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Modeling and simulation of temperature drift for ISFET-based pH sensor and its compensation through machine learning techniques

机译:基于ISFET的PH传感器温度漂移的建模与仿真及通过机器学习技术补偿

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The paper presents modeling and simulation of ion-sensitive field-effect transistor (ISFET)-based pH sensor with temperature-dependent behavioral macromodel and proposes to compensate the temperature drift in the sensor using intelligent machine learning (ML) models. The macromodel is built using SPICE by introducing electrochemical parameters in a metal-oxide-semiconductor field-effect transistor (MOSFET) model to simulate ISFET characteristics. We account for the temperature dependence of electrochemical and semiconductor parameters in our macromodel to increase its robustness. The macromodel is then exported as a subcircuit element, which is used to design the readout interface circuit. A simple constant-voltage, constant-current (CVCC) topology is utilized to generate the data for temperature drift in ISFET pH sensor, which is used to train and test state-of-the-art ML-based regression models in order to compensate the drift behavior. The experimental results demonstrate that the random forest (RF) technique achieves the best performance with very high correlation and low error rate. Corresponding curves for output signal using the trained models show highly temperature-independent characteristics when tested for pH 2, 4, 7, 10, and 12, and we obtained a root mean squared error (RMS) variation of Delta pH = 0.024 over a temperature range of 15 degrees C to 55 degrees C in comparison with Delta pH = 1.346 for uncompensated output signal. This work establishes the framework for integration of ML techniques for drift compensation of ISFET chemical sensor to improve its performance.
机译:本文提出了基于温度依赖行为宏观的基于离子敏感场效应晶体管(ISFET)的模型和仿真,并提出了使用智能机器学习(ML)型号来补偿传感器中的温度漂移。通过在金属氧化物半导体场效应晶体管(MOSFET)模型中引入电化学参数来模拟ISFET特性,使用香料构建Macromodel。我们考虑了电化学和半导体参数在我们的宏偶像中的温度依赖性,以增加其鲁棒性。然后将Macromodel导出为子电路元件,用于设计读出接口电路。利用简单的恒定电压,恒流(CVCC)拓扑以产生ISFET pH传感器中的温度漂移数据,该数据用于培训和测试最先进的ML基回归模型,以便补偿漂移行为。实验结果表明,随机森林(RF)技术实现了具有非常高的相关性和低差速率的最佳性能。使用训练型模型的输出信号的相应曲线显示了当测试PH 2,4,7,10和12时的高度温度无关的特性,并且我们在A上获得了Delta pH <= 0.024的根均匀误差(RMS)变化与ΔPH<= 1.346相比,15℃至55摄氏度的温度范围与用于未偿付的输出信号的ΔPH<= 1.346。这项工作建立了ML技术集成的框架,用于漂移补偿ISFET化学传感器以提高其性能。

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