546 research outputs found
Intrinsic energy conversion mechanism via telescopic extension and retraction of concentric carbon nanotubes
The conversion of other forms of energy into mechanical work through the
geometrical extension and retraction of nanomaterials has a wide variety of
potential applications, including for mimicking biomotors. Here, using
molecular dynamic simulations, we demonstrate that there exists an intrinsic
energy conversion mechanism between thermal energy and mechanical work in the
telescopic motions of double-walled carbon nanotubes (DWCNTs). A DWCNT can
inherently convert heat into mechanical work in its telescopic extension
process, while convert mechanical energy into heat in its telescopic retraction
process. These two processes are thermodynamically reversible. The underlying
mechanism for this reversibility is that the entropy changes with the
telescopic overlapping length of concentric individual tubes. We find also that
the entropy effect enlarges with the decreasing intertube space of DWCNTs. As a
result, the spontaneously telescopic motion of a condensed DWCNT can be
switched to extrusion by rising the system temperature above a critical value.
These findings are important for fundamentally understanding the mechanical
behavior of concentric nanotubes, and may have general implications in the
application of DWCNTs as linear motors in nanodevices
From Rank Estimation to Rank Approximation: Rank Residual Constraint for Image Restoration
In this paper, we propose a novel approach to the rank minimization problem,
termed rank residual constraint (RRC) model. Different from existing low-rank
based approaches, such as the well-known nuclear norm minimization (NNM) and
the weighted nuclear norm minimization (WNNM), which estimate the underlying
low-rank matrix directly from the corrupted observations, we progressively
approximate the underlying low-rank matrix via minimizing the rank residual.
Through integrating the image nonlocal self-similarity (NSS) prior with the
proposed RRC model, we apply it to image restoration tasks, including image
denoising and image compression artifacts reduction. Towards this end, we first
obtain a good reference of the original image groups by using the image NSS
prior, and then the rank residual of the image groups between this reference
and the degraded image is minimized to achieve a better estimate to the desired
image. In this manner, both the reference and the estimated image are updated
gradually and jointly in each iteration. Based on the group-based sparse
representation model, we further provide a theoretical analysis on the
feasibility of the proposed RRC model. Experimental results demonstrate that
the proposed RRC model outperforms many state-of-the-art schemes in both the
objective and perceptual quality
Generalizable Synthetic Image Detection via Language-guided Contrastive Learning
The heightened realism of AI-generated images can be attributed to the rapid
development of synthetic models, including generative adversarial networks
(GANs) and diffusion models (DMs). The malevolent use of synthetic images, such
as the dissemination of fake news or the creation of fake profiles, however,
raises significant concerns regarding the authenticity of images. Though many
forensic algorithms have been developed for detecting synthetic images, their
performance, especially the generalization capability, is still far from being
adequate to cope with the increasing number of synthetic models. In this work,
we propose a simple yet very effective synthetic image detection method via a
language-guided contrastive learning and a new formulation of the detection
problem. We first augment the training images with carefully-designed textual
labels, enabling us to use a joint image-text contrastive learning for the
forensic feature extraction. In addition, we formulate the synthetic image
detection as an identification problem, which is vastly different from the
traditional classification-based approaches. It is shown that our proposed
LanguAge-guided SynThEsis Detection (LASTED) model achieves much improved
generalizability to unseen image generation models and delivers promising
performance that far exceeds state-of-the-art competitors by +22.66% accuracy
and +15.24% AUC. The code is available at https://github.com/HighwayWu/LASTED
Minimax-Optimal Bounds for Detectors Based on Estimated Prior Probabilities
In many signal detection and classification problems, we have knowledge of
the distribution under each hypothesis, but not the prior probabilities. This
paper is aimed at providing theory to quantify the performance of detection via
estimating prior probabilities from either labeled or unlabeled training data.
The error or {\em risk} is considered as a function of the prior probabilities.
We show that the risk function is locally Lipschitz in the vicinity of the true
prior probabilities, and the error of detectors based on estimated prior
probabilities depends on the behavior of the risk function in this locality. In
general, we show that the error of detectors based on the Maximum Likelihood
Estimate (MLE) of the prior probabilities converges to the Bayes error at a
rate of , where is the number of training data. If the behavior
of the risk function is more favorable, then detectors based on the MLE have
errors converging to the corresponding Bayes errors at optimal rates of the
form , where is a parameter governing the
behavior of the risk function with a typical value . The limit
corresponds to a situation where the risk function
is flat near the true probabilities, and thus insensitive to small errors in
the MLE; in this case the error of the detector based on the MLE converges to
the Bayes error exponentially fast with . We show the bounds are achievable
no matter given labeled or unlabeled training data and are minimax-optimal in
labeled case.Comment: Submitted to IEEE Transactions on Information Theor
RESEARCH ON THE ASEISMIC BEHAVIOR OF LONG-SPAN CABLE-STAYED BRIDGE WITH DAMPING EFFECT
The main beam of a cable-stayed bridge with a floating system may have a larger longitudinal displacement subject to earthquake effect. Thus, seismic control and isolation are crucial to bridge safety. This paper takes Huai’an Bridge, which has elastic coupling devices and viscous dampers set at the joint of the tower and the beam, as the research background. Its finite element model is established, and the elastic stiffness of elastic coupling devices and damper parameters are analyzed. Viscous damper and elastic coupling devices are simulated using Maxwell model and spring elements, and their damping effects are analyzed and compared through structural dynamic time-history analysis. Results show that viscous damper and elastic coupling device furnished at the joint of tower and beam of a cable-stayed bridge tower beam can effectively reduce the longitudinal displacement of the key part of the construction subject to earthquake effect, perfect the internal force distribution, and improve the aseismic performance. Between the two, viscous damper has better damping effects
Nonlinear factor analysis and its application to acoustical source separation and identification
Acoustical signals of mechanical systems can provide original information of operating conditions, and thus benefit for machinery condition monitoring and fault diagnosis. However, acoustical signals measured by sensors are mixed signals of all the sources, and normally it is impossible to be directly used for acoustical source identification or feature extraction. Therefore, this paper presents nonlinear factor analysis (NLFA) and applies it to acoustical source separation and identification of mechanical systems. The effects by numbers of hidden neurons and mixed signals on separation performances of NLFA are comparatively studied. Furthermore, acoustical signals from a test bed with shell structures are separated and identified by NLFA and correlation analysis, and the effectiveness of NLFA on acoustical signals is validated by both numerical case studies and an experimental case study. This work can benefit for machinery noise monitoring, reduction and control, and also provide pure source information for machinery condition monitoring or fault diagnosis
- …