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Energy Efficient Particle Optimized Compressed ECG Data over Zigbee Environment

Energy Efficient Particle Optimized Compressed ECG Data over Zigbee Environment
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Author(s): Dilip Kumar (SLIET, India), Rajeev Kumar (DAVIET, India)and Tony Singla (DAVIET, India)
Copyright: 2017
Pages: 19
Source title: Computational Tools and Techniques for Biomedical Signal Processing
Source Author(s)/Editor(s): Butta Singh (Guru Nanak Dev University, India)
DOI: 10.4018/978-1-5225-0660-7.ch014

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Abstract

Standard Electrocardiogram Tracking instruments are huge to carry away over the remote areas for the surveillance. Holter is the compact instrument meant for collecting ECG of a patient without a pause while the patient is on the go of their daily activities. Holter works on battery for 48 hours without any angle of transmission but when allowed to transmit battery power dies soon, for these purposes some energy saving techniques is required. In this chapter the authors have proposed a Wavelet based Compression Technique, followed by Optimization under Genetic Algorithm and Particle Swarm Optimization. Compressed and Optimized ECG data has been transferred over Zigbee IEEE 802.15.4 with the intention of saving energy implicating it on a hardware chip. Transferred data will be available to the Doctor for on time treatment and further examination and storage. Embedded prior techniques in Holter can enhance its life, with fact of sending crucial data.

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