Abstract

Under the current environmental pressure, many manufacturing enterprises are urged or forced to adopt effective energy-saving measures. However, environmental metrics, such as energy consumption and CO2 emission, are seldom considered in the traditional production scheduling problems. Recently, the energy-related scheduling problem has been paid increasingly more attention by researchers. In this paper, an energy-efficient job shop scheduling problem (EJSP) is investigated with the objective of minimizing the sum of the energy consumption cost and the completion-time cost. As the classical JSP is well known as a non-deterministic polynomial-time hard (NP-hard) problem, an improved whale optimization algorithm (IWOA) is presented to solve the energy-efficient scheduling problem. The improvement is performed using dispatching rules (DR), a nonlinear convergence factor (NCF), and a mutation operation (MO). The DR is used to enhance the initial solution quality and overcome the drawbacks of the random population. The NCF is adopted to balance the abilities of exploration and exploitation of the algorithm. The MO is employed to reduce the possibility of falling into local optimum to avoid the premature convergence. To validate the effectiveness of the proposed algorithm, extensive simulations have been performed in the experiment section. The computational data demonstrate the promising advantages of the proposed IWOA for the energy-efficient job shop scheduling problem.

Highlights

  • Nowadays, manufacturing enterprises are facing the economic pressure, and environmental challenges

  • Increasingly more attention has been paid to production scheduling problems with the consideration of energy efficiency

  • This paper aims to develop the improved whale optimization algorithm (IWOA) in solving the efficient job shop scheduling problem (EJSP) with the objective of minimizing the energy consumption cost and completion-time cost

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Summary

Introduction

Nowadays, manufacturing enterprises are facing the economic pressure, and environmental challenges. With the consideration of sustainable development, reducing energy consumption becomes an important target for manufacturing companies. To implement such measures, some researchers focused on developing more energy-efficient machines or machining processes [1,2]. It has been indicated that a significant energy-saving opportunity may be missed by focusing solely on the machines or processes, and the operational method can be adopted from the manufacturing system-level perspective [3]. Increasingly more attention has been paid to production scheduling problems with the consideration of energy efficiency. Compared with the investment in new energy-saving machines and production redesign, the optimization of scheduling scheme requires a modest investment and is more applied to existing production systems

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