天然气消费预测的神经网络和模糊神经网络

N. H. Viet, J. Mańdziuk
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引用次数: 13

摘要

在这项工作中,分析和测试了几种用神经和模糊神经系统预测波兰某地区天然气消费量的方法。本文测试的预测策略包括:单神经网络模块法、三神经网络模块组合法、基于温度聚类的方法以及模糊神经网络的应用。结果表明,基于温度聚类的方法优于模块化和模糊神经方法。在本文中观察到的一个有趣的问题是,与中期(一周)预测相比,在长期(四周)预测的情况下,测试方法的性能相对较好。总体而言,计算结果明显优于该燃气公司目前使用的统计方法。
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Neural and fuzzy neural networks for natural gas consumption prediction
In this work several approaches to prediction of natural gas consumption with neural and fuzzy neural systems for a certain region of Poland are analyzed and tested. Prediction strategies tested in the paper include: single neural net module approach, combination of three neural modules, temperature clusterization based method, and application of fuzzy neural networks. The results indicate the superiority of temperature clusterization based method over modular and fuzzy neural approaches. One of the interesting issues observed in the paper is relatively good performance of the tested methods in the case of a long-term (four week) prediction compared to mid-term (one week) prediction. Generally, the results are significantly better than those obtained by statistical methods currently used in the gas company under consideration.
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