3,004 research outputs found
Acousto-elastic interaction in combustion chambers
This thesis deals with the interaction between combustion, acoustics and vibrations with emphasis on frequencies below 500 Hz. Extensive literature is available on the interaction between combustion and acoustics and much work is also available on the interaction between acoustics and vibration. The work presented in this thesis attempts to combine these fields in order to calculate the vibrations of the liner
Enhancing Covid-19 Decision-Making by Creating an Assurance Case for Simulation Models
Simulation models have been informing the COVID-19 policy-making process.
These models, therefore, have significant influence on risk of societal harms.
But how clearly are the underlying modelling assumptions and limitations
communicated so that decision-makers can readily understand them? When making
claims about risk in safety-critical systems, it is common practice to produce
an assurance case, which is a structured argument supported by evidence with
the aim to assess how confident we should be in our risk-based decisions. We
argue that any COVID-19 simulation model that is used to guide critical policy
decisions would benefit from being supported with such a case to explain how,
and to what extent, the evidence from the simulation can be relied on to
substantiate policy conclusions. This would enable a critical review of the
implicit assumptions and inherent uncertainty in modelling, and would give the
overall decision-making process greater transparency and accountability.Comment: 6 pages and 2 figure
The Optimisation of Stochastic Grammars to Enable Cost-Effective Probabilistic Structural Testing
The effectiveness of probabilistic structural testing depends on the characteristics of the probability distribution from which test inputs are sampled at random. Metaheuristic search has been shown to be a practical method of optimis- ing the characteristics of such distributions. However, the applicability of the existing search-based algorithm is lim- ited by the requirement that the software’s inputs must be a fixed number of numeric values. In this paper we relax this limitation by means of a new representation for the probability distribution. The repre- sentation is based on stochastic context-free grammars but incorporates two novel extensions: conditional production weights and the aggregation of terminal symbols represent- ing numeric values. We demonstrate that an algorithm which combines the new representation with hill-climbing search is able to effi- ciently derive probability distributions suitable for testing software with structurally-complex input domains
Automatic Neuron Detection in Calcium Imaging Data Using Convolutional Networks
Calcium imaging is an important technique for monitoring the activity of
thousands of neurons simultaneously. As calcium imaging datasets grow in size,
automated detection of individual neurons is becoming important. Here we apply
a supervised learning approach to this problem and show that convolutional
networks can achieve near-human accuracy and superhuman speed. Accuracy is
superior to the popular PCA/ICA method based on precision and recall relative
to ground truth annotation by a human expert. These results suggest that
convolutional networks are an efficient and flexible tool for the analysis of
large-scale calcium imaging data.Comment: 9 pages, 5 figures, 2 ancillary files; minor changes for camera-ready
version. appears in Advances in Neural Information Processing Systems 29
(NIPS 2016
GOES-R Algorithms: A Common Science and Engineering Design and Development Approach for Delivering Next Generation Environmental Data Products
GOES-R, the next generation of the National Oceanic and Atmospheric Administration’s (NOAA) Geostationary Operational Environmental Satellite (GOES) System, represents a new technological era in operational geostationary environmental satellite systems. GOES-R will provide advanced products that describe the state of the atmosphere, land, oceans, and solar/ space environments over the western hemisphere. The Harris GOES-R Ground Segment team will provide the software, based on government-supplied algorithms, and engineering infrastructures designed to produce and distribute these next-generation data products. The Harris GOES-R Team has adopted an integrated applied science and engineering approach that combines rigorous system engineering methods, with modern software design elements to facilitate the transition of algorithms for Level 1 and 2+ products to operational software. The Harris Team GOES-R GS algorithm framework, which includes a common data model interface, provides general design principles and standardized methods for developing general algorithm services, interfacing to external data, generating intermediate and L1b and L2 products and implementing common algorithm features such as metadata generation and error handling.
This work presents the suite of GOES-R products, their properties and the process by which the related requirements are maintained during the complete design/development life-cycle. It also describes the algorithm architecture/engineering approach that will be used to deploy these algorithms, and provides a preliminary implementation road map for the development of the GOES-R GS software infrastructure, and a view into the integration of the framework and data model into the final design
Silicon Waveguides and Ring Resonators at 5.5 {\mu}m
We demonstrate low loss ridge waveguides and the first ring resonators for
the mid-infrared, for wavelengths ranging from 5.4 to 5.6 {\mu}m. Structures
were fabricated using electron-beam lithography on the silicon-on-sapphire
material system. Waveguide losses of 4.0 +/- 0.7 dB/cm are achieved, as well as
Q-values of 3.0 k.Comment: 4 pages, 4 figures, includes supplemental material
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