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Application of artificial neural networks to unit commitment

机译:人工神经网络在单位承诺中的应用

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Artificial neural networks are currently being applied to a variety of complex combinatorial optimization and nonlinear programming problems. In this paper, a combination of Hopfield Tank type, and Chua-Lin type artificial neural networks is applied to solve simultaneously the unit commitment and the associated economic unit dispatch problems. The approach is based on imbedding the various constraints in a generalized energy function, and then defining the network dynamics in such a way that the generalized energy function is a Lyapunov function of the artificial neural network. The novel feature of the proposed approach is that the nonlinear programming and the combinatorial optimization problems are solved simultaneously by one network. An illustrative example is also presented.
机译:目前正在应用人工神经网络的各种复杂组合优化和非线性编程问题。本文采用了霍普田罐式的组合和楚林型人工神经网络的组合来同时解决单位承诺和相关的经济单位派遣问题。该方法是基于嵌入广义能量函数中的各种约束,然后以广义能量函数是人工神经网络的Lyapunov函数的方式定义网络动态。所提出的方法的新颖特征是通过一个网络同时解决非线性编程和组合优化问题。还呈现了说明性示例。

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