ENERGY-EFFICIENT TRAIN OPERATION USING NATURE-INSPIRED ALGORITHMS

Energy-Efficient Train Operation Using Nature-Inspired Algorithms

Energy-Efficient Train Operation Using Nature-Inspired Algorithms

Blog Article

A train operation optimization by minimizing its traction energy subject to various constraints is carried out using nature-inspired evolutionary algorithms.The optimization Filters process results in switching points that initiate cruising and coasting phases of the driving.Due to nonlinear optimization formulation of the problem, nature-inspired evolutionary search methods, Genetic Simulated Annealing, Firefly, and Big Bang-Big Crunch algorithms were employed in this study.As a case study a real-like train and test track from a part of Eskisehir light rail network were modeled.Speed limitations, various track alignments, maximum allowable trip time, and changes in train mass were considered, and punctuality was put into objective function as a Apparel penalty factor.

Results have shown that all three evolutionary methods generated effective and consistent solutions.However, it has also been shown that each one has different accuracy and convergence characteristics.

Report this page