Forecasting the Behaviour of an Elderly Person Using WSN Data

The forecasting process in a smart home setting equipped with WSN is a learning task. A major task for the intelligent home monitoring system is to have the ability to perceive, understand and realize the new situations. This will support an interpretation of sensory information in order to represent, understand the environment and perform correctly, based on the prior knowledge when there is a situational change. For the execution of these tasks, a variety of methods such as Analysis of Knowledge Discovery and Soft Computing Techniques were introduced.

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