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ID093526
Title ProperIntroduction of subsidisation in nascent climate-friendly learning technologies and evaluation of its effectiveness
LanguageENG
AuthorRout, Ullash K ;  Akimoto, Keigo ;  Sano, Fuminori ;  Tomoda, Toshimasa
Publication2010.
Summary / Abstract (Note)Given its importance as a practical phenomenon underlying the progress of learning technologies, attention should be paid to the role of subsidisation in learning theory, particularly in the case of nascent climate-related sociable learning technologies, in order to examine its benefits. Thus, this study focuses on subsidy procurement of energy technologies in several economies in the context of the component learning track in endogenous global clusters in order to suggest improvements to the adoption mechanism and examine the climate stabilization constraint. At the same time, the study attempts to determine the global progress ratio of the lithium-ion battery in order to analyse various endogenous learning scenarios for hybrid technologies. An integrated energy system model with highly disaggregated global regions (DNE21+) is used to execute this research in a medium time frame. Subsidisation of the learning track of battery technology encourages greater development of plug-in hybrid vehicles, promotes early diffusion of hybrid technologies, and relieves heavy dependency on crude oil and biofuels. The subsidies in the common learning domains in few economies benefit the nearby economies because of the technology spillover that occurs through numerous cross-feedback learning mechanisms. Endogenous learning with subsidies augments diffusion potentials, abates emissions, and shifts sectoral emissions.
`In' analytical NoteEnergy Policy Vol. 38, No. 1; Jan 2010: p.520-532
Journal SourceEnergy Policy Vol. 38, No. 1; Jan 2010: p.520-532
Key WordsPlug- in Hybrid ;  Cluster Learning of Component ;  Subsidy