Abstract
Abstract. A deep recurrent neural network system based on a long
short-term memory (LSTM) model was developed for daily PM10 and
PM2.5 predictions in South Korea. The structural and learnable
parameters of the newly developed system were optimized from iterative model
training. Independent variables were obtained from ground-based
observations over 2.3 years. The performance of the particulate matter (PM)
prediction LSTM was then evaluated by comparisons with ground PM
observations and with the PM concentrations predicted from two sets of 3-D
chemistry-transport model (CTM) simulations (with and without data
assimilation for initial conditions). The comparisons showed, in general,
better performance with the LSTM than with the 3-D CTM simulations. For
example, in terms of IOAs (index of agreements), the PM prediction IOAs were
enhanced from 0.36–0.78 with the 3-D CTM simulations to 0.62–0.79 with the
LSTM-based model. The deep LSTM-based PM prediction system developed at
observation sites is expected to be further integrated with 3-D CTM-based
prediction systems in the future. In addition to this, further possible
applications of the deep LSTM-based system are discussed, together with some
limitations of the current system.
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52 articles.
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