首页> 外文期刊>Journal of chemical theory and computation: JCTC >Evolutionary Approach to Constructing a Deep Feedforward Neural Network for Prediction of Electronic Coupling Elements in Molecular Materials
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Evolutionary Approach to Constructing a Deep Feedforward Neural Network for Prediction of Electronic Coupling Elements in Molecular Materials

机译:构建深馈神经网络以预测分子材料电子耦合元件预测的进化方法

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摘要

We present a general framework for the construction of a deep feedforward neural network (FFNN) to predict distance and orientation dependent electronic coupling elements in disordered molecular materials. An evolutionary algorithm automatizes the selection of an optimal architecture of the artificial neural network within a predefined search space. Systematic guidance, beyond minimizing the model error with stochastic gradient descent based backpropagation, is provided by simultaneous maximization of a model fitness that takes into account additional physical properties, such as the field-dependent carrier mobility. As a prototypical system, we consider hole transport in amorphous tris(8-hydroxyquinolinato)aluminum. Reference data for training and validation is obtained from multiscale ab initio simulations, in which coupling elements are evaluated using density functional theory, for a system containing 4096 molecules. The Coulomb matrix representation is chosen to encode the explicit molecular pair coordinates into a rotation and translation invariant feature set for the FFNN. The final optimized deep feedforward neural network is tested for transport models without and with energetic disorder. It predicts electronic coupling elements and mobilities in excellent agreement with the reference data. Such a FFNN is readily applicable to much larger systems at negligible computational cost, providing a powerful surrogate model to overcome the size limitations of the ab initio approach.
机译:我们为建造深馈神经网络(FFNN)的施工一般框架,以预测无序分子材料中的距离和取向依赖性电子耦合元件。进化算法自动化预定搜索空间内人工神经网络的最佳架构的选择。通过同时最大限度地,通过同时最大化考虑额外物理属性的模型适应度,可以通过同时最大化诸如现场载波移动性的模型适应性来提供系统的引导。作为一种原型系统,我们认为无定形Tris(8-羟基喹啉)铝中的空穴传输。用于训练和验证的参考数据是从多尺度AB初始模拟获得的,其中使用密度函数理论评估耦合元件,用于包含4096分子的系统。选择库仑矩阵表示以将显式分子对坐标编码为FFNN的旋转和转换不变特征。最终优化的深馈通馈神经网络被测试用于运输模型,没有充电障碍。它预测电子耦合元件和迁移率与参考数据非常好。这种FFNN可以随时适用于更大的计算成本,提供强大的代理模型,以克服AB Initio方法的尺寸限制。

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