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引用次数: 1

摘要

在本文中,作者展示了Pawlak粗糙集理论和神经网络在电力交易领域的一个实际应用。欧洲电力系统彼此紧密相连,导致意外的环路流动。这种现象和缺乏商业上可行的信息使得电力交易者很难成功地与电力进行交易。使用粗糙集理论来确定可以应用于交易活动的神经网络的重要输入。本文还介绍了一种通用的优化技术以及神经网络在电力系统中的实际应用。
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Application of rough set theory for determining the significant inputs of an ANN [power trading calculations]
In this paper, the authors show a real life application of Pawlak's rough set theory and neural networks in the area of power trading. European power systems are closely interconnected with each other, resulting in unexpected loop flows. This phenomena and the lack of commercially viable information make it very difficult for power traders to trade successfully with power. Rough set theory was used to determine the significant inputs of a neural network that could be applied in trading activity. In this paper, the authors also present a general optimization technique and a real application of the neural nets in power systems.
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