Quantum Computing–Enhanced Service Ecosystems for Industrial Manufacturing Simulation and Workflow Optimization

Authors

DOI:

https://doi.org/10.62802/qz0bbp72

Keywords:

quantum computing, service ecosystems, industrial manufacturing, workflow optimization, digital twins, quantum annealing, hybrid computation, smart industry, quantum optimization

Abstract

The advent of quantum computing is redefining the computational landscape of industrial manufacturing, introducing new paradigms for simulation, optimization, and adaptive decision-making. This study investigates the integration of quantum computing–enhanced service ecosystems within industrial manufacturing frameworks, focusing on how quantum algorithms can accelerate workflow optimization, supply chain coordination, and process simulation in large-scale production environments. Traditional simulation and optimization techniques often struggle with the combinatorial complexity of modern manufacturing systems, leading to inefficiencies in resource allocation, scheduling, and predictive maintenance. The proposed framework leverages hybrid quantum–classical computation to simulate high-dimensional manufacturing workflows through quantum annealing, Quantum Approximate Optimization Algorithm (QAOA), and quantum-inspired reinforcement learning. These techniques enable more efficient exploration of multi-objective optimization spaces, facilitating near-real-time decision support and improved throughput under uncertain production conditions. The model also emphasizes the development of service-oriented architectures that integrate quantum computation with industrial Internet of Things (IIoT) infrastructures, digital twins, and cloud-based manufacturing services. Results from conceptual modeling and early simulation experiments suggest that quantum-enhanced service ecosystems outperform conventional digital twins and heuristic optimization methods in adaptability, precision, and energy efficiency. This convergence of quantum computing and industrial systems marks a shift toward next-generation intelligent manufacturing, capable of autonomous learning, dynamic reconfiguration, and sustainable production optimization.

References

Andreas, A., Mavromoustakis, C. X., Mastorakis, G., Bourdena, A., & Markakis, E. (2025). Quantum Computing in Semantic Communications: Overcoming Optimization Challenges With High-Dimensional Hilbert Spaces. IEEE Access.

Columbus Chinnappan, C., Thanaraj Krishnan, P., Elamaran, E., Arul, R., & Sunil Kumar, T. (2025). Quantum Computing: Foundations, Architecture and Applications. Engineering Reports, 7(8), e70337.

Hullurappa, M., & Panyaram, S. (2025). Quantum computing for equitable green innovation unlocking sustainable solutions. In Advancing social equity through accessible green innovation (pp. 387-402). IGI Global Scientific Publishing.

Kantaros, A., Ganetsos, T., Pallis, E., & Papoutsidakis, M. (2025). From Mathematical Modeling and Simulation to Digital Twins: Bridging Theory and Digital Realities in Industry and Emerging Technologies. Applied Sciences, 15(16), 9213.

Kaur, N. (2025). 2 Intelligent Manufacturing. Intelligent Manufacturing: Exploring AI, Blockchain, and Smart Technologies in Industry 4.0, 5.

Mon, B. F., Hayajneh, M., Ali, N. A., Ullah, F., Ullah, H., & Alkobaisi, S. (2025). Digital Twins in the IIoT: Current Practices and Future Directions Toward Industry 5.0. Computers, Materials & Continua, 83(3).

Nadendla, S. K. (2025). Optimizing Quantum Computing Workflows on AWS A Comprehensive Approach for Scalability, Cost-Efficiency, and Performance in Next-Generation Quantum Algorithms.

Saini, K., Singh, A., Ahuja, A., Arora, N., & Saini, R. (2025). Research advancements in quantum computing digital twins. In Digital Twins for Smart Cities and Villages (pp. 37-53). Elsevier.

Shaikat, F. B., Islam, R., Happy, A. T., & Faysal, S. A. (2025). Optimization of production scheduling in smart manufacturing environments using machine learning algorithms. Lett High Energy Phys, 12(1), 1-15.

Volpe, D., Orlandi, G., & Turvani, G. (2025). Improving the solving of optimization problems: A comprehensive review of quantum approaches. Quantum Reports, 7(1), 3.

Waqas, M., & Naseem, A. (2025). Artificial Intelligence in Sustainable Industrial Transformation: A Comparative Study of Industry 4.0 and Industry 5.0. FinTech and Sustainable Innovation, 1, A2-A2.

frontpage

Downloads

Published

2025-11-13