Traditional electrical power grids have long suffered from operational unreliability, instability, inflexibility, and inefficiency. Smart grids (or smart energy systems) continue to transform the energy sector with emerging technologies, renewable energy sources, and other trends. Artificial intelligence (AI) is being applied to smart energy systems to process massive and complex data in this sector and make smart and timely decisions. However, the lack of explainability and governability of AI is a major concern for stakeholders hindering a fast uptake of AI in the energy sector. This paper provides a review of AI explainability and governance in smart energy systems. We collect 3,568 relevant papers from the Scopus database, automatically discover 15 parameters or themes for AI governance in energy and elaborate the research landscape by reviewing over 100 papers and providing temporal progressions of the research. The methodology for discovering parameters or themes is based on "deep journalism", our data-driven deep learning-based big data analytics approach to automatically discover and analyse cross-sectional multi-perspective information to enable better decision-making and develop better instruments for governance. The findings show that research on AI explainability in energy systems is segmented and narrowly focussed on a few AI traits and energy system problems. This paper deepens our knowledge of AI governance in energy and is expected to help governments, industry, academics, energy prosumers, and other stakeholders to understand the landscape of AI in the energy sector, leading to better design, operations, utilisation, and risk management of energy systems.
翻译:智能电网(或智能能源系统)继续以新兴技术、可再生能源和其他趋势来改造能源部门,并自动发现15个能源行业管理参数或主题,并通过审查100多份文件和提供研究的时空进展来阐述研究前景。发现参数或主题的方法基于“深入新闻”,我们的数据驱动的深学习型大数据分析方法,目的是自动发现和分析跨部门多视角信息,以便改进决策,并开发更好的治理工具。我们从Scopus数据库收集了3 568份相关文件,通过审查100多份文件和提供研究的短期进展,揭示能源行业的15个参数或主题。