65 research outputs found
From Government to Market?:A Discrete Choice Analysis of Policy Instruments for Electric Vehicle Adoption (CEIBS Working Paper, No. 039/2020/POM, 2020)
With the calls for policy instruments to shift from “government” to “market”, surging interest leads to a broad debate on the role of market-oriented policy instruments in promoting the adoption of electric vehicles (EVs). As the two prime examples of market-oriented policy instruments, personal carbon trading (PCT) and tradable driving credit (TDC) schemes are theoretically regarded to alter consumers’ EV preferences by both economic and psychological motivations. However, limited studies validate such effects. To fill the gaps, we conduct a discrete choice experimental survey by integrating vehicle, psychological, and policy attributes together. The empirical results from China reveal how consumers make trade-offs between economic and psychological motivations. In particular, although PCT and TDC can stimulate consumers’ EV adoption behaviors through monetary revenues, the positive effect of more revenues from PCT and TDC in promoting EV adoption is not always supported because EV adoption is subject to some psychological attributes, especially perceived norm pressures. It implies that consumers with stricter norms will be driven more by social and moral pressures than by monetary revenues. Even so, PCT and TDC are considered to be more powerful and sustainable than existing financial incentives. These findings not only contribute to the understanding of the interaction between psychological and policy attributes, but also provide insights for policymakers to design novel policy instruments to promote EV adoption
Damage Characteristics of Argillaceous Quartz Sandstone Mesostructure under Different Wetting-drying Conditions
Extensive water–rock interaction in the Three Gorges Reservoir area of the Yangtze River leads to rock mass deterioration along the reservoir banks. However, mineral evolution behavior and its effect on the mesostructure deterioration of rocks under the wetting–drying cycle condition remain unknown. So, the wetting–drying cycle tests were conducted on peculiar argillaceous quartz sandstone in TGRA under neutral (pH = 7) and alkaline (pH = 10) water environments. Here, we provided detailed physical and microscopy images data to determine the control mechanism of mineral behavior on the evolution of sandstone’s mesostructure. Under the neutral condition, repeated “absorption and swelling–dehydration and contraction” of clay minerals leads to the repeated physical action of “squeezing–unloading” in the interior of a rock. This results in the initiation and gradual expansion of cracks in the framework mineral quartz, exhibiting failure mode from the interior to the exterior. In contrast, under the alkaline condition, the dissolution on the surface of quartz particles leads to the expansion and connection of pores, implying that the sandstone exhibits failure mode from the exterior to the interior. Moreover, the internal mechanical analysis indicates the minerals are at high pressure because of the expansion of clay minerals in the neutral solution. However, in an alkaline water environment, the extrusion pressure of framework mineral quartz decreases significantly and is not easily broken due to increased porosity. Thus, the evolution behavior of minerals in different water environments plays an important role in the damage of the rock
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EZH2 RIP-seq Identifies Tissue-specific Long Non-coding RNAs.
BackgroundPolycomb Repressive Complex 2 (PRC2) catalyzes histone methylation at H3 Lys27, and plays crucial roles during development and diseases in numerous systems. Its catalytic subunit EZH2 represents a key nuclear target for long non-coding RNAs (lncRNAs) that emerging to be a novel class of epigenetic regulator and participate in diverse cellular processes. LncRNAs are characterized by high tissue-specificity; however, little is known about the tissue profile of the EZH2- interacting lncRNAs.ObjectiveHere we performed a global screening for EZH2-binding lncRNAs in tissues including brain, lung, heart, liver, kidney, intestine, spleen, testis, muscle and blood by combining RNA immuno- precipitation and RNA sequencing. We identified 1328 EZH2-binding lncRNAs, among which 470 were shared in at least two tissues while 858 were only detected in single tissue. An RNA motif with specific secondary structure was identified in a number of lncRNAs, albeit not in all EZH2-binding lncRNAs. The EZH2-binding lncRNAs fell into four categories including intergenic lncRNA, antisense lncRNA, intron-related lncRNA and promoter-related lncRNA, suggesting diverse regulations of both cis and trans-mechanisms. A promoter-related lncRNA Hnf1aos1 bound to EZH2 specifically in the liver, a feature same as its paired coding gene Hnf1a, further confirming the validity of our study. In addition to the well known EZH2-binding lncRNAs like Kcnq1ot1, Gas5, Meg3, Hotair and Malat1, majority of the lncRNAs were firstly reported to be associated with EZH2.ConclusionOur findings provide a profiling view of the EZH2-interacting lncRNAs across different tissues, and suggest critical roles of lncRNAs during cell differentiation and maturation
Deterioration Effect of Sandstone Tensile Strength and Its Mesoscopic Mechanism under Dry-wet Cycles
