Litcius/Paper detail

Short-Term Weather Forecasting Using Spatial Feature Attention Based LSTM Model

Masooma Ali Raza Suleman, S. Shridevi

2022IEEE Access80 citationsDOIOpen Access PDF

Abstract

Weather prediction and meteorological analysis contribute significantly towards sustainable development to reduce the damage from extreme events which could otherwise set-back the progress in development by years. The change in surface temperature is as one of the important indicators in detecting climate change. In this research, we propose a novel deep learning model named Spatial Feature Attention Long Short Term Memory (SFA-LSTM) model to capture accurate spatial and temporal relations of multiple meteorological features to forecast temperature. Significant spatial feature and temporal interpretations of historical data aligned directly to output feature helps the model to forecast data accurately. The spatial feature attention captures mutual influence of input features on the target feature. The model is built using encoder-decoder architecture, where the temporal dependencies in data are learnt using LSTM layers in the encoder phase and spatial feature relations in the decoder phase. SFA-LSTM forecasts temperature by simultaneously learning most important time steps and weather variables. When compared with baseline models, SFA-LSTM maintains the state-of the-art prediction accuracy while offering the benefit of appropriate spatial feature interpretability. The learned spatial feature attention weights are validated from magnitude of correlation with target feature obtained from the dataset.

Topics & Concepts

Feature (linguistics)InterpretabilityComputer scienceArtificial intelligenceEncoderFeature learningData miningMachine learningPattern recognition (psychology)Operating systemPhilosophyLinguisticsHydrological Forecasting Using AIEnergy Load and Power ForecastingMeteorological Phenomena and Simulations