1,183 research outputs found
Charm contribution to bulk viscosity
In the range of temperatures reached in future heavy ion collision
experiments, hadronic pair annihilations and creations of charm quarks may take
place within the lifetime of the plasma. As a result, charm quarks may increase
the bulk viscosity affecting the early stages of hydrodynamic expansion.
Assuming thermalization, we estimate the charm contribution to bulk viscosity
within the same effective kinetic theory framework in which the light parton
contribution has been computed previously. The time scale at which this physics
becomes relevant is related to the width of the transport peak associated with
the trace anomaly correlator, and is found to be 600 MeV.Comment: 7 pages. v2: presentation streamline
Investigation of a parasitic outbreak of Lernaea cyprinacea Linnaeus (Crustacea: Copepoda) in Cyprinid fish from Choghakhor lagoon
The main objectives of this study were to study the parasitic infestation of Lernaea cyprinacea in 4 cyprinids from the Choghakhor Lagoon, Chaharmahal - Bakhtyari Province, west of Iran. A total of 180 cyprinids including Cyprinus carpio (n=101), Carassius auratus (n=47), Capoeta aculeata (n=10) and Alburnus alburnus (n=22) caught, and were studied for Lernaea cyprinacea infestation. Prevalence (C. carpio 61.4, C. auratus 87.2, C. aculeata 70 and A. alburnus 68.2), intensity of infection (C. carpio range 1 to 5, mean 2.1; C. auratus range 1 to 6, mean 1.9; C. aculeata range 1 to 5, mean 2.4; A. alburnus range 1 to 2, mean 1.1), and abundance (C. carpio 1.3, C. auratus 1.6, C. aculeata 1.7 and A. alburnus 0.8) varied with the fish species. A statistically significant difference was found between infestation by L. cyprinacea and fish species (p=0.01), although no statistically significant difference was found between infestation and weight, length and age of the studied fishes (p>0.05). The prevalence was also significantly different (p=0.0) in studying seasons. Population dynamics of L. cyprinacea on fish hosts was studied. The results show that the preferred site of the parasite was body lateral surfaces followed by caudal, dorsal, pectoral and anal fins (P=0.0)
Polymorphism of ompH gene of Pasteurella multocida serotype A strains isolated in Iran
ΔΕΝ ΥΠΑΡΧΕΙ ΠΕΡΙΛΗΨΗOne of the most frequent causes of respiratory infection and death in sheep and goats is Pasteurella multocida. In humans, it has been associated with diseases of the respiratory tracts, arthritis, osteomyelitis and meningitis. Outer membrane protein H (OmpH) has a role in immunogenicity and pathogenicity of P. multocida. The aim of this study was to characterize the genetic diversity of ompH gene of a panel of P. multocida serotype A strains isolated in sheep. Forty P. multocida serotype A strains isolated in previous study were selected and analyzed by restriction fragment length polymorphism (RFLP) of a species-specific PCR assay. RFLP amplified fragment produced five different cleavage patterns. On the basis of combinations resulting from ompH gene digestion, the 40 P. multocida isolates were classified in six RFLP type. It seems that isolates with variants genetic profile represent different pathogenecity. New vaccine formulation should consider multivariants of P. multocida in order to confer a wider protection
Deep Learning Approach to Channel Sensing and Hybrid Precoding for TDD Massive MIMO Systems
This paper proposes a deep learning approach to channel sensing and downlink
hybrid analog and digital beamforming for massive multiple-input
multiple-output systems with a limited number of radio-frequency chains
operating in the time-division duplex mode at millimeter frequency. The
conventional downlink precoding design hinges on the two-step process of first
estimating the high-dimensional channel based on the uplink pilots received
through the channel sensing matrices, then designing the precoding matrices
based on the estimated channel. This two-step process is, however, not
necessarily optimal, especially when the pilot length is short. This paper
shows that by designing the analog sensing and the downlink precoding matrices
directly from the received pilots without the intermediate channel estimation
step, the overall system performance can be significantly improved.
