9,757 research outputs found
Ecohydrological Modeling in Agroecosystems: Examples and Challenges
Human societies are increasingly altering the water and biogeochemical cycles to both improve ecosystem productivity and reduce risks associated with the unpredictable variability of climatic drivers. These alterations, however, often cause large negative environmental consequences, raising the question as to how societies can ensure a sustainable use of natural resources for the future. Here we discuss how ecohydrological modeling may address these broad questions with special attention to agroecosystems. The challenges related to modeling the twoâway interaction between society and environment are illustrated by means of a dynamical model in which soil and water quality supports the growth of human society but is also degraded by excessive pressure, leading to critical transitions and sustained societal growthâcollapse cycles. We then focus on the coupled dynamics of soil water and solutes (nutrients or contaminants), emphasizing the modeling challenges, presented by the strong nonlinearities in the soil and plant system and the unpredictable hydroclimatic forcing, that need to be overcome to quantitatively analyze problems of soil water sustainability in both natural and agricultural ecosystems. We discuss applications of this framework to problems of irrigation, soil salinization, and fertilization and emphasize how optimal solutions for largeâscale, longâterm planning of soil and water resources in agroecosystems under uncertainty could be provided by methods from stochastic control, informed by physically and mathematically sound descriptions of ecohydrological and biogeochemical interactions
Quantum dynamics of propagating photons with strong interactions: a generalized input-output formalism
There has been rapid development of systems that yield strong interactions
between freely propagating photons in one dimension via controlled coupling to
quantum emitters. This raises interesting possibilities such as quantum
information processing with photons or quantum many-body states of light, but
treating such systems generally remains a difficult task theoretically. Here,
we describe a novel technique in which the dynamics and correlations of a few
photons can be exactly calculated, based upon knowledge of the initial photonic
state and the solution of the reduced effective dynamics of the quantum
emitters alone. We show that this generalized "input-output" formalism allows
for a straightforward numerical implementation regardless of system details,
such as emitter positions, external driving, and level structure. As a specific
example, we apply our technique to show how atomic systems with infinite-range
interactions and under conditions of electromagnetically induced transparency
enable the selective transmission of correlated multi-photon states
Psychedelics and the Human Receptorome
We currently understand the mental effects of psychedelics to be caused by agonism or partial agonism of 5-HT2A (and possibly 5-HT2C) receptors, and we understand that psychedelic drugs, especially phenylalkylamines, are fairly selective for these two receptors. This manuscript is a reference work on the receptor affinity pharmacology of psychedelic drugs. New data is presented on the affinity of twenty-five psychedelic drugs at fifty-one receptors, transporters, and ion channels, assayed by the National Institute of Mental Health â Psychoactive Drug Screening Program (NIMH-PDSP). In addition, comparable data gathered from the literature on ten additional drugs is also presented (mostly assayed by the NIMH-PDSP). A new method is introduced for normalizing affinity (Ki) data that factors out potency so that the multi-receptor affinity profiles of different drugs can be directly compared and contrasted. The method is then used to compare the thirty-five drugs in graphical and tabular form. It is shown that psychedelic drugs, especially phenylalkylamines, are not as selective as generally believed, interacting with forty-two of forty-nine broadly assayed sites. The thirty-five drugs of the study have very diverse patterns of interaction with different classes of receptors, emphasizing eighteen different receptors. This diversity of receptor interaction may underlie the qualitative diversity of these drugs. It should be possible to use this diverse set of drugs as probes into the roles played by the various receptor systems in the human mind
A Multi-Fidelity Deep Neural Network Approach to Structural Health Monitoring
The structural health monitoring (SHM) of civil structures and infrastructures is becoming
a crucial issue in our smart and hyper-connected age. Due to structural aging and to unexpected
loading conditions, partially linked to extreme events caused by the climate change, reliable and
real-time SHM schemes are currently facing a burst in development and applications. In this work,
we propose a procedure that relies upon a surrogate modeling scheme based on a multi-fidelity (MF)
deep neural network (DNN), which has been conceived to sense and identify a structural damage
under operational (and possibly environmental) variability. By exploiting the sensor recordings from
a densely deployed network within a fully stochastic framework, the MF-DNN model is adopted
to feed a Markov chain Monte Carlo (MCMC) sampling procedure and update the probability
distribution of the structural state, conditioned on noisy observations. As information regarding the
health of real structures is usually rather limited, the datasets to train the MF-DNN are generated with
physical (e.g., finite element) models: high-fidelity (HF) and low-fidelity (LF) models are adopted
to simulate the structural response under the mentioned varying conditions, respectively, in the
presence or absence of a structural damage. As far as the architecture of the DNN is concerned, the
MF approach is obtained by merging a fully connected LF-DNN and a long short-term memory
HF-DNN. The LF-DNN mimics the output of the sensor network in the undamaged condition, while
the HF-DNN is exploited to improve the LF model and appropriately catch the structural response in
the presence of a pre-defined set of damaged patterns. Thanks to the adaptive enrichment of the LF
signals carried out by the MF-DNN, the proposed model updating strategy is reported capable of
locating (and possibly quantifying) a damage event
