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Chemical Field Effect Transistor Response with Post Processing Supervised Neural Network

机译:化学领域效应晶体管应对监督神经网络

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This work presents the classification of potassium ion concentration in the presence of interfering ammonium ions from Chemical Field-Effect Transistor (CHEMFET) sensors involving neural network post-processing stage. Data collection for the purpose of supervised learning training data is obtained from sample solutions prepared by keeping the main ion concentration constant while the activity of the interfering ions based on the fixed interference method. The measurement setup includes a readout interface circuit that ensures constant-current constant-voltage across the drain-source for isothermal point operation. The training algorithm is back-propagation with generalized delta rule on a multilayer feed-forward network. Activation function based on the MOSFET drain current equation in the linear region is attempted in the hidden layer. Using function fitting approach, the network aims to find the potassium ion concentration despite the presence of interfering ion, without having to estimate device and chemically related parameters that would otherwise require further experiments.
机译:该作品在从化学场效应晶体管(ChemFET)传感器中,涉及神经网络后处理阶段的化学场效应晶体管(ChemFET)传感器存在下钾离子浓度的分类。用于监督学习训练数据的数据收集是通过通过保持主离子浓度常数而制备的样品溶液,同时基于固定干涉方法的干扰离子的活性来获得。测量设置包括读出接口电路,该电路确保漏极源的恒流恒压用于等温点操作。训练算法是在多层前馈网络上与广义增量规则的反向传播。在隐藏层中尝试基于线性区域中的MOSFET漏极电流方程的激活功能。使用功能拟合方法,尽管存在干扰离子,但是网络旨在找到钾离子浓度,而不必估计否则将需要进一步实验的装置和化学相关参数。

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