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Methodologies, principles and prospects of applying big data in safety science research

机译:安全科学研究中大数据的方法,原则和前景

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摘要

It is clear that big data has numerous potential impacts in many fields. However, few papers discussed its applications in the field of safety science research. Additionally, there exist many problems that cannot be ignored when big data is applied to safety science, most outstanding of which is lack of universal supporting theory that guides how to apply big data to safety science research like methods, principles and approaches, etc. In other terms, it is not enough for big data to be viewed as a strong enabler for safety science applications mainly due to lack of universal and basic theory from the perspective of safety science. Considering the above analyzes, the two key objectives of this paper are: (1) to propose the connotation of safety big data (SBD) and its applying rules, methods and principles, and (2) to put forward some application prospects and challenges of big data to safety science research seen from theoretical research. First, by comparing SBD and traditional safety small data (SSD) from four aspects including theoretical research, typical research method, specific analysis method and processing mode, this paper puts forward the definition and connotation of SBD. Subsequently this paper further summarizes and extracts the application rules and methods of SBD. And then nine principles of SBD are explored and their relationship and application are addressed from the view of theory architecture and working framework in data processing flow. At last, this paper also discusses the potential applications and some hot issues of SBD. Overall, this paper will play an essential role in supporting the application of SBD. In addition, it will fill in the theory gaps in the field of SBD beyond traditional safety statistics, and further enriches the contents of safety science.
机译:很明显,大数据在许多领域都有许多潜在的影响。然而,很少有论文讨论了安全科学研究领域的应用。此外,当大数据应用于安全科学时,存在许多不忽视的问题,这是缺乏普遍支持理论,指导如何将大数据应用于安全科学研究,如方法,原则和方法等。其他术语,由于安全科学的角度来说,由于缺乏普遍和基本理论,这是一个待视为安全科学应用的强大推动者的大数据。考虑到上述分析,本文的两个关键目标是:(1)提出安全大数据(SBD)及其应用规则,方法和原则的内涵,以及(2)提出了一些应用前景和挑战从理论研究中看到的安全科学研究的大数据。首先,通过将SBD和传统安全的小数据(SSD)从四个方面进行比较,包括理论研究,典型的研究方法,具体的分析方法和加工模式,本文提出了SBD的定义和内涵。随后本文进一步概述和提取了SBD的申请规则和方法。然后,探索了九项SBD原则,并从理论架构和数据处理流程中的工作框架的角度解决了他们的关系和应用。最后,本文还讨论了潜在的应用和SBD的一些热点问题。总体而言,本文将在支持SBD的应用方面发挥重要作用。此外,它将填补SBD领域的理论差距,超越传统的安全统计,进一步丰富了安全科学的内容。

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