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Modeling of complex dynamic systems using differential neural networks with the incorporation of a priori knowledge

机译:结合先验知识使用差分神经网络对复杂动态系统建模

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In this paper, neural algorithms, including the multi-layered perception (MLP) differential approximator, generalized hybrid power series, discrete Hopfield neural network, and the hybrid numerical, are used for constructing models that incorporate a priori knowledge in the form of differential equations for dynamic engineering processes. The properties of these approaches are discussed and compared to each other in terms of efficiency and accuracy. The presented algorithms have a number of advantages over other traditional mesh-based methods such as reduction of the computational cost, speed up of the execution time, and data integration with the a priori knowledge. Furthermore, the presented techniques are applicable when the differential equations governing a system or dynamic engineering process are not fully understood. The proposed algorithms learn to compute the unknown or free parameters of the equation from observations of the process behavior, hence a more precise theoretical description of the process is obtained. Additionally, there will be no need to solve the differential equation each time the free parameters change. The parallel nature of the approaches outlined in this paper make them attractive for parallel implementation in dynamic engineering processes. (C) 2015 Elsevier Inc. All rights reserved.
机译:在本文中,包括多层感知(MLP)微分逼近器,广义混合幂级数,离散Hopfield神经网络和混合数值在内的神经算法用于构建以微分方程形式包含先验知识的模型。用于动态工程流程。讨论了这些方法的属性,并在效率和准确性方面进行了比较。相对于其他传统的基于网格的方法,所提出的算法具有许多优势,例如降低了计算成本,加快了执行时间以及具有先验知识的数据集成。此外,当不完全理解控制系统或动态工程过程的微分方程时,可以应用所提出的技术。所提出的算法通过对过程行为的观察来学习计算方程的未知参数或自由参数,从而获得对过程的更精确的理论描述。另外,每次自由参数改变时都不需要求解微分方程。本文概述的方法的并行性使它们对于动态工程过程中的并行实现具有吸引力。 (C)2015 Elsevier Inc.保留所有权利。

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