Citation: Hana Altrabalsi, Vladimir Stankovic, Jing Liao, Lina Stankovic. Low-complexity energy disaggregation using appliance load modelling[J]. AIMS Energy, 2016, 4(1): 1-21. doi: 10.3934/energy.2016.1.1
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