Applications in sustainability domains such as in energy, transportation, and natural resource and environment monitoring, increasingly use sensors for collecting data and sending it back to centrally located processing nodes. While data can usually be collected by the sensors at a very high speed, in many cases, it can not be sent back to central nodes at a frequency that is required for fast and real-time modeling and decision-making. This may be due to physical limitations of the transmission networks, or due to consumers limiting frequent transmission of data from sensors located at their premises for security and privacy concerns. We propose a novel solution to the problem of making short term predictions in absence of real-time data f...
Prediction of sensor readings in event-based Internet-of-Things (IoT) applications is considered. A ...
Digitalization and decentralization of energy supply have introduced several challenges to emerging ...
Forecasting and anomaly detection for energy time series is emerging as an important application are...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grid...
Modern Internet of Things (IoT) environments are monitored via a large number of IoT enabled sensing...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grids...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
An effective way to mitigate climate change is to electrify most of our energy demand and supply the...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
In this paper, three main approaches (univariate, multivariate and multistep) for electricity consum...
© 2018 Pasan Manura KarunaratneCities are getting bigger, better and smarter. The increased connecti...
Nowadays, energy is absolutely necessary all over the world. Taking into account the advantages that...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
Prediction of sensor readings in event-based Internet-of-Things (IoT) applications is considered. A ...
Digitalization and decentralization of energy supply have introduced several challenges to emerging ...
Forecasting and anomaly detection for energy time series is emerging as an important application are...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grid...
Modern Internet of Things (IoT) environments are monitored via a large number of IoT enabled sensing...
In the new global and local scenario, the advent of intelligent distribution networks or Smart Grids...
© Cambridge University Press 2011.Sensor networks have recently generated a great deal of research i...
In this paper, we investigate a critical problem in smart meter data mining: computing electricity c...
An effective way to mitigate climate change is to electrify most of our energy demand and supply the...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
This article belongs to the Special Issue Forecasting in Electricity Markets with Big Data and Artif...
In this paper, three main approaches (univariate, multivariate and multistep) for electricity consum...
© 2018 Pasan Manura KarunaratneCities are getting bigger, better and smarter. The increased connecti...
Nowadays, energy is absolutely necessary all over the world. Taking into account the advantages that...
Short-term load forecasting ensures the efficient operation of power systems besides affording conti...
Prediction of sensor readings in event-based Internet-of-Things (IoT) applications is considered. A ...
Digitalization and decentralization of energy supply have introduced several challenges to emerging ...
Forecasting and anomaly detection for energy time series is emerging as an important application are...