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首页> 外文期刊>International Journal of Advanced Networking and Applications >Mining Frequent Patterns and Associations from the Smart meters using Bayesian Networks
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Mining Frequent Patterns and Associations from the Smart meters using Bayesian Networks

机译:使用贝叶斯网络从智能电表中挖掘频繁模式和关联

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摘要

In today’s world migration of people from rural areas to urban areas is quite common. Health care services are one of the most challenging aspect that is must require to the people with abnormal health. Advancements in the technologies lead to build the smart homes, which contains various sensor or smart meter devices to automate the process of other electronic device. Additionally these smart meters can be able to capture the daily activities of the patients and also monitor the health conditions of the patients by mining the frequent patterns and association rules generated from the smart meters. In this work we proposed a model that is able to monitor the activities of the patients in home and can send the daily activities to the corresponding doctor. We can extract the frequent patterns and association rules from the log data and can predict the health conditions of the patients and can give the suggestions according to the prediction. Our work is divided in to three stages. Firstly, we used to record the daily activities of the patient using a specific time period at three regular intervals. Secondly we applied the frequent pattern growth for extracting the association rules from the log file. Finally, we applied kmeans clustering for the input and applied Bayesian network model to predict the health behavior of the patient and precautions will be given accordingly.
机译:在当今世界,从农村地区到城市地区的人口迁移非常普遍。保健服务是异常健康人群必须具备的最具挑战性的方面之一。技术的进步导致建造了智能家居,其中包含各种传感器或智能电表设备,以使其他电子设备的过程自动化。另外,这些智能电表能够捕获患者的日常活动,并通过挖掘从智能电表生成的频繁模式和关联规则来监视患者的健康状况。在这项工作中,我们提出了一个模型,该模型能够监视患者在家中的活动并将日常活动发送给相应的医生。我们可以从日志数据中提取出频繁出现的规律和关联规则,可以预测患者的健康状况,并根据预测结果给出建议。我们的工作分为三个阶段。首先,我们过去以三个固定的时间间隔在特定时间段记录患者的日常活动。其次,我们将频繁的模式增长应用于从日志文件中提取关联规则。最后,我们将kmeans聚类用于输入,并应用贝叶斯网络模型来预测患者的健康行为,并将相应地采取预防措施。

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