938 results on '"Davidson, James"'
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2. Investigations on advanced joining methods for composite materials and fibre reinforcements
- Author
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Davidson, James R., McCarthy, Edward, and O Brádaigh, Conchúr
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pneumatic splicing ,recycling ,carbon fibre ,epoxy ,composites ,mechanical fasteners ,notched testing ,topology optimisation ,meta-heuristic algorithms ,particle swarm optimisation ,mechanical testing ,sustainability ,pin-loaded joints - Abstract
Fibre Reinforced Plastics (FRPs) are heavily utilised in high performance engineering applications due to their exceptional physical characteristics, including excellent specific strength, stiffness, fatigue loading performance, and corrosion resistance. Typical applications are aircraft primary and secondary structures, body panels in low-volume sports cars, and wind/tidal turbine blades. The rate of composite material uptake is expected to increase in future years, with some researchers anticipating increased utilisation in affordable solutions-over more typical high-cost products and services. With additional uptake, concerns have been raised regarding both financial and environmental costs, particularly in relation to waste disposal and recycling. Improved methodologies for the design and manufacture of composite materials are therefore required to prevent material waste and improve current end-of-life solutions. To contribute towards alleviating these concerns, this thesis addresses inefficiencies relating to the connections/joints in composite structures. More specifically, studies into the joining of FRPs and their reinforcement yarns have been conducted, where discrete investigations are presented for each. In this thesis, a detailed literature review is first provided, which gives background to all aspects considered in this work. An overview of manufacturing techniques, associated environmental concerns, and current waste disposal/recycling solutions is provided, followed by several more technical sections relevant to the experimental/modelling work conducted in this dissertation. Thereafter, focus is directed towards the development of a generalised modelling approach for the preliminary design of pin-loaded composite connections. Firstly, investigations were conducted into the performance of notched composite specimens, such that approximate characteristic curves could be generated for the prediction of failure loads in pin-loaded specimens. To form this empirical (CCA) method, notched/regular tensile and notched/regular compressive strength ratios were required for a spectrum of different combinations of stacking sequence and hole diameter. Layups were chosen where the mean of the magnitude of all ply-angles (APA)-relative to the loading direction-and corresponding variance value (VAR) could be correlated to these ratios. Regular tension, notched tension, regular compression, and notched compression specimens were manufactured and tested in accordance with various international test standards, in which a carbon fibre reinforced plastic (CFRP) prepreg system was evaluated. Results indicated that hole diameter had only marginal impact on notched strength ratios, whilst the stacking sequence-considered in terms of derived APA and VAR parameters-critically affected notched ratios. Utilising a least squares optimisation method, approximate curves for notched strength ratio versus APA were computed, and correspondingly scaled and shifted for each of the evaluated hole sizes. After performing a cubic-interpolated surface fit over these curves and adjusting the values, approximations for both tensile and compressive notched strength ratios could be obtained for any given combination of layup stacking sequence and hole diameter-for the specific material. Results in this section successfully identify trends which correlate stacking sequence and hole diameter to notched performance, whilst also introducing a novel empirical CCA method for estimating the characteristic curve. After proposing the CCA method for approximating characteristic curves, its integration within finite element models (FEMs) was considered. For all simulations, Python scripting was utilised to automatically generate and run analyses, based on a number of user (or optimiser) specified parameters. A detailed description of this FEM-CCA model, along with a mesh convergence study for elements around the specimen hole-edge/pin, is presented. A variation of fuzzy adaptive particle swarm algorithm (FA-PSO) was then considered as an optimisation approach for maximising the strength of the pin-loaded joint. Two optimisation tasks were performed on eight and twelve ply layups, in which layup symmetry was enforced and hole diameters were fixed. The resulting configurations outputted from the FA-PSO algorithm, along with several other non-optimised configurations, were then re-analysed/analysed, where the number of increments was increased to 400-improving predicted failure load precision. To verify the accuracy of the FEM-CCA modelling approach and whether the optimisation algorithm effectively obtained a high-performing solution, experimental tests-equivalent to the models-were performed. To conduct pin-bearing tests, a custom fixture was designed using topology optimisation software to minimise pin-displacement whilst allowing digital image correlation (DIC) to be utilised. During mechanical testing of various configurations, strain fields were correspondingly recorded throughout the load cycle. The Tsai-Wu failure index was observed to correlate most closely with model results, and strain fields produced from DIC were shown to be useful for observing damage progression. The aforementioned work presents a novel strategy for the preliminary design of pin-loaded composite panels, which could be readily extended to more complex specimen geometries and types of fixtures. Alongside the development of a preliminary design approach for mechanically fastened composite joints, an investigation into a novel pneumatic splicing method for creating connections between reinforcing fibres used in FRPs was conducted. Based on preliminary observations that altering the number of pulses fired along overlapped tows had significant influence on connection strength, dry-fibre connections were formed, where the number of pulses fired ranged from one to fifteen pulses per one-hundred-millimeter overlap. In addition to obtaining failure loads, linear stiffness values for the different specimen types were calculated using a series of nested loops in MATLAB 2019a software. For both linear stiffness and failure loads, increasing the number of pulses correlated asymptotically to increased performance. An assessment of the performance of spliced carbon fibre yarns as reinforcing materials in composites was then conducted, in which the best performing configuration from the fibre-only analysis was utilised. Unidirectional plates were manufactured via hand-laying and press curing, and tensile tested in accordance with international standards. To ensure consistent fibre volume fractions across the plate volume, two arrangements were proposed, in which the position of the spliced overlaps were staggered. To benchmark performance, analogous continuous-fibre unidirectional and chopped strand mat specimens were produced and tested. For all specimen configurations, infrared thermography was performed during testing, as a means of presenting the location/concentration of (heat) energy released during specimen failure. In addition to mechanical testing, scanning electron microscopy was performed, and density and fibre volume fractions were obtained for all types of specimen. The mechanical performances achieved by spliced specimens compared favourably with non-spliced configurations, and based on the obtained results, it is anticipated that better performance can be obtained after improvements to manufacturing processes. The results presented in this section indicate that yarns reconstituted via pneumatic splicing can carrying significant loads, whilst maintaining excellent tensile stiffness. It is therefore postulated that reconstituted yarns comprising of spliced reclaimed fibres have the potential to be utilised in manufacturing processes normally limited to continuous tows, such as 3D-printing and weaving. Overall, this thesis has proposed two discrete and novel approaches relating to joining composite structures and their reinforcing yarns, respectively. Firstly, an efficient modelling method has been proposed for pin-loaded laminate composites. The proposed approach was then successfully implemented within a meta-heuristic algorithm to optimise laminate stacking sequence for maximising joint strength. Secondly, a novel preliminary investigation has been conducted relating to the implementation of pneumatic splicing with tows of carbon fibre.