Plasmonic gold helices for the visible range fabricated by oxygen plasma purification of electron beam induced deposits
Electron beam induced deposition (EBID) currently provides the only direct writing technique for truly three-dimensional nanostructures with geometrical features below 50 nm. Unfortunately, the depositions from metal-organic precursors suffer from a substantial carbon content. This hinders many applications, especially in plasmonics where the metallic nature of the geometric surfaces is mandatory. To overcome this problem a post-deposition treatment with oxygen plasma at room temperature was investigated for the purification of gold containing EBID structures. Upon plasma treatment, the structures experience a shrinkage in diameter of about 18 nm but entirely keep their initial shape. The proposed purification step results in a core-shell structure with the core consisting of mainly unaffected EBID material and a gold shell of about 20 nm in thickness. These purified structures are plasmonically active in the visible wavelength range as shown by dark field optical microscopy on helical nanostructures. Most notably, electromagnetic modeling of the corresponding scattering spectra verified that the thickness and quality of the resulting gold shell ensures an optical response equal to that of pure gold nanostructures
An ecohydrological model of malaria outbreaks
Abstract. Malaria is a geographically widespread infectious disease that is well known to be affected by climate variability at both seasonal and interannual timescales. In an effort to identify climatic factors that impact malaria dynamics, there has been considerable research focused on the development of appropriate disease models for malaria transmission driven by climatic time series. These analyses have focused largely on variation in temperature and rainfall as direct climatic drivers of malaria dynamics. Here, we further these efforts by considering additionally the role that soil water content may play in driving malaria incidence. Specifically, we hypothesize that hydro-climatic variability should be an important factor in controlling the availability of mosquito habitats, thereby governing mosquito growth rates. To test this hypothesis, we reduce a nonlinear ecohydrological model to a simple linear model through a series of consecutive assumptions and apply this model to malaria incidence data from three South African provinces. Despite the assumptions made in the reduction of the model, we show that soil water content can account for a significant portion of malaria's case variability beyond its seasonal patterns, whereas neither temperature nor rainfall alone can do so. Future work should therefore consider soil water content as a simple and computable variable for incorporation into climate-driven disease models of malaria and other vector-borne infectious diseases
Primordial Black Holes as Near Infrared Background sources
The near infrared background (NIRB) is the collective light from unresolved
sources observed in the band 1-10 m. The measured NIRB angular power
spectrum on angular scales arcmin exceeds by roughly two
order of magnitudes predictions from known galaxy populations. The nature of
the sources producing these fluctuations is still unknown. Here we test
primordial black holes (PBHs) as sources of the NIRB excess. Considering PBHs
as a cold dark matter (DM) component, we model the emission of gas accreting
onto PBHs in a cosmological framework. We account for both accretion in the
intergalactic medium (IGM) and in DM haloes. We self consistently derive the
IGM temperature evolution, considering ionization and heating due to X-ray
emission from PBHs. Besides CDM, we consider a model that accounts for
the modification of the linear matter power spectrum due to the presence of
PBHs; we also explore two PBH mass distributions, i.e. a -function and
a lognormal distribution. For each model, we compute the mean intensity and the
angular power spectrum of the NIRB produced by PBHs with mass
1-. In the limiting case in which the entirety of DM
is made of PBHs, the PBH emission contributes per cent to the observed
NIRB fluctuations. This value decreases to per cent if current
constraints on the abundance of PBHs are taken into account. We conclude that
PBHs are ruled out as substantial contributors to the NIRB.Comment: Accepted for publication in MNRA
Casimir force on a piston
We consider a massless scalar field obeying Dirichlet boundary conditions on
the walls of a two-dimensional L x b rectangular box, divided by a movable
partition (piston) into two compartments of dimensions a x b and (L-a) x b. We
compute the Casimir force on the piston in the limit L -> infinity. Regardless
of the value of a/b, the piston is attracted to the nearest end of the box.
Asymptotic expressions for the Casimir force on the piston are derived for a <<
b and a >> b.Comment: 10 pages, 1 figure. Final version, accepted for publication in Phys.
Rev.
Vibration control by means of piezoelectric actuators shunted with LR impedances: Performance and robustness analysis
This paper deals with passive monomodal vibration control by shunting piezoelectric actuators to electric impedances constituting the series of a resistance and an inductance. Although this kind of vibration attenuation strategy has long been employed, there are still unsolved problems; particularly, this kind of control does suffer from issues relative to robustness because the features of the electric impedance cannot be adapted to changes of the system. This work investigates different algorithms that can be employed to optimise the values of the electric components of the shunt impedance. Some of these algorithms derive from the theory of the tuned mass dampers. First a performance analysis is provided, comparing the attenuation achievable with these algorithms. Then, an analysis and comparison of the same algorithms in terms of robustness are carried out. The approach adopted herein allows identifying the algorithm capable of providing the highest degree of robustness and explains the solutions that can be employed to resolve some of the issues concerning the practical implementation of this control technique. The analytical and numerical results presented in the paper have been validated experimentally by means of a proper test setup
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