基于数据挖掘的降水预测建模:贝叶斯方法

V. Nikam, Bandu B. Meshram
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引用次数: 63

摘要

天气预报一直是世界上最具科学和技术挑战性的问题之一。天气数据是具有丰富重要信息的气象数据之一,可用于天气预报,我们从印度浦那气象局(IMD)收集的天气历史数据中提取知识。在收集到的36个气象属性中,只有7个属性与降雨预测最相关。我们对原始天气数据集进行了数据预处理和数据转换,使其能够运用贝叶斯数据挖掘预测模型进行降雨预测。该模型使用训练数据集进行训练,并在可用的测试数据上进行了准确性测试。气象中心采用高性能计算和超级计算能力运行天气预报模型。为了解决计算强降雨预测模型的问题,提出并利用数据挖掘技术实现了数据密集型模型。我们的模型具有较好的精度,并且需要适度的计算资源来预测降雨。我们已经使用贝叶斯方法来证明我们的模型用于降雨预测,并发现它工作得很好,精度很高。
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Modeling Rainfall Prediction Using Data Mining Method: A Bayesian Approach
Weather forecasting has been one of the most scientifically and technologically challenging problem around the world. Weather data is one of the meteorological data that is rich with important information, which can be used for weather prediction We extract knowledge from weather historical data collected from Indian Meteorological Department (IMD) Pune. From the collected weather data comprising of 36 attributes, only 7 attributes are most relevant to rainfall prediction. We made data preprocessing and data transformation on raw weather data set, so that it shall be possible to work on Bayesian, the data mining, prediction model used for rainfall prediction. The model is trained using the training data set and has been tested for accuracy on available test data. The meteorological centers uses high performance computing and supercomputing power to run weather prediction model. To address the issue of compute intensive rainfall prediction model, we proposed and implemented data intensive model using data mining technique. Our model works with good accuracy and takes moderate compute resources to predict the rainfall. We have used Bayesian approach to prove our model for rainfall prediction, and found to be working well with good accuracy.
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