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Zhang Neural Network Versus Gradient Neural Network for Solving Time-Varying Linear Inequalities

机译:张神经网络与梯度神经网络求解时变线性不等式

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摘要

By following Zhang design method, a new type of recurrent neural network [i.e., Zhang neural network (ZNN)] is presented, investigated, and analyzed for online solution of time-varying linear inequalities. Theoretical analysis is given on convergence properties of the proposed ZNN model. For comparative purposes, the conventional gradient neural network is developed and exploited for solving online time-varying linear inequalities as well. Computer simulation results further verify and demonstrate the efficacy, novelty, and superiority of such a ZNN model and its method for solving time-varying linear inequalities.
机译:通过遵循Zhang设计方法,提出了一种新型的递归神经网络[即Zhang神经网络(ZNN)],对其进行了研究和分析,以在线求解时变线性不等式。对所提出的ZNN模型的收敛性进行了理论分析。为了进行比较,还开发并利用了常规的梯度神经网络来求解在线时变线性不等式。计算机仿真结果进一步验证并证明了这种ZNN模型及其求解时变线性不等式的方法的有效性,新颖性和优越性。

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