TY - JOUR
T1 - Optimizing energy consumption in stochastic production systems
T2 - Using a simulation-based approach for stopping policy
AU - Bokor, Balwin
AU - Altendorfer, Klaus
AU - Matta, Andrea
N1 - Publisher Copyright:
© 2025
PY - 2025/9/1
Y1 - 2025/9/1
N2 - In response to the escalating need for sustainable manufacturing, this study introduces a Simulation-Based Approach (SBA) to model a stopping policy for energy-intensive stochastic production systems, developed and tested in a real-world industrial context. The case company – a lead-acid battery manufacturer – faces significant process uncertainty in its heat-treatment operations, making static planning inefficient and limiting energy efficiency. To evaluate a potential sensor application for real-time control, the SBA leverages simulated sensor data (using a Markovian model) to iteratively refine Bayesian energy estimates and dynamically adjust batch-specific processing times. A discrete-event simulation, mirroring the company's 2024 heat-treatment process, evaluates the SBA's energy reduction potential, configuration robustness, and sensitivity to process uncertainty and sensor distortion. Results are benchmarked against three planning scenarios: (1) the company's Current Baseline Practice; (2) Optimized Planned Processing Times (OPT); and (3) an Ideal Scenario with perfectly known energy requirements. SBA significantly outperforms OPT across all tested environments and in some cases even performs statistically equivalent to an Ideal Scenario. Compared to the Current Baseline Practice, energy input is reduced by 14–25 %, depending on uncertainty and sensor accuracy. A Pareto analysis further highlights SBA's ability to balance energy and inspection-labour costs, offering actionable insights for industrial decision-makers.
AB - In response to the escalating need for sustainable manufacturing, this study introduces a Simulation-Based Approach (SBA) to model a stopping policy for energy-intensive stochastic production systems, developed and tested in a real-world industrial context. The case company – a lead-acid battery manufacturer – faces significant process uncertainty in its heat-treatment operations, making static planning inefficient and limiting energy efficiency. To evaluate a potential sensor application for real-time control, the SBA leverages simulated sensor data (using a Markovian model) to iteratively refine Bayesian energy estimates and dynamically adjust batch-specific processing times. A discrete-event simulation, mirroring the company's 2024 heat-treatment process, evaluates the SBA's energy reduction potential, configuration robustness, and sensitivity to process uncertainty and sensor distortion. Results are benchmarked against three planning scenarios: (1) the company's Current Baseline Practice; (2) Optimized Planned Processing Times (OPT); and (3) an Ideal Scenario with perfectly known energy requirements. SBA significantly outperforms OPT across all tested environments and in some cases even performs statistically equivalent to an Ideal Scenario. Compared to the Current Baseline Practice, energy input is reduced by 14–25 %, depending on uncertainty and sensor accuracy. A Pareto analysis further highlights SBA's ability to balance energy and inspection-labour costs, offering actionable insights for industrial decision-makers.
KW - Discrete-event simulation
KW - Energy efficiency
KW - Sensor application
KW - Simulation-based stopping policy
KW - Stochastic production systems
KW - Sustainable manufacturing
UR - https://www.scopus.com/pages/publications/105012382282
U2 - 10.1016/j.jclepro.2025.146335
DO - 10.1016/j.jclepro.2025.146335
M3 - Article
AN - SCOPUS:105012382282
SN - 0959-6526
VL - 522
JO - Journal of Cleaner Production
JF - Journal of Cleaner Production
M1 - 146335
ER -