基于油液检测的船舶机械故障诊断实例
Mechanical Fault Diagnosis Examples of the Ship Based on the Oil Detection
DOI: 10.12677/OJTT.2016.53008, PDF, HTML, XML, 下载: 2,422  浏览: 5,931 
作者: 陈 峰:中石化海洋石油工程有限公司上海船舶分公司,上海
关键词: 油液分析故障诊断常规理化分析光谱分析Oil Analysis Fault Diagnosis Routine Physical and Chemical Analysis Spectral Analysis
摘要: 船用润滑油的使用管理直接影响机械设备的可靠运行,因此对船用润滑油进行定期检验是船舶机务管理的重要组成部分。通过对船舶机械的油液分析,了解船舶机械在用油的品质及机械设备的运转状况,为船舶机械故障诊断提供实例分析并提出相应的管理建议。
Abstract: The management of marine lube use directly affects the reliable operation of the machinery and equipment, so regular inspection of marine lube is an important part of the ship’s machinery management. Through oil analysis of ship machinery, and understanding the quality of the oil and the operation condition of mechanical equipment of ship machinery, this paper provides instance analysis on fault diagnosis of ship machinery and puts forward corresponding management advice.
文章引用:陈峰. 基于油液检测的船舶机械故障诊断实例[J]. 交通技术, 2016, 5(3): 53-58. http://dx.doi.org/10.12677/OJTT.2016.53008

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