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- 2022
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3. The Seventeenth Data Release of the Sloan Digital Sky Surveys: Complete Release of MaNGA, MaStar, and APOGEE-2 Data
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Abdurro’uf, Accetta, Katherine, Aerts, Conny, Aguirre, Víctor Silva, Ahumada, Romina, Ajgaonkar, Nikhil, Ak, N Filiz, Alam, Shadab, Prieto, Carlos Allende, Almeida, Andrés, Anders, Friedrich, Anderson, Scott F, Andrews, Brett H, Anguiano, Borja, Aquino-Ortíz, Erik, Aragón-Salamanca, Alfonso, Argudo-Fernández, Maria, Ata, Metin, Aubert, Marie, Avila-Reese, Vladimir, Badenes, Carles, Barbá, Rodolfo H, Barger, Kat, Barrera-Ballesteros, Jorge K, Beaton, Rachael L, Beers, Timothy C, Belfiore, Francesco, Bender, Chad F, Bernardi, Mariangela, Bershady, Matthew A, Beutler, Florian, Bidin, Christian Moni, Bird, Jonathan C, Bizyaev, Dmitry, Blanc, Guillermo A, Blanton, Michael R, Boardman, Nicholas Fraser, Bolton, Adam S, Boquien, Médéric, Borissova, Jura, Bovy, Jo, Brandt, WN, Brown, Jordan, Brownstein, Joel R, Brusa, Marcella, Buchner, Johannes, Bundy, Kevin, Burchett, Joseph N, Bureau, Martin, Burgasser, Adam, Cabang, Tuesday K, Campbell, Stephanie, Cappellari, Michele, Carlberg, Joleen K, Wanderley, Fábio Carneiro, Carrera, Ricardo, Cash, Jennifer, Chen, Yan-Ping, Chen, Wei-Huai, Cherinka, Brian, Chiappini, Cristina, Choi, Peter Doohyun, Chojnowski, S Drew, Chung, Haeun, Clerc, Nicolas, Cohen, Roger E, Comerford, Julia M, Comparat, Johan, da Costa, Luiz, Covey, Kevin, Crane, Jeffrey D, Cruz-Gonzalez, Irene, Culhane, Connor, Cunha, Katia, Dai, Y Sophia, Damke, Guillermo, Darling, Jeremy, Davidson, James W, Davies, Roger, Dawson, Kyle, De Lee, Nathan, Diamond-Stanic, Aleksandar M, Cano-Díaz, Mariana, Sánchez, Helena Domínguez, Donor, John, Duckworth, Chris, Dwelly, Tom, Eisenstein, Daniel J, Elsworth, Yvonne P, Emsellem, Eric, Eracleous, Mike, Escoffier, Stephanie, Fan, Xiaohui, Farr, Emily, Feng, Shuai, Fernández-Trincado, José G, Feuillet, Diane, Filipp, Andreas, Fillingham, Sean P, and Frinchaboy, Peter M
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Astronomical Sciences ,Physical Sciences ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) ,Astronomy & Astrophysics ,Astronomical sciences - Abstract
This paper documents the seventeenth data release (DR17) from the Sloan Digital Sky Surveys; the fifth and final release from the fourth phase (SDSS-IV). DR17 contains the complete release of the Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey, which reached its goal of surveying over 10,000 nearby galaxies. The complete release of the MaNGA Stellar Library accompanies this data, providing observations of almost 30,000 stars through the MaNGA instrument during bright time. DR17 also contains the complete release of the Apache Point Observatory Galactic Evolution Experiment 2 survey that publicly releases infrared spectra of over 650,000 stars. The main sample from the Extended Baryon Oscillation Spectroscopic Survey (eBOSS), as well as the subsurvey Time Domain Spectroscopic Survey data were fully released in DR16. New single-fiber optical spectroscopy released in DR17 is from the SPectroscipic IDentification of ERosita Survey subsurvey and the eBOSS-RM program. Along with the primary data sets, DR17 includes 25 new or updated value-added catalogs. This paper concludes the release of SDSS-IV survey data. SDSS continues into its fifth phase with observations already underway for the Milky Way Mapper, Local Volume Mapper, and Black Hole Mapper surveys.
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- 2022
4. Tungsten boride shields in a spherical tokamak
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Windsor, Colin G, Astbury, Jack O, Davidson, James, McFadzean, Charles J R, Morgan, J Guy, Wilson, Christopher, and Humphry-Baker, Samuel A
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Physics - Computational Physics ,Physics - Accelerator Physics - Abstract
The favourable properties of tungsten borides for shielding the central High Temperature Superconductor (HTS) core of a spherical tokamak fusion power plant are modelled using the MCNP code. The objectives are to minimize the power deposition into the cooled HTS core, and to keep HTS radiation damage to acceptable levels by limiting the neutron and gamma fluxes. The shield materials compared are W2B, WB, W2B5 and WB4 along with a reactively sintered boride B0.329C0.074Cr0.024Fe0.274W0.299, monolithic W and WC. Of all these W2B5 gave the most favourable results with a factor of ~10 or greater reduction in neutron flux and gamma energy deposition as compared to monolithic W. These results are compared with layered water-cooled shields, giving the result that the monolithic shields, with moderating boron, gave comparable neutron flux and power deposition, and (in the case of W2B5) even better performance. Good performance without water-coolant has advantages from a reactor safety perspective due to the risks associated with radio-activation of oxygen. 10B isotope concentrations between 0 and 100% are considered for the boride shields. The naturally occurring 20% fraction gave much lower energy depositions than the 0% fraction, but the improvement largely saturated beyond 40%. Thermophysical properties of the candidate materials are discussed, in particular the thermal strain. To our knowledge, the performance of W2B5 is unrivalled by other monolithic shielding materials. This is partly as its trigonal crystal structure gives it higher atomic density compared with other borides. It is also suggested that its high performance depends on it having just high enough 10B content to maintain a constant neutron energy spectrum across the shield., Comment: 17 pages, 16 figures, submitted to Nuclear Fusion
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- 2021
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5. 'She's still waiting for me'
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Davidson, James
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- 2007
6. The 16th Data Release of the Sloan Digital Sky Surveys: First Release from the APOGEE-2 Southern Survey and Full Release of eBOSS Spectra
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Ahumada, Romina, Prieto, Carlos Allende, Almeida, Andrés, Anders, Friedrich, Anderson, Scott F, Andrews, Brett H, Anguiano, Borja, Arcodia, Riccardo, Armengaud, Eric, Aubert, Marie, Avila, Santiago, Avila-Reese, Vladimir, Badenes, Carles, Balland, Christophe, Barger, Kat, Barrera-Ballesteros, Jorge K, Basu, Sarbani, Bautista, Julian, Beaton, Rachael L, Beers, Timothy C, Benavides, B Izamar T, Bender, Chad F, Bernardi, Mariangela, Bershady, Matthew, Beutler, Florian, Bidin, Christian Moni, Bird, Jonathan, Bizyaev, Dmitry, Blanc, Guillermo A, Blanton, Michael R, Boquien, Médéric, Borissova, Jura, Bovy, Jo, Brandt, WN, Brinkmann, Jonathan, Brownstein, Joel R, Bundy, Kevin, Bureau, Martin, Burgasser, Adam, Burtin, Etienne, Cano-Díaz, Mariana, Capasso, Raffaella, Cappellari, Michele, Carrera, Ricardo, Chabanier, Solène, Chaplin, William, Chapman, Michael, Cherinka, Brian, Chiappini, Cristina, Choi, Peter Doohyun, Chojnowski, S Drew, Chung, Haeun, Clerc, Nicolas, Coffey, Damien, Comerford, Julia M, Comparat, Johan, da Costa, Luiz, Cousinou, Marie-Claude, Covey, Kevin, Crane, Jeffrey D, Cunha, Katia, da Silva Ilha, Gabriele, Dai, Yu Sophia, Damsted, Sanna B, Darling, Jeremy, Davidson, James W, Davies, Roger, Dawson, Kyle, De, Nikhil, de la Macorra, Axel, De Lee, Nathan, de Andrade Queiroz, Anna Bárbara, Machado, Alice Deconto, de la Torre, Sylvain, Dell’Agli, Flavia, du Mas des Bourboux, Hélion, Diamond-Stanic, Aleksandar M, Dillon, Sean, Donor, John, Drory, Niv, Duckworth, Chris, Dwelly, Tom, Ebelke, Garrett, Eftekharzadeh, Sarah, Eigenbrot, Arthur Davis, Elsworth, Yvonne P, Eracleous, Mike, Erfanianfar, Ghazaleh, Escoffier, Stephanie, Fan, Xiaohui, Farr, Emily, Fernández-Trincado, José G, Feuillet, Diane, Finoguenov, Alexis, Fofie, Patricia, Fraser-McKelvie, Amelia, Frinchaboy, Peter M, Fromenteau, Sebastien, Fu, Hai, and Galbany, Lluís
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Nuclear and Plasma Physics ,Physical Sciences ,astro-ph.GA ,astro-ph.CO ,astro-ph.IM ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) ,Astronomy & Astrophysics ,Astronomical sciences - Abstract
This paper documents the 16th data release (DR16) from the Sloan Digital Sky Surveys (SDSS), the fourth and penultimate from the fourth phase (SDSS-IV). This is the first release of data from the Southern Hemisphere survey of the Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2); new data from APOGEE-2 North are also included. DR16 is also notable as the final data release for the main cosmological program of the Extended Baryon Oscillation Spectroscopic Survey (eBOSS), and all raw and reduced spectra from that project are released here. DR16 also includes all the data from the Time Domain Spectroscopic Survey and new data from the SPectroscopic IDentification of ERosita Survey programs, both of which were co-observed on eBOSS plates. DR16 has no new data from the Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey (or the MaNGA Stellar Library "MaStar"). We also preview future SDSS-V operations (due to start in 2020), and summarize plans for the final SDSS-IV data release (DR17).
