five

基于运维报修系统的全维度设备故障数据

收藏
江苏数据知识产权登记系统2025-08-20 更新2025-09-06 收录
下载链接:
https://dataip.jsipp.cn/#/changeDetialCertical?pType=登记&cType=登记&id=9d3954b62bfee0957b16f376c9067706
下载链接
链接失效反馈
官方服务:
资源简介:
本数据集围绕 设备故障特征 与 维修解决方案 进行系统性表达,数据字段分为 故障特征字段 和 维修效能字段 两大类,共计 11项核心字段,涵盖设备故障的物理表现、维修过程记录。 (1)故障特征字段(8项) 用于描述设备故障的物理表现、环境因素及报修信息,包括: 基础标识:报修单号、设备类型、所属区域 故障描述:故障现象、故障等级、报修时间 故障定位:故障类型 该部分字段反映设备故障的严重程度及影响因素,是构建故障预测模型与优化维护策略的关键依据。 (2)维修效能字段(3项) 体现维修过程的执行效率及解决方案的适用性,包括: 维修执行:维修时长、维修人员 解决方案:维修方法(更换/调试/清洁)

This dataset systematically expresses equipment fault characteristics and maintenance solutions. The data fields are divided into two main categories: fault characteristic fields and maintenance effectiveness fields, with a total of 11 core fields covering the physical manifestations of equipment faults and maintenance process records. (1) Fault Characteristic Fields (8 items) These fields are used to describe the physical manifestations of equipment faults, environmental factors and repair information, including: Basic identification: Repair order number, equipment type, affiliated area Fault description: Fault phenomenon, fault level, repair time Fault location: Fault type This part of the fields reflects the severity and influencing factors of equipment faults, and serves as a key basis for constructing fault prediction models and optimizing maintenance strategies. (2) Maintenance Effectiveness Fields (3 items) These fields reflect the execution efficiency of the maintenance process and the applicability of the solutions, including: Maintenance execution: Maintenance duration, maintenance personnel Solution: Maintenance methods (replacement/debugging/cleaning)
提供机构:
南京众宇信息科技有限公司
搜集汇总
数据集介绍
main_image_url
以上内容由遇见数据集搜集并总结生成
二维码
社区交流群
二维码
科研交流群
商业服务