SIMTEKDIN of Covid-19 Using Forward Chaining Based on Android Mobile

Erly Krisnanik, Nadia Imawangi, H. N. Irmanda
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引用次数: 1

Abstract

Based on the results of monitoring through the covid19.go.id information channel managed by the Covid-19 Handling Task Force regarding the analysis of Covid-19 virus data as of July 18, 2021, there were 2,877,476 cumulative Covid-19 cases in Indonesia, of which 542.236 (18.8%) Among them were active cases, 2,261,658 (78.6%) were declared cured from being confirmed, and 73,582 (2.6%) died and were confirmed to have contracted Covid-19. The problems faced by the community today are still afraid to come to the hospital for an initial examination. Based on this, it is necessary to have a system application that can detect the level of risk of being exposed to Covid-19 for the community without having to come to the hospital. The research methodology used is agile software development using the sprint (the stages of the research carried out consisted of 3 sprints to produce a mobile-based SIMTEKDIN Covid 19 application). The results of this study are expected to help the public in knowing early the symptoms of Covid 19 disease. The contribution of this research is in the form of a mobile-based application of the Covid-19 Disease Early Detection Monitoring Information System (SIMTEKDIN).
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基于Android手机前向链的新型冠状病毒SIMTEKDIN
根据2019冠状病毒病监测结果。截至2021年7月18日,印尼新冠肺炎疫情处理工作组管理的新冠病毒数据分析信息频道显示,印尼累计确诊病例2877476例,其中活动性病例542.236例(18.8%),确诊治愈病例2261658例(78.6%),死亡确诊病例73582例(2.6%)。今天社区面临的问题仍然是不敢来医院进行初步检查。在此基础上,有必要开发出无需前往医院就能为社区检测新冠病毒感染风险程度的系统应用程序。使用的研究方法是使用sprint的敏捷软件开发(进行的研究阶段由3个sprint组成,以生产基于移动的SIMTEKDIN Covid - 19应用程序)。预计此次研究结果将有助于公众尽早了解新冠肺炎的症状。这项研究的贡献是基于移动应用的Covid-19疾病早期检测监测信息系统(SIMTEKDIN)。
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