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- 2020
7. Modulated Policy Hierarchies
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Pashevich, Alexander, Hafner, Danijar, Davidson, James, Sukthankar, Rahul, and Schmid, Cordelia
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
Solving tasks with sparse rewards is a main challenge in reinforcement learning. While hierarchical controllers are an intuitive approach to this problem, current methods often require manual reward shaping, alternating training phases, or manually defined sub tasks. We introduce modulated policy hierarchies (MPH), that can learn end-to-end to solve tasks from sparse rewards. To achieve this, we study different modulation signals and exploration for hierarchical controllers. Specifically, we find that communicating via bit-vectors is more efficient than selecting one out of multiple skills, as it enables mixing between them. To facilitate exploration, MPH uses its different time scales for temporally extended intrinsic motivation at each level of the hierarchy. We evaluate MPH on the robotics tasks of pushing and sparse block stacking, where it outperforms recent baselines., Comment: 8 pages, 5 figures
- Published
- 2018
8. Learning Latent Dynamics for Planning from Pixels
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Hafner, Danijar, Lillicrap, Timothy, Fischer, Ian, Villegas, Ruben, Ha, David, Lee, Honglak, and Davidson, James
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Statistics - Machine Learning - Abstract
Planning has been very successful for control tasks with known environment dynamics. To leverage planning in unknown environments, the agent needs to learn the dynamics from interactions with the world. However, learning dynamics models that are accurate enough for planning has been a long-standing challenge, especially in image-based domains. We propose the Deep Planning Network (PlaNet), a purely model-based agent that learns the environment dynamics from images and chooses actions through fast online planning in latent space. To achieve high performance, the dynamics model must accurately predict the rewards ahead for multiple time steps. We approach this using a latent dynamics model with both deterministic and stochastic transition components. Moreover, we propose a multi-step variational inference objective that we name latent overshooting. Using only pixel observations, our agent solves continuous control tasks with contact dynamics, partial observability, and sparse rewards, which exceed the difficulty of tasks that were previously solved by planning with learned models. PlaNet uses substantially fewer episodes and reaches final performance close to and sometimes higher than strong model-free algorithms., Comment: 20 pages, 12 figures, 1 table
- Published
- 2018
9. Interpretable Intuitive Physics Model
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Ye, Tian, Wang, Xiaolong, Davidson, James, and Gupta, Abhinav
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Humans have a remarkable ability to use physical commonsense and predict the effect of collisions. But do they understand the underlying factors? Can they predict if the underlying factors have changed? Interestingly, in most cases humans can predict the effects of similar collisions with different conditions such as changes in mass, friction, etc. It is postulated this is primarily because we learn to model physics with meaningful latent variables. This does not imply we can estimate the precise values of these meaningful variables (estimate exact values of mass or friction). Inspired by this observation, we propose an interpretable intuitive physics model where specific dimensions in the bottleneck layers correspond to different physical properties. In order to demonstrate that our system models these underlying physical properties, we train our model on collisions of different shapes (cube, cone, cylinder, spheres etc.) and test on collisions of unseen combinations of shapes. Furthermore, we demonstrate our model generalizes well even when similar scenes are simulated with different underlying properties.
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- 2018
10. Noise Contrastive Priors for Functional Uncertainty
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Hafner, Danijar, Tran, Dustin, Lillicrap, Timothy, Irpan, Alex, and Davidson, James
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Statistics - Machine Learning ,Computer Science - Machine Learning - Abstract
Obtaining reliable uncertainty estimates of neural network predictions is a long standing challenge. Bayesian neural networks have been proposed as a solution, but it remains open how to specify their prior. In particular, the common practice of an independent normal prior in weight space imposes relatively weak constraints on the function posterior, allowing it to generalize in unforeseen ways on inputs outside of the training distribution. We propose noise contrastive priors (NCPs) to obtain reliable uncertainty estimates. The key idea is to train the model to output high uncertainty for data points outside of the training distribution. NCPs do so using an input prior, which adds noise to the inputs of the current mini batch, and an output prior, which is a wide distribution given these inputs. NCPs are compatible with any model that can output uncertainty estimates, are easy to scale, and yield reliable uncertainty estimates throughout training. Empirically, we show that NCPs prevent overfitting outside of the training distribution and result in uncertainty estimates that are useful for active learning. We demonstrate the scalability of our method on the flight delays data set, where we significantly improve upon previously published results., Comment: 12 pages, 6 figures
- Published
- 2018
11. Visual Representations for Semantic Target Driven Navigation
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Mousavian, Arsalan, Toshev, Alexander, Fiser, Marek, Kosecka, Jana, Wahid, Ayzaan, and Davidson, James
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Computer Science - Computer Vision and Pattern Recognition - Abstract
What is a good visual representation for autonomous agents? We address this question in the context of semantic visual navigation, which is the problem of a robot finding its way through a complex environment to a target object, e.g. go to the refrigerator. Instead of acquiring a metric semantic map of an environment and using planning for navigation, our approach learns navigation policies on top of representations that capture spatial layout and semantic contextual cues. We propose to using high level semantic and contextual features including segmentation and detection masks obtained by off-the-shelf state-of-the-art vision as observations and use deep network to learn the navigation policy. This choice allows using additional data, from orthogonal sources, to better train different parts of the model the representation extraction is trained on large standard vision datasets while the navigation component leverages large synthetic environments for training. This combination of real and synthetic is possible because equitable feature representations are available in both (e.g., segmentation and detection masks), which alleviates the need for domain adaptation. Both the representation and the navigation policy can be readily applied to real non-synthetic environments as demonstrated on the Active Vision Dataset [1]. Our approach gets successfully to the target in 54% of the cases in unexplored environments, compared to 46% for non-learning based approach, and 28% for the learning-based baseline., Comment: Accepted to ICRA 2019 and ECCV 2018 Workshop on Visual Learning and Embodied Agents in Simulation Environments
- Published
- 2018
12. Forward-Backward Reinforcement Learning
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Edwards, Ashley D., Downs, Laura, and Davidson, James C.
