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Electrochemiluminescence Mechanisms Investigated with Smartphone‐Based Sensor Data Modeling, Parameter Estimation and Sensitivity Analysis

机译:采用智能手机的传感器数据建模,参数估计和灵敏度分析研究了电化学发光机制

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摘要

The present study introduces a unified framework combining a mechanistic model with a genetic algorithm (GA) for the parameter estimation of electrochemiluminescence (ECL) kinetics of the Ru(bpy)32+/TPrA system occurring in a smartphone‐based sensor. The framework allows a straightforward solution for simultaneous estimation of multiple parameters which can be, otherwise, time‐consuming and lead to non‐convergence. Model parameters are estimated by achieving a high correlation between the model prediction and the measured ECL intensity from the ECL sensor. The developed model is used to perform a sensitivity analysis (SA), which provides quantitative effects of the model parameters on the concentrations of chemical species involved in the system. The results demonstrate that the GA‐based parameter estimation and the SA approaches are effective in analyzing the kinetics of the ECL mechanism. Therefore, these approaches can be incorporated as analysis tools in the ECL kinetics study with practical application in the calibration of mechanistic models for any required sensing condition.
机译:本研究介绍了一种统一的框架,将具有遗传算法(GA)的机械模型组合,用于在基于智能手机的传感器中发生的Ru(BPY)32 + / TPRA系统的电化学发光(ECL)动力学的参数估计。该框架允许直接的解决方案同时估计多个参数,否则,否则,耗时并导致非收敛。通过从ECL传感器之间实现模型预测和测量的ECL强度之间的高相关来估计模型参数。开发的模型用于执行灵敏度分析(SA),其为模型参数的定量效应提供了在系统中涉及的化学物质浓度上的定量效果。结果表明,基于GA的参数估计和SA方法在分析ECL机制的动力学方面是有效的。因此,这些方法可以作为分析工具作为分析工具,在ECL动力学研究中,在校准机械模型中的实际应用,以获得任何所需的感测状态。

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