可再生能源
生物量(生态学)
发电
温室气体
环境科学
环境经济学
网格
化石燃料
电
能量转换
生物能源
自然资源经济学
环境工程
作者
Mengyu Li,Ella Middelhoff,Fabiano A. Ximenes,Catherine Carney,Ben Madden,Nick Florin,Arunima Malik,Manfred Lenzen
标识
DOI:10.1016/j.resconrec.2022.106198
摘要
• Simulating biomass usage in Australian energy transitions and 100% renewable grid. • High spatio-temporal grid configuration featuring disaggregated biomass feedstocks. • Bioelectricity generation share reaches ∼9%-12% at carbon prices above 30$/t. • Biomass plants operate in gap-filling mode can better facilitate load balancing. • Biomass can reduce system capacity and cost by 32% and 21% in 100% renewable grid. Responding to the global crises - Covid19 and climate change - governments around the world are formulating green recovery plans to stimulate economic growth, boost clean energy technologies and cut emissions. Potential transition pathways for low carbon energy systems, however, remain as open questions. Generally, the simulation of biomass in the grid models is limited in their tempo-spatial resolution, transition pathways description, and/or biomass feedstock supply representation. This study aims to provide spatio-temporal highly resolved grid configurations featuring disaggregated biomass feedstocks, to assess Australia's potential energy transition pathways and 100% renewable electricity supply scenarios under various biomass bidding strategies and cost assumptions. We find that, as carbon prices increase, bioelectricity will prove to be a cost-effective flexible option compared to other low-carbon (such as CSP) and fossil-based flexible options (e.g. coal and gas), with its generation share reaching ∼9%-12% at higher carbon price scenarios. Biomass power plants can be well suited for operating in gap-filling mode to provide flexible power generation and to facilitate grid stability and load balancing. In light of the high biomass resource potential in Australia, keeping bioelectricity in the generation mix is beneficial for reducing system capacity and cost by 32% and 21%, respectively, under a future renewable-dominated Australian grid system.
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