Abstract

The scheduling of tasks in a production line is a complex problem that needs to take into account several constraints, such as product deadlines and machine limitations. With innovative focus, the main constraint that will be addressed in this paper, and that usually is not considered, is the energy consumption cost in the production line. For that, an approach based on genetic algorithms is proposed and implemented. The use of local energy generation, especially from renewable sources, and the possibility of having multiple energy providers allow the user to manage its consumption according to energy prices and energy availability. The proposed solution takes into account the energy availability of renewable sources and energy prices to optimize the scheduling of a production line using a genetic algorithm with multiple constraints. The proposed algorithm also enables a production line to participate in demand response events by shifting its production, by using the flexibility of production lines. A case study using real production data that represents a textile industry is presented, where the tasks for six days are scheduled. During the week, a demand response event is launched, and the proposed algorithm shifts the consumption by changing task orders and machine usage.

Highlights

  • Power and energy systems are going through a paradigm change where distributed management, distributed generation, and end-user participation are promoted and needed [1].The end-user participation is key for the proliferation of smart grids and needs to be addressed [2]

  • The use of end-users flexibility in demand-side management methodologies can increase the use of local renewable energy generation and enable their participation in demand response programs [3,4]

  • This paper proposes a solution based on a genetic algorithm

Read more

Summary

Introduction

Power and energy systems are going through a paradigm change where distributed management, distributed generation, and end-user participation are promoted and needed [1]. The proposed solution enables the scheduling of tasks in a production line, considering several constraints, and the participation in demand response programs. The innovative aspect of the work presented in this paper relies on the integration of demand response events in the real-time update of the production schedule, respecting the production commitments and the energy-related constraints as the available on-site generation and the electricity prices in real time. It proposes an innovative genetic algorithm crossover approach, which allows getting more consistent individuals that respect imposed constraints in the schedule

Proposed Solution
Production
Domain
Cell Balancing proposed algorithm starts by balancing by thecells different
Initial Population
Crossover
Individuals’
Mutation
Selection
Extract Best Individual
Demand
Results and Discussion
Energy Cost Optimization
June to theto
Conclusions
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