Comparison of the Proposed Rainfall Prediction Model Designed using Data Mining Techniques with the Existing Rainfall Prediction Methods

Deepak Sharma, Dr. Priti Sharma
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Abstract

Weather prediction is a very old practice and people are doing predictions about weather much before the discovery of the weather measuring instrument. In ancient times, people give weather predictions by observing the sky for a long time and patterns of the stars at night. Things are a bit different now. People more relay on the past trends and patterns followed by the weather parameters. Data mining and machine leaning is used to analysis the historical weather trends by analyzing weather data using various Data mining techniques. In this paper three rainfall prediction model based on data mining techniques are proposed and compared with the other rainfall prediction model. The comparison has been done on the basis of accuracy, precision, Recall and RMSE. The proposed models are based on ensemble methods such as bagging, boosting, and stacking. Ensemble methods are used to enhance the overall performance and accuracy of the prediction. In both bagging and boosting based proposed rainfall prediction models, artificial neural network is used as a base leaner and daily weather data from the year 1988 to 2022 is used. In stacking based proposed rainfall prediction model, random forest, Logistic regression, and K-Nearest neighbor are used as base leaners or level -0 learners and Artificial neural network is used as Meta model.
利用数据挖掘技术设计的拟议降雨预测模型与现有降雨预测方法的比较
天气预测是一种非常古老的做法,早在发现气象测量仪器之前,人们就已经开始预测天气了。在古代,人们通过长时间观察天空和夜晚星星的形态来预测天气。现在的情况有些不同。人们更多的是根据天气参数过去的趋势和模式进行预测。通过使用各种数据挖掘技术分析天气数据,数据挖掘和机器精益被用来分析历史天气趋势。本文提出了三种基于数据挖掘技术的降雨预测模型,并与其他降雨预测模型进行了比较。比较的依据是准确度、精确度、召回率和均方误差。所提出的模型基于集合方法,如袋装法、提升法和堆叠法。集合方法用于提高预测的整体性能和准确性。在基于bagging和boosting的降雨预测模型中,使用了人工神经网络作为基础,并使用了1988年至2022年的每日天气数据。在基于堆叠的降雨预测模型中,随机森林、逻辑回归和 K-Nearest neighbor 被用作基础学习器或第 -0 级学习器,人工神经网络被用作元模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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