1,048 research outputs found
Semantic web service-based messaging framework for prediction of fitness data using Hadoop distributed file system
Big data is coined as word of mouth in this era due to the generation of huge volume of data every second from multiple sources like logs, web sources, and sensors, electrical and electronic devices. The manipulation is performed over the injected data and is termed as Data Processing Segment. In this proposed paper the data are obtained from the wearable devices with attributes like calories, weight, fat, step count, sleep, BMI and so on. The obtained data is stored in HDFS in a persistence manner. The component Kafka acts as a queue for the real time data and regulates the data before storing in HDFS. Now Apache Spark does the streaming of data. Here the data are cleaned, applied the Machine Learning Algorithms (KNN Classifier) to obtain the model, by splitting the cleaned data into Training data and Testing Data. Now the obtained predicted result is sent to Web service Telephony ontology, which in turns communicates with ontology service repository consisting of cloud telephony services ontology and fitness activity ontology through OWL API. The classified and predicted value is analysed and intimated to the users through visualization graphs, SMS, IVR and e-mail
Atypical behaviors of a tagged particle in asymmetric simple exclusion
Consider the asymmetric nearest-neighbor exclusion process (ASEP) on
with single particle drift , starting from a Bernoulli
product invariant measure with density . It is known that the
position of a tagged particle, say initially at the origin, at time
satisfies an a.s. law of large numbers as .
In this context, we study the `typical' behavior of the tagged particle and
`bulk' density evolution subject to `atypical' events or
for . We detail different structures,
depending on whether , , , or , under which these atypical events are achieved, and
compute associated large deviation costs. Among our results is an `upper tail'
large deviation principle in scale for .Comment: 39 page
Real-time Measurement of Stress and Damage Evolution During Initial Lithiation of Crystalline Silicon
Crystalline to amorphous phase transformation during initial lithiation in
(100) silicon-wafers is studied in an electrochemical cell with lithium metal
as the counter and reference electrode. It is demonstrated that severe stress
jumps across the phase boundary lead to fracture and damage, which is an
essential consideration in designing silicon based anodes for lithium ion
batteries. During initial lithiation, a moving phase boundary advances into the
wafer starting from the surface facing the lithium electrode, transforming
crystalline silicon into amorphous LixSi. The resulting biaxial compressive
stress in the amorphous layer is measured in situ and it was observed to be ca.
0.5 GPa. HRTEM images reveal that the crystalline-amorphous phase boundary is
very sharp, with a thickness of ~ 1 nm. Upon delithiation, the stress rapidly
reverses, becomes tensile and the amorphous layer begins to deform plastically
at around 0.5 GPa. With continued delithiation, the yield stress increases in
magnitude, culminating in sudden fracture of the amorphous layer into
micro-fragments and the cracks extend into the underlying crystalline silicon.Comment: 12 pages, 5 figure
Large deviations for the current and tagged particle in 1D nearest-neighbor symmetric simple exclusion
Laws of large numbers, starting from certain nonequilibrium measures, have
been shown for the integrated current across a bond, and a tagged particle in
one-dimensional symmetric nearest-neighbor simple exclusion [Ann. Inst. Henri
Poincare Probab. Stat. 42 (2006) 567-577]. In this article, we prove
corresponding large deviation principles and evaluate the rate functions,
showing different growth behaviors near and far from their zeroes which connect
with results in [J. Stat. Phys. 136 (2009) 1-15].Comment: Published in at http://dx.doi.org/10.1214/11-AOP703 the Annals of
Probability (http://www.imstat.org/aop/) by the Institute of Mathematical
Statistics (http://www.imstat.org
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