峰值负荷估计的多层感知器结构优化

O. Ivanov, Mihai Gavrilac
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引用次数: 5

摘要

自多层感知器发展以来,出现了许多类型的人工神经网络(ann),每种网络在解决特定类型的问题方面都有最好的表现。目前的研究重点是混合神经模型,它结合了神经和符号计算元素。在电力工程中,人工神经网络如今被用于各种应用,包括优化、逼近、预测和分类任务,其中优化的人工神经网络架构对于获得最佳结果至关重要。遗传算法(GAs)可用于识别这种体系结构。在训练多层感知器时,一般假设同一层的所有神经元具有相同的激活函数,本文使用遗传算法搜索隐藏层的最佳混合激活函数配置,并以峰值负载估计研究为试验台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilayer Perceptron architecture optimization for peak load estimation
Since the development of the Multilayer Perceptron, many types of artificial neural networks (ANNs) have emerged, each having best performances in solving particular types of problems. Current research developments focus on hybrid neural models, which combine neural and symbolic computation elements. In power engineering, ANNs are used today in a variety of applications, including optimization, approximation, forecast and classification tasks, for which an optimized ANN architecture is essential in obtaining the best results. Genetic Algorithms (GAs) can be used for identifying this architecture. While the general assumption when training a Multilayer Perceptron is that all neurons from one layer have the same activation function, this paper uses a genetic algorithm to search for the best mixed activation function configuration for the hidden layer, using as test bench a peak load estimation study.
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