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Contextualising Water Use in Residential Settings: A Survey of Non-Intrusive Techniques and Approaches

机译:住宅环境中的用水情境化:非侵入性技术和方法的调查

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摘要

Water monitoring in households is important to ensure the sustainability of fresh water reserves on our planet. It provides stakeholders with the statistics required to formulate optimal strategies in residential water management. However, this should not be prohibitive and appliance-level water monitoring cannot practically be achieved by deploying sensors on every faucet or water-consuming device of interest due to the higher hardware costs and complexity, not to mention the risk of accidental leakages that can derive from the extra plumbing needed. Machine learning and data mining techniques are promising techniques to analyse monitored data to obtain non-intrusive water usage disaggregation. This is because they can discern water usage from the aggregated data acquired from a single point of observation. This paper provides an overview of water usage disaggregation systems and related techniques adopted for water event classification. The state-of-the art of algorithms and testbeds used for fixture recognition are reviewed and a discussion on the prominent challenges and future research are also included.
机译:家庭用水监测对于确保地球上淡水储备的可持续性至关重要。它为利益相关者提供制定住宅用水管理最佳策略所需的统计数据。但是,这不应该是禁止的,并且由于较高的硬件成本和复杂性,实际上不能通过在每个感兴趣的水龙头或耗水设备上部署传感器来实际实现设备级水监控,更不用说可能导致意外泄漏的风险从所需的额外管道。机器学习和数据挖掘技术是有前途的技术,可以分析监控数据以获得非侵入式用水量分解。这是因为他们可以从单个观测点获得的汇总数据中识别出用水量。本文概述了用于水事件分类的用水分类系统和相关技术。回顾了用于夹具识别的算法和测试平台的最新技术,还讨论了主要挑战和未来研究。

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