phy

Domestic medicine : or, the family physician. A treatise on the prevention and cure of diseases, by regimen and simple medicines: With an appendix, containing a dispensatory for the use of private practitioners / by William Buchan.

Dunbar : printed by and for G. Miller, 1817.




phy

Drei anatomisch - physiologische Abhandlungen uber das Auge / von Adolph Hannover.

[Germany] : [publisher not identified], 1845.




phy

Du diabète phosphatique : recherches sur l'élimination des phosphates par les urines, conditions physiologiques modifiant l'élimination des phosphates, influence du régime alimentaire, variations pathologiques / par L.-J. Teiss

Paris : J.-B. Baillière, 1877.




phy

Du mercure : action physiologique et thérapeutique / par H. Hallopeau.

Paris : J.-B. Baillière, 1878.




phy

Du procédé opératoire a suivre dans l'exploration des organes par la percussion médiate : et collection de mémoires sur la physiologie, la pathologie et le diagnostic / par P.A. Piorry.

Paris ; Londres : Baillière ... : Legoubey, libraire ... ; J.B. Baillière ..., 1831.




phy

Du suc gastrique chez l'homme et les animaux : ses propriétés chimiques et physiologiques / par Ch. Richet.

Paris : Germer Bailliere, 1878.




phy

Duties and qualifications of physicians, an introductory lecture / by John Ware.

Oxford : J.H. Parker, 1849.




phy

Élémens d'hygiène, ou de l'Influence des choses physiques et morales sur l'homme, et des moyens de conserver la santé / par Étienne Tourtelle.

Paris : Rémont, 1815.




phy

The ear : its anatomy, physiology, and diseases : a practical treatise for the use of medical students and practitioners / by Charles H. Burnett.

London : J. & A. Churchill, 1877.




phy

The earth in relation to the preservation and destruction of contagia : being the Milroy lectures delivered at the Royal College of Physicians in 1899, with other papers on sanitation / by George Vivian Poore.

London : Longmans, Green, 1902.




phy

The Edinburgh medical and physical dictionary : containing an explanation of the terms of art in anatomy, physiology, pathology ... as employed in the present improved state of medical science ... : to which is added, a copious glossary of obsolete terms

Edinburgh : Bell & Bradfute, 1807.




phy

Effets physiologiques et applications thérapeutiques de l'air comprimé / par J.A. Fontaine.

Paris : Germer-Bailliere, 1877.




phy

Ein neuer Sphygmograph und neue Beobachtungen an den Pulscurven der Radialarterie / von Julius Sommerbrodt.

Breslau : A. Gosohorsky, 1876.




phy

Einleitung in die vergleichende gehirnphysiologie und Vergleichende psychologie : mit besonderer berücksichtigung der wirbellosen thiere / von Jacques Loeb.

Leipzig : J.A. Barth, 1899.




phy

Electrical-psychology, or, The electrical philosophy of mental impressions, including a new philosophy of sleep and of consciousness / from the works of J.B. Dods and J.S. Grimes ; revised and edited by H.G. Darling.

London : John J. Griffin, 1851.




phy

Electro-physiology / by W. Biedermann ; translated by Frances A. Welby.

London : Macmillan, 1896-98.




phy

Elektrophysiologie. Abt. 1 / von W. Biedermann.

Jena : G. Fischer, 1895.




phy

Elémens de physiologie végétale et de botanique / par C. F. Brisseau-Mirbel.

Paris : chez Magimel, 1815.




phy

An elementary compendium of physiology, for the use of students / by F. Magendie ; translated from the French with copious notes and illustrations, by E. Milligan.

Edinburgh : printed for J. Carfrae, 1823.




phy

An elementary description of the anatomy and physiology of the brain, viscera of the thorax, abdomen, &c. ... / by W. Simpson.

London, 1826.




phy

Elementary treatise on natural philosophy / by A. Privat Deschanel ; translated and edited, with extensive additions, by J.D. Everett.

London : Blackie, 1870-1872.




phy

Elementary treatise on physics, experimental and applied : for the use of colleges and schools / translated and edited from Ganot's Éléments de physique (with the author's sanction) by E. Atkinson.

London : Longmans, Green, 1868.




phy

Elements of human physiology / by Ernest H. Starling.

London : J. & A. Churchill, 1895.




phy

Elements of human physiology / by Henry Power.

London : Cassell, 1884.




phy

Elements of human physiology / by L. Hermann ; translated from the sixth edition by Arthur Gamgee.

London : Smith, Elder, 1878.




phy

Elements of natural philosophy : part 1 / by W. Thomson and P. G. Tait.

Oxford : Clarendon Press, 1873.




phy

Elements of physical manipulation / by Edward C. Pickering.

