Rajapakse Dinuka, Meckstroth Josh, Jantz Dylan T, Camarda Kyle Vincent, Yao Zijun, Leonard Kevin C
Department of Chemical & Petroleum Engineering, The University of Kansas, 4132 Learned Hall, 1530 West 15th Street, Lawrence, Kansas66045, United States.
Center for Environmentally Beneficial Catalysis, The University of Kansas, LSRL Building A, Suite 110, 1501 Wakarusa Drive, Lawrence, Kansas66047, United States.
ACS Meas Sci Au. 2022 Nov 15;3(2):103-112. doi: 10.1021/acsmeasuresciau.2c00056. eCollection 2023 Apr 19.
Extracting information from experimental measurements in the chemical sciences typically requires curve fitting, deconvolution, and/or solving the governing partial differential equations via numerical (e.g., finite element analysis) or analytical methods. However, using numerical or analytical methods for high-throughput data analysis typically requires significant postprocessing efforts. Here, we show that deep learning artificial neural networks can be a very effective tool for extracting information from experimental data. As an example, reactivity and topography information from scanning electrochemical microscopy (SECM) approach curves are highly convoluted. This study utilized multilayer perceptrons and convolutional neural networks trained on simulated SECM data to extract kinetic rate constants of catalytic substrates. Our key findings were that multilayer perceptron models performed very well when the experimental data were close to the ideal conditions with which the model was trained. However, convolutional neural networks, which analyze images as opposed to direct data, were able to accurately predict the kinetic rate constant of Fe-doped nickel (oxy)hydroxide catalyst at different applied potentials even though the experimental approach curves were not ideal. Due to the speed at which machine learning models can analyze data, we believe this study shows that artificial neural networks could become powerful tools in high-throughput data analysis.
从化学科学中的实验测量中提取信息通常需要曲线拟合、反卷积,和/或通过数值方法(如有限元分析)或解析方法求解控制偏微分方程。然而,使用数值或解析方法进行高通量数据分析通常需要大量的后处理工作。在此,我们表明深度学习人工神经网络可以成为从实验数据中提取信息的非常有效的工具。例如,扫描电化学显微镜(SECM)进样曲线中的反应性和形貌信息高度卷积。本研究利用在模拟SECM数据上训练的多层感知器和卷积神经网络来提取催化底物的动力学速率常数。我们的主要发现是,当实验数据接近训练模型时的理想条件时,多层感知器模型表现良好。然而,与直接分析数据不同,卷积神经网络能够准确预测不同施加电位下铁掺杂氢氧化镍(氧)催化剂的动力学速率常数,即使实验进样曲线并不理想。由于机器学习模型分析数据的速度,我们相信这项研究表明人工神经网络可以成为高通量数据分析中的强大工具。