Abstract

The traditional way of scheduling production processes often focuses on profit-driven goals (such as cycle time or material cost) while tending to overlook the negative impacts of manufacturing activities on the environment in the form of carbon emissions and other undesirable by-products. To bridge the gap, this paper investigates an environment-aware production scheduling problem that arises from a typical paint shop in the automobile manufacturing industry. In the studied problem, an objective function is defined to minimize the emission of chemical pollutants caused by the cleaning of painting devices which must be performed each time before a color change occurs. Meanwhile, minimization of due date violations in the downstream assembly shop is also considered because the two shops are interrelated and connected by a limited-capacity buffer. First, we have developed a mixed-integer programming formulation to describe this bi-objective optimization problem. Then, to solve problems of practical size, we have proposed a novel multi-objective particle swarm optimization (MOPSO) algorithm characterized by problem-specific improvement strategies. A branch-and-bound algorithm is designed for accurately assessing the most promising solutions. Finally, extensive computational experiments have shown that the proposed MOPSO is able to match the solution quality of an exact solver on small instances and outperform two state-of-the-art multi-objective optimizers in literature on large instances with up to 200 cars.

Highlights

  • In recent years, the Chinese government has enforced strict regulations to deal with pollutions in the manufacturing industry [1]

  • We address an environment-aware production scheduling problem that arises in the car manufacturing industry

  • The problem has been defined as a bi-objective optimization model, in which one objective reflects the consideration of pollution-minimization requirements in the paint shop while the other objective characterizes the traditional goal of tardiness-minimization in the subsequent assembly shop

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Summary

Introduction

The Chinese government has enforced strict regulations to deal with pollutions in the manufacturing industry [1]. The regulatory pressure urges relevant companies to pay more attention to sustainability aspects of their operational systems with an aim of reducing pollutant emissions. The latest research has revealed that production scheduling could serve as a cost-effective tool for realizing the goal of sustainable manufacturing [2]. Liu and Huang [4] investigate a batch-processing machine scheduling problem and a hybrid flow shop scheduling problem with carbon emission criteria. Zhou et al [5] apply a genetic algorithm (GA) for the optimization of production schedules in textile dyeing industries with a clear aim of reducing the consumption of fresh water

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