London : Macmillan, 1874-1876.




phy

Elements of physiology, for the use of students, and with particular reference to the wants of practitioners / by Rudolph Wagner ; translated from the German, with additions, by Robert Willis.

London : Sherwood, Gilbert, & Piper, 1844.




phy

Elements of the theory and practice of physic : designed for the use of students / by George Gregory.

London : printed for Burgess and Hill, 1825.




phy

Emil du Bois-Reymond's Vorlesungen über die Physik des organischen Stoffwechsels / herausgegeben von R. du Bois-Reymond.

Berlin : Hirschwald, 1900.




phy

Emphyseme pulmonaire / par le Dr Despréaux.

Paris : Rueff, 1896.




phy

Employers and employed : being (1) an exposition of the law of reparation for physical injury; (2) the Employers' Liability Act, 1880, annotated ... and (3) suggested amendment of the law as to the liability of employers. With appendices and indices /

Glasgow : J. Maclehose, 1887.




phy

The English physician enlarged with three hundred and sixty-nine medicines, made of English herbs, ... / by Nich. Culpepper.

London : printed for P. M'Queen, J. Laikington [sic], J. Mathews; Wilson and Spence, York; J. Binns, Leeds; Jo. Clarke and Co. Manchester [and 1 in Gainsborough, 1 in Leith], M.DCC.LXXXVIII [1788]




phy

Entoptics, with its uses in physiology and medicine / by James Jago.

London : J. Churchill, 1864.




phy

Essai de pneumatologie médicale : recherches physiologiques, cliniques et thérapeutiques sur les gaz / par J.-N. Demarquay.

Londres : Paris, 1866.




phy

Essai sur la puberté chez la femme : psychologie, physiologie, pathologie / par Marthe Francillon.

Paris : F. Alcan, 1906.




phy

Essai sur l'application de la chimie a l'étude physiologique du sang de l'homme : et a l'étude physiologico-pathologique, hygiénique et thérapeutique des maladies de cette humeur / par P.S. Denis.

Paris : Béchet jeune, 1838.




phy

Biman Mullick and Roy Castle at the Royal College of Physicians, London 5 January 1993.

[London?], [1993?]




phy

Survey of drug information needs and problems associated with communications directed to practicing physicians : part III : remedial ad survey / [Arthur Ruskin, M.D.]

Springfield, Virginia : National Technical Information Service, 1974.




phy

Victor J. Daley bibliography, 1885




phy

Oregon's Sabrina Ionescu takes home Naismith Trophy Player of the Year honor

Sabrina Ionescu is the Naismith Trophy Player of the Year, concluding her illustrious Oregon career with one of the major postseason women's basketball awards. As the only player in college basketball history with 2,000 career points (2,562), 1,000 assists (1,091) and 1,000 rebounds (1,040) and the NCAA all-time leader with 26 triple-doubles, Ionescu has continued to rack up player of the year honors for her remarkable senior season.




phy

Risk-Aware Energy Scheduling for Edge Computing with Microgrid: A Multi-Agent Deep Reinforcement Learning Approach. (arXiv:2003.02157v2 [physics.soc-ph] UPDATED)

In recent years, multi-access edge computing (MEC) is a key enabler for handling the massive expansion of Internet of Things (IoT) applications and services. However, energy consumption of a MEC network depends on volatile tasks that induces risk for energy demand estimations. As an energy supplier, a microgrid can facilitate seamless energy supply. However, the risk associated with energy supply is also increased due to unpredictable energy generation from renewable and non-renewable sources. Especially, the risk of energy shortfall is involved with uncertainties in both energy consumption and generation. In this paper, we study a risk-aware energy scheduling problem for a microgrid-powered MEC network. First, we formulate an optimization problem considering the conditional value-at-risk (CVaR) measurement for both energy consumption and generation, where the objective is to minimize the loss of energy shortfall of the MEC networks and we show this problem is an NP-hard problem. Second, we analyze our formulated problem using a multi-agent stochastic game that ensures the joint policy Nash equilibrium, and show the convergence of the proposed model. Third, we derive the solution by applying a multi-agent deep reinforcement learning (MADRL)-based asynchronous advantage actor-critic (A3C) algorithm with shared neural networks. This method mitigates the curse of dimensionality of the state space and chooses the best policy among the agents for the proposed problem. Finally, the experimental results establish a significant performance gain by considering CVaR for high accuracy energy scheduling of the proposed model than both the single and random agent models.




phy

On the impact of selected modern deep-learning techniques to the performance and celerity of classification models in an experimental high-energy physics use case. (arXiv:2002.01427v3 [physics.data-an] UPDATED)

Beginning from a basic neural-network architecture, we test the potential benefits offered by a range of advanced techniques for machine learning, in particular deep learning, in the context of a typical classification problem encountered in the domain of high-energy physics, using a well-studied dataset: the 2014 Higgs ML Kaggle dataset. The advantages are evaluated in terms of both performance metrics and the time required to train and apply the resulting models. Techniques examined include domain-specific data-augmentation, learning rate and momentum scheduling, (advanced) ensembling in both model-space and weight-space, and alternative architectures and connection methods.

