Adaptive and Natural Computing AlgorithmsAdvanced Data Acquisition and Intelligent Data ProcessingSafety and Reliability – Safe Societies in a Changing WorldUnsupervised Training Methods for Non-intrusive Appliance Load Monitoring from Smart Meter DataNon-intrusive Load MonitoringSmart Homes and Their UsersArtificial Intelligence Techniques for a Scalable Energy TransitionEcosystemic Evolution Feeded by Smart SystemsPotentiale und Grenzen von Smart MeteringComputational Science and Its Applications – ICCSA 2020Predicting the FutureSmart Device RecognitionSensor Technology for Smart HomesLow-complexity Low-rate Residential Non-intrusive Appliance Load MonitoringProceedings of the 9th International Conference on Computer Engineering and NetworksEncyclopedia of Information Science and Technology, Third EditionHidden Markov Model Based Non-intrusive Load Monitoring Using Active and Reactive Power ConsumptionAdvances in Energy, Environment and Materials ScienceEnergy Disaggregation in Non-Intrusive Appliance Load Monitoring Using Hidden Markov ModelsArtificial Intelligence for Smart and Sustainable Energy Systems and ApplicationsAnalysis and Techniques for Non-intrusive Appliance Load MonitoringTrends in Cyber-Physical MultiAgent Systems. The PAAMS Collection 15th International Conference, PAAMS 2017Energie-Monitoring im privaten HaushaltAppliance Event Detection for Non-Intrusive Load Monitoring in Complex EnvironmentsDecomposition Techniques for Non-intrusive Home Appliance Load MonitoringEnergy Efficiency Improvements in Smart Grid ComponentsBroadband Communications, Networks, and SystemsMicrogridsAdvanced Technologies, Systems, and Applications VIComputational Intelligence and Optimization Methods for Control EngineeringFuture Information TechnologyNon-intrusive Appliance Load Monitoring System Based on a Modern KWh-meterCloud Computing and SecurityAnalysis of Energy Disaggregation Techniques in Non-intrusive Appliance Load MonitoringIntelligent Systems and ApplicationsRecent Trends in Engineering and Technology (NCRTET-2017)Machine Learning Approaches to Non-Intrusive Load MonitoringInternational Conference on Information Technology and Communication SystemsAdvances in Cyber Security: Principles, Techniques, and ApplicationsSustainable Energy Systems Planning, Integration and Management
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