Litcius/Paper detail

Time-Lag Selection for Time-Series Forecasting Using Neural Network and Heuristic Algorithm

Ola Surakhi, Martha Arbayani Zaidan, Pak Lun Fung, Naser Hossein Motlagh, Sami Serhan, Mohammad AlKhanafseh, Rania M. Ghoniem, Tareq Hussein

2021Electronics99 citationsDOIOpen Access PDF

Abstract

The time-series forecasting is a vital area that motivates continuous investigate areas of intrigued for different applications. A critical step for the time-series forecasting is the right determination of the number of past observations (lags). This paper investigates the forecasting accuracy based on the selection of an appropriate time-lag value by applying a comparative study between three methods. These methods include a statistical approach using auto correlation function, a well-known machine learning technique namely Long Short-Term Memory (LSTM) along with a heuristic algorithm to optimize the choosing of time-lag value, and a parallel implementation of LSTM that dynamically choose the best prediction based on the optimal time-lag value. The methods were applied to an experimental data set, which consists of five meteorological parameters and aerosol particle number concentration. The performance metrics were: Mean Absolute Error (MAE), Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE) and R-squared. The investigation demonstrated that the proposed LSTM model with heuristic algorithm is the superior method in identifying the best time-lag value.

Topics & Concepts

Mean squared errorHeuristicArtificial neural networkLagSeries (stratigraphy)Time seriesAlgorithmMean absolute percentage errorComputer scienceSelection (genetic algorithm)StatisticsArtificial intelligenceMachine learningMathematicsBiologyComputer networkPaleontologyAir Quality Monitoring and ForecastingEnergy Load and Power ForecastingForecasting Techniques and Applications