4,030 research outputs found
Study on the Chemical and Mechanical Stability of Polymer Nanofluidic Biosensors
Polymer nanofluidic devices have great potential to replace silicon (Si) and glass-based nanofluidic devices in biomedical applications due to their advantages such as low material and fabrication cost, various physicochemical properties, well-developed surface modification protocol, and low electrical noises for electrical measurements. In nanofluidic sensing applications, single molecules such as DNA are introduced into the fabricated nanochannel or nanopore, measuring their physicochemical properties optically or electrically. The properties of materials for nanofluidic devices have a significant role in the performance of the devices, such as DNA translocation and device stability.
Among several nanoscale fluidic physics, surface charge density is a key material property of nanofluidic devices related to the capture of single molecules because it determines the magnitude of electrophoresis and electroosmosis in the nanostructures. To facilitate the capture of single molecules into nanofluidic devices, polymers containing poly(ethylene glycol) (PEG) are preferred due to their low surface charge density and reduction of surface fouling of biomolecules. However, a drawback of PEG-based polymers is a weak chemical and mechanical stability due to swelling effect and low surface hardness when in contact with electrolytes.
This work presents an improvement in the chemical and mechanical stability of a nanofluidic device formed in poly(ethylene glycol) diacrylate (PEGDA), a PEG-based UV resin for UV-NIL, by adding a cross-linking agent (e.g. TMPTA). First, we defined the surface charge density of polymers such as PMMA, COC 6013, and PEGDA with the different O2 treatment time because these three polymers have low surface charge density compared to other polymers. Then, we studied the effect of the cross-linking agent content on the surface charge density of PEGDA-TMPTA material and on the translocation of DNA molecules through the nanopore. Five different compositions of PEGDA resins with varied amounts of a cross-linking
1 agent, trimethylolpropane triacrylate (TMPTA), were used (pure PEGDA, ratio 5:1, 1:1, 1:2, and 1:5). The surface hardness of PEGDA-TMPTA resin increases according to the crosslinking agent concentration from 139 MPa (pure PEGDA resin) to 205 MPa (1:5 resin). To be specific, the surface hardnesses of pure PEGDA, 5:1, 1:1, 1:2, and 1:5 were 139 MPa, 158 MPa, 196 GPa, 204 MPa, and 205 MPa, respectively. The surface charge densities at 0.001M KCl (pH 8.0) of pure PEGDA, 5:1, 2:1, 1:1, and 1:5 were −9.5 ± 0.09 / ! ,
−7.9 ± 0.97 / ! , −7.1 ± 1.06 / ! , −7.5 ± 1.10 / ! , and −7.4 ± 0.57 /
! , respectively. These observed surface charge densities of PEGDA-TMPTA resin exhibit a decreasing trend which is beneficial for DNA translocation into nanostructures. In conclusion, this approach has a positive influence on the chemical and mechanical stability of nanofluidic devices concerning DNA translocation into a nanopore or a nanochannel
A Package for the Automated Classification of Periodic Variable Stars
We present a machine learning package for the classification of periodic
variable stars. Our package is intended to be general: it can classify any
single band optical light curve comprising at least a few tens of observations
covering durations from weeks to years, with arbitrary time sampling. We use
light curves of periodic variable stars taken from OGLE and EROS-2 to train the
model. To make our classifier relatively survey-independent, it is trained on
16 features extracted from the light curves (e.g. period, skewness, Fourier
amplitude ratio). The model classifies light curves into one of seven
superclasses - Delta Scuti, RR Lyrae, Cepheid, Type II Cepheid, eclipsing
binary, long-period variable, non-variable - as well as subclasses of these,
such as ab, c, d, and e types for RR Lyraes. When trained to give only
superclasses, our model achieves 0.98 for both recall and precision as measured
on an independent validation dataset (on a scale of 0 to 1). When trained to
give subclasses, it achieves 0.81 for both recall and precision. In order to
assess classification performance of the subclass model, we applied it to the
MACHO, LINEAR, and ASAS periodic variables, which gave recall/precision of
0.92/0.98, 0.89/0.96, and 0.84/0.88, respectively. We also applied the subclass
model to Hipparcos periodic variable stars of many other variability types that
do not exist in our training set, in order to examine how much those types
degrade the classification performance of our target classes. In addition, we
investigate how the performance varies with the number of data points and
duration of observations. We find that recall and precision do not vary
significantly if the number of data points is larger than 80 and the duration
is more than a few weeks. The classifier software of the subclass model is
available from the GitHub repository (https://goo.gl/xmFO6Q).Comment: 16 pages, 11 figures, accepted for publication in A&
OBOE: Collaborative Filtering for AutoML Model Selection
Algorithm selection and hyperparameter tuning remain two of the most
challenging tasks in machine learning. Automated machine learning (AutoML)
seeks to automate these tasks to enable widespread use of machine learning by
non-experts. This paper introduces OBOE, a collaborative filtering method for
time-constrained model selection and hyperparameter tuning. OBOE forms a matrix
of the cross-validated errors of a large number of supervised learning models
(algorithms together with hyperparameters) on a large number of datasets, and
fits a low rank model to learn the low-dimensional feature vectors for the
models and datasets that best predict the cross-validated errors. To find
promising models for a new dataset, OBOE runs a set of fast but informative
algorithms on the new dataset and uses their cross-validated errors to infer
the feature vector for the new dataset. OBOE can find good models under
constraints on the number of models fit or the total time budget. To this end,
this paper develops a new heuristic for active learning in time-constrained
matrix completion based on optimal experiment design. Our experiments
demonstrate that OBOE delivers state-of-the-art performance faster than
competing approaches on a test bed of supervised learning problems. Moreover,
the success of the bilinear model used by OBOE suggests that AutoML may be
simpler than was previously understood
Flexible Mold for Microstructures Replication
Space debris has been a growing concern in space exploration sector. To combat this issue, biomimicry is utilized to create a gecko’s feet microstructure that will be attached to a gripper or robotic arm. This will enable capture of debris through the use of dry adhesive microstructure. However, the production of such microstructures is expensive which hinders their implementation. The objective of this research is to develop an advanced fabrication process to mass produce gecko’s feet microstructure with soft polymer mold. The possibility of using different coating methods with coating materials will be justified. The process of fabricating mold and replicating mold will be optimized. The method of mass producing microstructures will be verified and the limitation of the method will also be studied
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