This paper considers the modeling and convergence of hyper-networked evolutionary games (HNEGs). In an HNEG the network graph is a hypergraph, which allows the fundamental network game to be a multi-player one. Usin...This paper considers the modeling and convergence of hyper-networked evolutionary games (HNEGs). In an HNEG the network graph is a hypergraph, which allows the fundamental network game to be a multi-player one. Using semi-tensor product of matrices and the fundamental evolutionary equation, the dynamics of an HNEG is obtained and we extend the results about the networked evolutionary games to show whether an HNEG is potential and how to calculate the potential. Then we propose a new strategy updating rule, called the cascading myopic best response adjustment rule (MBRAR), and prove that under the cascading MBRAR the strategies of an HNEG will converge to a pure Nash equilibrium. An example is presented and discussed in detail to demonstrate the theoretical and numerical results.展开更多
水库进行水力排沙时,高含沙水流过程可能会对鱼类等水生动物产生负面影响,其量化评估方法研究较为薄弱。为了预测和评估水库排沙过程对下游鱼类的影响,本文利用黄河花斑裸鲤和鲤鱼在高含沙水体中生存特性研究的实验数据,综合考虑含沙量...水库进行水力排沙时,高含沙水流过程可能会对鱼类等水生动物产生负面影响,其量化评估方法研究较为薄弱。为了预测和评估水库排沙过程对下游鱼类的影响,本文利用黄河花斑裸鲤和鲤鱼在高含沙水体中生存特性研究的实验数据,综合考虑含沙量和粒径、溶解氧、暴露时间、水温等因子对鱼类生存的影响,建立了基于IPSO-BP神经网络的高含沙水体对鱼类致死影响预测方法,对目标鱼类死亡率的预测误差小于6%。本文使用了与BP神经网络紧密耦合并引入动态参数和变异扰动的IPSO算法,较BP和PSO-BP神经网络预测能力更佳,相比国内外已有的Stress Index(SI)、Severity of Ill Effect(SEV)和多元拟合方法预测精度得到显著提升。分析表明,本文提出的预测方法能够考虑高含沙水体中鱼类生存受多环境因子联合制约,且多因子之间存在复杂关联的情况,可为评估高含沙水流过程对水生态的影响提供新的方法。展开更多
为了解决冲击噪声下长短时记忆(long short term memory,LSTM)神经网络调制信号识别方法抗冲击噪声能力弱和超参数难以确定的问题,本文提出了一种演化长短时记忆神经网络的调制识别方法。利用基于短时傅里叶变换的卷积神经网络(convolut...为了解决冲击噪声下长短时记忆(long short term memory,LSTM)神经网络调制信号识别方法抗冲击噪声能力弱和超参数难以确定的问题,本文提出了一种演化长短时记忆神经网络的调制识别方法。利用基于短时傅里叶变换的卷积神经网络(convolution neural network,CNN)去噪模型对数据集去噪;结合量子计算机制和旗鱼优化器(sailfish optimizer,SFO)设计了量子旗鱼算法(quantum sailfish algorithm,QSFA)去演化LSTM神经网络以获得最优的超参数;使用演化长短时记忆神经网络作为分类器进行自动调制信号识别。仿真结果表明,采用所设计的CNN去噪和演化长短时记忆神经网络模型,识别准确率有了大幅度的提高。量子旗鱼算法演化LSTM神经网络模型降低了传统LSTM神经网络容易陷于局部极小值或者过拟合的概率,当混合信噪比为0 dB,所提方法对11种调制信号的平均识别准确率达到90%以上。展开更多
基金supported partly by National Natural Science Foundation of China(Nos.61074114 and 61273013)
文摘This paper considers the modeling and convergence of hyper-networked evolutionary games (HNEGs). In an HNEG the network graph is a hypergraph, which allows the fundamental network game to be a multi-player one. Using semi-tensor product of matrices and the fundamental evolutionary equation, the dynamics of an HNEG is obtained and we extend the results about the networked evolutionary games to show whether an HNEG is potential and how to calculate the potential. Then we propose a new strategy updating rule, called the cascading myopic best response adjustment rule (MBRAR), and prove that under the cascading MBRAR the strategies of an HNEG will converge to a pure Nash equilibrium. An example is presented and discussed in detail to demonstrate the theoretical and numerical results.
文摘水库进行水力排沙时,高含沙水流过程可能会对鱼类等水生动物产生负面影响,其量化评估方法研究较为薄弱。为了预测和评估水库排沙过程对下游鱼类的影响,本文利用黄河花斑裸鲤和鲤鱼在高含沙水体中生存特性研究的实验数据,综合考虑含沙量和粒径、溶解氧、暴露时间、水温等因子对鱼类生存的影响,建立了基于IPSO-BP神经网络的高含沙水体对鱼类致死影响预测方法,对目标鱼类死亡率的预测误差小于6%。本文使用了与BP神经网络紧密耦合并引入动态参数和变异扰动的IPSO算法,较BP和PSO-BP神经网络预测能力更佳,相比国内外已有的Stress Index(SI)、Severity of Ill Effect(SEV)和多元拟合方法预测精度得到显著提升。分析表明,本文提出的预测方法能够考虑高含沙水体中鱼类生存受多环境因子联合制约,且多因子之间存在复杂关联的情况,可为评估高含沙水流过程对水生态的影响提供新的方法。
文摘为了解决冲击噪声下长短时记忆(long short term memory,LSTM)神经网络调制信号识别方法抗冲击噪声能力弱和超参数难以确定的问题,本文提出了一种演化长短时记忆神经网络的调制识别方法。利用基于短时傅里叶变换的卷积神经网络(convolution neural network,CNN)去噪模型对数据集去噪;结合量子计算机制和旗鱼优化器(sailfish optimizer,SFO)设计了量子旗鱼算法(quantum sailfish algorithm,QSFA)去演化LSTM神经网络以获得最优的超参数;使用演化长短时记忆神经网络作为分类器进行自动调制信号识别。仿真结果表明,采用所设计的CNN去噪和演化长短时记忆神经网络模型,识别准确率有了大幅度的提高。量子旗鱼算法演化LSTM神经网络模型降低了传统LSTM神经网络容易陷于局部极小值或者过拟合的概率,当混合信噪比为0 dB,所提方法对11种调制信号的平均识别准确率达到90%以上。