9,862 research outputs found
CBR and MBR techniques: review for an application in the emergencies domain
The purpose of this document is to provide an in-depth analysis of current reasoning engine practice and the integration strategies of Case Based Reasoning and Model Based Reasoning that will be used in the design and development of the RIMSAT system.
RIMSAT (Remote Intelligent Management Support and Training) is a European Commission funded project designed to:
a.. Provide an innovative, 'intelligent', knowledge based solution aimed at improving the quality of critical decisions
b.. Enhance the competencies and responsiveness of individuals and organisations involved in highly complex, safety critical incidents - irrespective of their location.
In other words, RIMSAT aims to design and implement a decision support system that using Case Base Reasoning as well as Model Base Reasoning technology is applied in the management of emergency situations.
This document is part of a deliverable for RIMSAT project, and although it has been done in close contact with the requirements of the project, it provides an overview wide enough for providing a state of the art in integration strategies between CBR and MBR technologies.Postprint (published version
Providing Reader Assistance Based on Reader Interaction
Generally, the present disclosure is directed to assisting users of an electronic document. In particular, in some implementations, the systems and methods of the present disclosure can include or otherwise leverage one or more machine-learned models to provide assistance for one or more content items in an electronic document to a user of the electronic document based on the user’s interaction with the electronic document
Active aging in place supported by caregiver-centered modular low-cost platform
Aging in place happens when people age in the residence of their choice, usually their homes because
is their preference for living as long as possible. This research work is focused on the
conceptualization and implementation of a platform to support active aging in place with a particular
focus on the caregivers and their requirements to accomplish their tasks with comfort and supervision.
An engagement dimension is also a plus provided by the platform since it supports modules to make
people react to challenges, stimulating them to be naturally more active. The platform is supported
by IoT, using low-cost technology to increment the platform modularly. Is a modular platform capable
of responding to specific needs of seniors aging in place and their caregivers, obtaining data regarding
the person under supervision, as well as providing conditions for constant and more effective
monitoring, through modules and tools that support decision making and tasks realization for active
living. The constant monitoring allows knowing the routine of daily activities of the senior. The use
of machine learning techniques allows the platform to identify, in real-time, situations of potential
risk, allowing to trigger triage processes with the older adult, and consequently trigger the necessary
actions so that the caregiver can intervene in useful time.O envelhecimento no local acontece quando as pessoas envelhecem na residência da sua escolha,
geralmente nas suas próprias casas porque é a sua preferência para viver o máximo de tempo possível.
Este trabalho de investigação foca-se na conceptualização e implementação de uma plataforma de
apoio ao envelhecimento ativo no local, com particular enfoque nos cuidadores e nas suas
necessidades para cumprir as suas tarefas com conforto e supervisão. Uma dimensão de engajamento
também é um diferencial da plataforma, pois esta integra módulos de desafios para fazer as pessoas
reagirem aos mesmos, estimulando-as a serem naturalmente mais ativas. A plataforma é suportada
por IoT, utilizando tecnologia de baixo custo para incrementar a plataforma de forma modular. É uma
plataforma modular capaz de responder às necessidades específicas do envelhecimento dos idosos no
local e dos seus cuidadores, obtendo dados relativos à pessoa sob supervisão, bem como fornecendo
condições para um acompanhamento constante e mais eficaz, através de módulos e ferramentas que
apoiam a tomada de decisões e realização de tarefas para a vida ativa. A monitorização constante
permite conhecer a rotina das atividades diárias do idoso, permitindo que, com a utilização de técnicas
de machine learning, a plataforma seja capaz de detetar em tempo real situações de risco potencial,
permitindo desencadear um processo de triagem junto do idoso, e consequentemente despoletar as
ações necessárias para que o prestador de cuidados possa intervir em tempo útil
A Framework and Classification for Fault Detection Approaches in Wireless Sensor Networks with an Energy Efficiency Perspective
Wireless Sensor Networks (WSNs) are more and more considered a key enabling technology for the realisation of the Internet of Things (IoT) vision. With the long term goal of designing fault-tolerant IoT systems, this paper proposes a fault detection framework for WSNs with the perspective of energy efficiency to facilitate the design of fault detection methods and the evaluation of their energy efficiency. Following the same design principle of the fault detection framework, the paper proposes a classification for fault detection approaches. The classification is applied to a number of fault detection approaches for the comparison of several characteristics, namely, energy efficiency, correlation model, evaluation method, and detection accuracy. The design guidelines given in this paper aim at providing an insight into better design of energy-efficient detection approaches in resource-constraint WSNs
A brief network analysis of Artificial Intelligence publication
In this paper, we present an illustration to the history of Artificial
Intelligence(AI) with a statistical analysis of publish since 1940. We
collected and mined through the IEEE publish data base to analysis the
geological and chronological variance of the activeness of research in AI. The
connections between different institutes are showed. The result shows that the
leading community of AI research are mainly in the USA, China, the Europe and
Japan. The key institutes, authors and the research hotspots are revealed. It
is found that the research institutes in the fields like Data Mining, Computer
Vision, Pattern Recognition and some other fields of Machine Learning are quite
consistent, implying a strong interaction between the community of each field.
It is also showed that the research of Electronic Engineering and Industrial or
Commercial applications are very active in California. Japan is also publishing
a lot of papers in robotics. Due to the limitation of data source, the result
might be overly influenced by the number of published articles, which is to our
best improved by applying network keynode analysis on the research community
instead of merely count the number of publish.Comment: 18 pages, 7 figure
INRISCO: INcident monitoRing in Smart COmmunities
Major advances in information and communication technologies (ICTs) make citizens to be considered as sensors in motion. Carrying their mobile devices, moving in their connected vehicles or actively participating in social networks, citizens provide a wealth of information that, after properly processing, can support numerous applications for the benefit of the community. In the context of smart communities, the INRISCO [1] proposal intends for (i) the early detection of abnormal situations in cities (i.e., incidents), (ii) the analysis of whether, according to their impact, those incidents are really adverse for the community; and (iii) the automatic actuation by dissemination of appropriate information to citizens and authorities. Thus, INRISCO will identify and report on incidents in traffic (jam, accident) or public infrastructure (e.g., works, street cut), the occurrence of specific events that affect other citizens' life (e.g., demonstrations, concerts), or environmental problems (e.g., pollution, bad weather). It is of particular interest to this proposal the identification of incidents with a social and economic impact, which affects the quality of life of citizens.This work was supported in part by the Spanish Government through the projects INRISCO under Grant TEC2014-54335-C4-1-R, Grant TEC2014-54335-C4-2-R, Grant TEC2014-54335-C4-3-R, and Grant TEC2014-54335-C4-4-R, in part by the MAGOS under Grant TEC2017-84197-C4-1-R, Grant TEC2017-84197-C4-2-R, and Grant TEC2017-84197-C4-3-R, in part by the European Regional Development Fund (ERDF), and in part by the Galician Regional Government under agreement for funding the Atlantic Research Center for Information and Communication Technologies (AtlantTIC)
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