基于时间序列数据分析、回归和正则化的PM2.5快速预报方法

Cyuan-Heng Luo, Hsuan Yang, Li-Pang Huang, Sachit Mahajan, Ling-Jyh Chen
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引用次数: 14

摘要

空气污染问题在发达国家和发展中国家都已成为一个严重的问题。不幸的是,目前的大多数解决方案都不是很有效,这使得建立一个有效的早期预警系统来监测和预测空气质量变得非常重要。我们的主要目标是建立一个高精度的实时预报系统,并在台湾部署。本文提出了一种自适应迭代预测(AIF)的预测方法,该方法可以根据历史数据的趋势(通过线性规划、归一化和时间序列)预测未来几个小时的PM2.5值。本研究的目的是建立一个高效、准确的预测模型。通过各种对比分析,我们证明了我们的模型可以取得显著的效果。根据结果,我们还建立了一个实时预报系统,让用户随时了解空气质量,并计划他们的日常生活。
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A Fast PM2.5 Forecast Approach Based on Time-Series Data Analysis, Regression and Regularization
The problem of air pollution has become a serious issue in developed as well as developing countries. Unfortunately, most of the current solutions are not very effective and this makes it important to have an efficient early warning system for monitoring and forecasting air quality. Our main focus is to build a real-time forecasting system with high accuracy, and deploy it in Taiwan. In this paper, we propose a forecast method called Adaptive Iterative Forecast (AIF), which can predict the value of PM2.5 for the next few hours (by linear programming, normalization and time-series) based on the trend of historical data. The goal of this research is to develop an efficient and accurate forecast model. Through various comparative analyses, we have proved that our model can achieve significant results. Based on the results, we have also built a real-time forecasting system which allows the users to stay aware of the air quality and plan their day to day life.
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