Call for book chapters - Wiley book on AI for renewables

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Dr. Joyjit Chatterjee

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Jul 12, 2024, 6:31:36 PM (4 days ago) Jul 12
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Call for book chapters for the Wiley book - Renewable Energy Transition with Artificial Intelligence: Challenge-driven Solutions. 

This book will consist of contributed chapters (of around 15-20 pages, this is flexible) in the field of renewable energy and sustainability, e.g. optimising operations & maintenance (O&M), or in some other way facilitating enhanced uptake of renewable energy sources with AI. We already have confirmed contributors from industry, academia and the public sector - like MathWorks, Sheffield, Hull, Strathclyde, Amity, Huddersfield, Caraga State University, Cefas etc. from across the world with more contributions in the pipeline.

Please reach out to the Editors (Dr Nina Dethlefs) - n.det...@hull.ac.uk & (Dr Joyjit Chatterjee) - j.chat...@hull.ac.uk if you would like to discuss about a prospective book chapter contribution.

The book will focus on topics such as (but is not limited) to the below mentioned areas: 

·       Digital Twins for condition-based monitoring

 ·       Physics-based modelling to account for uncertainty in the environment, e.g. changing climate

·       Transfer learning /  data augmentation to mitigate data sparsity, e.g. with generalisability

·       Power forecasting in extreme environments, e.g. far offshore, in extreme heights, etc.

·       Human-in-the-loop AI for operations and maintenance 

 ·       Safety, transparency, explainability in solar power operations and maintenance

·       Case study in floating solar energy, e.g. focusing on its potential of scaling

·       Storage and transmission of solar energy, e.g. for surplus energy

 ·       Case study in environmental co-design, e.g. considering other land/sea users, with AI.

·       Techno-economic modelling for hybrid energy solutions, including solar

·       Industry standards and benchmarking, validation of simulated systems etc.

 ·      Multi-task learning with low quality data

·       Case studies on alternative renewable energy systems, such as tidal, geothermal, bioenergy, landfill, industrial waste; and where possible touching on issues that cut across energy systems, such as hybrid energy systems, environmental issues, such as co-habitation and co-design, social and community topics, e.g. involving local communities, logistics, and others.

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