1,049 research outputs found
Benchmarking of a software stack for autonomous racing against a professional human race driver
The way to full autonomy of public road vehicles requires the step-by-step
replacement of the human driver, with the ultimate goal of replacing the driver
completely. Eventually, the driving software has to be able to handle all
situations that occur on its own, even emergency situations. These particular
situations require extreme combined braking and steering actions at the limits
of handling to avoid an accident or to diminish its consequences. An average
human driver is not trained to handle such extreme and rarely occurring
situations and therefore often fails to do so. However, professional race
drivers are trained to drive a vehicle utilizing the maximum amount of possible
tire forces. These abilities are of high interest for the development of
autonomous driving software. Here, we compare a professional race driver and
our software stack developed for autonomous racing with data analysis
techniques established in motorsports. The goal of this research is to derive
indications for further improvement of the performance of our software and to
identify areas where it still fails to meet the performance level of the human
race driver. Our results are used to extend our software's capabilities and
also to incorporate our findings into the research and development of public
road autonomous vehicles.Comment: Accepted at 2020 Fifteenth International Conference on Ecological
Vehicles and Renewable Energies (EVER
Multilayer Graph-Based Trajectory Planning for Race Vehicles in Dynamic Scenarios
Trajectory planning at high velocities and at the handling limits is a
challenging task. In order to cope with the requirements of a race scenario, we
propose a far-sighted two step, multi-layered graph-based trajectory planner,
capable to run with speeds up to 212~km/h. The planner is designed to generate
an action set of multiple drivable trajectories, allowing an adjacent behavior
planner to pick the most appropriate action for the global state in the scene.
This method serves objectives such as race line tracking, following, stopping,
overtaking and a velocity profile which enables a handling of the vehicle at
the limit of friction. Thereby, it provides a high update rate, a far planning
horizon and solutions to non-convex scenarios. The capabilities of the proposed
method are demonstrated in simulation and on a real race vehicle.Comment: Accepted at The 22nd IEEE International Conference on Intelligent
Transportation Systems, October 27 - 30, 201
3D U-Net: Learning Dense Volumetric Segmentation from Sparse Annotation
This paper introduces a network for volumetric segmentation that learns from
sparsely annotated volumetric images. We outline two attractive use cases of
this method: (1) In a semi-automated setup, the user annotates some slices in
the volume to be segmented. The network learns from these sparse annotations
and provides a dense 3D segmentation. (2) In a fully-automated setup, we assume
that a representative, sparsely annotated training set exists. Trained on this
data set, the network densely segments new volumetric images. The proposed
network extends the previous u-net architecture from Ronneberger et al. by
replacing all 2D operations with their 3D counterparts. The implementation
performs on-the-fly elastic deformations for efficient data augmentation during
training. It is trained end-to-end from scratch, i.e., no pre-trained network
is required. We test the performance of the proposed method on a complex,
highly variable 3D structure, the Xenopus kidney, and achieve good results for
both use cases.Comment: Conditionally accepted for MICCAI 201
Minimum Race-Time Planning-Strategy for an Autonomous Electric Racecar
Increasing attention to autonomous passenger vehicles has also attracted
interest in an autonomous racing series. Because of this, platforms such as
Roborace and the Indy Autonomous Challenge are currently evolving. Electric
racecars face the challenge of a limited amount of stored energy within their
batteries. Furthermore, the thermodynamical influence of an all-electric
powertrain on the race performance is crucial. Severe damage can occur to the
powertrain components when thermally overstressed. In this work we present a
race-time minimal control strategy deduced from an Optimal Control Problem
(OCP) that is transcribed into a Nonlinear Problem (NLP). Its optimization
variables stem from the driving dynamics as well as from a thermodynamical
description of the electric powertrain. We deduce the necessary first-order
Ordinary Differential Equations (ODE)s and form simplified loss models for the
implementation within the numerical optimization. The significant influence of
the powertrain behavior on the race strategy is shown.Comment: Accepted at The 23rd IEEE International Conference on Intelligent
Transportation Systems, September 20 - 23, 202
Poly(ethylene imine)s as Antimicrobial Agents with Selective Activity
We report the structure–activity relationship in the antimicrobial activity of linear and branched poly(ethylene imine)s (L‐ and B‐PEIs) with a range of molecular weights (MWs) (500–12 000). Both L‐ and B‐PEIs displayed enhanced activity against Staphylococcus aureus over Escherichia coli . Both B‐ and L‐PEIs did not cause any significant permeabilization of E. coli cytoplasmic membrane. L‐PEIs induced depolarization of S. aureus membrane although B‐PEIs did not. The low MW B‐PEIs caused little or no hemolysis while L‐PEIs are hemolytic. The low MW B‐PEIs are less cytotoxic to human HEp‐2 cells than other PEIs. However, they induced significant cell viability reduction after 24 h incubation. The results presented here highlight the interplay between polymer size and structure on activity. Unmodified poly(ethylene imine)s are shown to act as selective antibacterial agents. The mechanism of action is likely related to, but not exclusive to, interaction with cell walls and cell membrane damage. These molecules provide a cost effective and chemically facile framework for the further development of selective antimicrobial materials.Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/93579/1/mabi_201200052_sm_suppdata.pdfhttp://deepblue.lib.umich.edu/bitstream/2027.42/93579/2/1279_ftp.pd
