2018
DOI: 10.1016/j.jclepro.2018.03.163
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Appliance electrical consumption modelling at scale using smart meter data

Abstract: The food industry is one of the world's largest contributors to carbon emissions, due to energy consumption throughout the food life cycle. This paper is focused on the residential consumption phase of the food life cycle assessment (LCA), i.e., energy consumption during home cooking. Specifically, while much effort has been placed on improving appliance energy efficiency, appliance models used in various applications, including the food LCA, are not updated regularly. This

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Cited by 12 publications
(10 citation statements)
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References 33 publications
(60 reference statements)
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“…The ability to obtain appliance-level load measurements from smart meter aggregate data, using purely computational software methods with improved accuracy (see [14,31,32,11,10] for recent surveys of methods) has also ignited broader applications beyond energy feedback such as device scheduling, recommendation engine, demand response capacity estimation, itemized bills [33,6], appliance mining [4], consumer studies [5], etc. (see [7,8,9] for surveys of NILM applications), that either relied on submetered appliance-level power traces or appliance models, which do not represent actual usage patterns.…”
Section: Nilmmentioning
confidence: 99%
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“…The ability to obtain appliance-level load measurements from smart meter aggregate data, using purely computational software methods with improved accuracy (see [14,31,32,11,10] for recent surveys of methods) has also ignited broader applications beyond energy feedback such as device scheduling, recommendation engine, demand response capacity estimation, itemized bills [33,6], appliance mining [4], consumer studies [5], etc. (see [7,8,9] for surveys of NILM applications), that either relied on submetered appliance-level power traces or appliance models, which do not represent actual usage patterns.…”
Section: Nilmmentioning
confidence: 99%
“…• Disaggregation techniques: We use publicly available implementations, NILMTK 5 (for CO and FHMM), LBM 6 , and SSHMM 7 to get disaggregation results. Table 5 shows the division of training and testing data used in the techniques.…”
Section: Experimental Settingsmentioning
confidence: 99%
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“…The initial interest of the scientific community to formulate and describe mathematically the NILM problem using machine learning tools—which is the main topic of interest in the review papers that are currently available—has now shifted into a more practical approach towards NILM. Currently, we are in the mature NILM period where there is an attempt for NILM to be applied in real-life application scenarios [ 3 , 4 , 5 , 6 , 7 , 8 , 9 , 10 , 11 , 12 , 13 , 14 , 15 ]. Thus, the complexity of the algorithms, transferability, reliability, practicality, and, in general, trustworthiness are the main issues of interest.…”
Section: Introductionmentioning
confidence: 99%
“…NILM has the potential to provide low-cost, efficient and fine-grained energy feedback that can potentially reduce domestic electricity consumption by 0.7%-4.5% compared to only aggregate consumption feedback [8]. However, the applications of NILM go beyond supporting energy-efficient behaviour [9,10], as NILM has already been shown to support national surveys on energy intensity of domestic activities [11], scalable appliance modelling [12], accurate estimation of the residential consumption phase of food life-cycle assessments [13], house maintenance and retrofit [14], and detection of anomalous appliances [15].…”
Section: Introductionmentioning
confidence: 99%