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An Incremental Time—Delay Neural Network for Dynamical Recurrent Associative Memory
引用本文:刘娟,Cai Zixing.An Incremental Time—Delay Neural Network for Dynamical Recurrent Associative Memory[J].高技术通讯(英文版),2002,8(1):72-75.
作者姓名:刘娟  Cai Zixing
作者单位:CollegeofInformationScienceandEngineering,CentralSouthUnversity,Changsha410083,P.R.China
摘    要:An incremental time-delay neural network based on synapse growth,which is suitable for dynamic control and learning of autonomous robots,is prooposed to improve the learning and retrieving performance of dynamical recurrent associative memory architecture.The model allows steady and continuous establishment of associative memory for spatio-temporal regularities and time series in discrete sequence of inputs.The inserted hiddewn units can be taken as the Long-term memories that expand the capacity of network and sometimes may fade away under certain condition.Preliminary experiment has shown that this incremental netwrok may be a promising approach to endow autonomous robots with the ability of adapting to new data without destroying the learned patterns.The system also bendfits from its potential chaos character for emergence.

关 键 词:人工神经网络  动力重复相关记忆  增长时间延迟神经网络

An Incremental Time-delay Neural Network for Dynamical Recurrent Associative Memory
Cai Zixing.An Incremental Time-delay Neural Network for Dynamical Recurrent Associative Memory[J].High Technology Letters,2002,8(1):72-75.
Authors:Cai Zixing
Abstract:An incremental time-delay neural network based on synapse growth, which is suitable for dynamic control and learning of autonomous robots, is proposed to improve the learning and retrieving performance of dynamical recurrent associative memory architecture. The model allows steady and continuous establishment of associative memory for spatio-temporal regularities and time series in discrete sequence of inputs. The inserted hidden units can be taken as the long-term memories that expand the capacity of network and sometimes may fade away under certain condition. Preliminary experiment has shown that this incremental network may be a promising approach to endow autonomous robots with the ability of adapting to new data without destroying the learned patterns. The system also benefits from its potential chaos character for emergence.
Keywords:Time-delay recurrent neural network  Spatio-temporal associative memory  Pattern sequences learning  Lifelong ontogenetic evolution  Autonomous robots
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