee for the continuity of enterprise production and operation. The most common production equipment in oil and gas field exploitation is small and medium-sized rotating equipment. The normal operation of the equipment is conducive to ensuring the smooth implementation of oil and gas field production and is an important equipment foundation for ensuring stable production. With the establishment of the management system for production machinery and equipment in oil and gas fields, oil and gas field enterprises will monitor the data of small and medium-sized rotating equipment, collect operational data of small and medium-sized rotating equipment, and store it, providing a foundation for establishing machine learning methods to early warning of faults in small and medium-sized rotating equipment.
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基于 AdaBoost SVM 的中小型设备故障预警研究
随着现代企业生产制度的建立,企业更加重视机械设备的管理。利用一定的技术预测机械生产中可能出现的故障,并根据预测结果提前维修机械设备,是企业生产经营连续性的重要保障。油气田开采中最常见的生产设备是中小型旋转设备。设备的正常运行有利于保证油气田生产的顺利进行,是保证稳定生产的重要设备基础。随着油气田生产机械设备管理系统的建立,油气田企业将对中小型旋转设备进行数据监控,采集中小型旋转设备的运行数据并进行存储,为建立中小型旋转设备故障预警的机器学习方法提供基础。
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