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CHEMFET Reponse for Supervised Learning of Neural Network

机译:用于神经网络监督学习的CHEMFET响应

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Electrical response from Chemical Field-Effect Transistor (CHEMFET) sensors intended to be selective to a specific ion is influenced by interfering chemical ions present in the solution. To be able to detect the main chemical ion of interest, we include a neural network post-processing stage after a readout interface circuit. This work focuses on the training data collection of potassium sensors in the presence of ammonium ions intended for the supervised learning of the neural network module. Using function fitting approach, the network aims to find the potassium ion concentration. 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 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. We find that referencing voltage readings to sensor response in deionized water prior to measurement improves repeatability of measured training data.
机译:旨在对特定离子具有选择性的化学场效应晶体管(CHEMFET)传感器产生的电响应会受到溶液中存在的化学离子的干扰。为了能够检测到感兴趣的主要化学离子,我们在读出接口电路之后包括了神经网络后处理阶段。这项工作的重点是在存在铵离子的情况下钾离子传感器的训练数据收集,旨在用于神经网络模块的监督学习。该网络使用功能拟合方法来寻找钾离子浓度。训练数据是从样品溶液中获得的,该样品溶液是通过基于固定干扰方法将主要离子浓度保持恒定而干扰离子的活性不变而制备的。训练算法是在多层前馈网络上使用广义delta规则进行反向传播。在隐藏层中尝试了基于MOSFET漏极电流方程式的线性区域中的激活函数。我们发现,在测量之前将电压读数参考去离子水中的传感器响应可以提高测量训练数据的可重复性。

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