ABSTRACT
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.
Keywords: - Bayesian networks, Cluster analysis, FP pattern, Human activity prediction.