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Temperature Prediction Based on Fuzzy Time Series and MTPSO with Automatic Clustering Algorithm

机译:基于模糊时间序列和自动聚类算法的MTPSO的温度预测

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Weather prediction is an essential activity in today's world economy with its detrimental effects on various fields like Agriculture, Utility companies, Marine etc. Many methods have been presented based on fuzzy time series to make predictions in areas such as stock price, university enrolments, weather, etc. When using fuzzy time series for forecasting, the length of intervals in the universe of discourse is important due to the fact that it can affect the forecasting accuracy rate. This paper proposes a better approach to forecasting temperature by applying automatic clustering algorithm to partition the universe of discourse. Improvement in results is observed as compared to existing techniques that involve partitioning the universe of discourse in static intervals. The proposed method is tested on temperature prediction and improvements in results are compared to some of already existing techniques.
机译:天气预报是当今世界经济中的重要活动,对农业,公用事业公司,海洋等各个领域的不利影响。基于模糊时间序列提出了许多方法,以便在股票价格,大学入学,天气等领域进行预测等等。当使用模糊时间序列进行预测时,由于它可能影响预测精度率,话语宇宙中的间隔长度很重要。本文提出了通过应用自动聚类算法来分区话语宇宙来提高预测温度的更好方法。与现有技术相比,涉及以静态间隔分区话语宇宙的现有技术相比,观察结果。该方法在温度预测上测试,并将结果的改进与一些现有技术进行比较。

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