Adopting renewable energies to meet the carbon reduction target: Is forest carbon sequestration cheaper?

可再生能源 环境科学 化石燃料 温室气体 固碳 植树造林 天然气 碳中和 具有碳捕获和储存功能的生物能源 自然资源经济学 环境工程 减缓气候变化 废物管理 工程类 二氧化碳 农林复合经营 化学 经济 生态学 有机化学 电气工程 生物
作者
Wan‐Yu Liu,Yi-Hua Chiang,Chun‐Cheng Lin
出处
期刊:Energy [Elsevier BV]
卷期号:246: 123328-123328 被引量:16
标识
DOI:10.1016/j.energy.2022.123328
摘要

In most countries, the current goal for greenhouse gas emission reduction is to achieve a 50% reduction by 2050 with a carbon neutrality target. Most energy policies have been to adopt at least 20% renewable energies in the country energy portfolio. This study conducted a comparative cost analysis on various carbon emission reduction options: reducing fossil energies (including coal, natural gas, and petroleum), increasing renewable energies (including hydroelectric power, wind power, photovoltaics, and wood fuel), and increasing afforestation (including coniferous forests, broadleaved forests, and mixed coniferous-broadleaved forests). In analyzing the discounted costs per unit of carbon reduction, this study explored the costs of these options at a fixed amount of carbon reduction, which means the lower the costs, the more effective the carbon emission reduction. Taking Taiwan as an example, the results indicated that coal-fired power has the lowest cost (US$24.80 per ton of CO2). The costs of other energy sources (i.e., natural gas, petroleum, hydroelectric power, wind power, solar power, and wood fuel) are US$79.72–182.17 per ton of CO2. The cost of afforestation for reducing carbon emissions is US$34.68–64.82 per ton of CO2, lower than the cost of adopting renewable energies assuming no technological advancement in current renewable energies.
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