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混沌神经网络

混沌神经网络的相关文献在1995年到2023年内共计248篇,主要集中在自动化技术、计算机技术、无线电电子学、电信技术、电工技术 等领域,其中期刊论文180篇、会议论文23篇、专利文献370434篇;相关期刊114种,包括浙江大学学报(理学版)、东北大学学报(自然科学版)、江苏科技大学学报(自然科学版)等; 相关会议23种,包括安徽省2014年青年地质学术讨论会、第十届中国水论坛、综合电子系统技术教育部重点实验室暨四川省高密度集成器件工程技术研究中心2012学术年会等;混沌神经网络的相关文献由518位作者贡献,包括徐耀群、于舒娟、张昀等。

混沌神经网络—发文量

期刊论文>

论文:180 占比:0.05%

会议论文>

论文:23 占比:0.01%

专利文献>

论文:370434 占比:99.95%

总计:370637篇

混沌神经网络—发文趋势图

混沌神经网络

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  • 徐耀群
  • 于舒娟
  • 张昀
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  • 牛艺春
  • 高明
  • 何国光
  • 曹志彤
  • 孙明
  • 崔宝同
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    • 徐耀群; 杨振华
    • 摘要: 将切比雪夫多项式引入混沌神经网络的自反馈中,构造一种新的暂态混沌神经网络模型.分析了单神经元的最大Lyapunov指数时间演化图和倒分叉图,以及自反馈项对网络动态特性的影响.通过非线性函数优化和旅行商问题验证了模型有效性.仿真结果显示,新构建的混沌网络模型能有效的避免寻优过程陷入局部极小值的问题.
    • 钟宏宇
    • 摘要: 提出了一种基于灰色理论和神经网络的中期风力发电容量预测方法,目的是利用灰色理论模型的指数增长规律和混沌神经网络模型的非线性学习能力实现风力发电容量的中期预测,为电网调度提供发电依据。首先,设计了灰色新陈代谢预测模型,仿真了灰色新陈代谢模型预测的月发电量,并与实际发电量曲线对比;其次,采用线性加权法对灰色新陈代谢模型、混沌神经网络模型得到的预测结果进行优化组合,仿真了组合模型,并与实际值的曲线对比;最后,得到组合模型预测值的预测误差最小的结论,有效提高了风电场发电容量中期预测的精度。
    • 黄力
    • 摘要: 本文首先介绍了混沌理论的有关知识,之后推导利用Chebyshev正交多项式构造神经网络的详细算法,在此基础上结合混沌映射Henon Map构造了Chebyshev混沌神经网络,最后,根据加密解密的基本思想编写了基于混沌控制系统的Chebyshev混沌神经网络异步加密与解密算法,仿真结果表明,本算法能实现Chebyshev混沌神经网络的有效收敛,能对混沌序列进行高效跟踪,而且对明文加密与解密的效果良好.
    • 胡志强; 李文静; 乔俊飞
    • 摘要: In this paper,we propose a novel frequency-conversion sinusoidal chaotic neuron model with a disturbance feature to study the anti-disturbance ability of the frequency-conversion sinusoidal chaotic neural network(FCSCNN).To do so,we introduce trigonometric function and wavelet function disturbances into the internal state of the chaotic neuron model.We present a reversed bifurcation diagram of the chaotic neuron and a time evolution diagram of the Lya-punov exponent and then analyze the dynamic properties.We constructed a new transient chaotic neural network(TCNN)using the novel chaotic neuron model.By selecting different disturbance coefficients,we performed network function optimization and combinational optimization.Simulation results show that the FCSCNN can effectively solve function optimization and combinational optimization problems with appropriate disturbance coefficients,which demon-strate the strong robustness and anti-disturbance ability of the model.%为了研究变频正弦混沌神经网络(FCSCNN)的抗扰动能力,在该混沌神经元的内部状态中分别引入三角函数和小波函数扰动项,提出了带扰动的变频正弦混沌神经元模型.给出了该混沌神经元的倒分岔图及Lyapunov指数的时间演化图,分析了其动力学特性.利用该模型构建了新型暂态混沌神经网络,通过选择不同的扰动系数,将其应用于函数优化和组合优化问题上.仿真实验表明,在适当的扰动系数下,变频正弦混沌神经网络能够有效地解决函数优化和组合优化问题,体现了该模型具有较强的鲁棒性和抗扰动能力.
    • 李聪明; 袁长丰
    • 摘要: 针对边坡垂直位移预测效果好坏的问题,从边坡岩体的非线性特征出发,结合某岩质边坡变形监测资料,运用混沌理论分别求出各个岩体系统的Kolmogorov熵,得出了各处岩体垂直位移的有效预测的时间尺度.同时,运用混沌神经网络对各处岩体的垂直位移进行预测,通过比较各处岩体垂直位移的可预测性,分析其对边坡垂直位移预测精度的影响.结果表明:可预测性越好的岩体,其垂直位移预测精度越高,反之,预测精度越低.
    • 李界家; 高天浩; 纪昕洋
