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Comparing neural networks and transfer function models for ozone forecasting

机译:比较神经网络和传递函数模型进行臭氧预测

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摘要

Surface ozone concentrations are determined by complex interactions between precursors and are triggered by meteorological conditions. Ozone concentrations are, in fact, strongly linked to meteorological conditions in the boundary layer and to land-sea breezes at coastal sites. The related relationships are typically complex and nonlinear and might be better captured by dynamical models, namely Neural Networks and Transfer Function models. Aim of our work is the identification of proper Transfer Function models and the estimation of their parameters. Here we present an outline of the methodology that was used to develop the air pollution forecast model for a complex coastal valley. We also investigate the potential for using Neural Networks, namely Multi-Layer Perceptron networks, to forecast ozone pollution, as compared to the multivariate parametric air pollution forecast model and multi-linear regression equations (the most commonly used to forecast Ozone concentrations). Transfer Function models and Neural Networks are examined for the Esino valley (Italy) under different climate and ozone regimes, enabling a comparative study of the two approaches.
机译:表面臭氧浓度由前体之间的复杂相互作用决定,并由气象条件触发。实际上,臭氧的浓度与边界层的气象条件以及沿海地区的海风有关。相关关系通常是复杂的和非线性的,可以通过动态模型(即神经网络和传递函数模型)更好地捕获。我们的工作目标是确定适当的传递函数模型并对其参数进行估计。在这里,我们介绍了用于开发复杂沿海山谷空气污染预测模型的方法概述。与多元参数空气污染预测模型和多元线性回归方程(最常用于预测臭氧浓度)相比,我们还研究了使用神经网络(即多层感知器网络)预测臭氧污染的潜力。在不同的气候和臭氧制度下,对埃西诺河谷(意大利)的传递函数模型和神经网络进行了研究,从而可以对这两种方法进行比较研究。

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