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基于SVM模型算法和大数据分析技术的船舶设备故障诊断
引用本文:王晓东,马旭颖. 基于SVM模型算法和大数据分析技术的船舶设备故障诊断[J]. 上海船舶运输科学研究所学报, 2021, 44(1): 49-53
作者姓名:王晓东  马旭颖
作者单位:上海船舶运输科学研究所舰船自动化系统事业部,上海200135
摘    要:为在船舶设备发生故障时能准确、及时地定位故障发生根源,保证船舶安全、经济运行,采用大数据分析方法和支持向量机(Support Vector Machine,SVM)模型算法对船舶设备进行故障诊断,提前预测可能发生的故障.以船舶柴油机滑油压力低故障为例,应用Python语言,通过SVM模型算法预测该故障的发生概率.结果表...

关 键 词:大数据分析  支持向量机模型算法  Python语言  船舶设备故障诊断

Big Data Analysis with SVM Model Algorithm for Fault Diagnosis of Marine Equipment
WANG Xiaodong,MA Xuying. Big Data Analysis with SVM Model Algorithm for Fault Diagnosis of Marine Equipment[J]. Journal of Shanghai Scientific Research Institute of Shipping, 2021, 44(1): 49-53
Authors:WANG Xiaodong  MA Xuying
Affiliation:(Warship Automatic System Division,Shanghai Ship and Shipping Research Institute,Shanghai 200135,China)
Abstract:The SVM(Support Vector Machine)model algorithm for predicting the probability of low lubrication oil pressure in a diesel engine is developed with Python.The model is trained with a training data set and verified with a test data set.Satisfactory data fitting and fault prediction are demonstrated.
Keywords:big data analysis  SVM(Support Vector Machine)model algorithm  Python  fault diagnosis of marine equipment
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