数字化能源部门:具有二氧化碳捕获的生物质气化发电厂的综合数字孪生框架

Peter Akhator , Bilainu Oboirien
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引用次数: 0

摘要

通过引入可再生能源来推动能源部门脱碳的努力增加了发电厂运营的复杂性。一个潜在的解决方案是通过数字孪生(DT)技术将发电厂数字化,这可以提高运营效率并降低维护成本。然而,DT在发电厂的应用仍处于早期阶段,目前还没有专注于气化技术的实施。本研究旨在为具有二氧化碳捕集(DT-BGPP)的生物质气化发电厂开发一个全面的数字孪生框架。概述了电厂现有的DT研究及其分类,以评估该领域的现状并确定差距。在此基础上,定义了DT-BGPP框架的基本特征,从而确定了其主要组成部分。该分类揭示了中间类别的普遍差距,大多数可用的发电厂Dts缺乏与其物理对应的完整双向数据流。DT-BGPP的关键组成部分包括高阶科学动态模型、数据驱动模型、实际数据、预执行的局部模拟和系统基因组。推进拟议的DT-BGPP的建议包括在所有框架组件之间建立连接,以实现具有二氧化碳捕获的生物质气化发电厂的完全集成数字孪生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Digitilising the energy sector: A comprehensive digital twin framework for biomass gasification power plant with CO2 capture

Digitilising the energy sector: A comprehensive digital twin framework for biomass gasification power plant with CO2 capture
The push to decarbonize the energy sector by incorporating renewable sources is increasing the complexity of power plant operations. One potential solution is to digitize power plants through digital twin (DT) technology, which can improve operational efficiencies and reduce maintenance costs. However, the application of DT in power plants remains in its early stages, with no existing implementations focused on gasification technology. This study aims to develop a comprehensive digital twin framework for a biomass gasification power plant with CO2 capture (DT-BGPP).
An overview of existing DT research in power plants and their classifications was conducted to assess the current state of the field and identify gaps. Based on this analysis, essential characteristics for the DT-BGPP framework were defined, leading to the identification of its main components. The classification revealed a common gap in mid-tier categories, with most available power plant Dts lacking complete bidirectional data flow with their physical counterparts. The key components of DT-BGPP include a high-order science-informed dynamic model, a data-driven model, actual data, pre-executed localized simulations, and a system genome.
Recommendations for advancing the proposed DT-BGPP include establishing connections between all framework components to achieve a fully integrated digital twin for a biomass gasification power plant with CO2 capture.
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