The rock mass in the hydro-fluctuating zone of the reservoir bank slope is under dry-wet cycles for a long time, which will cause the deterioration of rock mass and induce geological disasters. In this study, a series of dry-wet cycle tests on the argillaceous quartz sandstone in the Three Gorges Reservoir area was carried out. Then, after different dry-wet cycles, the sandstone specimens were used to conduct the Brazilian splitting, scanning electron microscope, and 3D laser scanning tests. Herein, we provided detailed physical and microscopy image data to analyze the deterioration effect of tensile strength and mesostructure deterioration process of sandstone. With the increase of dry-wet cycles, the tensile strength of sandstone initially decreases rapidly, and then the decline rate tends to slow down. The evolution laws of fractal dimension and porosity are also significantly consistent with the deterioration of tensile strength. Moreover, further mesostructural analysis has revealed the repeated “absorption and swelling-dehydration and contraction” of clay minerals. This results in the breakage of framework mineral quartz and the expansion and connectivity of internal cracks, which ultimately deteriorates sandstone’s tensile strength
Federated Learning with New Knowledge: Fundamentals, Advances, and Futures
Federated Learning (FL) is a privacy-preserving distributed learning approach
that is rapidly developing in an era where privacy protection is increasingly
valued. It is this rapid development trend, along with the continuous emergence
of new demands for FL in the real world, that prompts us to focus on a very
important problem: Federated Learning with New Knowledge. The primary challenge
here is to effectively incorporate various new knowledge into existing FL
systems and evolve these systems to reduce costs, extend their lifespan, and
facilitate sustainable development. In this paper, we systematically define the
main sources of new knowledge in FL, including new features, tasks, models, and
algorithms. For each source, we thoroughly analyze and discuss how to
incorporate new knowledge into existing FL systems and examine the impact of
the form and timing of new knowledge arrival on the incorporation process.
Furthermore, we comprehensively discuss the potential future directions for FL
with new knowledge, considering a variety of factors such as scenario setups,
efficiency, and security. There is also a continuously updating repository for
this topic: https://github.com/conditionWang/FLNK.Comment: 10 page
Generation of a vortex point adjustable vortex array based on decentered annular beam pumping
An adjustable optical vortex arrays (OVAs) based on decentered annular beam pumping has been demonstrated in an end-pumped Nd:YVO4 laser. This method allows for not only the transverse mode locking of different modes, but also the ability to adjust the mode weight and phase by manipulating the position of the focusing lens and axicon lens. To explain this phenomenon, we propose a threshold model for each mode. Using this approach, we were able to generate optical vortex arrays with 2-7 phase singularities, achieving a maximum conversion efficiency of 25.8%. Our work represents an innovative advancement in the development of solid-state lasers capable of generating adjustable vortex points.<br/
Coordination method for DC fault current suppression and clearance in DC grids
The modular multilevel converter (MMC) based DC grid is considered as a future solution for bulk renewable energy integration and transmission. However, the high probability of DC faults and their rapid propagation speed are the main challenges of the development of DC grids. Existing research mainly focuses on the DC fault clearance methods, while the fault current suppression methods are still under researched. Additionally, the coordination method of fault current suppression and clearance needs to be optimized. In this paper, the technical characteristics of the current suppression methods are studied, based on which the coordinated methods of fault current suppression and clearance are proposed. At last, a cost comparison of these methods is presented. The research results show that the proposed strategies can reduce the cost of the protection equipment
A-Eval: A Benchmark for Cross-Dataset Evaluation of Abdominal Multi-Organ Segmentation
Although deep learning have revolutionized abdominal multi-organ
segmentation, models often struggle with generalization due to training on
small, specific datasets. With the recent emergence of large-scale datasets,
some important questions arise: \textbf{Can models trained on these datasets
generalize well on different ones? If yes/no, how to further improve their
generalizability?} To address these questions, we introduce A-Eval, a benchmark
for the cross-dataset Evaluation ('Eval') of Abdominal ('A') multi-organ
segmentation. We employ training sets from four large-scale public datasets:
FLARE22, AMOS, WORD, and TotalSegmentator, each providing extensive labels for
abdominal multi-organ segmentation. For evaluation, we incorporate the
validation sets from these datasets along with the training set from the BTCV
dataset, forming a robust benchmark comprising five distinct datasets. We
evaluate the generalizability of various models using the A-Eval benchmark,
with a focus on diverse data usage scenarios: training on individual datasets
independently, utilizing unlabeled data via pseudo-labeling, mixing different
modalities, and joint training across all available datasets. Additionally, we
explore the impact of model sizes on cross-dataset generalizability. Through
these analyses, we underline the importance of effective data usage in
enhancing models' generalization capabilities, offering valuable insights for
assembling large-scale datasets and improving training strategies. The code and
pre-trained models are available at
\href{https://github.com/uni-medical/A-Eval}{https://github.com/uni-medical/A-Eval}
Changes and rebuilding of university education in China
학위논문(박사)--서울대학교 대학원 :교육학과 교육사회학전공,2004.Docto
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