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首页> 外文期刊>NeuroQuantology: an interdisciplinary journal of neuroscience and quantum physics >Training Feedforward Neural Networks Using Social Learning Particle Swarm Optimization- A Case Comparison Study on Electrical System
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Training Feedforward Neural Networks Using Social Learning Particle Swarm Optimization- A Case Comparison Study on Electrical System

机译:利用社会学习粒子群算法训练前馈神经网络-以电气系统为例的比较研究

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The knowledge about training feed forward neural networks (FNNs) is an important and complex issue in the supervised learning field. In the process of learning, the FNNs system involves some input parameters such as connection weights and biases, which may greatly influence the performance of FNNs training. In this paper, a newly developed meta-heuristic method, named social learning particle swarm optimization (SLPSO), is trying to find the optimal combination of connection weights and biases for FNNs, which is often used to deal with power load forecasting problem. In the numerical experiments, a case on the power load forecasting problem is employed to verify the effectiveness of SLPSO. The experiment results indicate that SLPSO has the advantages on the training accuracy and testing accuracy with respect to other six state-of-the-art intelligent optimization algorithms.
机译:关于训练前馈神经网络(FNN)的知识是监督学习领域中一个重要而复杂的问题。在学习过程中,FNNs系统涉及一些输入参数,例如连接权重和偏差,这可能会极大地影响FNNs训练的性能。在本文中,一种新开发的元启发式方法,即社会学习粒子群优化(SLPSO),试图为FNN寻找连接权重和偏差的最佳组合,该方法通常用于处理电力负荷预测问题。在数值实验中,以电力负荷预测问题为例,验证了SLPSO算法的有效性。实验结果表明,相对于其他六种最新的智能优化算法,SLPSO在训练准确性和测试准确性方面具有优势。

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