Principle of Machine Learning and Its Potential Application in Cli-mate Prediction

Shengping He, Huijun Wang, Hua Li, Jiazhen Zhao
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Abstract

After two “cold winters of artificial intelligence”, machine learning has once again entered the public’s vision in recent ten years, and has a momentum of rapid development. It has achieved great success in practical applications such as image recognition and speech recognition system. It is one of the main tasks and objectives of machine learning to summarize key information and main features from known data sets, so as to accurately identify and predict new data. From this perspective, the idea of integrating machine learning into climate prediction is feasible. Firstly, taking the adjustment of linear fitting parameters (i.e. slope and intercept) as an example, this paper introduces the process of machine learning optimizing parameters through gradient descent algorithm and finally obtaining linear fitting function. Secondly, this paper introduces the construction idea of neural network and how to apply neural network to fit nonlinear function. Finally, the framework principle of convolutional neural network for deep learning is described, and the convolutional neural network is applied to the return test of monthly temperature in winter in East Asia, and compared with the return results of climate dynamic model. This paper will help to understand the basic principle of machine learning and provide some reference ideas for the application of machine learning to climate prediction.
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机器学习原理及其在气候预测中的潜在应用
在经历了两次“人工智能寒冬”后,近十年来,机器学习再次进入公众视野,并呈现出快速发展的势头。它在图像识别和语音识别系统等实际应用中取得了巨大成功。从已知数据集中总结关键信息和主要特征,从而准确识别和预测新数据,是机器学习的主要任务和目标之一。从这个角度来看,将机器学习融入气候预测的想法是可行的。首先,以线性拟合参数(即斜率和截距)的调整为例,介绍了机器学习通过梯度下降算法优化参数并最终获得线性拟合函数的过程。其次,介绍了神经网络的构造思想以及如何应用神经网络拟合非线性函数。最后,描述了卷积神经网络用于深度学习的框架原理,并将其应用于东亚冬季月气温的回归测试,并与气候动态模型的回归结果进行了比较。本文将有助于理解机器学习的基本原理,并为机器学习在气候预测中的应用提供一些参考思路。
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发文量
25
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