465 research outputs found
Numerical Simulation of Gear Heat Distribution in Meshing Process Based on Thermal-structural Coupling
The thermal balance state of high-speed and heavy-load gear transmission system has an important influence on the performance and failure of gear transmission and the design of gear lubrication system. Excessive surface temperature of gear teeth is the main cause of gluing failure of gear contact surface. To investigate the gear heat distribution in meshing process and discuss the effect of thermal conduction on heat distribution,a finite element model of spur gear is presented in the paper which can represent general involute spur gears. And a simulation approach is use to calculate gear heat distribution in meshing process. By comparing with theoretical calculation, the correctness of the simulation method is verified, and the heat distribution of spur gear under the condition of heat conduction is further analyzed. The difference between the calculation results with heat conduction and without heat conduction is compared. The research has certain reference significance for dry gear hobbing and the same type of thermal-structural coupling analysis
DIFER: Differentiable Automated Feature Engineering
Feature engineering, a crucial step of machine learning, aims to extract
useful features from raw data to improve data quality. In recent years, great
efforts have been devoted to Automated Feature Engineering (AutoFE) to replace
expensive human labor. However, existing methods are computationally demanding
due to treating AutoFE as a coarse-grained black-box optimization problem over
a discrete space. In this work, we propose an efficient gradient-based method
called DIFER to perform differentiable automated feature engineering in a
continuous vector space. DIFER selects potential features based on evolutionary
algorithm and leverages an encoder-predictor-decoder controller to optimize
existing features. We map features into the continuous vector space via the
encoder, optimize the embedding along the gradient direction induced by the
predicted score, and recover better features from the optimized embedding by
the decoder. Extensive experiments on classification and regression datasets
demonstrate that DIFER can significantly improve the performance of various
machine learning algorithms and outperform current state-of-the-art AutoFE
methods in terms of both efficiency and performance.Comment: 8 pages, 5 figure
Impatient Queuing for Intelligent Task Offloading in Multi-Access Edge Computing
Multi-access edge computing (MEC) emerges as an essential part of the
upcoming Fifth Generation (5G) and future beyond-5G mobile communication
systems. It adds computational power towards the edge of cellular networks,
much closer to energy-constrained user devices, and therewith allows the users
to offload tasks to the edge computing nodes for low-latency applications with
very-limited battery consumption. However, due to the high dynamics of user
demand and server load, task congestion may occur at the edge nodes resulting
in long queuing delay. Such delays can significantly degrade the quality of
experience (QoE) of some latency-sensitive applications, raise the risk of
service outage, and cannot be efficiently resolved by conventional queue
management solutions.
In this article, we study a latency-outage critical scenario, where users
intend to limit the risk of latency outage. We propose an impatience-based
queuing strategy for such users to intelligently choose between MEC offloading
and local computation, allowing them to rationally renege from the task queue.
The proposed approach is demonstrated by numerical simulations to be efficient
for generic service model, when a perfect queue status information is
available. For the practical case where the users obtain only imperfect queue
status information, we design an optimal online learning strategy to enable its
application in Poisson service scenarios.Comment: To appear in IEEE Transactions on Wireless Communication
DocStormer: Revitalizing Multi-Degraded Colored Document Images to Pristine PDF
For capturing colored document images, e.g. posters and magazines, it is
common that multiple degradations such as shadows, wrinkles, etc., are
simultaneously introduced due to external factors. Restoring multi-degraded
colored document images is a great challenge, yet overlooked, as most existing
algorithms focus on enhancing color-ignored document images via binarization.
Thus, we propose DocStormer, a novel algorithm designed to restore
multi-degraded colored documents to their potential pristine PDF. The
contributions are: firstly, we propose a "Perceive-then-Restore" paradigm with
a reinforced transformer block, which more effectively encodes and utilizes the
distribution of degradations. Secondly, we are the first to utilize GAN and
pristine PDF magazine images to narrow the distribution gap between the
enhanced results and PDF images, in pursuit of less degradation and better
visual quality. Thirdly, we propose a non-parametric strategy, PFILI, which
enables a smaller training scale and larger testing resolutions with acceptable
detail trade-off, while saving memory and inference time. Fourthly, we are the
first to propose a novel Multi-Degraded Colored Document image Enhancing
dataset, named MD-CDE, for both training and evaluation. Experimental results
show that the DocStormer exhibits superior performance, capable of revitalizing
multi-degraded colored documents into their potential pristine digital
versions, which fills the current academic gap from the perspective of method,
data, and task
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