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Input dimension reduction in neural network training-case study in transient stability assessment of large systems

机译:大型系统瞬态稳定性评估中神经网络训练的输入尺寸减少

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摘要

The problem in modeling large systems by artificial neural networks (ANN) is that the size of the input vector can become excessively large. This condition can potentially increase the likelihood of convergence problems for the training algorithm adopted. Besides, the memory requirement and the processing time also increase. This paper addresses the issue of ANN input dimension reduction. Two different methods are discussed and compared for efficiency and accuracy when applied to transient stability assessment.
机译:通过人工神经网络建模大系统(ANN)的问题是输入载体的大小可以变得过大。这种情况可能会增加所采用的训练算法的收敛问题的可能性。此外,内存要求和处理时间也增加。本文涉及ANN输入维度减少的问题。讨论了两种不同的方法,并在应用于瞬态稳定性评估时进行效率和准确性进行比较。

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