设计一个改进的Hopfield网络来解决具有非线性成本函数的经济调度问题

I. Nunes de Silva, L. Nepomuceno, T. M. Bastos
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引用次数: 4

摘要

近年来,人工神经网络已成为解决经济调度问题的重要方法。在大多数调度模型中,成本函数必须是线性的或二次的。因此,由于这些方法不接受非线性代价函数,具有多个极小点的函数对模拟来说是一个问题。文献中指出的另一个缺点是,这些神经方法中的一些不能有效地收敛于可行平衡点。本文讨论了一种改进的Hopfield结构在求解由非线性代价函数定义的ED问题中的应用。本文采用有效子空间技术计算神经网络的内部参数,保证了神经网络收敛到代表ED问题解的平衡点。仿真结果和三总线测试系统的对比分析表明了该方法的有效性。
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Designing a modified Hopfield network to solve an economic dispatch problem with nonlinear cost function
Economic dispatch (ED) problems have recently been solved by artificial neural networks approaches. In most of these dispatch models, the cost function must be linear or quadratic. Therefore, functions that have several minimum points represent a problem to the simulation since these approaches have not accepted nonlinear cost function. Another drawback pointed out in the literature is that some of these neural approaches fail to converge efficiently towards feasible equilibrium points. This paper discusses the application of a modified Hopfield architecture for solving ED problems defined by nonlinear cost function. The internal parameters of the neural network adopted here are computed using the valid-subspace technique, which guarantees convergence to equilibrium points that represent a solution for the ED problem. Simulation results and a comparative analysis involving a 3-bus test system are presented to illustrate efficiency of the proposed approach.
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