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神经网络系统理论及在纺织研究中的应用 被引量:12
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作者 姚桂芬 郭建生 周永元 《现代纺织技术》 2002年第4期55-57,60,共4页
介绍了神经网络系统理论的发展、现状及应用。神经网络系统理论广泛应用于纺织研究的客观评定、预测和优化领域。建立不同的指标分析体系与学习计算方法是今后神经网络系统理论发展的重要步骤。
关键词 神经网络系统理论 纺织研究 应用 网络设计 客观评定 预测 优化
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非线性控制理论新进展──《神经网络系统理论》评介
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作者 郑永安 《中国图书评论》 CSSCI 北大核心 1999年第3期50-50,共1页
关键词 神经网络系统理论 非线性控制理论 数学模型 计算机技术
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Application of data fusion method to fault diagnosis of nuclear power plant 被引量:3
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作者 XIEChun-li XIAHong LIUYong-kuo 《Journal of Marine Science and Application》 2005年第1期30-33,共4页
The work condition of nuclear power plant (NPP) is very bad, which makes ithas faults easily. In order to diagnose (he faults real time, the fusion diagnosis system is built.The data fusion fault diagnosis system adop... The work condition of nuclear power plant (NPP) is very bad, which makes ithas faults easily. In order to diagnose (he faults real time, the fusion diagnosis system is built.The data fusion fault diagnosis system adopts data fusion method and divides the fault diagnosisinto three levels, which are data fusion level, feature level and decision level. The feature leveluses three parallel neural networks whose structures are the same. The purpose of using neuralnetworks is mainly to get basic probability assignment ( BPA) of D-S evidence theory, and the neuralnetworks in feature level are used for local diagnosis. D-S evidence theory is adopted to integratethe local diagnosis results in decision level. The reactor coolant system is the study object andwe choose 2# steam generator U-tubes break of the reactor coolant system as a diagnostic example.The experiments prove that the fusion diagnosis system can satisfy the fault diagnosis requirementof complicated system, and verify that the fusion fault diagnosis system can realize the faultdiagnosis of NPP on line timely. 展开更多
关键词 neural network D-S evidence theory fusion diagnosis system
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Memory Chain in a Chaotic Autoassociative Neural Network
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作者 范宏 王直杰 张珏 《Journal of Donghua University(English Edition)》 EI CAS 2005年第1期113-115,共3页
Memory chain is observed in a chaotic autoassociative neural network. The network recalls first stored pattern from a fragment of a memory, stays at this pattern for a while, transits to the second stored pattern that... Memory chain is observed in a chaotic autoassociative neural network. The network recalls first stored pattern from a fragment of a memory, stays at this pattern for a while, transits to the second stored pattern that overlaps with the first recalled pattern.Then it stays at the second recalled pattern for a while, transits to the third stored pattern that overlaps with the second recalled pattern, and so on. Thus a memory chain is generated. The memory chain ends with the pattern that overlaps no other stored patten. This phenomenon is similar to the way of recalling process of human beings in some respects. 展开更多
关键词 CHAOS neural network associative memory.
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