Jiang Jin-bao, He Ru-yan, Steven Michael D, Hu Qing-yang
Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Oct;35(10):2781-6.
With the global warming, people now pay more attention to the problem of the emission of greenhouse gas (CO2). Carbon capture and storage (CCS) technology is an effective measures to reduce CO2 emission. But there is a possible risk that the CO2 might leak from underground. However, there need to research and develop a technique to quickly monitor CO2 leaking spots above sequestration fields. The field experiment was performed in the Sutton Bonington campus of University of Nottingham (52. 8N, 1. 2W) from May to September in 2008. The experiment totally laid out 16 plots, grass (cv Long Ley) and beans (Vicia faba cv Clipper) were planted in eight plots, respectively. However, only four grass and bean plots were stressed by the CO2 leakage, and CO2 was always injected into the soil at a rate of 1 L x min(-1). The canopy spectra were measured using ASD instrument, and the grass was totally collected 6 times data and bean was totally collected 3 times data. This paper study the canopy spectral characteristics of grass and beans under the stress of CO2 microseepages through the field simulated experiment, and build the model to detect CO2 microseepage spots by using hyperspectral remote sensing. The results showed that the canopy spectral reflectance of grass and beans under the CO2 leakage stress increased in 580-680 nm with the stressed severity elevating, moreover, the spectral features of grass and beans had same rule during the whole experimental period. According to the canopy spectral features of two plants, a new index AREA(5800680 nm) was designed to detect the stressed vegetations. The index was tested through J-M distance, and the result suggested that the index was able to identify the center area and the core area grass under CO2 leakage stress, however, the index had a poor capability to discriminate the edge area grass from control. Then, the index had reliable and steady ability to identify beans under CO2 leakage stress. This result could provide theoretical basis and methods for detecting CO2 leakage spots using hyperspectral remote sensing in the future.
随着全球变暖,人们现在更加关注温室气体(二氧化碳)排放问题。碳捕获与封存(CCS)技术是减少二氧化碳排放的有效措施。但存在二氧化碳可能从地下泄漏的潜在风险。然而,需要研究和开发一种技术来快速监测封存场地之上的二氧化碳泄漏点。2008年5月至9月在诺丁汉大学的萨顿博宁顿校区(北纬52.8度,西经1.2度)进行了田间试验。该试验共设置了16个地块,分别在8个地块种植了草(品种为Long Ley)和豆类(品种为Vicia faba cv Clipper)。然而,只有4个种草和种豆的地块受到二氧化碳泄漏的胁迫,且二氧化碳始终以1 L×min⁻¹的速率注入土壤。使用ASD仪器测量冠层光谱,草总共采集了6次数据,豆类总共采集了3次数据。本文通过田间模拟试验研究了二氧化碳微渗漏胁迫下草和豆类的冠层光谱特征,并利用高光谱遥感建立了检测二氧化碳微渗漏点的模型。结果表明,在二氧化碳泄漏胁迫下,草和豆类的冠层光谱反射率在580 - 680 nm范围内随胁迫程度的增加而升高,而且在整个试验期间草和豆类的光谱特征具有相同规律。根据两种植物的冠层光谱特征,设计了一个新的指数AREA(5800680 nm)来检测受胁迫植被。通过J - M距离对该指数进行了测试,结果表明该指数能够识别二氧化碳泄漏胁迫下的中心区域和核心区域的草,然而,该指数区分边缘区域草与对照草的能力较差。然后,该指数在识别二氧化碳泄漏胁迫下的豆类方面具有可靠且稳定的能力。这一结果可为未来利用高光谱遥感检测二氧化碳泄漏点提供理论依据和方法。