Author/Authors :
Yektamoghadam, H. System and Control Department - Faculty of Electrical Engineering - K.N. Toosi University of Technology - Tehran - Iran , Nikoofard, A. System and Control Department - Faculty of Electrical Engineering - K.N. Toosi University of Technology - Tehran - Iran
Abstract :
Background and Objective: Human health is an issue that always been a
priority for scientists, doctors, medical engineers, and others. A Wireless
Body Area Network (WBAN) connects independent nodes (e.g. sensors and
actuators) that are situated in the clothes, on the body, or under the skin of a
person. In the 21st century, advent the technology in different aspects of
human life caused WBAN has a special value in future medical technology.
Energy harvesting from the ambient or human body for self-independent
from the battery or power supply is an important issue in WBAN.
Photovoltaic energy harvesting (PVEH), piezoelectric energy harvesting (PEH),
RF energy harvesting (RFEH), and thermal electric energy harvesting (TEH)
are some techniques used for energy harvesting in WBAN. Fault detection
and diagnosis is an important problem in engineering. Engineers and
researchers are always trying to find better ways to identify, detection, and
control the fault in different systems.
Methods: We consider a thermal electric generator (TEG) for measurement
energy harvested from the human body and power generation on people at
different ambient conditions. Also, we used data reduction methods
including principle component analysis (PCA), linear discriminant analysis
(LDA), and neural network methods including PCA and MLP, LDA and MLP,
Dynamic PCA and MLP, Dynamic LDA and MLP to fault detection for thermal
electric generator (TEG).
Results: This study shows different data reduction algorithm, in the case
studied in this paper, can detect well and nonlinear methods have a more
accurate answer than linear methods but implementing the linear methods
are easier.
Conclusion: According to simulation results, all the methods discussed in this
paper are acceptable for fault detection. In this paper, we introduce data
reduction linear and nonlinear algorithm as new methods for fault detection
in WBAN.
Keywords :
Wireless sensor network , Wireless body area network , Thermal electric generator , Principle component analysis , Linear discriminant analysis , Neural network