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    人工智能驱动下的智能电厂建设技术综述与前沿展望

    Construction of intelligent power plant driven by artificial intelligence: technology review and prospect

    • 摘要: 人工智能的突破性进展为构建具备自寻优、自适应、自维护等特征的智慧电厂模式提供了颠覆性技术支撑,推动电力行业从传统自动化向真正智能化的深刻转型。系统梳理了人工智能技术与电厂生产流程深度融合的最新进展,聚焦于其在提升电厂效率、安全与可靠性方面的核心作用。通过建立“运行–检测–维护”三位一体的分析框架,深入评估了典型算法在热力系统运行优化、复杂工况参数预测、设备全生命周期故障诊断预警等场景中的应用。进一步地,揭示了当前人工智能技术在电力生产系统中的规模化应用仍面临若干关键瓶颈:首先,模型可解释性不足导致算法决策过程如同“黑箱”,难以获得运行人员的完全信任,在安全苛求的电力系统中推广受阻;其次,针对复杂多变的现场工况,现有模型往往依赖大量标注数据,在工况迁移、燃料变化等场景下泛化能力薄弱;此外,人工智能模型与现有工业控制硬件、实时操作系统的融合集成仍存在困难,边缘计算设备的算力与能耗限制也制约了复杂模型的现场部署。为切实提升电厂智慧化水平,突破上述瓶颈,最后结合人工智能前沿技术、面向电力领域的专业大模型及工业互联网架构,提出一种“云–边–端”协同的工业现场解决方案与渐进式技术演进路径。这一体系旨在为火电厂实现安全、高效、清洁、低碳的智能化转型升级提供系统性的实践指引与技术支撑,助力能源电力行业在数字时代实现高质量发展。

       

      Abstract: Breakthrough advancements in artificial intelligence provide disruptive technological support for building smart power plant models with features such as self-optimization, self-adaptation, and self-maintenance, driving a profound transformation of the power industry from traditional automation to genuine intelligence. A systematic review is conducted on the latest progress in the deep integration of AI technologies with power plant production processes, focusing on their core role in enhancing plant efficiency, safety, and reliability. By establishing a tripartite analytical framework of “operation-inspection-maintenance”, an in-depth evaluation is carried out on the application of typical algorithms in scenarios such as thermal system operation optimization, prediction of complex operating condition parameters, and life-cycle fault diagnosis and early warning of equipment. Furthermore, several key bottlenecks are identified that currently hinder the large-scale application of AI technology in electric power production systems: firstly, the lack of model interpretability renders algorithmic decision-making processes akin to a “black-box”, making it difficult to gain full trust from operators and impeding adoption in safety-critical power systems; secondly, faced with complex and variable on-site operating conditions, existing models often rely on large amounts of labeled data and exhibit weak generalization capability under scenarios such as condition shifts or fuel variations; additionally, challenges remain in integrating AI models with existing industrial control hardware and real-time operating systems, while the computational power and energy consumption constraints of edge computing devices also limit the on-site deployment of complex models. To effectively enhance the intelligence level of power plants and overcome these bottlenecks, a “cloud-edge-end” collaborative industrial field solution and a gradual technological evolution path are proposed, incorporating cutting-edge AI technologies, domain-specific large-scale models for the power sector, and industrial internet architecture. This system aims to provide systematic practical guidance and technical support for thermal power plants in achieving safe, efficient, clean, and low-carbon intelligent transformation and upgrading, thereby assisting the energy and power industry in realizing high-quality development in the digital era.

       

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