Following the investigation, we arrive at a model which achieves equal performance to the winning solution of the original Kaggle challenge, whilst being significantly quicker to train and apply, and being suitable for use with both GPU and CPU hardware setups. These reductions in timing and hardware requirements potentially allow the use of more powerful algorithms in HEP analyses, where models must be retrained frequently, sometimes at short notice, by small groups of researchers with limited hardware resources. Additionally, a new wrapper library for PyTorch called LUMINis presented, which incorporates all of the techniques studied.




phy

Physics-informed neural network for ultrasound nondestructive quantification of surface breaking cracks. (arXiv:2005.03596v1 [cs.LG])

We introduce an optimized physics-informed neural network (PINN) trained to solve the problem of identifying and characterizing a surface breaking crack in a metal plate. PINNs are neural networks that can combine data and physics in the learning process by adding the residuals of a system of Partial Differential Equations to the loss function. Our PINN is supervised with realistic ultrasonic surface acoustic wave data acquired at a frequency of 5 MHz. The ultrasonic surface wave data is represented as a surface deformation on the top surface of a metal plate, measured by using the method of laser vibrometry. The PINN is physically informed by the acoustic wave equation and its convergence is sped up using adaptive activation functions. The adaptive activation function uses a scalable hyperparameter in the activation function, which is optimized to achieve best performance of the network as it changes dynamically the topology of the loss function involved in the optimization process. The usage of adaptive activation function significantly improves the convergence, notably observed in the current study. We use PINNs to estimate the speed of sound of the metal plate, which we do with an error of 1\%, and then, by allowing the speed of sound to be space dependent, we identify and characterize the crack as the positions where the speed of sound has decreased. Our study also shows the effect of sub-sampling of the data on the sensitivity of sound speed estimates. More broadly, the resulting model shows a promising deep neural network model for ill-posed inverse problems.




phy

A stochastic user-operator assignment game for microtransit service evaluation: A case study of Kussbus in Luxembourg. (arXiv:2005.03465v1 [physics.soc-ph])

This paper proposes a stochastic variant of the stable matching model from Rasulkhani and Chow [1] which allows microtransit operators to evaluate their operation policy and resource allocations. The proposed model takes into account the stochastic nature of users' travel utility perception, resulting in a probabilistic stable operation cost allocation outcome to design ticket price and ridership forecasting. We applied the model for the operation policy evaluation of a microtransit service in Luxembourg and its border area. The methodology for the model parameters estimation and calibration is developed. The results provide useful insights for the operator and the government to improve the ridership of the service.




phy

Deep learning of physical laws from scarce data. (arXiv:2005.03448v1 [cs.LG])

Harnessing data to discover the underlying governing laws or equations that describe the behavior of complex physical systems can significantly advance our modeling, simulation and understanding of such systems in various science and engineering disciplines. Recent advances in sparse identification show encouraging success in distilling closed-form governing equations from data for a wide range of nonlinear dynamical systems. However, the fundamental bottleneck of this approach lies in the robustness and scalability with respect to data scarcity and noise. This work introduces a novel physics-informed deep learning framework to discover governing partial differential equations (PDEs) from scarce and noisy data for nonlinear spatiotemporal systems. In particular, this approach seamlessly integrates the strengths of deep neural networks for rich representation learning, automatic differentiation and sparse regression to approximate the solution of system variables, compute essential derivatives, as well as identify the key derivative terms and parameters that form the structure and explicit expression of the PDEs. The efficacy and robustness of this method are demonstrated on discovering a variety of PDE systems with different levels of data scarcity and noise. The resulting computational framework shows the potential for closed-form model discovery in practical applications where large and accurate datasets are intractable to capture.




phy

Entries now open for the 2020 National Biography Award

Tuesday 10 December 2019

Entries are now open for the 2020 National Biography Award – Australia's richest prize for biography and memoir writing.




phy

Arabo-Persian physiological theories in late Imperial China

The last seminar in the 2017–18 History of Pre-Modern Medicine seminar series takes place on Tuesday 27 February. Speaker: Dr Dror Weil (Max Planck Institute for the History of Science, Berlin) Bodies translated: the circulation of Arabo-Persian physiological theories in late… Continue reading




phy

Plant-fire interactions : applying ecophysiology to wildfire management

Resco de Dios, Víctor, author
9783030411923 (electronic book)




phy

Phytoremediation potential of perennial grasses

Pandey, Vimal Chandra, author
9780128177334 (electronic bk.)