基于ARIMA和线性回归的降雨预测

C. Vijayalakshmi, K. Sangeeth, R. Josphineleela, R. Shalini, K. Sangeetha, D. Jenifer
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引用次数: 0

摘要

降雨是大自然赐予我们日常生活的最大礼物,也是影响农民和农业复杂系统的人类生活的最重要的气候因素。降雨预报是非常困难的,因为过量和突然的降雨会带来许多问题,如农业和财产的破坏,因此需要一个更好的预报模型来进行早期预警,以减少农业和生命财产的风险。时间序列数据在经典统计学中得到了广泛的应用。该方法采用时间序列ARIMA模型和机器学习算法线性回归预测年降雨量。时间序列数据在经典统计学中得到了广泛的应用。ARIMA经过培训,能够产生优异的成果。ARIMA模型在所有季节和年度降雨中显示出更高的准确性。为了提供可靠的预测,该方法与时间序列ARIMA一样,需要严格假设平稳性。我们使用来自印度政府网站和Kaggle的真实数据,使用不同的评估指标来比较ARIMA中的模型质量。结果表明,ARIMA模型能够准确地预测降雨量,为今后的农业生产提供参考。
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 ARIMA and Linear Regression
Rainfall is the greatest of nature's gifts for our daily life, as well as the most important climate factor affecting human lives with farmers and agricultural complex systems. Rainfall forecasting is very difficult because excessive and sudden rainfall can have numerous problems, such as agriculture and property destruction, so for a better forecasting model is required for early warning that can save risk to agriculture and life property. Time series data have been used extensively in classical statistics. The proposed methodology predicts annual rainfall by time series ARIMA model and Linear Regression a machine learning algorithm. Time series data have been used extensively in classical statistics. The ARIMA has been trained to produce excellent outcomes. The ARIMA model demonstrated greater accuracy in all seasonal and yearly rains. To offer a solid prediction, this method, like time series ARIMA, requires a strict assumption of stationarity. We use real data from the Indian government website and Kaggle to compare model quality in ARIMA using different evaluation metrics. As a result, the ARIMA model accurately predicts rainfall and it is used for agriculture purpose in future.
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