智能可视化重铬酸钾回流法测定化学需氧量OA
Intelligent Visualization of Potassium Dichromate Reflux Method for Determination of Chemical Oxygen Demand
重铬酸钾回流法测定化学需氧量是水环境质量监测标准方法(HJ 828-2017).该方法危险性强、成本高且排污严重,限制了其在化学基础实验教学中的推广应用.用色敏摄像机采集溶液反应图像,Python中的OpenCV库获取RGB数据,结合机器学习聚类分析,实现加热回流与滴定过程的自动化监测.将数字孪生可视化技术创新性地融入重铬酸钾回流法测化学需氧量实验中,交互式操作提升了仿真实验教学效果.
The potassium dichromate reflux method,as specified in the water quality monitoring standard(HJ 828-2017),serves as a conventional approach for chemical oxygen demand(COD)determination.However,its application in fundamental chemistry laboratory education has been constrained due to inherent safety hazards,high operational costs,and significant pollutant discharge.This study presents an innovative approach employing a color-sensitive camera to capture solution reaction images,with subsequent RGB data extraction through Python's OpenCV library.By integrating machine learning-based cluster analysis,we achieved automated monitoring of both the heating reflux and titration processes.The incorporation of digital twin visualization technology into the potassium dichromate reflux method for COD measurement represents a novel advancement,with interactive operations significantly enhancing the effectiveness of simulated experimental instruction.
周跃明;邱新;周馨;万潇天;张末凡;李丰;邵鑫鑫;丁鹏;梁喜珍
东华理工大学化学与材料学院,南昌 330013东华理工大学信息工程学院,南昌 330013东华理工大学化学与材料学院,南昌 330013东华理工大学化学与材料学院,南昌 330013东华理工大学信息工程学院,南昌 330013东华理工大学信息工程学院,南昌 330013东华理工大学化学与材料学院,南昌 330013东华理工大学信息工程学院,南昌 330013东华理工大学化学与材料学院,南昌 330013
社会科学
数字孪生重铬酸钾回流法化学需氧量机器学习自动化监测
Digital twinPotassium dichromate reflux methodChemical oxygen demandMachine learningAutomatic monitoring
《大学化学》 2026 (1)
85-94,10
东华理工大学实验技术开发项目(DHSY-202313,DHSY-202511)东华理工大学教学改革研究课题(DHJG-23-33)
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