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护栏板抛丸机主轴支撑轴承失效分析及状态监测 被引量:1
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作者 乔东兴 赵一楠 +2 位作者 王文斌 陈玉贤 韩孝顺 《机械制造与自动化》 2021年第6期199-201,215,共4页
针对公路三波护栏板自动生产线在运行工作中抛丸机主轴支撑轴承频繁出现故障的问题,根据抛丸机结构及工作原理,分析主轴支撑轴承的失效原因,设计轴承实时状态监测系统,选取能反映轴承振动状态的敏感测点,根据峭度的阈值判断滚动轴承是... 针对公路三波护栏板自动生产线在运行工作中抛丸机主轴支撑轴承频繁出现故障的问题,根据抛丸机结构及工作原理,分析主轴支撑轴承的失效原因,设计轴承实时状态监测系统,选取能反映轴承振动状态的敏感测点,根据峭度的阈值判断滚动轴承是否出现故障,选用方均根指标反映轴承故障严重程度。经抛丸机生产中所采集到的轴承振动数据验证了方案的可行性。 展开更多
关键词 抛丸机 轴承 状态监测 峭度指标 方均根指标
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Extreme air pollution events:Modeling and prediction
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作者 周松梅 邓启红 刘蔚巍 《Journal of Central South University》 SCIE EI CAS 2012年第6期1668-1672,共5页
In order to get prepared for the coming extreme pollution events and minimize their harmful impacts, the first and most important step is to predict their possible intensity in the future. Firstly, the generalized Par... In order to get prepared for the coming extreme pollution events and minimize their harmful impacts, the first and most important step is to predict their possible intensity in the future. Firstly, the generalized Pareto distribution (GPD) in extreme value theory was used to fit the extreme pollution concentrations of three main pollutants: PM10, NO2 and SO:, from 2005 to 2010 in Changsha, China. Secondly, the prediction results were compared with actual data by a scatter plot. Four statistical indicators: EMA (mean absolute error), ERMS (root mean square error), IA (index of agreement) and R2 (coefficient of determination) were used to evaluate the goodness-of-fit as well. Thirdly, the return levels corresponding to different return periods were calculated by the fitted distributions. The fitting results show that the distribution of PM10 and SO2 belongs to exponential distribution with a short tail while that of the NOe belongs to beta distribution with a bounded tail. The scatter plot and four statistical indicators suggest that GPD agrees well with the actual data. Therefore, the fitted distribution is reliable to predict the return levels corresponding to different return periods. The predicted return levels suggest that the intensity of coming pollution events for PM10 and SO2 will be even worse in the future, which means people have to get enough preparation for them. 展开更多
关键词 extreme pollution event generalized Pareto distribution return level return period
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