@inbook{9ea3c22c8e29417d832b37d8b7f9daac,
title = "On efficiently solving the vehicle routing problem with time windows using the bat algorithm with random reinsertion operators",
abstract = "An evolutionary and discrete variant of the Bat Algorithm (EDBA) is proposed for solving the Vehicle Routing Problem with Time Windows, or VRPTW. The EDBA developed not only presents an improved movement strategy, but it also combines with diverse heuristic operators to deal with this type of complex problems. One of the main new concepts is to unify the search process and the minimization of the routes and total distance in the same operators. This hybridization is achieved by using selective node extractions and subsequent reinsertions. In addition, the new approach analyzes all the routes that compose a solution with the intention of enhancing the diversification ability of the search process. In this study, several variants of the EDBA are shown and tested in order to measure the quality of both metaheuristic algorithms and their operators. The benchmark experiments have been carried out by using the 56 instances that compose the 100 customers Solomon{\textquoteright}s benchmark. Two statistical tests have also been carried out so as to analyze the results and draw proper conclusions.",
keywords = "Bat algorithm, Combinatorial optimization, Discrete bat algorithm, Traveling salesman problem, Vehicle routing problem with time windows, VRPTW",
author = "Eneko Osaba and Roberto Carballedo and Yang, {Xin She} and Iztok Fister and Pedro Lopez-Garcia and {Del Ser}, Javier",
note = "Publisher Copyright: {\textcopyright} Springer International Publishing AG 2018.",
year = "2018",
doi = "10.1007/978-3-319-67669-2_4",
language = "English",
series = "Studies in Computational Intelligence",
publisher = "Springer Verlag",
pages = "69--89",
booktitle = "Studies in Computational Intelligence",
address = "Germany",
}