Understanding Sensitivity in Nanoscale Sensing Devices

IF 4.6 Q1 CHEMISTRY, ANALYTICAL
Dominik Duleba*, Adria Martínez-Aviñó, Andriy Revenko and Robert P. Johnson*, 
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引用次数: 0

Abstract

In nanoscale sensors, understanding and predicting sensor sensitivity is challenging as the physical phenomena that govern the transduction mechanism are often highly nonlinear and highly coupled. The sensitivity of a sensor is related to both the magnitude of the analyte-caused signal change and the random error-caused fluctuation of the sensor’s output. The extent to which these can be controlled, by carefully designing either the geometric or operating conditions of the sensor, determines the difference in signal output between the presence and absence of the analyte, as well as the impact of random errors on the distribution of these signal outputs. Herein, we use ion-current-rectifying nanopore sensors as a simplified case study to show how geometric and operating parameters can enable sensitivity optimization. Finite element analysis is used to obtain distributions of the sensor output, and then, Sobol analysis is used to highlight the most important contributions to sensor output errors. Furthermore, the magnitude of the signal change is considered alongside the spread of the output to calculate and optimize the sensor sensitivity. We highlight that the most important parameters contributing to the output variance are geometric. We observed that as the sensor is operated at smaller pore radii and lower electrolyte concentrations, the influence of the cone angle errors increases, the influence of the pore radius errors decreases, and the output becomes broader. We also show that the highest sensitivity is expected for larger pores operated at low electrolyte concentrations, and our simulation results are validated by experimental results. Recommendations to achieve optimum sensitivity are given for a range of nanopore scenarios in which ion-rectifying nanopore sensors may be used. This work aims to provide a framework for the nanoscale community to optimize sensitivity using simulations, as the analysis highlighted herein is viable for any system that can be modeled using continuum physics.

理解纳米级传感器件的灵敏度
在纳米传感器中,理解和预测传感器灵敏度是具有挑战性的,因为控制转导机制的物理现象通常是高度非线性和高度耦合的。传感器的灵敏度既与分析物引起的信号变化的幅度有关,也与传感器输出的随机误差引起的波动有关。通过仔细设计传感器的几何或操作条件,这些可以控制的程度决定了存在和不存在分析物之间信号输出的差异,以及随机误差对这些信号输出分布的影响。在这里,我们使用离子电流整流纳米孔传感器作为一个简化的案例研究,以展示几何和操作参数如何实现灵敏度优化。利用有限元分析得到传感器输出的分布,然后利用Sobol分析突出对传感器输出误差的最重要贡献。此外,考虑信号变化的幅度以及输出的扩展,以计算和优化传感器灵敏度。我们强调,影响输出方差的最重要参数是几何参数。我们观察到,当传感器在较小孔径半径和较低电解质浓度下工作时,锥角误差的影响增大,孔径半径误差的影响减小,输出变宽。我们还表明,在低电解质浓度下,较大的孔隙具有最高的灵敏度,并且我们的模拟结果与实验结果相一致。建议实现最佳灵敏度的纳米孔场景的范围,其中离子整流纳米孔传感器可能被使用。这项工作旨在为纳米级社区提供一个框架,通过模拟来优化灵敏度,因为这里强调的分析对于任何可以使用连续介质物理建模的系统都是可行的。
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来源期刊
ACS Measurement Science Au
ACS Measurement Science Au 化学计量学-
CiteScore
5.20
自引率
0.00%
发文量
0
期刊介绍: ACS Measurement Science Au is an open access journal that publishes experimental computational or theoretical research in all areas of chemical measurement science. Short letters comprehensive articles reviews and perspectives are welcome on topics that report on any phase of analytical operations including sampling measurement and data analysis. This includes:Chemical Reactions and SelectivityChemometrics and Data ProcessingElectrochemistryElemental and Molecular CharacterizationImagingInstrumentationMass SpectrometryMicroscale and Nanoscale systemsOmics (Genomics Proteomics Metabonomics Metabolomics and Bioinformatics)Sensors and Sensing (Biosensors Chemical Sensors Gas Sensors Intracellular Sensors Single-Molecule Sensors Cell Chips Arrays Microfluidic Devices)SeparationsSpectroscopySurface analysisPapers dealing with established methods need to offer a significantly improved original application of the method.
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