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Efficient energy management of CO2 capture plant using control-based optimization approach under plant and market uncertainties

机译:基于控制的优化方法在植物和市场不确定性下的高效能量管理

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This paper employs a control-based optimization algorithm encompassing of an intelligence model predictive control (MPC) scheme and mixed integer non-linear programming (MINLP) for coal-fired power plant retrofitted with flexible solvent-based post combustion CO2 capture (PCC) plant (integrated plant). The agility and robustness of the developed control algorithm (MPC) is demonstrated through the control response time and efficiency of energy requirement including the financial and operational benefits of the plant subjected to plant and market uncertainties. While, the MINLP is utilized to forecast plant operational modes by ensuring the operational fidelity of integrated plant. This involves utilization of historical (2011) and forecast (2020) market conditions (electricity tariff and carbon price) subject to maximum plant net operating revenue. The outcomes show that the future power plant will operate in mixed operation modes, for instance in unit turndown and load following modes, which contribute to a minimum capture energy penalty at 3.13 MJ(th)/tonne CO2. Moreover, under the same year (2020), MPC exhibits superior control performance by satisfactorily obtain 94% actual CO(2 )capture from the ideal cumulative CO2 capture. Additionally, the integrated plant is capable to resume approximately 96% actual revenue from the ideal net operating revenue projected by the control-based optimization algorithm. The algorithm demonstrates that the installation of control system package (MPC) into the flexible PCC plant associated with coal-power generator could contribute to efficient energy management subjects to unprecedented uncertainties. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文采用基于控制的优化算法包括智能模型预测控制(MPC)方案和混合整数非线性编程(MINLP),用于燃煤发电厂的燃煤电厂,其具有柔性溶剂的后燃烧CO2捕获(PCC)植物(综合植物)。通过控制响应时间和能源需求的控制响应时间和效率证明了开发控制算法(MPC)的敏捷性和稳健性,包括植物和市场不确定性的植物的财务和运营益处。虽然,MINLP通过确保综合植物的操作保真来预测植物操作模式。这涉及利用历史(2011年)和预测(2020年)市场条件(电费和碳价格),但经过最大的工厂净营业收入。结果表明,未来的电厂将以混合操作模式运行,例如在单位调节和负载后的模式下,这有助于3.13 MJ(TH)/吨CO2的最小捕获能源罚分。此外,在同一年(2020年)下,MPC通过令人满意地从理想的累积二氧化碳捕获捕获,令人满意地表现出优异的控制性能。此外,综合设备能够从基于控制的优化算法预计的理想净运营收入恢复大约96%的实际收入。该算法表明将控制系统包装(MPC)安装到与煤发电机相关联的柔性PCC厂中可能有助于有效的能量管理受试者以前所未有的不确定性。 (c)2018年elestvier有限公司保留所有权利。

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