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Computer Science - Learning ,Computer Science - Artificial Intelligence ,Statistics - Machine Learning - Abstract
Goals for reinforcement learning problems are typically defined through hand-specified rewards. To design such problems, developers of learning algorithms must inherently be aware of what the task goals are, yet we often require agents to discover them on their own without any supervision beyond these sparse rewards. While much of the power of reinforcement learning derives from the concept that agents can learn with little guidance, this requirement greatly burdens the training process. If we relax this one restriction and endow the agent with knowledge of the reward function, and in particular of the goal, we can leverage backwards induction to accelerate training. To achieve this, we propose training a model to learn to take imagined reversal steps from known goal states. Rather than training an agent exclusively to determine how to reach a goal while moving forwards in time, our approach travels backwards to jointly predict how we got there. We evaluate our work in Gridworld and Towers of Hanoi and empirically demonstrate that it yields better performance than standard DDQN.
- Published
- 2018
13. Magnetic Resonance Imaging Findings of the Asymptomatic Shoulder May Impact Performance, Not Future Injury List Placement in Major League Baseball Pitchers
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Beletsky, Alexander, Okoroha, Kelechi R., Cabarcas, Brandon, Garcia, Grant H., Gowd, Anirudh K., Meyer, John, Vadhera, Amar S., Singh, Harsh, Gursoy, Safa, White, Gregory M., Davidson, James, Nicholson, Gregory P., Chahla, Jorge, and Verma, Nikhil N.
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- 2022
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14. PRM-RL: Long-range Robotic Navigation Tasks by Combining Reinforcement Learning and Sampling-based Planning
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Faust, Aleksandra, Ramirez, Oscar, Fiser, Marek, Oslund, Kenneth, Francis, Anthony, Davidson, James, and Tapia, Lydia
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Computer Science - Artificial Intelligence ,Computer Science - Machine Learning ,Computer Science - Robotics - Abstract
We present PRM-RL, a hierarchical method for long-range navigation task completion that combines sampling based path planning with reinforcement learning (RL). The RL agents learn short-range, point-to-point navigation policies that capture robot dynamics and task constraints without knowledge of the large-scale topology. Next, the sampling-based planners provide roadmaps which connect robot configurations that can be successfully navigated by the RL agent. The same RL agents are used to control the robot under the direction of the planning, enabling long-range navigation. We use the Probabilistic Roadmaps (PRMs) for the sampling-based planner. The RL agents are constructed using feature-based and deep neural net policies in continuous state and action spaces. We evaluate PRM-RL, both in simulation and on-robot, on two navigation tasks with non-trivial robot dynamics: end-to-end differential drive indoor navigation in office environments, and aerial cargo delivery in urban environments with load displacement constraints. Our results show improvement in task completion over both RL agents on their own and traditional sampling-based planners. In the indoor navigation task, PRM-RL successfully completes up to 215 m long trajectories under noisy sensor conditions, and the aerial cargo delivery completes flights over 1000 m without violating the task constraints in an environment 63 million times larger than used in training., Comment: 9 pages, 7 figures
- Published
- 2017
15. TensorFlow Agents: Efficient Batched Reinforcement Learning in TensorFlow
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Hafner, Danijar, Davidson, James, and Vanhoucke, Vincent
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
We introduce TensorFlow Agents, an efficient infrastructure paradigm for building parallel reinforcement learning algorithms in TensorFlow. We simulate multiple environments in parallel, and group them to perform the neural network computation on a batch rather than individual observations. This allows the TensorFlow execution engine to parallelize computation, without the need for manual synchronization. Environments are stepped in separate Python processes to progress them in parallel without interference of the global interpreter lock. As part of this project, we introduce BatchPPO, an efficient implementation of the proximal policy optimization algorithm. By open sourcing TensorFlow Agents, we hope to provide a flexible starting point for future projects that accelerates future research in the field., Comment: White paper, 7 pages
- Published
- 2017
16. Learning 6-DOF Grasping Interaction via Deep Geometry-aware 3D Representations
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Yan, Xinchen, Hsu, Jasmine, Khansari, Mohi, Bai, Yunfei, Pathak, Arkanath, Gupta, Abhinav, Davidson, James, and Lee, Honglak
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Computer Science - Robotics ,Computer Science - Artificial Intelligence ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Learning - Abstract
This paper focuses on the problem of learning 6-DOF grasping with a parallel jaw gripper in simulation. We propose the notion of a geometry-aware representation in grasping based on the assumption that knowledge of 3D geometry is at the heart of interaction. Our key idea is constraining and regularizing grasping interaction learning through 3D geometry prediction. Specifically, we formulate the learning of deep geometry-aware grasping model in two steps: First, we learn to build mental geometry-aware representation by reconstructing the scene (i.e., 3D occupancy grid) from RGBD input via generative 3D shape modeling. Second, we learn to predict grasping outcome with its internal geometry-aware representation. The learned outcome prediction model is used to sequentially propose grasping solutions via analysis-by-synthesis optimization. Our contributions are fourfold: (1) To best of our knowledge, we are presenting for the first time a method to learn a 6-DOF grasping net from RGBD input; (2) We build a grasping dataset from demonstrations in virtual reality with rich sensory and interaction annotations. This dataset includes 101 everyday objects spread across 7 categories, additionally, we propose a data augmentation strategy for effective learning; (3) We demonstrate that the learned geometry-aware representation leads to about 10 percent relative performance improvement over the baseline CNN on grasping objects from our dataset. (4) We further demonstrate that the model generalizes to novel viewpoints and object instances., Comment: Published at ICRA 2018
- Published
- 2017
17. A Brief Study of In-Domain Transfer and Learning from Fewer Samples using A Few Simple Priors
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Pickett, Marc, Sekhari, Ayush, and Davidson, James
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Computer Science - Artificial Intelligence ,Computer Science - Learning - Abstract
Domain knowledge can often be encoded in the structure of a network, such as convolutional layers for vision, which has been shown to increase generalization and decrease sample complexity, or the number of samples required for successful learning. In this study, we ask whether sample complexity can be reduced for systems where the structure of the domain is unknown beforehand, and the structure and parameters must both be learned from the data. We show that sample complexity reduction through learning structure is possible for at least two simple cases. In studying these cases, we also gain insight into how this might be done for more complex domains., Comment: Accepted for ICML 2017 Workshop on Picky Learners
- Published
- 2017
18. Learning Hierarchical Information Flow with Recurrent Neural Modules
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Hafner, Danijar, Irpan, Alex, Davidson, James, and Heess, Nicolas
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Computer Science - Learning ,Computer Science - Artificial Intelligence - Abstract
We propose ThalNet, a deep learning model inspired by neocortical communication via the thalamus. Our model consists of recurrent neural modules that send features through a routing center, endowing the modules with the flexibility to share features over multiple time steps. We show that our model learns to route information hierarchically, processing input data by a chain of modules. We observe common architectures, such as feed forward neural networks and skip connections, emerging as special cases of our architecture, while novel connectivity patterns are learned for the text8 compression task. Our model outperforms standard recurrent neural networks on several sequential benchmarks., Comment: NIPS 2017
- Published
- 2017
19. Discrete Sequential Prediction of Continuous Actions for Deep RL
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Metz, Luke, Ibarz, Julian, Jaitly, Navdeep, and Davidson, James
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Statistics - Machine Learning - Abstract
It has long been assumed that high dimensional continuous control problems cannot be solved effectively by discretizing individual dimensions of the action space due to the exponentially large number of bins over which policies would have to be learned. In this paper, we draw inspiration from the recent success of sequence-to-sequence models for structured prediction problems to develop policies over discretized spaces. Central to this method is the realization that complex functions over high dimensional spaces can be modeled by neural networks that predict one dimension at a time. Specifically, we show how Q-values and policies over continuous spaces can be modeled using a next step prediction model over discretized dimensions. With this parameterization, it is possible to both leverage the compositional structure of action spaces during learning, as well as compute maxima over action spaces (approximately). On a simple example task we demonstrate empirically that our method can perform global search, which effectively gets around the local optimization issues that plague DDPG. We apply the technique to off-policy (Q-learning) methods and show that our method can achieve the state-of-the-art for off-policy methods on several continuous control tasks.
