89 research outputs found
Unsupervised Continual Learning From Synthetic Data Generated with Agent-Based Modeling and Simulation: A preliminary experimentation
Continual Learning enables to learn a variable number of tasks sequentially without forgetting knowledge obtained from the past. Catastrophic forgetting usually occurs in neural networks for their inability to learn different tasks in sequence since the performance on the previous tasks drops down in a significant way. One way to solve this problem is providing a subset of the previous examples to the model while learning a new task. In this paper we evaluate the continual learning performance of an unsupervised model for anomaly detection by generating synthetic data using an Agent-based modeling and simulation technique. We simulated the movement of different types of individuals in a building and evaluate their trajectories depending on their role. We collected training and test sets based on their trajectories. We included, in the test set, negative examples that contain wrong trajectories. We applied a replay-based continual learning to teach the model how to distinguish anomaly trajectories depending on the users’ roles. The results show that using ABMS synthetic data it is enough a small percentage of synthetic data replay to mitigate the Catastrophic Forgetting and to achieve a satisfactory accuracy on the final binary classification (anomalous / non-anomalous)
High-Performance Computing and ABMS for High-Resolution COVID-19 Spreading Simulation
This paper presents an approach for the modeling and the simulation of the spreading of
COVID-19 based on agent-based modeling and simulation (ABMS). Our goal is not only to support
large-scale simulations but also to increase the simulation resolution. Moreover, we do not assume an
underlying network of contacts, and the person-to-person contacts responsible for the spreading are
modeled as a function of the geographical distance among the individuals. In particular, we defined
a commuting mechanism combining radiation-based and gravity-based models and we exploited
the commuting properties at different resolution levels (municipalities and provinces). Finally, we
exploited the high-performance computing (HPC) facilities to simulate millions of concurrent agents,
each mapping the individual’s behavior. To do such simulations, we developed a spreading simulator
and validated it through the simulation of the spreading in two of the most populated Italian
regions: Lombardy and Emilia-Romagna. Our main achievement consists of the effective modeling of
10 million of concurrent agents, each one mapping an individual behavior with a high-resolution in
terms of social contacts, mobility and contribution to the virus spreading. Moreover, we analyzed the
forecasting ability of our framework to predict the number of infections being initialized with only a
few days of real data. We validated our model with the statistical data coming from the serological
analysis conducted in Lombardy, and our model makes a smaller error than other state of the art
models with a final root mean squared error equal to 56,009 simulating the entire first pandemic
wave in spring 2020. On the other hand, for the Emilia-Romagna region, we simulated the second
pandemic wave during autumn 2020, and we reached a final RMSE equal to 10,730.11
Fine-Grained Agent-Based Modeling to Predict Covid-19 Spreading and Effect of Policies in Large-Scale Scenarios
Modeling and forecasting the spread of
COVID-19 remains an open problem for several reasons.
One of these concerns the difficulty to model a complex
system at a high resolution (fine-grained) level at which the
spread can be simulated by taking into account individual
features such as the social structure, the effects of the
governments’ policies, age sensitivity to Covid-19, maskwearing habits and geographical distribution of susceptible
people. Agent-based modeling usually needs to find an optimal trade-off between the resolution of the simulation and
the population size. Indeed, modeling single individuals
usually leads to simulations of smaller populations or the
use of meta-populations. In this article, we propose a solution to efficiently model the Covid-19 spread in Lombardy,
the most populated Italian region with about ten million
people. In particular, the model described in this paper is,
to the best of our knowledge, the first attempt in literature to model a large population at the single-individual
level. To achieve this goal, we propose a framework that
implements: i. a scale-free model of the social contacts
combining a sociability rate, demographic information, and
geographical assumptions; ii. a multi-agent system relying
on the actor model and the High-Performance Computing
technology to efficiently implement ten million concurrent
agents. We simulated the epidemic scenario from January
to April 2020 and from August to December 2020, modeling
the government’s lockdown policies and people’s maskwearing habits. The social modeling approach we propose
could be rapidly adapted for modeling future epidemics at
their early stage in scenarios where little prior knowledge
is available
Efficacy of a new technique - INtubate-RECruit-SURfactant-Extubate - "IN-REC-SUR-E" - in preterm neonates with respiratory distress syndrome: Study protocol for a randomized controlled trial
Background: Although beneficial in clinical practice, the INtubate-SURfactant-Extubate (IN-SUR-E) method is not successful in all preterm neonates with respiratory distress syndrome, with a reported failure rate ranging from 19 to 69 %. One of the possible mechanisms responsible for the unsuccessful IN-SUR-E method, requiring subsequent re-intubation and mechanical ventilation, is the inability of the preterm lung to achieve and maintain an "optimal" functional residual capacity. The importance of lung recruitment before surfactant administration has been demonstrated in animal studies showing that recruitment leads to a more homogeneous surfactant distribution within the lungs. Therefore, the aim of this study is to compare the application of a recruitment maneuver using the high-frequency oscillatory ventilation (HFOV) modality just before the surfactant administration followed by rapid extubation (INtubate-RECruit-SURfactant-Extubate: IN-REC-SUR-E) with IN-SUR-E alone in spontaneously breathing preterm infants requiring nasal continuous positive airway pressure (nCPAP) as initial respiratory support and reaching pre-defined CPAP failure criteria. Methods/design: In this study, 206 spontaneously breathing infants born at 24+0-27+6 weeks' gestation and failing nCPAP during the first 24 h of life, will be randomized to receive an HFOV recruitment maneuver (IN-REC-SUR-E) or no recruitment maneuver (IN-SUR-E) just prior to surfactant administration followed by prompt extubation. The primary outcome is the need for mechanical ventilation within the first 3 days of life. Infants in both groups will be considered to have reached the primary outcome when they are not extubated within 30 min after surfactant administration or when they meet the nCPAP failure criteria after extubation. Discussion: From all available data no definitive evidence exists about a positive effect of recruitment before surfactant instillation, but a rationale exists for testing the following hypothesis: a lung recruitment maneuver performed with a step-by-step Continuous Distending Pressure increase during High-Frequency Oscillatory Ventilation (and not with a sustained inflation) could have a positive effects in terms of improved surfactant distribution and consequent its major efficacy in preterm newborns with respiratory distress syndrome. This represents our challenge. Trial registration: ClinicalTrials.gov identifier: NCT02482766. Registered on 1 June 2015
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