215 research outputs found
Job Selection in a Network of Autonomous UAVs for Delivery of Goods
This article analyzes two classes of job selection policies that control how
a network of autonomous aerial vehicles delivers goods from depots to
customers. Customer requests (jobs) occur according to a spatio-temporal
stochastic process not known by the system. If job selection uses a policy in
which the first job (FJ) is served first, the system may collapse to
instability by removing just one vehicle. Policies that serve the nearest job
(NJ) first show such threshold behavior only in some settings and can be
implemented in a distributed manner. The timing of job selection has
significant impact on delivery time and stability for NJ while it has no impact
for FJ. Based on these findings we introduce a methodological approach for
decision-making support to set up and operate such a system, taking into
account the trade-off between monetary cost and service quality. In particular,
we compute a lower bound for the infrastructure expenditure required to achieve
a certain expected delivery time. The approach includes three time horizons:
long-term decisions on the number of depots to deploy in the service area,
mid-term decisions on the number of vehicles to use, and short-term decisions
on the policy to operate the vehicles
Sandstone intrusions along different types of faults and their effect on fluid flow in siliciclastic reservoirs
We are very grateful to companies sponsoring Phase 3 of the Sand InjectionResearch Group (SIRG). We acknowledge the continuing help provided by the Bureau of Land Management (BLM) in California.Peer reviewedPostprin
Linguistic sleuthing for innovators
For centuries âinnovationâ has been a topic of book authors and academic researchers as documented by Ngram and Google Scholar search results. In contrast, âinnovatorsâ have had substantially less attention in both the popular domain and the academic domain. The purpose of this paper is to introduce a text analysis research methodology to linguistically identify âinnovatorsâ and ânon-innovatorsâ using Hebert F. Crovitzâs 42 relational words. Specifically, we demonstrate how to combine the use of two complementary text analysis software programs: Linguistic Inquiry and Word Count and WORDij to simply count the percent of use of these relational words and determine the statistical difference in use between âinnovatorsâ and ânon-innovators.â We call this the âCrovitz Innovator Identification Methodâ in honor of Herbert F. Crovitz, who envisioned the possibility of using a small group of 42 words to signal âinnovationâ language. The Crovitz Innovator Identification Method is inexpensive, fast, scalable, and ready to be applied by others using this example as their guide. Nevertheless, this method does not confirm the viability of any innovation being created, used or implemented; it simply detects how a personâs language signals innovative thinking. We invite other scholars to join us in this linguistic sleuthing for innovators
Forecasting consumer confidence through semantic network analysis of online news
This research studies the impact of online news on social and economic
consumer perceptions through semantic network analysis. Using over 1.8 million
online articles on Italian media covering four years, we calculate the semantic
importance of specific economic-related keywords to see if words appearing in
the articles could anticipate consumers' judgments about the economic situation
and the Consumer Confidence Index. We use an innovative approach to analyze big
textual data, combining methods and tools of text mining and social network
analysis. Results show a strong predictive power for the judgments about the
current households and national situation. Our indicator offers a complementary
approach to estimating consumer confidence, lessening the limitations of
traditional survey-based methods
Petrofacies of Eocene sand injectites of the Tumey Giant Injection Complex, California (USA)
The authors gratefully acknowledge support from Shell Brazil and CNPq through the âBG05: UoA-UFRGS-SWB Sedimentary Systemsâ project at UFRGS and UoA and the strategic importance of the support given by ANP through the R&D levy regulation. We thank all the support from the Sand Injection Research Group (SIRG). We also wish to thank the support of the Bureau of Land Management (CA - USA) providing legal access to the study area.Peer reviewedPostprin
Predominant Golgi-residency of the plant K/HDEL receptor is essential for its function in mediating ER retention
Accumulation of soluble proteins in the endoplasmic reticulum (ER) of plants is mediated by a receptor termed ER RETENTION DEFECTIVE 2 (ERD2) or K/HDEL receptor. Using two gain-of-function assays and by complementing loss of function in Nicotiana benthamiana we discovered that compromising the lumenal N-terminus or the cytosolic C-terminus with fluorescent fusions abolishes its biological function and profoundly affects its subcellular localization. Based on the confirmed asymmetrical topology of ERD2 we engineered a new fluorescent ERD2 fusion protein that retains biological activity. Using this fusion, we show that ERD2 is exclusively detected at the Golgi apparatus, unlike non-functional C-terminal fusions which also label the ER. Moreover, ERD2 is confined to early Golgi compartments and does not show ligand-induced redistribution to the ER. We show that the cytosolic C-terminus of ERD2 plays a crucial role in its function. Two conserved Leucine residues that do not correspond to any known targeting motifs for ER-Golgi trafficking were shown to be essential for both ERD2 Golgi residency and its ability to mediate ER retention of soluble ligands. The results suggest that anterograde ER to Golgi transport of ERD2 is either extremely fast, well in excess of the bulk flow rate, or that ERD2 does not recycle in the way originally proposed
Boosting advice and knowledge sharing among healthcare professionals
Purpose: This study investigates the dynamics of knowledge sharing in
healthcare, exploring some of the factors that are more likely to influence the
evolution of idea sharing and advice seeking in healthcare.
Design/methodology/approach: We engaged 50 pediatricians representing many
subspecialties at a mid-size US children's hospital using a social network
survey to map and measure advice seeking and idea sharing networks. Through the
application of Stochastic Actor-Oriented Models, we compared the structure of
the two networks prior to a leadership program and eight weeks post conclusion.
Findings: Our models indicate that healthcare professionals carefully and
intentionally choose with whom they share ideas and from whom to seek advice.
The process is fluid, non-hierarchical and open to changing partners.
Significant transitivity effects indicate that the processes of knowledge
sharing can be supported by mediation and brokerage. Originality: Hospital
administrators can use this method to assess knowledge-sharing dynamics, design
and evaluate professional development initiatives, and promote new
organizational structures that break down communication silos. Our work
contributes to the literature on knowledge sharing in healthcare by adopting a
social network approach, going beyond the dyadic level, and assessing the
indirect influence of peers' relationships on individual networks
A leaf area index data set acquired in Sahelian rangelands of Gourma in Mali over the 2005â2017 period
The leaf area index of Sahelian rangelands and related variables
such as the vegetation cover fraction, the fraction of absorbed
photosynthetically active radiation and the clumping index were measured
between 2005 and 2017 in the Gourma region of northern Mali. These
variables, known as climate essential variables, were derived from the
acquisition and the processing of hemispherical photographs taken along 1 km
linear sampling transects for five contrasted canopies and one millet field.
The same sampling protocol was applied in a seasonally inundated Acacia open
forest, along a 0.5 km transect, by taking photographs of the understorey and
the tree canopy. These observations collected over more than a decade, in a
remote and not very accessible region, provide a relevant and unique data
set that can be used for a better understanding of the Sahelian vegetation
response to the current rainfall changes. The collected data can also be
used for satellite product evaluation and land surface model development and
validation. This paper aims to present the field work that was carried out
during 13 successive rainy seasons, the measured vegetation variables, and
the associated open database. Finally, a few examples of data use are
shown. DOI of the referenced data set: https://doi.org/10.17178/AMMA-CATCH.CE.Veg_Gh.</p
- âŠ