基于Mhidas数据库的工业事故分析商业智能

Q3 Chemical Engineering
A. J. N. Akel, R. Patriarca, G. D. Gravio, G. Antonioni, N. Paltrinieri
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引用次数: 4

摘要

降低工业过程中事故的频率和严重程度是一个持续的公开挑战。从以往的事件中学习是确保改进工业厂房设计的重要手段,特别是考虑到日常操作中出现的复杂性。本文基于一个涉及有害物质和材料的工业事故数据库。重大危险事件数据服务(MHIDAS)是由健康与安全执行局(HSE)于1986年建立的,目的是提供关于重大危险事件的可靠数据来源,并从过去的事故中吸取教训。该数据库有超过9000份事故报告,涵盖1950年至1990年代末由有害物质/材料引起的事故。本文的目的是通过定量分析提供对MHIDAS数据的理解,这些数据可以通过利用适当的数据管理工具收集到的信息来获得。因此,在本研究中使用了信息技术(IT)服务,如商业智能(BI)工具。本文描述了在MHIDAS数据库上创建一个用于数据管理的BI模型的过程,该模型可以生成关于以前工业安全事件的有用信息,并允许通过MHIDAS中存储的任何事件进行详细的搜索引擎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Business Intelligence for the Analysis of Industrial Accidents Based on Mhidas Database
Reducing the frequency and severity of accidents in industrial processes is a continuous open challenge. Learning from previous events represents a crucial instrument to ensure an improved design of industrial plants, especially considering the complexity arising in everyday operations. This article is grounded on a database of industrial accidents involving hazardous substances and materials. The Major Hazard Incident Data Service (MHIDAS) was developed in 1986 by the Health and Safety Executive (HSE) to provide a reliable source of data on major hazard incidents and to learn for the past accidents. The database has more than 9000 accident reports covering the periods from 1950 to the end of the 1990s caused by hazardous substances/materials. This paper aims are to provide an understanding of MHIDAS data through quantitative analyses that can be obtained by exploiting the information collected through appropriate data management tools. Therefore, Information Technology (IT) services such as Business Intelligence (BI) tools have been used in this research. The paper describes the process of creating a BI model for data management on MHIDAS database to generate useful information on previous industrial safety events, allowing a detailed search engine as well through any event stored in MHIDAS.
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来源期刊
Chemical engineering transactions
Chemical engineering transactions Chemical Engineering-Chemical Engineering (all)
CiteScore
1.40
自引率
0.00%
发文量
0
审稿时长
6 weeks
期刊介绍: Chemical Engineering Transactions (CET) aims to be a leading international journal for publication of original research and review articles in chemical, process, and environmental engineering. CET begin in 2002 as a vehicle for publication of high-quality papers in chemical engineering, connected with leading international conferences. In 2014, CET opened a new era as an internationally-recognised journal. Articles containing original research results, covering any aspect from molecular phenomena through to industrial case studies and design, with a strong influence of chemical engineering methodologies and ethos are particularly welcome. We encourage state-of-the-art contributions relating to the future of industrial processing, sustainable design, as well as transdisciplinary research that goes beyond the conventional bounds of chemical engineering. Short reviews on hot topics, emerging technologies, and other areas of high interest should highlight unsolved challenges and provide clear directions for future research. The journal publishes periodically with approximately 6 volumes per year. Core topic areas: -Batch processing- Biotechnology- Circular economy and integration- Environmental engineering- Fluid flow and fluid mechanics- Green materials and processing- Heat and mass transfer- Innovation engineering- Life cycle analysis and optimisation- Modelling and simulation- Operations and supply chain management- Particle technology- Process dynamics, flexibility, and control- Process integration and design- Process intensification and optimisation- Process safety- Product development- Reaction engineering- Renewable energy- Separation processes- Smart industry, city, and agriculture- Sustainability- Systems engineering- Thermodynamic- Waste minimisation, processing and management- Water and wastewater engineering
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