4,150 research outputs found
First-principles calculations of phase transition, elasticity, and thermodynamic properties for TiZr alloy
tructural transformation, pressure dependent elasticity behaviors, phonon,
and thermodynamic properties of the equiatomic TiZr alloy are investigated by
using first-principles density-functional theory. Our calculated lattice
parameters and equation of state for and phases as well as
the phase transition sequence of
are
consistent well with experiments. Elastic constants of and
phases indicate that they are mechanically stable. For cubic phase,
however, it is mechanically unstable at zero pressure and the critical pressure
for its mechanical stability is predicted to equal to 2.19 GPa. We find that
the moduli, elastic sound velocities, and Debye temperature all increase with
pressure for three phases of TiZr alloy. The relatively large values
illustrate that the TiZr alloy is rather ductile and its ductility is more
predominant than that of element Zr, especially in phase. Elastic wave
velocities and Debye temperature have abrupt increase behaviors upon the
transition at around 10 GPa and exhibit
abrupt decrease feature upon the
transition at higher pressure. Through Mulliken population analysis, we
illustrate that the increase of the \emph{d}-band occupancy will stabilize the
cubic phase. Phonon dispersions for three phases of TiZr alloy are
firstly presented and the phase phonons clearly indicate its
dynamically unstable nature under ambient condition. Thermodynamics of Gibbs
free energy, entropy, and heat capacity are obtained by quasiharmonic
approximation and Debye model.Comment: 9 pages, 10 figure
N-Gram Unsupervised Compoundation and Feature Injection for Better Symbolic Music Understanding
The first step to apply deep learning techniques for symbolic music
understanding is to transform musical pieces (mainly in MIDI format) into
sequences of predefined tokens like note pitch, note velocity, and chords.
Subsequently, the sequences are fed into a neural sequence model to accomplish
specific tasks. Music sequences exhibit strong correlations between adjacent
elements, making them prime candidates for N-gram techniques from Natural
Language Processing (NLP). Consider classical piano music: specific melodies
might recur throughout a piece, with subtle variations each time. In this
paper, we propose a novel method, NG-Midiformer, for understanding symbolic
music sequences that leverages the N-gram approach. Our method involves first
processing music pieces into word-like sequences with our proposed unsupervised
compoundation, followed by using our N-gram Transformer encoder, which can
effectively incorporate N-gram information to enhance the primary encoder part
for better understanding of music sequences. The pre-training process on
large-scale music datasets enables the model to thoroughly learn the N-gram
information contained within music sequences, and subsequently apply this
information for making inferences during the fine-tuning stage. Experiment on
various datasets demonstrate the effectiveness of our method and achieved
state-of-the-art performance on a series of music understanding downstream
tasks. The code and model weights will be released at
https://github.com/CinqueOrigin/NG-Midiformer.Comment: 8 pages, 2 figures, aaai202
Privacy-preserving communication and power injection over vehicle networks and 5G smart grid slice
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Self-organization and phase transition in financial markets with multiple choices
Market confidence is essential for successful investing. By incorporating
multi-market into the evolutionary minority game, we investigate the effects of
investor beliefs on the evolution of collective behaviors and asset prices.
When there exists another investment opportunity, market confidence, including
overconfidence and under-confidence, is not always good or bad for investment.
The roles of market confidence is closely related to market impact. For low
market impact, overconfidence in a particular asset makes an investor become
insensitive to losses and a delayed strategy adjustment leads to a decline in
wealth, and thereafter, one's runaway from the market. For high market impact,
under-confidence in a particular asset makes an investor over-sensitive to
losses and one's too frequent strategy adjustment leads to a large fluctuation
in asset prices, and thereafter, a decrease in the number of agents. At an
intermediate market impact, the phase transition occurs. No matter what the
market impact is, an equilibrium between different markets exists, which is
reflected in the occurrence of similar price fluctuations in different markets.
A theoretical analysis indicates that such an equilibrium results from the
coupled effects of strategy updating and shift in investment. The runaway of
the agents trading a specific asset will lead to a decline in the asset price
volatility and such a decline will be inhibited by the clustering of the
strategies. A uniform strategy distribution will lead to a large fluctuation in
asset prices and such a fluctuation will be suppressed by the decrease in the
number of agents in the market. A functional relationship between the price
fluctuations and the numbers of agents is found
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