Abstract

The intelligent water drop algorithm is a swarm-based metaheuristic algorithm, inspired by the characteristics of water drops in the river and the environmental changes resulting from the action of the flowing river. Since its appearance as an alternative stochastic optimization method, the algorithm has found applications in solving a wide range of combinatorial and functional optimization problems. This paper presents an improved intelligent water drop algorithm for solving multi-depot vehicle routing problems. A simulated annealing algorithm was introduced into the proposed algorithm as a local search metaheuristic to prevent the intelligent water drop algorithm from getting trapped into local minima and also improve its solution quality. In addition, some of the potential problematic issues associated with using simulated annealing that include high computational runtime and exponential calculation of the probability of acceptance criteria, are investigated. The exponential calculation of the probability of acceptance criteria for the simulated annealing based techniques is computationally expensive. Therefore, in order to maximize the performance of the intelligent water drop algorithm using simulated annealing, a better way of calculating the probability of acceptance criteria is considered. The performance of the proposed hybrid algorithm is evaluated by using 33 standard test problems, with the results obtained compared with the solutions offered by four well-known techniques from the subject literature. Experimental results and statistical tests show that the new method possesses outstanding performance in terms of solution quality and runtime consumed. In addition, the proposed algorithm is suitable for solving large-scale problems.

Highlights

  • Managing a fleet of vehicles outsourced for the distribution of a specific number of products to a set of customers with specific supply and demand requirements, is considered an important challenge in dealing with distribution problems

  • Enhanced intelligent water drops algorithm for multi-depot vehicle routing problem sequence of customers to be visited by each vehicle, which satisfy the criteria such as travel time, the length of route and the cost involved in the operation [2]

  • The vehicle routing problem (VRP) optimization problem is widely-studied with several attractive solutions and different implementation techniques proposed in the literature [3, 4, 5, 6]

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Summary

Introduction

Managing a fleet of vehicles outsourced for the distribution of a specific number of products to a set of customers with specific supply and demand requirements, is considered an important challenge in dealing with distribution problems. Several hybrid evolutionary algorithms have proven to perform better, in terms of being able to produce better solution quality than their classical counterparts [15, 29, 30, 31], especially in cases of large sized problems This serves as a motivation for proposing a hybrid metaheuristic algorithm that combines both the intelligent water drop (IWD) algorithm and simulated annealing (SA) local search metaheuristic, denoted here as IWD-SA to solve the MDVRP. This article is structured as follows: The paper starts with the brief discussion on the basics of MDVRP, problem formulation and related works This is followed by a discussion of the two metaheuristic algorithms, namely IWD and SA, the presentation of hybrid methods, and their applications to solve MDVRP. The parallelism capability of the IWD algorithm is employed to solve the MDVRP using similar steps of clustering and routing techniques described above

Related work
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Findings
PROPOSED METHOD
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