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CEPA对珠三角及内地经济的影响 被引量:1
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作者 常智峰 汪小勤 《市场周刊(财经论坛)》 2004年第8期1-2,共2页
在香港经济先后经历亚洲金融危机、网络股泡沫破灭、全球经济萧条等一系列不利因素的影响,以及随着我国“入世”,内地经济面临进一步加快市场化改革进程和经济对外开放压力的情况下,内地与香港签署了《内地与香港关于建立更紧密经贸关... 在香港经济先后经历亚洲金融危机、网络股泡沫破灭、全球经济萧条等一系列不利因素的影响,以及随着我国“入世”,内地经济面临进一步加快市场化改革进程和经济对外开放压力的情况下,内地与香港签署了《内地与香港关于建立更紧密经贸关系的安排》(CEPA)。研究试图在阐述CEPA产生背景及主要内容的基础上,从短期和长期两个视角对CEPA给香港、珠三角地区以及内地经济的影响进行初步分析和预测。 展开更多
关键词 CEPA(Closer ECONOMIC PARTNERSHIP Arrangement)效应 粤港经济关系 香港-珠江三角洲-内地经济关系 短期/长期影响
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Study of Vulture Habitat Suitability and Impact of Climate Change in Central India Using MaxEnt 被引量:2
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作者 Kaushalendra K.JHA Radhika JHA 《Journal of Resources and Ecology》 CSCD 2021年第1期30-42,共13页
Vultures provide invaluable ecosystem services and play an important role in ecosystem balancing. The number of native vultures in India has declined in the past. Acquiring present knowledge of their habitat spread is... Vultures provide invaluable ecosystem services and play an important role in ecosystem balancing. The number of native vultures in India has declined in the past. Acquiring present knowledge of their habitat spread is essential to manage and prevent such a decline. It is envisaged that ongoing climate crisis may further cause change in habitat suitability and impact the existing population. Therefore, this study in Central India—a vulture stronghold, is aimed at predicting habitat changes in the short and long term and present the data statistically and graphically by using Species Distribution Model. MaxEnt software was chosen for its advantages over other models, like using presence-only data and performing well with incomplete data, small sample sizes and gaps, etc. Global Climate Model ensemble(CCSM4, HadGEM2 AO and MIROC5), was used to get better prediction. Fourteen robust models(AUC 0.864 0.892) were developed using data from over 1000 locations of seven vulture species over two seasons together. Selected climatic and other environmental variables were used to predict the current habitat. Future prediction was based on climatic variables only. The most important variables influencing the distribution were precipitation(bio 15, bio 18, bio 19) and temperature(bio 3, bio 5). Forest and water bodies were the major influencers within land use-landcover in the current prediction. At finer scale, while extremely suitable habitat area decreased and highly suitable area increased over time, the total suitable area marginally increased in 2050 but decreased in 2070. For broader consideration, net loss in suitable area was 5% in 2050 and 7.17% in 2070(RCP4.5). Similarly, in the RCP8.5 this was 6% in 2050 and 7.3% in 2070. The data generated can be used in conservation planning and management and thus protecting the vultures from any future threat. 展开更多
关键词 ensemble climate model Indian vulture-stronghold long term impact short term impact species distribution modelling vulture habitats
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