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Prediction of Transportation Energy Demand by Novel Hybrid Meta-Heuristic ANN

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Date

2022

Authors

Sahraei, Mohammad Ali
Codur, Merve Kayaci

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Pergamon-Elsevier Science Ltd

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Abstract

Road automobiles are deemed one of the major resources of energy consumption throughout cities. To realize and design sustainable urban transport, it is essential to comprehend as well as evaluate interactions among a set of elements, which form transport impacts and behaviors. The goal of the current research was to propose a hybrid algorithm, Artificial Neural Network (ANN)-Genetic Algorithm (ANN GA), ANN-Simulated Annealing (ANN-SA), and Particle Swarm Optimization (ANN-PSO) to better optimize the coefficients for predicting the energy demand based on the several predictor variables (1975 e2019) i.e., GDP, year, vehicle-km, population, oil price, passenger-km, and ton-km in Turkey. Eleven combinations of all predictor variables were selected and then compared with real data. The outcomes exposed that the proposed ANN-PSO technique based on the GDP, population, ton-km outperforms the other two models. It is anticipated that this research can be useful for developing extremely productive and applicable planning regarding transportation energy policies.(c) 2022 Elsevier Ltd. All rights reserved.

Description

Sahraei, Mohammad Ali/0000-0002-9130-3685; Kayacı Çodur, Merve/0000-0003-1459-9678

Keywords

Transportation, Simulated Annealing, Particle Swarm Optimization, Genetic Algorithm, Energy Demand

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Source

Energy

Volume

249

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Sustainable Development Goals

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