113 research outputs found
Shareable Driving Style Learning and Analysis with a Hierarchical Latent Model
Driving style is usually used to characterize driving behavior for a driver
or a group of drivers. However, it remains unclear how one individual's driving
style shares certain common grounds with other drivers. Our insight is that
driving behavior is a sequence of responses to the weighted mixture of latent
driving styles that are shareable within and between individuals. To this end,
this paper develops a hierarchical latent model to learn the relationship
between driving behavior and driving styles. We first propose a fragment-based
approach to represent complex sequential driving behavior, allowing for
sufficiently representing driving behavior in a low-dimension feature space.
Then, we provide an analytical formulation for the interaction of driving
behavior and shareable driving style with a hierarchical latent model by
introducing the mechanism of Dirichlet allocation. Our developed model is
finally validated and verified with 100 drivers in naturalistic driving
settings with urban and highways. Experimental results reveal that individuals
share driving styles within and between them. We also analyzed the influence of
personalities (e.g., age, gender, and driving experience) on driving styles and
found that a naturally aggressive driver would not always keep driving
aggressively (i.e., could behave calmly sometimes) but with a higher proportion
of aggressiveness than other types of drivers
Spikformer: When Spiking Neural Network Meets Transformer
We consider two biologically plausible structures, the Spiking Neural Network
(SNN) and the self-attention mechanism. The former offers an energy-efficient
and event-driven paradigm for deep learning, while the latter has the ability
to capture feature dependencies, enabling Transformer to achieve good
performance. It is intuitively promising to explore the marriage between them.
In this paper, we consider leveraging both self-attention capability and
biological properties of SNNs, and propose a novel Spiking Self Attention (SSA)
as well as a powerful framework, named Spiking Transformer (Spikformer). The
SSA mechanism in Spikformer models the sparse visual feature by using
spike-form Query, Key, and Value without softmax. Since its computation is
sparse and avoids multiplication, SSA is efficient and has low computational
energy consumption. It is shown that Spikformer with SSA can outperform the
state-of-the-art SNNs-like frameworks in image classification on both
neuromorphic and static datasets. Spikformer (66.3M parameters) with comparable
size to SEW-ResNet-152 (60.2M,69.26%) can achieve 74.81% top1 accuracy on
ImageNet using 4 time steps, which is the state-of-the-art in directly trained
SNNs models
Simulation of tumor ablation in hyperthermia cancer treatment: A parametric study
A holistic simulation framework is established on magnetic hyperthermia
modeling to solve the treatment process of tumor, which is surrounded by a
healthy tissue block. The interstitial tissue fluid, MNP distribution,
temperature profile, and nanofluids are involved in the simulation. Study
evaluates the cancer treatment efficacy by cumulative-equivalent-minutes-at-43
centigrade (CEM43), a widely accepted thermal dose coming from the cell death
curve. Results are separated into the conditions of with or without gravity
effect in the computational domain, where two baseline case are investigated
and compared. An optimal treatment time 46.55 min happens in the baseline case
without gravity, but the situation deteriorates with gravity effect where the
time for totally killing tumor cells prolongs 36.11% and meanwhile causing
21.32% ablation in healthy tissue. For the cases without gravity, parameter
study of Lewis number and Heat source number are conducted and the variation of
optimal treatment time are both fitting to the inverse functions. For the case
considering the gravity, parameters Buoyancy ratio and Darcy ratio are
investigated and their influence on totally killing tumor cells and the injury
on healthy tissue are matching with the parabolic functions. The results are
beneficial to the prediction of various conditions, and provides useful guide
to the magnetic hyperthermia treatment
Modelling floppy iris syndrome and the impact of pupil size and ring devices on iris displacement
INTRODUCTION:The aim of this paper was to further develop a previously described finite element model which equates clinical iris billowing movements with mechanical buckling behaviour, simulating floppy iris syndrome. We wished to evaluate the impact of pupil dilation and mechanical devices on normal iris and floppy iris models. METHODS:Theoretical mathematical modelling and computer simulations were used to assess billowing/buckling patterns of the iris under loading pressures for the undilated and dilated normal iris, the undilated and dilated floppy iris, and additionally with a mechanical ring device. RESULTS:For the normal iris, billowing/buckling occurred at a critical pressure of 19.92 mmHg for 5 mm pupil size, which increased to 28.00 mmHg (40.56%) with a 7 mm pupil. The Malyugin ring device significantly increased critical initiating buckling pressures in the normal iris scenario, to 34.58 mmHg (73.59%) for 7 mm ring with boundary conditions I (BC I) and 34.51 mmHg (73.24%) with BC II. For the most floppy iris modelling (40% degradation), initiating buckling value was 18.04 mmHg (-9.44%), which increased to 28.39 mmHg (42.52%) with the 7 mm ring. These results were much greater than for normal undilated iris without restrictive mechanical expansion (19.92 mmHg). CONCLUSION:This simulation demonstrates that pupil expansion devices inhibit iris billowing even in the setting of floppy iris syndrome. Our work also provides a model to further investigate the impact of pupil size or pharmacological interventions on anterior segment conditions affected by iris position
Generalized Hartmann-Shack array of dielectric metalens sub-arrays for polarimetric beam profiling
To define and characterize optical systems, obtaining information on the
amplitude, phase, and polarization profile of optical beams is of utmost
importance. Polarimetry using bulk optics is well established to characterize
the polarization state. Recently, metasurfaces and metalenses have successfully
been introduced as compact optical components. Here, we take the metasurface
concept to the system level by realizing arrays of metalens 2*3 sub-arrays,
allowing to determine the polarization profile of an optical beam. We use
silicon-based metalenses with a numerical aperture of 0.32 and a mean measured
diffraction efficiency in transmission mode of 28% at 1550 nm wavelength.