Syntehsis and characterization of polyelectrolyte brushes - towards a synthetic model system for human cartilage
3D Printing of Polymer Hydrogels : From Basic Techniques to Programmable Actuation
This review discusses the currently available 3D printing approaches, design
concepts, and materials that are used to obtain programmable hydrogel actuators. These polymer materials can undergo complex, predetermined types of
motion and thereby imitate adaptive natural actuators with anisotropic, hierarchical substructures. 3D printing techniques allow replicating these complex
shapes with immense design flexibility. While 3D printing of thermoplastic
polymers has become a mainstream technique in rapid prototyping, additive
manufacturing of softer polymers including polymer hydrogels is still challenging. To avoid deliquescence of printed hydrogel structures, the polymer
inks used for hydrogel manufacture need to be sheer-thinning and thixotropic,
with fast recovery rates of the high viscosity state. This is achieved by adding
polymer or particle-based viscosity modifiers. Further stabilization of the
interfaces of the printed voxels, e.g., by UV cross-linking, is often also required
to obtain materials with useful mechanical properties. Here state-of-the-art
techniques used to 3D print stimulus responsive, programmable polymer
hydrogels, and hydrogel actuators, as well as ink formulation and post-printing
strategies used to obtain materials with structural integrity are reviewed
“Just Antimicrobial is not Enough” Revisited : From Antimicrobial Polymers to Microstructured Dual‐Functional Surfaces, Self‐Regenerating Polymer Surfaces, and Polymer Materials with Switchable Bioactivity
Biofilm formation can be slowed down by restricting protein adhesion on a surface, or by antimicrobial/biocidal activity of the material (among other methods). In this progress report, the recent work on alternatives to single component antimicrobial or protein-repellent polymer materials is presented. These are microstructured bifunctional polymer surfaces and self-regenerating polymer multilayer stacks. The microstructured polymer surfaces consist of antimicrobial, protein-adhesive polymer patches, and nonfouling, protein repellent-polymer patches. By carefully balancing the size and architecture of the adhesive and repellent patches, materials with simultaneous antimicrobial activity and strong protein repellency are obtained. At similar polymer patch sizes, protein adhesion is lower on hydrogels with a low elastic modulus than on polymer monolayers attached to stiff substrates. Surface-regenerating polymer multilayer stacks are constructed from alternating layers of antimicrobial polymer hydrogels and degradable, soluble, or depolymerizable sacrificial layers. Top layer shedding, which imitates reptiles shedding their skin, rejuvenates the surface, and regenerates the antimicrobial function of the material. Layer shedding form such materials in solution is a competition between two thermodynamic minima, top layer reattachment and top layer removal. The outcome of each shedding event depends on the kinetics of the sacrificial layer disintegration
Self‐Regenerating of Functional Polymer Surfaces by Triggered Layer Shedding Using a Stimulus‐Responsive Poly(urethane)
Regeneration of functional surfaces after damage or contamination could extend the life time of devices. Such regeneration can be achieved by layer shedding (like a lizard shedding its skin). In this work, triggered self-regeneration of functional surfaces by an external stimulus is presented. Polymer multilayer stacks are assembled alternatingly from discrete 20–300 nm thick functional layers and depolymerizable interlayers, which are used as sacrificial layers. The sacrificial layers are depolymerizable poly(benzyl carbamates) end-capped with 4-hydroxy-2-butanone. Their depolymerization is triggered by alkaline pH, at which the end-cap is cleaved. This initiates a 1,6-elimination cascade of the polymer backbone, during which CO2 is released. Thus, the layer shedding is driven synergistically by mass transport and buoyancy forces. Proof-of-concept is achieved using poly(styrene) as a model functional layer, and also studied for hydrophilic, antimicrobially active poly(oxanorbornene) layers. The multilayer assembly and disassembly process is monitored by ellipsometry, Fourier transform infrared spectroscopy (FTIR), optical microscopy, and atomic force microscopy. FTIR spectra taken after degradation are confirmed the regeneration of the surface functionality
ADAMTS9, a member of the ADAMTS family, in Xenopus development
Extracellular matrix (ECM) remodeling by metalloproteinases is crucial during development. The ADAMTS (A Disintegrin and Metalloproteinase with Thrombospondin type I motifs) enzymes are secreted, multi-domain matrix-associated zinc metalloendopeptidases that have diverse roles in tissue morphogenesis and patho-physiological remodeling. The human family includes 19 members. In this study we identified the 19 members of the ADAMTS family in Xenopus laevis and Xenopus tropicalis. Gene identification and a phylogenetic study revealed strong conservation of the ADAMTS family and contributed to a better annotation of the Xenopus genomes. Expression of the entire ADAMTS family was studied from early stages to tadpole stages of Xenopus, and detailed analysis of ADAMTS9 revealed expression in many structures during organogenesis such as neural crest (NC) derivative tissues, the pronephros and the pancreas. Versican, a matrix component substrate of ADAMTS9 shows a similar expression pattern suggesting a role of ADAMTS9 in the remodeling of the ECM in these structures by degradation of versican
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