The carbon-capturing process with the aid of CO2 removal technology (CDRT) has been recognised as an alternative and a prominent approach to deep decarbonisation. However, the main hindrance is the enormous energy demand and the economic implication of CDRT if not effectively managed. Hence, a novel deep reinforcement learning agent (DRL), integrated with an automated hyperparameter selection feature, is proposed in this study for the real-time scheduling of a multi-energy system coupled with CDRT. Post-carbon capture systems (PCCS) and direct-air capture systems (DACS) are considered CDRT. Various possible configurations are evaluated using real-time multi-energy data of a district in Arizona and CDRT parameters from manufacturers' catalogues and pilot project documentation. The simulation results validate that an optimised soft-actor critic (SAC) algorithm outperformed the TD3 algorithm due to its maximum entropy feature. We then trained four (4) SAC agents, equivalent to the number of considered case studies, using optimised hyperparameter values and deployed them in real time for evaluation. The results show that the proposed DRL agent can meet the prosumers' multi-energy demand and schedule the CDRT energy demand economically without specified constraints violation. Also, the proposed DRL agent outperformed rule-based scheduling by 23.65%. However, the configuration with PCCS and solid-sorbent DACS is considered the most suitable configuration with a high CO2 captured-released ratio of 38.54, low CO2 released indicator value of 2.53, and a 36.5% reduction in CDR cost due to waste heat utilisation and high absorption capacity of the selected sorbent. However, the adoption of CDRT is not economically viable at the current carbon price. Finally, we showed that CDRT would be attractive at a carbon price of 400-450USD/ton with the provision of tax incentives by the policymakers.
翻译:利用38年CO2清除技术(CDRT)的辅助作用,400个碳捕获工艺被公认为一种替代和显著的深度去碳化方法,然而,主要障碍是CRT如果没有得到有效管理,则巨大的能源需求和CDRT参数的经济影响。因此,本研究报告建议采用一个新的深度强化学习剂(DRL),结合一个自动超光谱选择功能,用于实时安排多能源系统和CDRT(CDRT)的多功能系统。 后碳捕获系统(PCCS)和直接捕获系统(DACS)被认为是CRT。 利用亚利桑那州一个区的实时多能源数据数据数据和CDRT参数(如果没有得到有效管理的话),评估各种可能的配置。 模拟结果证实,一个优化的软体控评论器(DRL)的算法由于其最大增温特性而超过TD3的计算法。 然后,我们培训了四(4)个SAC代理,相当于所考虑的案例研究数量,使用最佳的超光谱值,并实时部署它们。 结果显示,拟议的DRLB公司最有的低成本价格限制,最后的CRDRDR(CS)的计算, 高成本要求, 也符合了CRDRDRDRDRDRDR) 。