- Published
- 2017
20. Robust Adversarial Reinforcement Learning
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Pinto, Lerrel, Davidson, James, Sukthankar, Rahul, and Gupta, Abhinav
- Subjects
Computer Science - Learning ,Computer Science - Artificial Intelligence ,Computer Science - Multiagent Systems ,Computer Science - Robotics - Abstract
Deep neural networks coupled with fast simulation and improved computation have led to recent successes in the field of reinforcement learning (RL). However, most current RL-based approaches fail to generalize since: (a) the gap between simulation and real world is so large that policy-learning approaches fail to transfer; (b) even if policy learning is done in real world, the data scarcity leads to failed generalization from training to test scenarios (e.g., due to different friction or object masses). Inspired from H-infinity control methods, we note that both modeling errors and differences in training and test scenarios can be viewed as extra forces/disturbances in the system. This paper proposes the idea of robust adversarial reinforcement learning (RARL), where we train an agent to operate in the presence of a destabilizing adversary that applies disturbance forces to the system. The jointly trained adversary is reinforced -- that is, it learns an optimal destabilization policy. We formulate the policy learning as a zero-sum, minimax objective function. Extensive experiments in multiple environments (InvertedPendulum, HalfCheetah, Swimmer, Hopper and Walker2d) conclusively demonstrate that our method (a) improves training stability; (b) is robust to differences in training/test conditions; and c) outperform the baseline even in the absence of the adversary., Comment: 10 pages
- Published
- 2017
21. Cognitive Mapping and Planning for Visual Navigation
- Author
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Gupta, Saurabh, Tolani, Varun, Davidson, James, Levine, Sergey, Sukthankar, Rahul, and Malik, Jitendra
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence ,Computer Science - Machine Learning ,Computer Science - Robotics - Abstract
We introduce a neural architecture for navigation in novel environments. Our proposed architecture learns to map from first-person views and plans a sequence of actions towards goals in the environment. The Cognitive Mapper and Planner (CMP) is based on two key ideas: a) a unified joint architecture for mapping and planning, such that the mapping is driven by the needs of the task, and b) a spatial memory with the ability to plan given an incomplete set of observations about the world. CMP constructs a top-down belief map of the world and applies a differentiable neural net planner to produce the next action at each time step. The accumulated belief of the world enables the agent to track visited regions of the environment. We train and test CMP on navigation problems in simulation environments derived from scans of real world buildings. Our experiments demonstrate that CMP outperforms alternate learning-based architectures, as well as, classical mapping and path planning approaches in many cases. Furthermore, it naturally extends to semantically specified goals, such as 'going to a chair'. We also deploy CMP on physical robots in indoor environments, where it achieves reasonable performance, even though it is trained entirely in simulation., Comment: Extended IJCV Version of the original paper at CVPR17. Project website with code, models, simulation environment and videos: https://sites.google.com/view/cognitive-mapping-and-planning/
- Published
- 2017
22. Mechanical characterisation of pneumatically-spliced carbon fibre yarns as reinforcements for polymer composites
- Author
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Davidson, James R., Quinn, James A., Rothmann, Claudia, Bajpai, Ankur, Robert, Colin, Ó Brádaigh, Conchúr M., and McCarthy, Edward D.
- Published
- 2022
- Full Text
- View/download PDF
23. The Fourteenth Data Release of the Sloan Digital Sky Survey: First Spectroscopic Data from the Extended Baryon Oscillation Spectroscopic Survey and from the Second Phase of the Apache Point Observatory Galactic Evolution Experiment
- Author
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Abolfathi, Bela, Aguado, DS, Aguilar, Gabriela, Prieto, Carlos Allende, Almeida, Andres, Ananna, Tonima Tasnim, Anders, Friedrich, Anderson, Scott F, Andrews, Brett H, Anguiano, Borja, Aragón-Salamanca, Alfonso, Argudo-Fernández, Maria, Armengaud, Eric, Ata, Metin, Aubourg, Eric, Avila-Reese, Vladimir, Badenes, Carles, Bailey, Stephen, Balland, Christophe, Barger, Kathleen A, Barrera-Ballesteros, Jorge, Bartosz, Curtis, Bastien, Fabienne, Bates, Dominic, Baumgarten, Falk, Bautista, Julian, Beaton, Rachael, Beers, Timothy C, Belfiore, Francesco, Bender, Chad F, Bernardi, Mariangela, Bershady, Matthew A, Beutler, Florian, Bird, Jonathan C, Bizyaev, Dmitry, Blanc, Guillermo A, Blanton, Michael R, Blomqvist, Michael, Bolton, Adam S, Boquien, Médéric, Borissova, Jura, Bovy, Jo, Diaz, Christian Andres Bradna, Brandt, William Nielsen, Brinkmann, Jonathan, Brownstein, Joel R, Bundy, Kevin, Burgasser, Adam J, Burtin, Etienne, Busca, Nicolás G, Cañas, Caleb I, Cano-Díaz, Mariana, Cappellari, Michele, Carrera, Ricardo, Casey, Andrew R, Sodi, Bernardo Cervantes, Chen, Yanping, Cherinka, Brian, Chiappini, Cristina, Choi, Peter Doohyun, Chojnowski, Drew, Chuang, Chia-Hsun, Chung, Haeun, Clerc, Nicolas, Cohen, Roger E, Comerford, Julia M, Comparat, Johan, do Nascimento, Janaina Correa, da Costa, Luiz, Cousinou, Marie-Claude, Covey, Kevin, Crane, Jeffrey D, Cruz-Gonzalez, Irene, Cunha, Katia, da Silva Ilha, Gabriele, Damke, Guillermo J, Darling, Jeremy, Davidson, James W, Dawson, Kyle, de Icaza Lizaola, Miguel Angel C, de la Macorra, Axel, de la Torre, Sylvain, De Lee, Nathan, de Sainte Agathe, Victoria, Machado, Alice Deconto, Dell’Agli, Flavia, Delubac, Timothée, Diamond-Stanic, Aleksandar M, Donor, John, Downes, Juan José, Drory, Niv, du Mas des Bourboux, Hélion, Duckworth, Christopher J, Dwelly, Tom, Dyer, Jamie, Ebelke, Garrett, Eigenbrot, Arthur Davis, Eisenstein, Daniel J, Elsworth, Yvonne P, and Emsellem, Eric
- Subjects
Astronomical Sciences ,Physical Sciences ,atlases ,catalogs ,surveys ,astro-ph.GA ,astro-ph.IM ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) ,Astronomy & Astrophysics ,Astronomical sciences - Abstract
The fourth generation of the Sloan Digital Sky Survey (SDSS-IV) has been in operation since 2014 July. This paper describes the second data release from this phase, and the 14th from SDSS overall (making this Data Release Fourteen or DR14). This release makes the data taken by SDSS-IV in its first two years of operation (2014-2016 July) public. Like all previous SDSS releases, DR14 is cumulative, including the most recent reductions and calibrations of all data taken by SDSS since the first phase began operations in 2000. New in DR14 is the first public release of data from the extended Baryon Oscillation Spectroscopic Survey; the first data from the second phase of the Apache Point Observatory (APO) Galactic Evolution Experiment (APOGEE-2), including stellar parameter estimates from an innovative data-driven machine-learning algorithm known as "The Cannon"; and almost twice as many data cubes from the Mapping Nearby Galaxies at APO (MaNGA) survey as were in the previous release (N = 2812 in total). This paper describes the location and format of the publicly available data from the SDSS-IV surveys. We provide references to the important technical papers describing how these data have been taken (both targeting and observation details) and processed for scientific use. The SDSS web site (www.sdss.org) has been updated for this release and provides links to data downloads, as well as tutorials and examples of data use. SDSS-IV is planning to continue to collect astronomical data until 2020 and will be followed by SDSS-V.