    • 摘要: 铝电解过程中阳极效应、冷槽、热槽等异常状态经常单独或同时发生,异常状态的发生对整个电解生产过程中的各项技术指标产生很大影响,影响铝的产量和质量降低,浪费大量的电能,针对此问题本文提出了一种多模型并行的铝电解异常状态预报方法。该方法先进行降维处理,提取异常状态信息主成分,再分别通过混沌神经网络模型与图像检测模型进行异常状态的初步诊断,最后将两种模型的输出结果以最优权值进行加权融合,用加权融合后的结果进行异常状态的诊断与预报,这种方法提高了异常状态预报的准确率,加大了预报的提前量,抗干扰能力得到加强。实验结果表明:该方法能高效准确的对铝电解过程中的异常状态进行诊断与预报。
    • 王鸿玺; 李飞; 张琳; 杨鹏; 陶鹏; 李翀; 徐建云
    • 摘要: 利用大数据挖掘技术对光伏发电功率数据进行建模,并以偏相关分析法对光伏系统发电功率与各个影响因子间的相关性进行分析,选取偏相关系数最为显著的影响因子作为输入样本,综合大数据挖掘技术中混沌神经网络(CNN)、支持向量机(SVM)、多项式回归与鲁棒平滑等多种算法的优点,建立了以混沌粒子群算法优化权重的组合预测模型,并利用该模型对某光伏系统的发电功率进行预测,验证了模型的有效性和精确性。
    • 胡志强; 李文静; 乔俊飞
    • 摘要: The optimization performance of transiently chaotic neural network (TCNN) is affected by various factors such as chaotic characteristic, model parameters, and annealing function, and its capacity of global optimization is limited. It is demonstrated that the non-monotonic activation function can generate richer chaotic characteristic than the monotonic activation function in the TCNN model. Besides, the activation function involving neurobiological mechanism can not only reflect the rich brain activity in brain waves, but also enhance the non-linear dynamic characteristic, which may further improve the global optimization ability. Hence, a novel chaotic neuron model is proposed with the non-monotonic activation function based on the neurobiological mechanisms from the electroencephalogram.The electroencephalogram consists of five brain waves(i.e.,α,β,δ,γ,and θ waves)which are defined by the quality and intensity of brain waves with different frequency bands ranging from 0.5 Hz to 100 Hz. The brain wave with a higher frequency and a lower amplitude represents a more active brain. Researches demonstrate that the five brain waves can be simplified into sinusoidal waves with different frequencies. Hence, a frequency conversion sinusoidal (FCS) function which has the consistent frequency range and features with brain waves is designed based on the above neurobiological mechanisms. Then a novel chaotic neuron model with non-monotonic activation function which is composed of the FCS function and sigmoid function, is proposed for richer chaotic dynamic characteristic. The reversed bifurcation and the Lyapunov exponent of the chaotic neuron are given and the dynamic system is analyzed, indicating that the proposed FCS neuron model owns richer chaotic dynamic characteristic than transiently chaotic neuron model due to its specialnon-monotonic activation function.Based on the neuron model, a novel transiently-chaotic neural network—frequency conversion sinusoidal chaoticneural network (FCSCNN) is constructed and the basis of model parameter selection is provided as well. To validate the effectiveness of the proposed model, the FCSCNN is applied to nonlinear function optimization and 10-city, 30-city,75-city traveling salesman problem. The experimental results show that 1) the FCSCNN has a good performance under the condition of moderate a, smaller c·A(0) and ε2(0);2) on the basis of the appropriate model parameters, the FCSCNN has better global optimization ability and optimization accuracy than Hopfield neural network, TCNN, improved-TCNN due to its richer chaotic characteristic in complicated combinational optimization problem, especially in middle and large scale problem.