6轴绕线机运行效率数据
收藏浙江省数据知识产权登记平台2024-10-11 更新2024-10-12 收录
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通过对6轴绕线机运行效率数据采集于电气比例阀,采集设备的关键运行参数,包括日期、名称、型号、运行时间、当日加工数和报废数量等。这些数据不仅用于计算设备的稼动率、加工合格率、性能效率和OEE(设备综合效率),还为设备的稳定运行提供了重要支撑。基于6轴绕线机运行效率数据,企业可以优化电气比例阀的生产计划,提高生产效率,同时将有价值的数据反馈给设备制造商,促进产品改进和性能提升。同行制造商可通过比较稼动率和OEE等指标,评估自身在行业中的位置,并决定是否需要改进生产流程或升级设备。潜在的设备购买者可利用这些数据作为参考,评估设备在实际生产环境中的表现,辅助采购决策。下游客户则可借此了解供应商的生产能力和稳定性,如高稼动率和OEE可能表明供应商有能力满足大量订单需求。1:数据采集:通过对6轴绕线机MCSH22-60(XYRX-032) 数据进行统计分析,了解日期、设备名称、设备型号、运行时间、当日加工数、报废数量等运行数据
2.数据处理:通过算法计算可知,稼动率=运行时长/开机时间 *100;合格率=(当日加工数-报废数量)/当日加工数 *100;性能效率=(当日设备加工总数量-上一日设备加工总数量)/(开机时间 * 3600 /单价加工总数时长(件/S))*100;OEE=稼动率*合格率*性能效率;OEE波动率(%)=(当日OEE-前一天OEE)/前一天OEE *100。
3、数据应用:OEE波动率分为五个等级:当波动率大于或等于5%时被视为"优秀",表明设备效率显著提升;0%到5%之间为"良好",代表效率保持稳定或有小幅提升;-5%到0%之间被归类为"一般",表示效率略有下降但仍在可接受范围内;-10%到-5%之间被标记为"需改进",意味着效率下降明显,需要采取措施;而低于-10%则被视为"警告"级别,表明可能存在严重问题,需要立即介入。
Data on the operating efficiency of 6-axis winding machines are collected from electropneumatic proportional valves, with key operating parameters of the equipment captured, including date, equipment name, equipment model, operating time, daily processed quantity, scrapped quantity, and others. These data are utilized not only to calculate the equipment utilization rate, processing pass rate, performance efficiency, and Overall Equipment Effectiveness (OEE), but also to provide critical support for the stable operation of the equipment. Based on the operating efficiency data of 6-axis winding machines, enterprises can optimize the production plan for electropneumatic proportional valves, enhance production efficiency, and feed valuable data back to equipment manufacturers to facilitate product improvement and performance upgrading. Peer manufacturers can compare indicators such as equipment utilization rate and OEE to assess their standing in the industry and determine whether to optimize production processes or upgrade equipment. Potential equipment purchasers can use these data as a reference to evaluate the performance of equipment in actual production scenarios and aid purchasing decisions. Downstream customers can leverage these data to understand the production capacity and stability of suppliers; for instance, high equipment utilization rate and OEE may indicate that the supplier is capable of fulfilling large-scale order demands.
1. Data Collection: Perform statistical analysis on the data of the 6-axis winding machine MCSH22-60 (XYRX-032) to acquire operating data including date, equipment name, equipment model, operating time, daily processed quantity, scrapped quantity, and other relevant metrics.
2. Data Processing: The following formulas are derived through algorithmic calculations:
Equipment Utilization Rate = (Operating Duration / Start-up Time) * 100;
Processing Pass Rate = (Daily Processed Quantity - Scrapped Quantity) / Daily Processed Quantity * 100;
Performance Efficiency = (Total Daily Processed Quantity - Total Previous Day Processed Quantity) / (Start-up Time * 3600 / Per-piece Processing Speed (pcs/S)) * 100;
Overall Equipment Effectiveness (OEE) = Equipment Utilization Rate * Processing Pass Rate * Performance Efficiency;
OEE Volatility (%) = (Daily OEE - Previous Day OEE) / Previous Day OEE * 100.
3. Data Application: OEE volatility is divided into five grades:
- "Excellent": when the volatility is greater than or equal to 5%, indicating a significant improvement in equipment efficiency;
- "Good": when the volatility ranges from 0% to 5%, representing stable efficiency or a slight improvement;
- "Average": when the volatility falls between -5% and 0%, indicating a slight efficiency decline but still within an acceptable range;
- "Needs Improvement": when the volatility is between -10% and -5%, meaning a notable efficiency decline requiring corrective actions;
- "Warning": when the volatility is lower than -10%, indicating potential serious issues that require immediate intervention.
提供机构:
星宇电子(宁波)有限公司
创建时间:
2024-09-14
搜集汇总
数据集介绍

特点
该数据集记录了6轴绕线机的运行效率数据,包含526条记录,每年更新一次。数据用于计算设备的稼动率、合格率、性能效率和OEE等关键指标,并应用于生产优化、设备评估和采购决策等场景。
以上内容由遇见数据集搜集并总结生成



