Episodic sampling: towards energy-efficient patient monitoring with wearable sensors.

Conference proceedings : ... Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual Conference(2009)

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摘要
Energy efficiency presents a critical design challenge in wireless, wearable sensor technology, mainly because of the associated diagnostic objectives required in each monitoring application. In order to maximize the operating lifetime during real-life monitoring and maintain sufficient classification accuracy, the wearable sensors require hardware support that allows dynamic power control on the sensors and wireless interfaces as well as monitoring algorithms to control these components intelligently. This paper introduces a context-aware sensing technique known as episodic sampling - a method of performing context classification only at specific time instances. Based on Additive-Increase/Multiplicative-Decrease (AIMD), episodic sampling demonstrates an energy reduction of 85 percent with a loss of only 5 percent in classification accuracy in our experiment.
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关键词
biomechanics,dynamic power control,wearable computers,context classification,cardiology,signal sampling,energy-efficient patient monitoring,patient monitoring,pneumodynamics,context-aware sensing technique,medical signal processing,wireless interfaces,notebook computers,signal classification,accelerometers,classification accuracy,sensors,additive-increase-multiplicative-decrease episodic sampling,wearable sensors,intelligent sensors,competitive intelligence,hardware,power control,sampling methods,intelligent control,energy efficient,wireless sensor networks,energy efficiency
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