杭州市曳引式客梯故障统计综合分析数据
收藏浙江省数据知识产权登记平台2025-01-13 更新2025-01-14 收录
下载链接:
https://www.zjip.org.cn/home/announce/trends/110954
下载链接
链接失效反馈官方服务:
资源简介:
采集和统计杭州市曳引式客梯运行情况,分析故障类型、数量、计算故障数量占比前三的区域及原因,帮助从事电梯日常管理的单位优化安全管理作业人员配置,进行重点监管,提高日常维护频率和内容,减少电梯安全隐患,指导电梯生产,日常维护运行等全方面,同时协助政府对民生基础设施这一重要组成部分进行统筹。(不同类型的电梯具有专用性,其质量标准也具有差异,因此对故障类型的研究分成不同电梯种类进行;统计日期为数据包提取进行算法应用的时间,整体数据时间跨度为电梯投入使用至今,因此字段名称不出现具体年份集合的限定。)1、数据采集:以单一类型电梯为标准,通过电梯物联网设备和接警平台,采杭州市各区域运行至今的曳引式客梯,共计发生故障的次数和故障类型。2、数据处理:对采集到的原始数据进行清洗、分析、整理等方式,获取所需要的数据:电梯所在区域、故障原因等;根据对故障的检修和智能分析,将故障原因进行分类;系统后台通过IF分类条件、SUM函数对故障数量和故障类型进行统计,算法过程为:IF(杭州市,曳引式客梯)—录入编号—触发故障则数量记1,累加记录,未触发故障,则数量记0;杭州市曳引式客梯故障总数=∑全区域全部序号曳引式客梯故障数量(∑为求和公式符号,非字段代称)。系统进行分类归纳运算排序,直接输出故障数量排名前三的区域,认定为易发生故障区域;直接输出故障数量排名前三的原因,认定为重点监测问题,后续对其进行重点处理。3、数据分析:通过软件将电梯故障综合分析记录制作成多维度宽领域的可视化区域地图,直观反应电梯各类型故障发生的次数、区域、原因以及是否是易发生故障,指导当地电梯维修企业合理调整电梯零件采购和重点监管。(人为原因由于相关保密规定,在数据包内不做具体描述;不同类型的电梯具有专用性,其质量标准也具有差异,因此对故障类型的研究分成不同电梯种类进行;统计日期为数据包提取进行算法应用的时间,整体数据时间跨度为电梯投入使用至今,因此字段名称不出现具体年份集合的限定,例如:字段为“故障数量排名前三的区域”,因时间跨度为第一台设备投入使用至今,故不命名为“2024年故障数量排名前三的区域”,以年为周期更新计算,构建动态地图)
This dataset collects and statistically analyzes the operation status of traction passenger elevators in Hangzhou, covering fault types, quantities, and identifying the top three regions and causes with the highest proportion of fault occurrences. It aims to help entities engaged in daily elevator management optimize safety management staff allocation, implement key supervision, adjust daily maintenance frequency and content, reduce elevator safety hazards, and guide all aspects of elevator production, daily maintenance and operation. Meanwhile, it assists the government in overall planning of people's livelihood infrastructure, an important component of public services.
Note: Different types of elevators have specificity and their quality standards vary, so fault type research is conducted by elevator category. The statistical date is the time when the data packet is extracted for algorithm application, and the overall data time span covers from the commissioning of each elevator to the present. Therefore, field names do not include specific year range restrictions.
1. Data Collection: Taking a single type of elevator as the standard, collect the number of faults and fault types of traction passenger elevators in all regions of Hangzhou that have been in operation up to the present, via elevator IoT devices and alarm receiving platforms.
2. Data Processing: Clean, analyze and organize the collected raw data to obtain required information including the region where the elevator is located and fault causes. Classify fault causes based on fault maintenance and intelligent analysis. The system backend uses IF classification conditions and the SUM function to count the quantity and type of faults. The algorithm process is as follows: IF (Hangzhou, traction passenger elevators) — entry ID — if a fault is triggered, record the quantity as 1 and accumulate; if no fault is triggered, record the quantity as 0. The total number of faults of Hangzhou traction passenger elevators = ∑ (the summation formula symbol, not a field alias) the fault quantities of all traction passenger elevators with serial numbers across all regions. The system performs classified induction, calculation and sorting, directly outputs the top three regions by fault quantity as high-fault zones, and directly outputs the top three causes by fault quantity as key monitoring issues for subsequent focused handling.
3. Data Analysis: Use software to create multi-dimensional and wide-coverage visualized regional maps based on comprehensive elevator fault analysis records, which intuitively reflect the frequency, regions, causes of each type of elevator fault, and whether they are high-fault zones. This guides local elevator maintenance enterprises to reasonably adjust elevator parts procurement and implement key supervision.
Note: Human-related causes are not described in detail in the data packet due to relevant confidentiality regulations. Different types of elevators have specificity and their quality standards vary, so fault type research is conducted by elevator category. The statistical date is the time when the data packet is extracted for algorithm application, and the overall data time span covers from the commissioning of each elevator to the present. Therefore, field names do not include specific year range restrictions. For example, the field named "top three regions by fault quantity" is not titled "top three regions by fault quantity in 2024" since the time span covers from the commissioning of the first device to the present. The maps are updated and calculated annually to build dynamic maps.
提供机构:
杭州市特种设备检验科学研究院(杭州市特种设备应急处置中心)
创建时间:
2024-12-15
搜集汇总
数据集介绍

特点
该数据集详细记录了杭州市曳引式客梯的故障情况,包括故障数量、原因及区域分布,旨在帮助优化电梯安全管理,提高维护效率,减少安全隐患。数据每年更新,适用于电梯维护和监管等场景。
以上内容由遇见数据集搜集并总结生成



