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人工神经网络:基础、计算、设计与应用。

Artificial neural networks: fundamentals, computing, design, and application.

作者信息

Basheer I A, Hajmeer M

机构信息

Engineering Service Center, The Headquarters Transportation Laboratory, CalTrans, Sacramento, CA 95819, USA.

出版信息

J Microbiol Methods. 2000 Dec 1;43(1):3-31. doi: 10.1016/s0167-7012(00)00201-3.

Abstract

Artificial neural networks (ANNs) are relatively new computational tools that have found extensive utilization in solving many complex real-world problems. The attractiveness of ANNs comes from their remarkable information processing characteristics pertinent mainly to nonlinearity, high parallelism, fault and noise tolerance, and learning and generalization capabilities. This paper aims to familiarize the reader with ANN-based computing (neurocomputing) and to serve as a useful companion practical guide and toolkit for the ANNs modeler along the course of ANN project development. The history of the evolution of neurocomputing and its relation to the field of neurobiology is briefly discussed. ANNs are compared to both expert systems and statistical regression and their advantages and limitations are outlined. A bird's eye review of the various types of ANNs and the related learning rules is presented, with special emphasis on backpropagation (BP) ANNs theory and design. A generalized methodology for developing successful ANNs projects from conceptualization, to design, to implementation, is described. The most common problems that BPANNs developers face during training are summarized in conjunction with possible causes and remedies. Finally, as a practical application, BPANNs were used to model the microbial growth curves of S. flexneri. The developed model was reasonably accurate in simulating both training and test time-dependent growth curves as affected by temperature and pH.

摘要

人工神经网络(ANNs)是相对较新的计算工具,已在解决许多复杂的现实世界问题中得到广泛应用。人工神经网络的吸引力在于其卓越的信息处理特性,主要包括非线性、高度并行性、容错和抗噪能力以及学习和泛化能力。本文旨在让读者熟悉基于人工神经网络的计算(神经计算),并在人工神经网络项目开发过程中为人工神经网络建模者提供实用的实践指南和工具包。简要讨论了神经计算的发展历史及其与神经生物学领域的关系。将人工神经网络与专家系统和统计回归进行了比较,并概述了它们的优缺点。对各种类型的人工神经网络和相关学习规则进行了简要回顾,特别强调了反向传播(BP)人工神经网络的理论和设计。描述了从概念化到设计再到实施成功开发人工神经网络项目的一般方法。总结了BP人工神经网络开发者在训练过程中面临的最常见问题以及可能的原因和补救措施。最后,作为实际应用,使用BP人工神经网络对福氏志贺菌的微生物生长曲线进行建模。所开发的模型在模拟受温度和pH影响的训练和测试时间依赖性生长曲线方面具有合理的准确性。

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