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Extension of a High-Resolution Intelligence Implementation via Design-to-Robotic-Production and -Operation strategies

机译:通过设计与机器人生产和繁殖策略扩展高分辨率智能实现

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This paper extends the development of a responsive built-environment capable of expressing intelligence with respect to both ICTs and Adaptive Architecture. The present implementation is built with mutually informing Design-to-Robotic-Production & -Operation (D2RP&O) strategies and methods developed at Delft University of Technology (TUD). With respect to D2RP, a responsive stage built with deliberately differentiated and function-specific components is revisited and modified. With respect to D2RO, a partially meshed, self-healing, and highly heterogeneous Wireless Sensor and Actuator Network (WSAN) is expanded to integrate proprietary-yet-free cloud-based services. This WSAN is equipped with Machine Learning (ML) mechanisms based on Support Vector Machine (SVM) classifiers for Human Activity Recognition (HAR). The frequency and/or absence of certain activities, in conjunction with processed data streamed from environment-embedded sensing mechanisms, trigger actuations in the built-environment in order to mitigate fatigue, encourage activity / interactivity; and to promote general well-being in the user. A voice-enabled mechanism based on Amazon's Alexa Voice Service (AVS) is integrated into the ecosystem to connect the built-environment with services and resources in the World Wide Web (WWW). Furthermore, a notifications mechanism based on Google's Gmail API as well as Twilio's REST API enable instances of fatigue to be reported to third-parties. The present interdisciplinary development attempts to promote an alternative approach to existing Ambient Intelligence (AmI) and Ambient Assisted Living (AAL) frameworks.
机译:本文扩展了能够表达智能的响应式环境的开发,以表达ICT和自适应架构。本实施采用相互通知的设计 - 机器人 - 生产&-operation(D2RP&O)在代尔夫特理工大学(TUD)开发的策略和方法。关于D2RP,重新讨论并修改了用故意差异化和功能特定组件构建的响应阶段。关于D2RO,扩展了部分网格,自愈合和高度异构的无线传感器和致动器网络(WSAN)以集成基于专有的基于云的服务。该WSAN配备了基于支持向量机(SVM)分类器的机器学习(ML)机制,用于人类活动识别(HAR)。某些活动的频率和/或不存在,结合从环境嵌入式传感机制流式流,触发内置环境中的触发致动,以减轻疲劳,鼓励活动/交互;并在用户中促进一般福祉。基于Amazon的Alexa语音服务(AVS)的启用语音机制被集成到生态系统中,以将内置环境连接到万维网(WWW)中的服务和资源。此外,基于Google Gmail API以及Twilio的REST API的通知机制使得疲劳实例能够向第三方报告。目前的跨学科发展试图促进现有环境智力(AMI)和环境辅助生活(AAL)框架的替代方法。

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