Abstract

Increasing energy price and requirements to reduce emission are new challenges faced by manufacturing enterprises. A considerable amount of energy is wasted by machines due to their underutilisation. Consequently, energy saving can be achieved by turning off the machines when they lay idle for a comparatively long period. Otherwise, turning the machine off and back on will consume more energy than leave it stay idle. Thus, an effective way to reduce energy consumption at the system level is by employing intelligent scheduling techniques which are capable of integrating fragmented short idle periods on the machines into large ones. Such scheduling will create opportunities for switching off underutilised resources while at the same time maintaining the production performance. This paper introduces a model for the bi-objective optimisation problem that minimises the total non-processing electricity consumption and total weighted tardiness in a job shop. The Turn off/Turn on is applied as one of the electricity saving approaches. A novel multi-objective genetic algorithm based on NSGA-II is developed. Two new steps are introduced for the purpose of expanding the solution pool and then selecting the elite solutions. The research presented in this paper is focused on the classical job shop environment, which is widely used in the manufacturing industry and provides considerable opportunities for energy saving. The algorithm is validated on job shop problem instances to show its effectiveness.

Highlights

  • The increasing price of energy and the current trend of sustainability have exerted new pressure on manufacturing enterprises (Kilian, 2008)

  • A new Multi-objective Genetic Algorithm for Electricity Saving in Job Shop Production (GAEJP) is proposed. This algorithm is designed based on the NSGA-II algorithm which we extended with two new steps that are devised for solving the new ECT problem

  • Take the F&T 10 × 10 job shop as an example, when f = 1.5 and the machines are turned off when the idle time is longer than 30 min, the minimum and maximum values of total non-processing electricity consumption (NPE) obtained by GAEJP are 3.5 kWh and 6.0 kWh respectively, which means that it achieved from 96.7% to 98.1% improvement in the total NPE consumption compared to the values obtained by LEKIN

Read more

Summary

Introduction

The increasing price of energy and the current trend of sustainability have exerted new pressure on manufacturing enterprises (Kilian, 2008). Based on the previous research (Fang et al, 2011; Mouzon and Yildirim, 2008), the operational methods have been proved to be feasible and effective to reduce the energy consumption of manufacturing companies. The electricity consumed by switching the machine off and on should be included in the NPE This required a development of a new multiobjective optimisation algorithm and its corresponding scheduling techniques to optimally use both the Turn off/Turn on and Scheduling methods. A new Multi-objective Genetic Algorithm for Electricity Saving in Job Shop Production (GAEJP) is proposed. This algorithm is designed based on the NSGA-II algorithm which we extended with two new steps that are devised for solving the new ECT problem.

Background and motivation
Notation and problem statement
Encoding schema and semi-active schedule builder
Components of GAEJP
Experimental results
Conclusions and future work
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call