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首页> 外文期刊>Ecological Economics >Testing For The Presence Of Some Features Of Increasing Returns To Adoption Factors In Energy System Dynamics: An Analysis Via The Learning Curve Approach
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Testing For The Presence Of Some Features Of Increasing Returns To Adoption Factors In Energy System Dynamics: An Analysis Via The Learning Curve Approach

机译:测试能源系统动力学中采用因子收益增加的某些特征的存在:通过学习曲线方法的分析

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The purpose of this paper is to explain the sources of energy system lock-in. It presents a comparative analysis of the respective contributions of some features of increasing returns to adoption factors, i.e. learning-by-doing, learning-by-searching and returns to scale effects in explaining the technological change dynamics in the energy system. The paper is technically based on a critical analysis of the learning curve approach. Econometric estimation of learning and scale effects inherent to seven energy technologies were performed by the use of several learning curve specifications. These specifications permit to deal with some crucial issues related to the learning curve estimation which are associated with the problem of omitted variable bias, the endogeneity effects and the choice of learning indicators. Results show that dynamic economies from learning effects coupled with static economies from scale effects are responsible for the lock-in phenomena of the energy system. They also show that the magnitude of such effects is correlated with the technology life cycle (maturity). In particular, results point out that, 1) the emerging technologies exhibit low learning rates associated with diseconomies of scale which are argued to be symptomatic of the outset of the deployment of new technologies characterized by diffusion barriers and high level of uncertainty, 2) the evolving technologies present rather high learning rates meaning that they respond quickly to capacity expansion and R&D activities development, 3) conventional mature technologies display low learning rates but increasing returns to scale implying that they are characterized by a limited additional diffusion prospects.
机译:本文的目的是解释能源系统锁定的来源。它提供了对采用系数增加收益的某些特征(即边做边学,边学边学和规模收益)的某些特征的各自贡献的比较分析,这些作用是解释能源系统中技术变化的动力。本文从技术上是基于对学习曲线方法的批判性分析。通过使用几种学习曲线规范,对7种能源技术固有的学习和规模效应进行了计量经济学估算。这些规范允许处理与学习曲线估计有关的一些关键问题,这些问题与遗漏变量偏差,内生性效应和学习指标的选择有关。结果表明,学习效应带来的动态经济性与规模效应带来的静态经济性共同构成了能源系统的锁定现象。他们还表明,此类影响的程度与技术生命周期(成熟度)相关。具体而言,结果指出:1)新兴技术显示出与规模不经济相关的低学习率,据认为这是新技术开始部署的症状,其特征是扩散障碍和不确定性高,2)不断发展的技术具有很高的学习率,这意味着它们对容量扩展和R&D活动发展迅速做出了响应。3)传统的成熟技术显示出较低的学习率,但规模回报却不断增加,这意味着它们的附加扩散前景有限。

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