%针对暂态混沌神经网络全局寻优能力受限的问题,提出了一种基于脑电波生物机制的新型混沌神经网络模型——变频正弦混沌神经网络.该模型将变频正弦函数和Sigmoid函数组合作为非单调激励函数,本文给出了该混沌神经元的倒分岔图及Lyapunov指数的时间演化图,分析了其动力学特性.进一步将该模型应用到非线性函数优化和组合优化问题上,并分析了参数的变化规律.仿真实验证明变频正弦混沌神经网络比暂态混沌神经网络及其他相关模型具有更好的全局寻优能力.
    • 马还援; 杨振兴; 王显彪; 陈飞飞
    • 摘要: 本文基坑变形预测共包含了两个过程,即一次非线性预测和二次非线性预测。其中,一次非线性预测是利用多种回归模型对基坑的变形进行回归预测,探讨不同回归模型的预测效果,并选取较优的回归结果进行组合预测;二次非线性预测是利用混沌RBF神经网络对组合预测的搜索误差序列进行二次预测,进一步减少预测误差,提高预测精度。结果表明:本文的预测精度较高,该方法在基坑变形预测中具有较高的有效性和可行性。%In this paper, the deformation prediction of foundation excavation contains two processes, namely the first time nonlinear and the two nonlinear prediction. Among them, a nonlinear prediction is used to predict the deformation of foundation excavation by using multiple regression models, and to explore the effect of different regression models and select the best regression results to predict by the combination forecasting. The two nonlinear prediction is used to predict the error sequence of combination forecasting by using chaotic RBF neural network, and to further reduce the prediction error and improve the prediction accuracy.
    • 马振鹏; 吴宗法
    • 摘要: 大脑皮层是一个具有混沌特性的非线性系统,中枢模式发生器可产生节律性运动。依据生物学经验,中枢模式发生器受大脑皮层控制,但两者作用机制的研究对于生物运动控制仍是一个开放性问题。文中建立了混沌神经网络与中枢模式发生器相互作用的模型和状态方程,通过分岔变化对模型的动态特性进行分析,说明混沌神经网络与中枢模式发生器间的相互工作机制,以及中枢模式发生器参数对模型的影响。同时,提出了大脑皮层有许多稳定点模式与步态模式相对应,大脑皮层模式的改变可控制步态模式的改变。研究结果表明,可通过调整大脑皮层自身外部输入和中枢模式发生器反馈回大脑皮层的值,来改变大脑皮层模式。%The cerebral cortex is a chaotic nonlinear system . The Central Pattern Generator(CPG) can generate a rhythmic movement . According to biological knowledge , the CPG is controlled by the central nervous . But the study of the mechanism for biological motion control is still an open question . In this paper , we establish the model for depicting the interaction between the chaotic neural network and CPG . Bifurcation analysis and phase are used to describe changes in system behavior and show the interaction mechanism . In addition , the influences of CPG parameters on the model are discussed . Many modes described at state equilibrium points in the cerebral cortex correspond to gait patterns , and the change of state equilibrium points in the cerebral cortex leads to the change of gait patterns . At the same time , the results show that the brain cortex patterns can be changed by adjusting the value of the brain cortex'external input and CPG's feedback to the cerebral cortex .
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