A data analysis decision support system for the carbon dioxide capture process

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This paper presents the development process of an expert decision support system for pre-filtering and analysis of data from the carbon dioxide (CO2) capture process. Chemical absorption has become one of the dominant CO2 capture technologies because of its efficiency and low cost. Since the chemical absorption process consists of dozens of components, it generates more than a 100 different types of data. Monitoring the vast amount of data can be complex, and data filtering and analysis processes are desirable. Specifically, invalid data captured as the equipment is started and shut down need to be filtered, and the filtered data need to be analyzed for different purposes. The expert decision support system for data pre-filtering and analysis not only filters out invalid data using different expert rules, but it can also modify or reuse filtering settings, and export the filtered data to various file formats for further analysis. During development of the expert decision support system, knowledge acquisition was emphasized. The system development process incorporated various technologies including the model-view-control (MVC) design pattern, the embedded database technology, the Java event delivery techniques and the eXtensible Markup Language (XML). Some sample sessions from system executions and some results generated from pre-filtering the data will also be discussed.

论文关键词:Expert decision support system,Carbon dioxide capture process,Data filtering

论文评审过程:Available online 4 February 2009.

论文官网地址:https://doi.org/10.1016/j.eswa.2009.01.064