首页> 外文期刊>Neural processing letters >An Improved Finite Time Convergence Recurrent Neural Network with Application to Time-Varying Linear Complex Matrix Equation Solution
【24h】

An Improved Finite Time Convergence Recurrent Neural Network with Application to Time-Varying Linear Complex Matrix Equation Solution

机译:一种改进的有限时间融合经常性神经网络,其应用于时变线性复合矩阵方程解决方案

获取原文
获取原文并翻译 | 示例
       

摘要

Linear matrix equation (LME) is a kind of very important mathematical equation, and many practical problems in scientific and engineering fields can be described by LMEs in mathematics. In this paper, an improved finite time convergence zeroing neural network (FTCZNN) for online solving time-varying linear complex matrix equation (TVLCME) is realized. Different from the exponential convergence conventional zeroing neural network (CZNN), the new FTCZNN adopts a novel design formula for its error matrix converging to zero. Theoretical analysis and proof of the new FTCZNN converges to the theoretical solution of the TVLCME in finite time are provided. For comparison purpose, the CZNN is also developed for solving the same TVLCME. Compared with the exponentially converging CZNN, the new FTCZNN has great improvement in convergence performance, and the simulation results demonstrate that the new FTCZNN is a more effective and superior candidate for online solving TVLCME.
机译:线性矩阵方程(LME)是一种非常重要的数学方程,在数学中的LME可以描述科学和工程领域的许多实际问题。在本文中,实现了在线求解时变线性复杂矩阵方程(TVLCME)的改进的有限时间汇聚归零神经网络(FTCZNN)。不同于指数融合传统归零神经网络(CZNN),新的FTCZNN采用新颖的设计公式,其误差矩阵会聚至零。提供了新型FTCZNN的理论分析和证明,在有限时间内收敛到TVLCME的理论解决方案。为了比较目的,CZNN也被开发用于解决相同的TVLCME。与指数融合CZNN相比,新的FTCZNN对收敛性能有很大提高,仿真结果表明,新的FTCZNN是一个更有效和更优越的在线解决TVLCME的候选者。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号