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An effective weather forecasting method using a deep long–short-term memory network based on time-series data with sparse fuzzy c-means clustering

Vasavi Ravuri, S. Vasundra

2022Engineering Optimization13 citationsDOI

Abstract

Weather forecasting is the scientific procedure of determining the state of the atmosphere considering both time frames and locations. This article devises a novel magnetic feedback artificial tree algorithm-based deep long–short-term memory (MFATA-based deep LSTM) classifier with time-series data. MFATA is the combination of the magnetic optimization algorithm MOA with the feedback artificial tree FAT algorithm for weather forecasting. Here, the feature selection is processed using a Moth Flame Optimization based Bat (MFO-Bat). Then, based on the clustered result, the forecasting process is accomplished using a deep LSTM classifier. Finally, the Taylor series model is used to generate the final forecast result. The proposed method achieved mean square error, root mean square error, mean absolute scaled error and symmetric mean absolute percentage error values of 4.12, 2.03, 0.602 and 56.376, respectively. The approach developed in this study has the potential to be used as an efficient and reliable weather forecasting method.

Topics & Concepts

Mean squared errorMean absolute percentage errorTime seriesComputer scienceFuzzy logicCluster analysisArtificial intelligenceClassifier (UML)Series (stratigraphy)Deep belief networkPattern recognition (psychology)Feature selectionAlgorithmData miningArtificial neural networkMachine learningMathematicsStatisticsPaleontologyBiologyHydrological Forecasting Using AIEnergy Load and Power ForecastingSolar Radiation and Photovoltaics
An effective weather forecasting method using a deep long–short-term memory network based on time-series data with sparse fuzzy c-means clustering | Litcius