首页> 外文会议>IEE Colloquium on Why aren't we Training Measurement Engineers?, 1992 >Lagrange-Type Neural Networks for Nonlinear Programming Problems with Inequality Constraints
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Lagrange-Type Neural Networks for Nonlinear Programming Problems with Inequality Constraints

机译:具有不等式约束的非线性规划问题的Lagrange型神经网络

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, =1,2,...,m, say, the nonnegative constraints imposed on inequality constraints in Karush-Kuhn-Tucker necessary conditions are removed completely. In the construction of Lagrange-type neural networks, it is no longer necessary to convert inequality constraints into equality constraints by slack variables in order to reuse those results concerned only with equality constraints. Utilizing this technique, a new Lagrange-type neural network is devised, which handles inequality constraints directly without adding slack variables. Finally, the local stability of the proposed Lagrange neural networks is analyzed rigourously with Liapunov’s first approximation principle, and its convergence is discussed with LaSalle’s invariance principle.
机译:,= 1,2,...,m,例如,完全消除了在Karush-Kuhn-Tucker必要条件中施加于不等式约束的非负约束。在构造Lagrange型神经网络时,不再需要通过松弛变量将不等式约束转换为等式约束,以便重用那些仅涉及等式约束的结果。利用该技术,设计了一种新的拉格朗日型神经网络,该网络可直接处理不平等约束而无需添加松弛变量。最后,使用Liapunov的第一近似原理对所提出的Lagrange神经网络的局部稳定性进行了严格的分析,并使用LaSalle的不变性原理讨论了其收敛性。

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