- Published
- 2018
24. Evidence of Jet Activity from the Secondary Black Hole in the OJ 287 Binary System
- Author
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Valtonen, Mauri J., primary, Zola, Staszek, additional, Gupta, Alok C., additional, Kishore, Shubham, additional, Gopakumar, Achamveedu, additional, Jorstad, Svetlana G., additional, Wiita, Paul J., additional, Gu, Minfeng, additional, Nilsson, Kari, additional, Marscher, Alan P., additional, Zhang, Zhongli, additional, Hudec, Rene, additional, Matsumoto, Katsura, additional, Drozdz, Marek, additional, Ogloza, Waldemar, additional, Berdyugin, Andrei V., additional, Reichart, Daniel E., additional, Mugrauer, Markus, additional, Dey, Lankeswar, additional, Pursimo, Tapio, additional, Lehto, Harry J., additional, Ciprini, Stefano, additional, Nakaoka, T., additional, Uemura, M., additional, Imazawa, Ryo, additional, Zejmo, Michal, additional, Kouprianov, Vladimir V., additional, Davidson, James W., additional, Sadun, Alberto, additional, Štrobl, Jan, additional, Weaver, Z. R., additional, and Jelínek, Martin, additional
- Published
- 2024
- Full Text
- View/download PDF
25. Supervision via Competition: Robot Adversaries for Learning Tasks
- Author
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Pinto, Lerrel, Davidson, James, and Gupta, Abhinav
- Subjects
Computer Science - Robotics ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Learning - Abstract
There has been a recent paradigm shift in robotics to data-driven learning for planning and control. Due to large number of experiences required for training, most of these approaches use a self-supervised paradigm: using sensors to measure success/failure. However, in most cases, these sensors provide weak supervision at best. In this work, we propose an adversarial learning framework that pits an adversary against the robot learning the task. In an effort to defeat the adversary, the original robot learns to perform the task with more robustness leading to overall improved performance. We show that this adversarial framework forces the the robot to learn a better grasping model in order to overcome the adversary. By grasping 82% of presented novel objects compared to 68% without an adversary, we demonstrate the utility of creating adversaries. We also demonstrate via experiments that having robots in adversarial setting might be a better learning strategy as compared to having collaborative multiple robots., Comment: Submission to ICRA 2017
- Published
- 2016
26. The 13th Data Release of the Sloan Digital Sky Survey: First Spectroscopic Data from the SDSS-IV Survey Mapping Nearby Galaxies at Apache Point Observatory
- Author
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Albareti, Franco D, Prieto, Carlos Allende, Almeida, Andres, Anders, Friedrich, Anderson, Scott, Andrews, Brett H, Aragón-Salamanca, Alfonso, Argudo-Fernández, Maria, Armengaud, Eric, Aubourg, Eric, Avila-Reese, Vladimir, Badenes, Carles, Bailey, Stephen, Barbuy, Beatriz, Barger, Kat, Barrera-Ballesteros, Jorge, Bartosz, Curtis, Basu, Sarbani, Bates, Dominic, Battaglia, Giuseppina, Baumgarten, Falk, Baur, Julien, Bautista, Julian, Beers, Timothy C, Belfiore, Francesco, Bershady, Matthew, de Lis, Sara Bertran, Bird, Jonathan C, Bizyaev, Dmitry, Blanc, Guillermo A, Blanton, Michael, Blomqvist, Michael, Bolton, Adam S, Borissova, J, Bovy, Jo, Brandt, William Nielsen, Brinkmann, Jonathan, Brownstein, Joel R, Bundy, Kevin, Burtin, Etienne, Busca, Nicolás G, Chavez, Hugo Orlando Camacho, Díaz, M Cano, Cappellari, Michele, Carrera, Ricardo, Chen, Yanping, Cherinka, Brian, Cheung, Edmond, Chiappini, Cristina, Chojnowski, Drew, Chuang, Chia-Hsun, Chung, Haeun, Cirolini, Rafael Fernando, Clerc, Nicolas, Cohen, Roger E, Comerford, Julia M, Comparat, Johan, do Nascimento, Janaina Correa, Cousinou, Marie-Claude, Covey, Kevin, Crane, Jeffrey D, Croft, Rupert, Cunha, Katia, Darling, Jeremy, Davidson, James W, Dawson, Kyle, Da Costa, Luiz, Da Silva Ilha, Gabriele, Machado, Alice Deconto, Delubac, Timothée, De Lee, Nathan, De la Macorra, Axel, De la Torre, Sylvain, Diamond-Stanic, Aleksandar M, Donor, John, Downes, Juan Jose, Drory, Niv, Du, Cheng, Du Mas des Bourboux, Hélion, Dwelly, Tom, Ebelke, Garrett, Eigenbrot, Arthur, Eisenstein, Daniel J, Elsworth, Yvonne P, Emsellem, Eric, Eracleous, Michael, Escoffier, Stephanie, Evans, Michael L, Falcón-Barroso, Jesús, Fan, Xiaohui, Favole, Ginevra, Fernandez-Alvar, Emma, Fernandez-Trincado, JG, Feuillet, Diane, Fleming, Scott W, Font-Ribera, Andreu, Freischlad, Gordon, Frinchaboy, Peter, Fu, Hai, and Gao, Yang
- Subjects
Astronomical Sciences ,Physical Sciences ,atlases ,catalogs ,surveys ,astro-ph.GA ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) ,Astronomy & Astrophysics ,Astronomical sciences - Abstract
The fourth generation of the Sloan Digital Sky Survey (SDSS-IV) began observations in 2014 July. It pursues three core programs: the Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2), Mapping Nearby Galaxies at APO (MaNGA), and the Extended Baryon Oscillation Spectroscopic Survey (eBOSS). As well as its core program, eBOSS contains two major subprograms: the Time Domain Spectroscopic Survey (TDSS) and the SPectroscopic IDentification of ERosita Sources (SPIDERS). This paper describes the first data release from SDSS-IV, Data Release 13 (DR13). DR13 makes publicly available the first 1390 spatially resolved integral field unit observations of nearby galaxies from MaNGA. It includes new observations from eBOSS, completing the Sloan Extended QUasar, Emission-line galaxy, Luminous red galaxy Survey (SEQUELS), which also targeted variability-selected objects and X-ray-selected objects. DR13 includes new reductions of the SDSS-III BOSS data, improving the spectrophotometric calibration and redshift classification, and new reductions of the SDSS-III APOGEE-1 data, improving stellar parameters for dwarf stars and cooler stars. DR13 provides more robust and precise photometric calibrations. Value-added target catalogs relevant for eBOSS, TDSS, and SPIDERS and an updated red-clump catalog for APOGEE are also available. This paper describes the location and format of the data and provides references to important technical papers. The SDSS web site, http://www.sdss.org, provides links to the data, tutorials, examples of data access, and extensive documentation of the reduction and analysis procedures. DR13 is the first of a scheduled set that will contain new data and analyses from the planned ∼6 yr operations of SDSS-IV.
