Startseite Chapter 6 Data-driven techniques for optimal and sustainable process integration of chemical and manufacturing systems
Kapitel
Lizenziert
Nicht lizenziert Erfordert eine Authentifizierung

Chapter 6 Data-driven techniques for optimal and sustainable process integration of chemical and manufacturing systems

  • Daniel Rangel-Martínez und Luis A. Ricardez-Sandoval
Veröffentlichen auch Sie bei De Gruyter Brill

Abstract

One of the major challenges in the field of Process Systems Engineering (PSE) is the development of an integral approach to perform the optimization in chemical and manufacturing plants. This approach is complex as it consists of the simultaneous optimization of multiple hierarchical tasks that occur at different temporal and spatial scales in chemical plants. Challenges include the disparity in timescales among the different tasks, different operational, logical and tactical constraints, different objectives or goals, and the curse of dimensionality. To handle these situations, the continuously growing field of artificial intelligence (AI) has developed tools that can be used to reduce or overcome the complexity that these challenges pose to the integration. The application of AI techniques is largely supported by the growing volume of data that can be used for building data-driven models. In this work, a review of the literature in PSE that makes use of data-driven techniques to perform the optimal process integration in chemical and manufacturing plants is presented. The tasks involved in the optimal process integration discussed in this work include integration of process design and control, planning and scheduling, scheduling and control and planning, scheduling and control. Key insights combined with an outlook are presented and aim to provide the reader with a perspective of the current state of the art in this field.

Abstract

One of the major challenges in the field of Process Systems Engineering (PSE) is the development of an integral approach to perform the optimization in chemical and manufacturing plants. This approach is complex as it consists of the simultaneous optimization of multiple hierarchical tasks that occur at different temporal and spatial scales in chemical plants. Challenges include the disparity in timescales among the different tasks, different operational, logical and tactical constraints, different objectives or goals, and the curse of dimensionality. To handle these situations, the continuously growing field of artificial intelligence (AI) has developed tools that can be used to reduce or overcome the complexity that these challenges pose to the integration. The application of AI techniques is largely supported by the growing volume of data that can be used for building data-driven models. In this work, a review of the literature in PSE that makes use of data-driven techniques to perform the optimal process integration in chemical and manufacturing plants is presented. The tasks involved in the optimal process integration discussed in this work include integration of process design and control, planning and scheduling, scheduling and control and planning, scheduling and control. Key insights combined with an outlook are presented and aim to provide the reader with a perspective of the current state of the art in this field.

Heruntergeladen am 14.11.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783111383439-006/html
Button zum nach oben scrollen