4.7 Article

A bi-level multi-objective location-routing model for municipal waste management with obnoxious effects

Journal

WASTE MANAGEMENT
Volume 135, Issue -, Pages 109-121

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.wasman.2021.08.034

Keywords

Municipal waste management; Location-routing problem; Obnoxious effects; Multiple objective bi-level programming; Hybrid NSGA-II

Funding

  1. Natural Science Foundation of China [71702167]
  2. Hebei Natural Science Foundation [G2020202008]
  3. China Postdoctoral Science Foundation [2018T110609]

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This paper developed a bi-level multi-objective location routing model for municipal waste management, considering the interests of both the government and the sanitation companies. An improved hybrid NSGA-II was used to solve the model, showing strong competitiveness and better performance in some instances.
Municipal waste management is a complex problem. This paper develops a bi-level multi-objective locationrouting model for municipal waste management that considers the interests of both the government and the sanitation companies. The government as the leader decides on the location and scale of the waste recycling centers to reduce the obnoxious effects and ensure cost effectiveness, and the sanitation company as the follower decides on the waste collection routing plans based on the government-approved locations to minimize the logistics cost. An improved hybrid NSGA-II is then developed to solve the proposed model. Two initial solution methods are employed: clustering for the leader and a Clarke and Wright method for the follower. Nondominated sorting and best-cost route crossover operator are used to improve the effectiveness of NSGA-II. Based on Prins (24 instances) and Barreto (13 instances) benchmarks, the experimental results indicated that the improved operator had strong competitiveness and a better performance than previous methods, with the improved algorithm achieving the best average gaps of 0.18% and 0.24% and improving the best-known solutions in some instances. The model and solution methodology are illustrated using a waste collection problem in Tianjin, from which practical insights are derived.

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