- Published
- 2017
27. Analysis of interfacial stresses in concrete beams strengthened by externally bonded FRP laminates using composite beam theory
- Author
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Sha, Xin and Davidson, James S.
- Published
- 2020
- Full Text
- View/download PDF
28. V444 Cyg X-ray and polarimetric variability: Radiative and Coriolis forces shape the wind collision region
- Author
-
Lomax, Jamie R., Naze, Yael, Hoffman, Jennifer L., Russell, Christopher M. P., De Becker, Michael, Corcoran, Michael F., Davidson, James W., Neilson, Hilding R., Owocki, Stan, Pittard, Julian M., and Pollock, Andy M. T.
- Subjects
Astrophysics - Solar and Stellar Astrophysics - Abstract
We present results from a study of the eclipsing, colliding-wind binary V444 Cyg that uses a combination of X-ray and optical spectropolarimetric methods to describe the 3-D nature of the shock and wind structure within the system. We have created the most complete X-ray light curve of V444 Cyg to date using 40 ksec of new data from Swift, and 200 ksec of new and archived XMM-Newton observations. In addition, we have characterized the intrinsic, polarimetric phase-dependent behavior of the strongest optical emission lines using data obtained with the University of Wisconsin's Half-Wave Spectropolarimeter. We have detected evidence of the Coriolis distortion of the wind-wind collision in the X-ray regime, which manifests itself through asymmetric behavior around the eclipses in the system's X-ray light curves. The large opening angle of the X-ray emitting region, as well as its location (i.e. the WN wind does not collide with the O star, but rather its wind) are evidence of radiative braking/inhibition occurring within the system. Additionally, the polarimetric results show evidence of the cavity the wind-wind collision region carves out of the Wolf-Rayet star's wind., Comment: 19 pages, 14 figures, accepted A&A
- Published
- 2014
- Full Text
- View/download PDF
29. Cognitive Mapping and Planning for Visual Navigation
- Author
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Gupta, Saurabh, Tolani, Varun, Davidson, James, Levine, Sergey, Sukthankar, Rahul, and Malik, Jitendra
- Published
- 2020
- Full Text
- View/download PDF
30. Analysis of transfer length for prestressed FRP tendons in pretensioned concrete using composite beam theory
- Author
-
Sha, Xin and Davidson, James S.
- Published
- 2019
- Full Text
- View/download PDF
31. A New Stellar Companion to GJ 835
- Author
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Clark, Catherine A., primary, Horch, Elliott P., additional, and Davidson, James W., additional
- Published
- 2023
- Full Text
- View/download PDF
32. Presidential Appointments and Religious Stratification in the United States, 1789-2003
- Author
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Davidson, James D., Kraus, Rachel, and Morrissey, Scott
- Published
- 2005
33. Verification of Composite Beam Theory with Finite Element Model for Pretensioned Concrete Members with Prestressing FRP Tendons
- Author
-
Sha, Xin, primary and Davidson, James S., additional
- Published
- 2023
- Full Text
- View/download PDF
34. The Eighteenth Data Release of the Sloan Digital Sky Surveys: Targeting and First Spectra from SDSS-V
- Author
-
Almeida, Andrés, primary, Anderson, Scott F., additional, Argudo-Fernández, Maria, additional, Badenes, Carles, additional, Barger, Kat, additional, Barrera-Ballesteros, Jorge K., additional, Bender, Chad F., additional, Benitez, Erika, additional, Besser, Felipe, additional, Bird, Jonathan C., additional, Bizyaev, Dmitry, additional, Blanton, Michael R., additional, Bochanski, John, additional, Bovy, Jo, additional, Brandt, William Nielsen, additional, Brownstein, Joel R., additional, Buchner, Johannes, additional, Bulbul, Esra, additional, Burchett, Joseph N., additional, Díaz, Mariana Cano, additional, Carlberg, Joleen K., additional, Casey, Andrew R., additional, Chandra, Vedant, additional, Cherinka, Brian, additional, Chiappini, Cristina, additional, Coker, Abigail A., additional, Comparat, Johan, additional, Conroy, Charlie, additional, Contardo, Gabriella, additional, Cortes, Arlin, additional, Covey, Kevin, additional, Crane, Jeffrey D., additional, Cunha, Katia, additional, Dabbieri, Collin, additional, Davidson, James W., additional, Davis, Megan C., additional, de Andrade Queiroz, Anna Barbara, additional, De Lee, Nathan, additional, Méndez Delgado, José Eduardo, additional, Demasi, Sebastian, additional, Di Mille, Francesco, additional, Donor, John, additional, Dow, Peter, additional, Dwelly, Tom, additional, Eracleous, Mike, additional, Eriksen, Jamey, additional, Fan, Xiaohui, additional, Farr, Emily, additional, Frederick, Sara, additional, Fries, Logan, additional, Frinchaboy, Peter, additional, Gänsicke, Boris T., additional, Ge, Junqiang, additional, González Ávila, Consuelo, additional, Grabowski, Katie, additional, Grier, Catherine, additional, Guiglion, Guillaume, additional, Gupta, Pramod, additional, Hall, Patrick, additional, Hawkins, Keith, additional, Hayes, Christian R., additional, Hermes, J. J., additional, Hernández-García, Lorena, additional, Hogg, David W., additional, Holtzman, Jon A., additional, Ibarra-Medel, Hector Javier, additional, Ji, Alexander, additional, Jofre, Paula, additional, Johnson, Jennifer A., additional, Jones, Amy M., additional, Kinemuchi, Karen, additional, Kluge, Matthias, additional, Koekemoer, Anton, additional, Kollmeier, Juna A., additional, Kounkel, Marina, additional, Krishnarao, Dhanesh, additional, Krumpe, Mirko, additional, Lacerna, Ivan, additional, Lago, Paulo Jakson Assuncao, additional, Laporte, Chervin, additional, Liu, Chao, additional, Liu, Ang, additional, Liu, Xin, additional, Lopes, Alexandre Roman, additional, Macktoobian, Matin, additional, Majewski, Steven R., additional, Malanushenko, Viktor, additional, Maoz, Dan, additional, Masseron, Thomas, additional, Masters, Karen L., additional, Matijevic, Gal, additional, McBride, Aidan, additional, Medan, Ilija, additional, Merloni, Andrea, additional, Morrison, Sean, additional, Myers, Natalie, additional, Mészáros, Szabolcs, additional, Negrete, C. Alenka, additional, Nidever, David L., additional, Nitschelm, Christian, additional, Oravetz, Daniel, additional, Oravetz, Audrey, additional, Pan, Kaike, additional, Peng, Yingjie, additional, Pinsonneault, Marc H., additional, Pogge, Rick, additional, Qiu, Dan, additional, Ramirez, Solange V., additional, Rix, Hans-Walter, additional, Rosso, Daniela Fernández, additional, Runnoe, Jessie, additional, Salvato, Mara, additional, Sanchez, Sebastian F., additional, Santana, Felipe A., additional, Saydjari, Andrew, additional, Sayres, Conor, additional, Schlaufman, Kevin C., additional, Schneider, Donald P., additional, Schwope, Axel, additional, Serna, Javier, additional, Shen, Yue, additional, Sobeck, Jennifer, additional, Song, Ying-Yi, additional, Souto, Diogo, additional, Spoo, Taylor, additional, Stassun, Keivan G., additional, Steinmetz, Matthias, additional, Straumit, Ilya, additional, Stringfellow, Guy, additional, Sánchez-Gallego, José, additional, Taghizadeh-Popp, Manuchehr, additional, Tayar, Jamie, additional, Thakar, Ani, additional, Tissera, Patricia B., additional, Tkachenko, Andrew, additional, Toledo, Hector Hernandez, additional, Trakhtenbrot, Benny, additional, Fernández-Trincado, José G., additional, Troup, Nicholas, additional, Trump, Jonathan R., additional, Tuttle, Sarah, additional, Ulloa, Natalie, additional, Vazquez-Mata, Jose Antonio, additional, Alfaro, Pablo Vera, additional, Villanova, Sandro, additional, Wachter, Stefanie, additional, Weijmans, Anne-Marie, additional, Wheeler, Adam, additional, Wilson, John, additional, Wojno, Leigh, additional, Wolf, Julien, additional, Xue, Xiang-Xiang, additional, Ybarra, Jason E., additional, Zari, Eleonora, additional, and Zasowski, Gail, additional
