Evolving Compact Prediction Model for PM2.5 level of Chiang Mai Using Multiobjective Multigene Symbolic Regression

P. Unachak, Prayat Puangjaktha
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Abstract

In recent years, fine particulate matter (PM2.5) has caused economic and health-related adversities to people of Northern Thailand. An accurate predictive model would allow residents to take precautions for their safeties. Also, a human-readable predictive model can lead to better understandings of the issues. In this paper, we use multigene symbolic regression, a genetic programming (GP) approach, to create predictive models for PM2.5 levels in the next 3 hours. This approach creates mathematical models consists of multiple simpler trees for equivalent expressiveness to conventional GP. We also used Non-dominated Sorting Genetic Algorithm-II (NSGA-II), a multiobjective optimization technique, to ensure accurate yet compact models. Using pollutants and meteorological data from Yupparaj Wittayalai monitoring station, combined with satellite-based fire hotspots data from Fire Information of Resource Management System (FIRMS), our approach has created compact human-readable models with better or comparable accuracies to benchmark approaches, as well as identifies possible nonlinear relationships in the dataset.
基于多目标多基因符号回归的清迈PM2.5水平演化紧凑预测模型
近年来,细颗粒物(PM2.5)给泰国北部的人们带来了经济和健康方面的逆境。一个准确的预测模型可以让居民为自己的安全采取预防措施。此外,人类可读的预测模型可以更好地理解问题。在本文中,我们使用多基因符号回归,一种遗传规划(GP)方法,来创建未来3小时PM2.5水平的预测模型。这种方法创建的数学模型由多个更简单的树组成,具有与传统GP相同的表达能力。我们还使用非支配排序遗传算法- ii (NSGA-II),一种多目标优化技术,以确保准确而紧凑的模型。利用来自Yupparaj Wittayalai监测站的污染物和气象数据,结合来自资源管理系统(FIRMS)火灾信息的卫星火灾热点数据,我们的方法创建了紧凑的人类可读模型,其精度优于基准方法或与基准方法相当,并识别了数据集中可能的非线性关系。
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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