基于人工神经网络的天气数据挖掘

Soumadip Ghosh, A. Nag, Debasish Biswas, J. Singh, S. Biswas, D. Sarkar, P. Sarkar
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引用次数: 21

摘要

天气数据挖掘是数据挖掘的一种形式,涉及在大量可用的气象数据中发现隐藏的模式,以便将检索到的信息转换为可用的知识。行业中有各种各样的数据挖掘工具和技术,但它们用于气象数据的方式非常有限。本文提出了一种基于神经网络的预测未来某一特定时间和地点大气的算法。我们使用反向传播神经网络(BPN)进行初始建模。将BPN模型得到的结果馈送到Hopfield网络。我们提出的基于人工神经网络的方法(基于BPN和Hopfield网络的组合方法)的性能在3年的天气数据集上进行了测试,该数据集包含15000条记录,其中包含温度、湿度和风速等属性。预测误差非常小,学习收敛速度非常快。本文的主要重点是基于预测数据挖掘,通过预测数据挖掘,我们可以从大量的气象数据中提取有趣的(非平凡的,隐含的,以前未知的和潜在有用的)模式或知识。
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Weather Data Mining using Artificial Neural Network
Weather Data Mining is a form of Data mining concerned with finding hidden patterns inside largely available meteorological data, so that the information retrieved can be transformed into usable knowledge. A variety of data mining tools and techniques are available in the industry, but they have been used in a very limited way for meteorological data. In this paper, a neural network-based algorithm for predicting the atmosphere for a future time and a given location is presented. We have used Back Propagation Neural (BPN) Network for initial modelling. The results obtained by BPN model are fed to a Hopfield Network. The performance of our proposed ANN-based method (BPN and Hopfield Network based combined approach) tested on 3 years weather data set comprising 15000 records containing attributes like temperature, humidity and wind speed. The prediction error is found to be very less and the learning converges very sharply. The main focus of this paper is based on predictive data mining by which we can extract interesting (non-trivial, implicit, previously unknown and potentially useful) patterns or knowledge from huge amount of meteorological data.
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