Signal averaging for noise reduction in anesthesia monitoring and control with communication channels
Author(s) -
Zhibin Tan,
Le Yi Wang,
Hong Wang
Publication year - 2009
Publication title -
journal of biomedical science and engineering
Language(s) - English
Resource type - Journals
eISSN - 1937-688X
pISSN - 1937-6871
DOI - 10.4236/jbise.2009.27082
Subject(s) - computer science , noise reduction , quantization (signal processing) , signal (programming language) , channel (broadcasting) , wireless sensor network , wireless , noise (video) , control signal , bandwidth (computing) , control theory (sociology) , control (management) , computer network , telecommunications , artificial intelligence , algorithm , transmission (telecommunications) , image (mathematics) , programming language
This paper investigates impact of noise and signal averaging on patient control in anesthesia applications, especially in networked control system settings such as wireless connected systems, sensor networks, local area networks, or tele-medicine over a wide area network. Such systems involve communication channels which introduce noises due to quantization, channel noises, and have limited communication bandwidth resources. Usually signal averaging can be used effectively in reducing noise effects when remote monitoring and diagnosis are involved. However, when feedback is intended, we show that signal averaging will lose its utility substantially. To explain this phenomenon, we analyze stability margins under signal averaging and derive some optimal strategies for selecting window sizes. A typical case of anesthe-sia depth control problems is used in this development
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