- Published
- 2023
- Full Text
- View/download PDF
35. Advanced Ultrasonic Inspection of Thick-Section Composite Structures for In-Field Asset Maintenance
- Author
-
Quinn, James A., primary, Davidson, James R., additional, Bajpai, Ankur, additional, Ó Brádaigh, Conchúr M., additional, and McCarthy, Edward D., additional
- Published
- 2023
- Full Text
- View/download PDF
36. On the need of an ultramassive black hole in OJ 287
- Author
-
Valtonen, Mauri J, primary, Zola, Staszek, additional, Gopakumar, A, additional, Lähteenmäki, Anne, additional, Tornikoski, Merja, additional, Dey, Lankeswar, additional, Gupta, Alok C, additional, Pursimo, Tapio, additional, Knudstrup, Emil, additional, Gomez, Jose L, additional, Hudec, Rene, additional, Jelínek, Martin, additional, Štrobl, Jan, additional, Berdyugin, Andrei V, additional, Ciprini, Stefano, additional, Reichart, Daniel E, additional, Kouprianov, Vladimir V, additional, Matsumoto, Katsura, additional, Drozdz, Marek, additional, Mugrauer, Markus, additional, Sadun, Alberto, additional, Zejmo, Michal, additional, Sillanpää, Aimo, additional, Lehto, Harry J, additional, Nilsson, Kari, additional, Imazawa, Ryo, additional, Uemura, Makoto, additional, and Davidson, James W, additional
- Published
- 2023
- Full Text
- View/download PDF
37. The Origins of Religious Stratification in Colonial America
- Author
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Pyle, Ralph E. and Davidson, James D.
- Published
- 2003
38. Modelling and crystallographic studies of organic surface modifiers and metal complexes
- Author
-
Davidson, James E.
- Subjects
547.13 - Abstract
Molecular modelling and crystallographic techniques have been applied to the study of organic molecules used as friction modifiers and metal salt transport reagents. The accuracy of several empirical force fields has been evaluated by calculating low energy conformations of 3-(4-methylbenzoyl) propionic acid and tri acetyl glycerol. These were compared with the crystal structures of related molecules obtained from the Cambridge Structural Database, which contained either the 4-keto-carboxylate moiety or were tri esters of glycerol. Further validation has been carried out by comparing the force field predicted low energy conformations of propionic acid and ethylene glycol with the results of ab initio calculations either obtained from the literature or performed in house. Liquid phase molecular dynamics calculations have been carried out under conditions of constant volume and temperature and of constant temperature and pressure in order to investigate structure – activity relationship in films of physisorbed friction modifiers based on fatty esters of glycerol. We are able to make proposals about how the varying efficacy of mono, di and tri esters of glycerol arises from their structure. The crystal structures of novel complexes of model extractants for salts of base metals have been determined and analysed. These complexes fall into one of four classes: 1) Complexes containing salicylaldoxime ligands; 2) Complexes based on hexadentate tris-salicylaldimine ligands; 3) Complexes based on bipodal hexadentate ligands salicylaldimine ligands; 4) Complexes based on coordination of two tridentate salicylaldimine ligands. For classes 3) and 4) we have investigated the possibility of isomerism using the results of our structure determination and structures obtained from the Cambridge Structural Database. We have also investigated the possibility of a combined molecular dynamics/mechanics approach to asses the efficiency of phase transfer for this type of complex.
- Published
- 2005
39. Ultimate strength of horizontally curved steel I-girders with equal end moments
- Author
-
Lee, Keesei, Davidson, James S., Choi, Junho, and Kang, Youngjong
- Published
- 2017
- Full Text
- View/download PDF
40. The Effect of Group Size on Interfaith Marriage among Catholics
- Author
-
Davidson, James D. and Widman, Tracy
- Published
- 2002
41. Dover, Foucault and Greek Homosexuality: Penetration and the Truth of Sex
- Author
-
Davidson, James
- Published
- 2001
42. The effects of contracting out on the central administration of the United Kingdom
- Author
-
Davidson, James Stuart
- Subjects
658 ,New public management - Published
- 2003
43. American Catholics: One Church, Two Cultures?
- Author
-
Pogorelc, Anthony J. and Davidson, James D.
- Published
- 2000
- Full Text
- View/download PDF
44. The Functional Central Limit Theorem and Weak Convergence to Stochastic Integrals I: Weakly Dependent Processes
- Author
-
de Jong, Robert M. and Davidson, James
- Published
- 2000
45. The Functional Central Limit Theorem and Weak Convergence to Stochastic Integrals II: Fractionally Integrated Processes
- Author
-
Davidson, James and de Jong, Robert M.
- Published
- 2000
46. Consistency of Kernel Estimators of Heteroscedastic and Autocorrelated Covariance Matrices
- Author
-
de Jong, Robert M. and Davidson, James
- Published
- 2000
47. Non-volatile flavour compounds in foods : their analysis and interactions
- Author
-
Davidson, James M.
- Subjects
664 ,Food technology & food microbiology - Published
- 2000
48. Why Churches Cannot Endorse or Oppose Political Candidates
- Author
-
Davidson, James D.
- Published
- 1998
- Full Text
- View/download PDF
49. Load Rating Corrugated Metal Culverts with Shallow Soil Cover
- Author
-
Okafor, Chukwuma C., primary, Rojas, Olga L., additional, Liu, Bujing, additional, Turner, Kelly, additional, Anderson, J. Brian, additional, and Davidson, James S., additional
- Published
- 2023
- Full Text
- View/download PDF
50. Through the Eye of a Needle: Social Ministry in Affluent Churches
- Author
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Davidson, James D., Mock, Alan K., and Johnson, C. Lincoln
- Published
- 1997
- Full Text
- View/download PDF
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