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首页> 外文期刊>Quality Control, Transactions >An Ensemble Detection Model Using Multinomial Classification of Stochastic Gas Smart Meter Data to Improve Wellbeing Monitoring in Smart Cities
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An Ensemble Detection Model Using Multinomial Classification of Stochastic Gas Smart Meter Data to Improve Wellbeing Monitoring in Smart Cities

机译:一种使用随机气体智能电表数据多群分类的集合检测模型,提高智能城市的福利监测

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摘要

Fuel poverty has a negative impact on the wellbeing of individuals within a household; affecting not only comfort levels but also increased levels of seasonal mortality. Wellbeing solutions within this sector are moving towards identifying how the needs of people in vulnerable situations can be improved or monitored by means of existing supply networks and public institutions. Therefore, the focus of this research is towards wellbeing monitoring solution, through the analysis of gas smart meter data. Gas smart meters replace the traditional analogue electro-mechanical and diaphragm-based meters that required regular reading. They have received widespread popularity over the last 10 years. This is primarily due to the fact that by using this technology, customers are able to adapt their consumption behaviours based on real-time information provided by In-Home Devices. Yet, the granular nature of the datasets generated has also meant that this technology is ideal for further scalable wellbeing monitoring applications. For example, the autonomous detection of households at risk of energy poverty is possible and of growing importance in order to face up to the impacts of fuel poverty, quality of life and wellbeing of low-income housing. However, despite their popularity (smart meters), the analysis of gas smart meter data has been neglected. In this paper, an ensemble model is proposed to achieve autonomous detection, supported by four key measures from gas usage patterns, consisting of i) a tariff detection, ii) a temporally-aware tariff detection, iii) a routine consumption detection and iv) an age-group detection. Using a cloud-based machine learning platform, the proposed approach yielded promising classification results of up to 84.1 & x0025; Area Under Curve (AUC), when the Synthetic Minority Over-sampling Technique (SMOTE) was utilised.
机译:燃料贫困对家庭内个人的福祉产生负面影响;影响不仅影响舒适程度,还影响了季节性死亡率的程度。本行业内的福利解决方案正在旨在确定弱势情况中人们的需求如何通过现有的供应网络和公共机构来改善或监控。因此,通过对气体智能仪表数据的分析,本研究的重点是朝向福利监测解决方案。气体智能仪表取代了所需的传统模拟机电和隔膜的仪表,需要定期阅读。在过去的10年里,他们得到了广泛的受欢迎程度。这主要是由于通过使用本技术,客户能够根据家用设备提供的实时信息来调整其消耗行为。然而,产生的数据集的粒度也意味着该技术非常适合进一步可扩展的福利监测应用。例如,有能力贫困风险的自主检测是可能的,并且越来越重要,以面对燃料贫困,生活质量和低收入住房的福祉的影响。然而,尽管他们受欢迎(智能电表),但忽略了对气体智能仪表数据的分析。在本文中,提出了一个集合模型来实现自主检测,由气体使用模式的四个关键措施支持,包括i)关税检测,ii)暂时意识到关税检测,iii)常规消费检测和IV)年龄组检测。使用基于云的机器学习平台,所提出的方法产生了有希望的分类结果,高达84.1&x0025;曲线下的区域(AUC),当使用合成少数群体过采样技术(SMOTE)时。

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