Specifically, we propose a channel sensing and hybrid precoding methodology
that divides the pilot phase into an analog and a digital training phase. A
deep neural network is utilized in the first phase to design the uplink channel
sensing and the downlink analog beamformer. Subsequently, we fix the analog
beamformers and design the digital precoder based on the equivalent
low-dimensional channel. A key feature of the proposed deep learning
architecture is that it decomposes into parallel independent single-user DNNs
so that the overall design is generalizable to systems with an arbitrary number
of users. Numerical comparisons reveal that the proposed methodology requires
significantly less training overhead than the channel recovery based
counterparts, and can approach the performance of systems with full channel
state information with relatively few pilots.Comment: 6 Pages, 4 figures, to appear in IEEE GLOBECOM 2020 Open Workshop on
Machine Learning in Communications (OpenMLC
Ultrasonic Assisted Deep Drilling of Inconel 738LC Superalloy
AbstractSuperalloys have a poor machinability and are often drilled using Electro Discharge Machining (EDM) methods. However EDM is a time-consuming process and has low surface integrity. Ultrasonic Assisted Drilling (UAD) technology is a modern method of drilling such materials. Although this method has very high capabilities, it has not been introduced widely to industry. In this study a special horn is designed and used to apply both rotation and vibration to drill bits. It can transfer power with high efficiency and has the capability to change tools easily. The setup is used to conduct deep drilling tests on Inconel 738LC with depth-to-diameter ratio of 10. The effect of ultrasonic vibration amplitude, spindle speed and number of steps to drill each hole on machining force and surface roughness were investigated. Optimized conditions and results predicted by Taguchi method showed close agreement with the results obtained by experiments
Genetic Engineering Algorithm (GEA): An Efficient Metaheuristic Algorithm for Solving Combinatorial Optimization Problems
Genetic Algorithms (GAs) are known for their efficiency in solving
combinatorial optimization problems, thanks to their ability to explore diverse
solution spaces, handle various representations, exploit parallelism, preserve
good solutions, adapt to changing dynamics, handle combinatorial diversity, and
provide heuristic search. However, limitations such as premature convergence,
lack of problem-specific knowledge, and randomness of crossover and mutation
operators make GAs generally inefficient in finding an optimal solution. To
address these limitations, this paper proposes a new metaheuristic algorithm
called the Genetic Engineering Algorithm (GEA) that draws inspiration from
genetic engineering concepts. GEA redesigns the traditional GA while
incorporating new search methods to isolate, purify, insert, and express new
genes based on existing ones, leading to the emergence of desired traits and
the production of specific chromosomes based on the selected genes. Comparative
evaluations against state-of-the-art algorithms on benchmark instances
demonstrate the superior performance of GEA, showcasing its potential as an
innovative and efficient solution for combinatorial optimization problems.Comment: Accepted in Data Analytics and Management in Data Intensive Domains
(DAMDID/RCDL 2023
Study of effect of arbuscular mycorrhiza (Glomus intraradices) fungus on wheat under nickel stress
ArticleIn many regions of the world soils are contaminated with heavy metals and therefore
restricted in their use. For instance, the absorption of nickel (Ni) in the tissue
of plants increase
the plant’s metabolism and cause physiological disorders or even death. Arbuscular mycorrhizal
fungi are known to enhance the tolerance of host plants to abiotic and biotic stress. Thus, we
investigated the potential of the arbuscular m
ycorrhizal fungi
Glomus intraradices
to mitigate
deleterious effects of Ni in wheat. The experiment was conducted using four levels of Ni (0, 60,
120 and 180
mg
per
kg of soil) and two levels of mycorrhizal fungi application (with and without
Glomus intrar
adices
). Nickel stress significantly decreased seed number per spike, thousand
-
seed
weight, seed yield per plant, concentration of chlorophyll a and b. At the same time, we found
increased catalase (CAT) enzyme activity and dityrosine (DT) treatments.
Mycorrhizal fungi
application attenuated Ni effects, i.e. fungal presence increased seed number per spike, thousand
-
seed weight, chlorophyll a and b. Furthermore mycorrhizal fungi application reduce CAT enzyme
activity and DT. In general, our results sugge
st that mycorrhizal fungi application reduces harmful
effects of Ni stress in wheat
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Bilingualism Is Associated with a Delayed Onset of Dementia but Not with a Lower Risk of Developing it: a Systematic Review with Meta-Analyses.
Some studies have linked bilingualism with a later onset of dementia, Alzheimer's disease (AD), and mild cognitive impairment (MCI). Not all studies have observed such relationships, however. Differences in study outcomes may be due to methodological limitations and the presence of confounding factors within studies such as immigration status and level of education. We conducted the first systematic review with meta-analysis combining cross-sectional studies to explore if bilingualism might delay symptom onset and diagnosis of dementia, AD, and MCI. Primary outcomes included the age of symptom onset, the age at diagnosis of MCI or dementia, and the risk of developing MCI or dementia. A secondary outcome included the degree of disease severity at dementia diagnosis. There was no difference in the age of MCI diagnosis between monolinguals and bilinguals [mean difference: 3.2; 95% confidence intervals (CI): -3.4, 9.7]. Bilinguals vs. monolinguals reported experiencing AD symptoms 4.7 years (95% CI: 3.3, 6.1) later. Bilinguals vs. monolinguals were diagnosed with dementia 3.3 years (95% CI: 1.7, 4.9) later. Here, 95% prediction intervals showed a large dispersion of effect sizes (-1.9 to 8.5). We investigated this dispersion with a subgroup meta-analysis comparing studies that had recruited participants with dementia to studies that had recruited participants with AD on the age of dementia and AD diagnosis between mono- and bilinguals. Results showed that bilinguals vs. monolinguals were 1.9 years (95% CI: -0.9, 4.7) and 4.2 (95% CI: 2.0, 6.4) older than monolinguals at the time of dementia and AD diagnosis, respectively. The mean difference between the two subgroups was not significant. There was no significant risk reduction (odds ratio: 0.89; 95% CI: 0.68-1.16) in developing dementia among bilinguals vs. monolinguals. Also, there was no significant difference (Hedges' g = 0.05; 95% CI: -0.13, 0.24) in disease severity at dementia diagnosis between bilinguals and monolinguals, despite bilinguals being significantly older. The majority of studies had adjusted for level of education suggesting that education might not have played a role in the observed delay in dementia among bilinguals vs. monolinguals. Although findings indicated that bilingualism was on average related to a delayed onset of dementia, the magnitude of this relationship varied across different settings. This variation may be due to unexplained heterogeneity and different sources of bias in the included studies. Registration: PROSPERO CRD42015019100
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