对英国和法国电梯事故及其违反安全规则的情况进行统计和人工智能建模

Vasilios Zarikas, Moldir Zholdasbayeva, Ayan Mitra
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引用次数: 0

摘要

本研究采用不同的统计技术,包括训练有素的贝叶斯网络(一种人工智能(AI)方法),对两个国家涉及安全规则的电梯事故数据集进行了统计分析:英国和法国。研究涉及两个国家六年的数据,涵盖了几乎所有私人和专业用途电梯事故;其中英国 218 起,法国 205 起。英国的相关时间段为 2006 年 1 月 6 日至 2012 年 12 月 29 日,而法国的数据涉及 2003 年 2 月 18 日至 2009 年 12 月 17 日。这项研究的主要目的是展示和证明,对于事故数据集,至少对于类似的数据集,必须采用多种统计方法才能提取可靠的信息,即调查各种因素之间的相互作用,从而帮助制定预防措施。我们建立了三个统计模型,以得出违反电梯安装和维护相关规定、乘客安全规定、风险和意外情况等因素之间的关联。发现受伤严重程度与受伤人员的性别或年龄类别之间存在关联。此外,还发现了受伤严重程度与规则类型或事故类型之间的特定影响。研究结果将有助于设计有效的方法,避免两国今后发生事故。
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STATISTICAL AND AI MODELING OF UK AND FRANCE ELEVATOR ACCIDENTS AND THEIR VIOLATING SAFETY RULES
This study presents a statistical analysis applying different statistical techniques, including trained Bayesian Networks an artificial intelligence (AI) method, to explore datasets of lift accidents involving safety rules for two countries: UK and France. The study concerns six years data for both countries and covers almost all elevator accidents taken place during private and professional uses; 218 cases for UK and 205 cases for France. The relevant time interval for U.K. is 6th January 2006 to 29th December 2012, while for France data concern the period of 18th February 2003 to 17th December 2009. The major aim of the study is to exhibit and demonstrate that for accident datasets, at least for similar datasets, multiple statistical methods have to be applied in order to extract reliable information, i.e. investigate interactions among factors and therefore help to develop prevention measures. Three statistical models were built to derive associations between factors concerning violation of rules related to the installation and maintenance of elevators, passengers’ safety rules, risks and unforeseen circumstances. Associations between severity of injury and categories of gender or age of injured people have been found. Furthermore, specific influences between severity of injury and categories of type of rules or of type of accident have been identified. The obtained results will contribute to the design of efficient methods to avoid future accidents in both countries.
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来源期刊
Journal of Applied Engineering Science
Journal of Applied Engineering Science Engineering-Engineering (all)
CiteScore
2.00
自引率
0.00%
发文量
122
审稿时长
12 weeks
期刊介绍: Since 2002 iipp build cooperation with its clients established on wealthy experience, interchangeable respect and trust and permanently arrangement with the purpose of successfully realization of projects recognizable according to good organization and high quality of provided favors. Working as unique team of highly motivated experts, Institute iipp provides to its customers the most high-quality solutions in domain of engineering consulting.
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