Together with a standard camera recording the array foci, our system is
extremely compact and allows for real-time beam diagnostics by inspecting the
foci amplitudes. By further analyzing the foci displacements in the spirit of a
Hartmann-Shack wavefront sensor, we can simultaneously detect phase-gradient
profiles. As application examples, we diagnose the polarization profiles of a
radially polarized beam, an azimuthally polarized beam, and of a vortex beam.Comment: 20 pages, 6 figures
Compositionally Complex Perovskite Oxides as a New Class of Li-Ion Solid Electrolytes
Compositionally complex ceramics (CCCs), including high-entropy ceramics
(HECs) as a subclass, offer new opportunities of materials discovery beyond the
traditional methodology of searching new stoichiometric compounds. Herein, we
establish new strategies of tailoring CCCs via a seamless combination of (1)
non-equimolar compositional designs and (2) controlling microstructures and
interfaces. Using oxide solid electrolytes for all-solid-state batteries as an
exemplar, we validate these new strategies via discovering a new class of
compositionally complex perovskite oxides (CCPOs) to show the possibility of
improving ionic conductivities beyond the limit of conventional doping. As an
example (amongst the 28 CCPOs examined), we demonstrate that the ionic
conductivity can be improved by >60% in
(Li0.375Sr0.4375)(Ta0.375Nb0.375Zr0.125Hf0.125)O3-{\delta}, in comparison with
the state-of-art (Li0.375Sr0.4375)(Ta0.75Zr0.25)O3-{\delta} (LSTZ) baseline,
via maintaining comparable electrochemical stability. Furthermore, the ionic
conductivity can be improved by another >70% via grain boundary (GB)
engineering, achieving >270% of the LSTZ baseline. This work suggests
transformative new strategies for designing and tailoring HECs and CCCs,
thereby opening a new window for discovering materials for energy storage and
many other applications
Evidence based on Mendelian randomization and colocalization analysis strengthens causal relationships between structural changes in specific brain regions and risk of amyotrophic lateral sclerosis
BackgroundAmyotrophic lateral sclerosis (ALS) is a neurodegenerative disease characterized by the degeneration of motor neurons in the brain and spinal cord with a poor prognosis. Previous studies have observed cognitive decline and changes in brain morphometry in ALS patients. However, it remains unclear whether the brain structural alterations contribute to the risk of ALS. In this study, we conducted a bidirectional two-sample Mendelian randomization (MR) and colocalization analysis to investigate this causal relationship.MethodsSummary data of genome-wide association study were obtained for ALS and the brain structures, including surface area (SA), thickness and volume of subcortical structures. Inverse-variance weighted (IVW) method was used as the main estimate approach. Sensitivity analysis was conducted detect heterogeneity and pleiotropy. Colocalization analysis was performed to calculate the posterior probability of causal variation and identify the common genes.ResultsIn the forward MR analysis, we found positive associations between the SA in four cortical regions (lingual, parahippocampal, pericalcarine, and middle temporal) and the risk of ALS. Additionally, decreased thickness in nine cortical regions (caudal anterior cingulate, frontal pole, fusiform, inferior temporal, lateral occipital, lateral orbitofrontal, pars orbitalis, pars triangularis, and pericalcarine) was significantly associated with a higher risk of ALS. In the reverse MR analysis, genetically predicted ALS was associated with reduced thickness in the bankssts and increased thickness in the caudal middle frontal, inferior parietal, medial orbitofrontal, and superior temporal regions. Colocalization analysis revealed the presence of shared causal variants between the two traits.ConclusionOur results suggest that altered brain morphometry in individuals with high ALS risk may be genetically mediated. The causal associations of widespread multifocal extra-motor atrophy in frontal and temporal lobes with ALS risk support the notion of a continuum between ALS and frontotemporal dementia. These findings enhance our understanding of the cortical structural patterns in ALS and shed light on potentially viable therapeutic targets
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