基于kNN和决策树的降雨预测

S. Biruntha, B. S. Sowmiya, R. Subashri, M. Vasanth
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引用次数: 2

摘要

降雨预报在各种情况和背景下都是极其重要的。通过提前实施良好的安全预防措施,可以大大限制意外和过度降雨的后果。由于气候变化,准确的降雨预报比以往任何时候都更加困难。数据挖掘算法可以通过从以前的数据中识别气象变量中的隐藏模式来预测降雨。本研究通过调查两种数据挖掘方法在奥斯汀市降雨预测中的应用做出了贡献。最近邻(kNN)和决策树是使用的一些技术。该数据集来自天气预报服务,包括许多大气参数。预处理方法,包括清洗和规范化操作,用于成功的预测。数据挖掘算法的性能在不同训练/测试数据比率下的准确性、召回率和f-measure方面进行了评估。使用决策树和kNN机器学习算法估计未来一年的降雨量,并比较每种方法获得的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rainfall Prediction using kNN and Decision Tree
Rainfall forecasting is extremely important in a variety of situations and contexts. By implementing good security precautions in advance, it is possible to significantly limit the consequences of unexpected and excessive rains. Accurate rainfall forecasts have become more difficult than ever before due to climatic changes. Data mining algorithms can forecast rainfall by identifying hidden patterns in meteorological variables from previous data. This study contributes by investigating the application of two data mining approaches for rainfall prediction in the city of Austin. k Nearest Neighbour (kNN) and Decision Trees are some of the techniques used. The dataset comes from a weather forecasting service and includes numerous atmospheric parameters. The pre-processing approach, which includes cleaning and normalising operations, is utilised for successful prediction. The performance of data mining algorithms are evaluated in terms of accuracy, recall, and f-measure with varied training/test data ratios. The future year's rainfall is estimated using the Decision Tree and kNN machine learning algorithms and compare the results obtained by each approach.
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