918 research outputs found
Perturbative Renormalization and Mixing of Quark and Glue Energy-Momentum Tensors on the Lattice
We report the renormalization and mixing constants to one-loop order for the
quark and gluon energy-momentum (EM) tensor operators on the lattice. A unique
aspect of this mixing calculation is the definition of the glue EM tensor
operator. The glue operator is comprised of gauge-field tensors constructed
from the overlap Dirac operator. The resulting perturbative calculations are
performed using methods similar to the Kawai approach using the Wilson action
for all QCD vertices and the overlap Dirac operator to define the glue EM
tensor. Our results are used to connect the lattice QCD results of quark and
glue momenta and angular momenta to the scheme at input
scale Comment: 26 pages, 6 figure
Orbital Angular Momentum and Generalized Transverse Momentum Distribution
We show that, when boosted to the infinite momentum frame, the quark and
gluon orbital angular momentum operators defined in the nucleon spin sum rule
of X. S. Chen et al. are the same as those derived from generalized transverse
momentum distributions. This completes the connection between the infinite
momentum limit of each term in that sum rule and experimentally measurable
observables. We also show that these orbital angular momentum operators can be
defined locally, and discuss the strategies of calculating them in lattice QCD.Comment: 8 page
Review of Neural Network Algorithms
The artificial neural network is the core tool of machine learning to realize intelligence. It has shown its advantages in the fields of sound, image, sound, picture, and so on. Since entering the 21st century, the progress of science and technology and people\u27s pursuit of artificial intelligence have introduced the research of artificial neural networks into an upsurge. Firstly, this paper introduces the application background and development process of the artificial neural network in order to clarify the research context of neural networks. Five branches and related applications of single-layer perceptron, linear neural network, BP neural network, Hopfield neural network, and depth neural network are analyzed in detail. The analysis shows that the development trend of the artificial neural network is developing towards a more general, flexible, and intelligent direction. Finally, the future development of the artificial neural network in training mode, learning mode, function expansion, and technology combination has prospected
Water use efficiency of China\u27s terrestrial ecosystems and responses to drought
Water use efficiency (WUE) measures the trade-off between carbon gain and water loss of terrestrial ecosystems, and better understanding its dynamics and controlling factors is essential for predicting ecosystem responses to climate change. We assessed the magnitude, spatial patterns, and trends of WUE of China’s terrestrial ecosystems and its responses to drought using a process-based ecosystem model. During the period from 2000 to 2011, the national average annual WUE (net primary productivity (NPP)/evapotranspiration (ET)) of China was 0.79 g C kg−1 H2O. Annual WUE decreased in the southern regions because of the decrease in NPP and the increase in ET and increased in most northern regions mainly because of the increase in NPP. Droughts usually increased annual WUE in Northeast China and central Inner Mongolia but decreased annual WUE in central China. “Turning-points” were observed for southern China where moderate and extreme droughts reduced annual WUE and severe drought slightly increased annual WUE. The cumulative lagged effect of drought on monthly WUE varied by region. Our findings have implications for ecosystem management and climate policy making. WUE is expected to continue to change under future climate change particularly as drought is projected to increase in both frequency and severity
Recent trends in vegetation greenness in China significantly altered annual evapotranspiration and water yield
There has been growing evidence that vegetation greenness has been increasing in many parts of the northern middle and high latitudes including China during the last three to four decades. However, the effects of increasing vegetation greenness particularly afforestation on the hydrological cycle have been controversial. We used a process-based ecosystem model and a satellite-derived leaf area index (LAI) dataset to examine how the changes in vegetation greenness affected annual evapotranspiration (ET) and water yield for China over the period from 2000 to 2014. Significant trends in vegetation greenness were observed in 26.1% of China\u27s land area. We used two model simulations driven with original and detrended LAI, respectively, to assess the effects of vegetation \u27greening\u27 and \u27browning\u27 on terrestrial ET and water yield. On a per-pixel basis, vegetation greening increased annual ET and decreased water yield, while vegetation browning reduced ET and increased water yield. At the large river basin and national scales, the greening trends also had positive effects on annual ET and had negative effects on water yield. Our results showed that the effects of the changes in vegetation greenness on the hydrological cycle varied with spatial scale. Afforestation efforts perhaps should focus on southern China with larger water supply given the water crisis in northern China and the negative effects of vegetation greening on water yield. Future studies on the effects of the greenness changes on the hydrological cycle are needed to account for the feedbacks to the climate
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