Preliminary Design and Construction Database for Laboratory Accident

Autor: Xu ying Zheng, Fang Miao, Jia qi Yuan, Hua song Xia, Piyachat Udomwong, Nopasit Chakpitak
Rok vydání: 2023
DOI: 10.20944/preprints202304.1080.v1
Popis: With the growing of university chemistry experiment projects, scientific research personnel, specialized equipment, laboratory accident is increasing yearly. And accident data lacks a safety platform to store related information and cannot be guaranteed for efficient conditional sharing. To solve these problems, we designed a laboratory accident system to store, share related data and predict risk level. In this paper, we manually collected chemistry laboratory accidents by python software and class assignments, then analyses risk factor variables using Spsspro, finally established a prediction model using Stata. We intended to register laboratory related data into proposed chemistry accident system based on data ownership safety architecture. The chemistry accident system can break data barriers using confirmation and authorization key technology to trace non-tampered data source in real time when emergency accident happens. Meanwhile, our proposed system can use our designed accident risk model to predict risk level of any experiment project. It can also recommend appropriate safety education models.
Databáze: OpenAIRE