Automakers manage vast fleets of connected vehicles and face an ever-increasing demand for their sensor readings. This demand originates from many stakeholders, each potentially requiring different sensors from different vehicles. Currently, this demand remains largely unfulfilled due to a lack of systems that can handle such diverse demands efficiently. Vehicles are usually passive participants in data acquisition, each continuously reading and transmitting the same static set of sensors. However, in a multi-tenant setup with diverse data demands, each vehicle potentially needs to provide different data instead. We present a system that performs such vehicle-specific minimization of data acquisition by mapping individual data demands to individual vehicles. We collect personal data only after prior consent and fulfill the requirements of the GDPR. Non-personal data can be collected by directly addressing individual vehicles. The system consists of a software component natively integrated with a major automaker's vehicle platform and a cloud platform brokering access to acquired data. Sensor readings are either provided via near real-time streaming or as recorded trip files that provide specific consistency guarantees. A performance evaluation with over 200,000 simulated vehicles has shown that our system can increase server capacity on-demand and process streaming data within 269 ms on average during peak load. The resulting architecture can be used by other automakers or operators of large sensor networks. Native vehicle integration is not mandatory; the architecture can also be used with retrofitted hardware such as OBD readers.
Download full-text PDF |
Source |
---|---|
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8588423 | PMC |
http://dx.doi.org/10.3390/s21217190 | DOI Listing |
Objective: To enable fast and stable neonatal brain MR imaging by integrating learned neonate-specific subspace model and model-driven deep learning.
Methods: Fast data acquisition is critical for neonatal brain MRI, and deep learning has emerged as an effective tool to accelerate existing fast MRI methods by leveraging prior image information. However, deep learning often requires large amounts of training data to ensure stable image reconstruction, which is not currently available for neonatal MRI applications.
Pharmacoeconomics
March 2025
GSK, Wavre, Belgium.
Background And Objective: Invasive meningococcal disease (IMD) is an uncommon but serious disease associated with a risk of death and severe long-term sequelae, impacting both patients and their caregivers. Productivity losses due to IMD have not previously been comprehensively evaluated in the USA. This study evaluated both market and non-market productivity losses to better estimate the economic burden of IMD in the USA.
View Article and Find Full Text PDFInfect Immun
March 2025
Department of Microbial Pathogenesis, Yale University School of Medicine, New Haven, Connecticut, USA.
is a gram-negative, obligate intracellular pathogen that causes human Q fever. Within host cells, proliferates in a spacious, acidic, lysosome-derived -containing vacuole (CCV) by a process that requires the Dot/Icm type IVB secretion system to deliver effectors that manipulate host cell functions. A previous transposon mutagenesis screen identified the gene as being important for intracellular replication of .
View Article and Find Full Text PDFIn vivo therapeutic coaching of parent-child interactions is the primary mechanism of change in behavioral parent training programs such as parent-child interaction therapy (PCIT), yet relatively little research has examined the coaching process. The primary aim of this study was to explore the bidirectional interaction between therapist-parent dyads to better understand how therapists influence parent behavior and vice versa. Observational data from two research projects were analyzed separately and together using lag sequential analysis (LSA).
View Article and Find Full Text PDFAdv Biol (Weinh)
March 2025
Medizinisches Proteom-Center, Medical Faculty, Ruhr-University Bochum, 44801, Bochum, Germany.
Aging is a progressive and irreversible process, serving as the primary risk factor for neurodegenerative disorders. This study aims to identify the molecular mechanisms underlying physiological aging within the substantia nigra, which is primarily affected by Parkinson's disease, and to draw potential conclusions on the earliest events leading to neurodegeneration in this specific brain region. The characterization of essential stages in aging progress can enhance knowledge of the mechanisms that promote the development of Parkinson's disease.
View Article and Find Full Text PDFEnter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!