人工智能方法在短期降雨预报中的比较

S. Monira, Zaman M. Faisal, Hideo Hirose
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引用次数: 17

摘要

在过去的一个世纪里,降雨预报一直是全球气候动力学和气候预测理论中最具科技挑战性的课题之一。这是由于预测对人类活动的巨大影响,也是由于在这一研究领域所利用的重大计算进步。在本文中,我们的主要目标是利用当地数据预测非常短期和特定的当地天气,这些数据并不总是由预报中心提供,但将来可以通过社交网络或其他方法获得。为此,在本文中,我们以比哈尔邦(印度)的区域降雨数据为例,应用了三种不同的算法,这些算法属于人工智能范式,用于短期降雨预测(24小时)。此预报是关于预测第二天的分类降雨量(基于每日总降雨量的某种预先定义的类别)。为此,我们使用了两个分类器集成方法和一个分类器模型。本文使用的集成方法是LogitBoosting (LB)和Random Forest (RF)。单分类器模型是最小二乘支持向量机(LS-SVM)。我们在验证集上优化了每个模型,然后在样本外(或测试)数据集上使用最优模型进行预测。我们还用一些可用的最新验证工具验证了我们的预测结果。实验和验证结果表明,这些方法能够有效地预测短期的分类雨量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of artificially intelligent methods in short term rainfall forecast
Rainfall forecasting has been one of the most scientifically and technologically challenging task in the climate dynamics and climate prediction theory around the world in the last century. This is due to the great effect of forecasting on human activities and also for the significant computational advances that are utilized in this research field. In this paper our main objective is to forecast over a very short-term and specified local area weather using local data which is not always available by forecast center but will be available in the future by social network or some other methods. For this purpose in this paper we have applied three different algorithms belonging to the paradigm of artificial intelligence in short-term forecast of rainfalls (24 hours) using a regional rainfall data of Bihar (India) as a case study. This forecast is about predicting the categorical rainfall (some pre-defined category based on the amount of total daily rainfall) amount for the next day. We have used two classifier ensemble methods and a single classifier model for this purpose. The ensemble methods used in this paper are LogitBoosting (LB), and Random Forest (RF). The single classifier model is a Least Square Support Vector Machine (LS-SVM). We have optimized each of the models on validation sets and then forecast with the optimum model on the out of sample (or test) dataset. We have also verified our forecast results with some of the latest verification tools available. The experimental and verification results suggest that these methods are capable of efficiently forecasting the categorical rainfall amount in short term.
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