A system for energy conservation through personalized learning mechanism

A. R. Devidas, Sweatha Rachel George, M. Ramesh
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引用次数: 8

Abstract

Several challenges exist in developing smart buildings such as the development of context aware algorithms and real-time control systems, the integration of numerous sensors to detect various parameters, integration changes in the existing electrical infrastructure, and high cost of deployment. Another major challenge is to optimize the energy usage in smart buildings without compromising the comfort level of individuals. However, the success of this task requires in depth knowledge of the individual and group behaviour inside the smart building. To solve the aforementioned challenges, we have designed and developed a Smart Personalised System for Energy Management (SPSE), a low cost context aware system integrated with personalized and collaborative learning capabilities to understand the real-time behaviour of individuals in a building for optimizing the energy usage in the building. The context aware system constitutes a wearable device and a wireless switchboard that can continuously monitor several functions such as the real-time monitoring and localization of the presence of the individual, real-time monitoring and detection of the usage of switch board and equipment, and their time of usage by each individual. Using the continuous data collected from the context aware system, personalized and group algorithms can be developed for optimizing the energy usage with minimum sensors. In this work, the context aware system was tested extensively for module performance and for complete integrated device performance. The study found the proposed system provides the opportunity to collect data necessary for developing a personalized system for smart buildings with minimum sensors.
一种通过个性化学习实现节能的系统机制
在开发智能建筑中存在一些挑战,例如上下文感知算法和实时控制系统的开发,众多传感器的集成以检测各种参数,现有电力基础设施的集成变化以及部署成本高。另一个主要挑战是在不影响个人舒适度的情况下优化智能建筑的能源使用。然而,这项任务的成功需要深入了解智能建筑内的个人和群体行为。为了解决上述挑战,我们设计并开发了一个智能个性化能源管理系统(SPSE),这是一个低成本的环境感知系统,具有个性化和协作学习功能,可以了解建筑物中个人的实时行为,以优化建筑物的能源使用。上下文感知系统由一个可穿戴设备和一个无线交换机组成,可以持续监控多个功能,例如实时监控和定位个人的存在,实时监控和检测交换机和设备的使用情况,以及每个人的使用时间。利用从环境感知系统收集的连续数据,可以开发个性化和分组算法,以最少的传感器优化能源使用。在这项工作中,上下文感知系统对模块性能和完整集成设备性能进行了广泛的测试。研究发现,该系统为开发具有最少传感器的智能建筑个性化系统提供了收集必要数据的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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