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Artificial intelligent based energy scheduling of steel mill gas utilization system towards carbon neutrality

机译:基于人工智能的钢厂气体利用系统对碳中立性能的能量调度

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Steel industry contributes significantly to the world economy, but is highly energy intensive and CO2 intensive since the coal-based blast furnace route is dominant in steelmaking. Besides efficient utilization of the steel mill gases for power and heat supply, deploying technologies of carbon capture, utilization and renewable power is in urgent need for the transition of the steel industry towards carbon neutrality. To attain this goal, this paper develops a low-carbon steel mill gas utilization system with the integration of solvent-based carbon capture, methanol production based carbon utilization and renewable power. An artificial intelligent based optimal scheduling is then proposed to coordinate the interactions among gas, heat, electricity and carbon under variant weather and load conditions. Gradient boosted regression trees with Bayesian optimization is exploited to identify efficient surrogate models for the complex devices within the system. Heuristic search algorithm of particle swarm optimization is applied to find the low-carbon and economical scheduling within the entire scheduling period. Case studies show that the optimal scheduling can unlock complementary advantages among renewable energy, carbon capture and utilization, leading to 97% renewable energy curtailment reduction, 62% CO2 emission reduction and 126 tons of methanol production in 24 h. Sensitivity analyses are carried out to investigate the effects of additional coal consumption, renewable power installed capacity, CO2 emission penalty coefficient and CO2 capture constraint mode, providing broader insight into the operation of the steel mill gas utilization system towards carbon neutrality.
机译:钢铁行业对世界经济贡献了大量贡献,但由于煤炭的高炉途径在炼钢中占主导地位,是高能量密集型和二氧化碳密集型。除了高效利用钢厂气体供电和供热,碳捕获技术部署,利用和可再生能力迫切需要钢材行业转向碳中立的转变。为了实现这一目标,本文开发了一种低碳钢厂气体利用系统,具有溶剂型碳捕获,甲醇生产基碳利用和可再生能力。然后提出了一种人工智能的最佳调度,以协调在变体天气和负载条件下的气体,热量,电力和碳之间的相互作用。利用贝叶斯优化的渐变增强回归树木,用于识别系统内复杂设备的高效代理模型。粒子群优化的启发式搜索算法应用于在整个调度期内找到低碳和经济调度。案例研究表明,最佳调度可在可再生能源,碳捕获和利用率中解锁互补优势,从而导致97%的可再生能源缩减,减少62%的二氧化碳排放减少和126吨甲醇产量。进行敏感性分析,以研究额外的煤炭消耗,可再生能力装机容量,二氧化碳排放惩罚系数和二氧化碳捕获约束模式的影响,提供更广泛的深入了解钢厂气体利用系统朝向碳中立性的运行。

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