高容错生物传感器的优化性能验证

Subhas A. Meti, V. Sangam
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引用次数: 1

摘要

随着生物电子学的发展,生物传感器的应用越来越广泛。由于生物传感器的工作状态具有挑战性,目前应用的生物传感器只能捕获某些类型的信号。这种检测还取决于用于信号产生的生物传感器的类型,因此,从生物传感器产生的信号不能被认为是没有误差的。本文回顾了对生物传感器验证的一些现有研究贡献,发现没有有效执行验证的计算框架,因为大多数技术使用临床方法或实验方法,这限制了生物信号性能的验证。因此,本文提出了一种新的计算框架,该框架使用增强版的自关联神经网络,与其他传统优化技术相比,显著优化了生物传感器的验证性能。
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Optimized Performance Validation of Biosensors with High Fault Tolerance
The deployment of biosensors is increasing with advancement of bio-electronics. Owing to challenging state of working of biosensors, the present applications of biosensors are capable of capturing only certain types of signals till date. This detection also depends on the type of the bio transducers used for signal generation and therefore, the signals generated from biosensors cannot be considered to be error free. This paper has reviewed some of the existing research contributions towards biosensor validation to find that there are no computational framework that efficiently performs validation as majority of the technique uses either clinical approach or experimental approach, which limits the validation of bio signal performance. Therefore, this paper presents a novel computational framework that uses enhanced version of auto-associative neural network and significantly optimizes the validation performance of biosensors as compared to other conventional optimization techniques.
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