About this Research Topic
The clean energy processes are highly dependent on a variety of parameters, including the weather, the technology being used, and the materials being used, making their modeling and optimization a challenge. The use of artificial neural networks, genetic algorithms, support vector machines and other emerging machine learning methods have been demonstrated to accurately model clean energy processes. In these research areas, it is expected that artificial intelligence approaches will be employed to model and optimize the various components and properties of renewable clean energy processes. Energy process modeling and optimization as a robust approach for determining the most appropriate design parameters for enhancing efficiency, cost-effectiveness, and sustainability is expected to be covered.
The modeling and optimization of clean energy processes can benefit from the use of artificial intelligent methods. As a result, we encourage authors to submit original articles describing their work on the advances in process modeling and optimization of clean energy processes. Additionally, the authors are expected to also present high-quality technical notes and review papers for publication. The following are some of the Research Topic’s primary focus, but they are by no means exhaustive:
• Advances in data-driven methodologies for modeling and optimization of clean energy processes
• Using data-driven methodologies to model the materials used in clean energy processes
• Advances in modeling and optimization of clean energy processes using new methodologies.
Keywords: Renewable Energy, Process Modeling, Process Optimization, Low-carbon energy, Energy transition
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.