The strategic transition from fossil energy to renewable energy is an irreversible global trend, but the pace of renewable energy deployment and the path of cost reduction are uncertain. In this paper, a two-factor learning-curve model of wind power and photovoltaics (PV) was established based on the latest empirical data from the United States, and the paths of cost reduction and corresponding social impacts were explored through scenario analysis. The results demonstrate that both of the technologies are undergoing a period of rapid development, with the learning-by-searching ratio (LSR) being greatly improved in comparison with the previous literature. Research, development, and demonstration (RD&D) have contributed to investment cos...
International audienceThis paper explores various dimensions of the learning process for low-carbon ...
Cost evolution has an important influence on the commercialization and large-scale application of po...
The concepts of learning and experience are reviewed and their usefulness for predicting the future ...
The learning curve concept, which relates historically observed reductions in the cost of a technolo...
The learning-curve concept is considered to be an important tool for predicting the future costs of ...
The incorporation of experience curves has enhanced the treatment of technological change in models ...
This dataset includes input data to estimate learning-by-deploying (LbD) and learning-by-researching...
Learning curves play a central role in power sector planning. We improve upon past learning curves f...
Price declines and volume growth of concentrated photovoltaic (CPV) systems are analysed using the l...
This dataset includes input data to estimate learning-by-doing (LbD) and learning-by-researching (Lb...
The pace of the global decarbonization process is widely believed to hinge on the rate of cost impro...
A key challenge for policy-makers and technology market forecasters is to estimate future technology...
This paper aims at improving the application of the learning curve, a popular tool used for forecast...
In a large number of energy models, the use of learning curves for estimating technological improvem...
Price declines and volume growth of concentrated photovoltaic (CPV) systems are analysed using the l...
International audienceThis paper explores various dimensions of the learning process for low-carbon ...
Cost evolution has an important influence on the commercialization and large-scale application of po...
The concepts of learning and experience are reviewed and their usefulness for predicting the future ...
The learning curve concept, which relates historically observed reductions in the cost of a technolo...
The learning-curve concept is considered to be an important tool for predicting the future costs of ...
The incorporation of experience curves has enhanced the treatment of technological change in models ...
This dataset includes input data to estimate learning-by-deploying (LbD) and learning-by-researching...
Learning curves play a central role in power sector planning. We improve upon past learning curves f...
Price declines and volume growth of concentrated photovoltaic (CPV) systems are analysed using the l...
This dataset includes input data to estimate learning-by-doing (LbD) and learning-by-researching (Lb...
The pace of the global decarbonization process is widely believed to hinge on the rate of cost impro...
A key challenge for policy-makers and technology market forecasters is to estimate future technology...
This paper aims at improving the application of the learning curve, a popular tool used for forecast...
In a large number of energy models, the use of learning curves for estimating technological improvem...
Price declines and volume growth of concentrated photovoltaic (CPV) systems are analysed using the l...
International audienceThis paper explores various dimensions of the learning process for low-carbon ...
Cost evolution has an important influence on the commercialization and large-scale application of po...
The concepts of learning and experience are reviewed and their usefulness for predicting the future ...