Time-series data is increasingly collected in many domains. One example is the smart electricity infrastructure, which generates huge volumes of such data from sources such as smart electricity meters. Although today this data is used for visualization and billing in mostly 15-min resolution, its original temporal resolution frequently is more fine-grained, e.g., seconds. This is useful for various analytical applications such as short-term forecasting, disaggregation and visualization. However, transmitting and storing huge amounts of such fine-grained data is prohibitively expensive in terms of storage space in many cases. In this article, we present a compression technique based on piecewise regression and two methods which describe the ...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
The extent of time related data across many fields has led to substantial interest in the analysis o...
If building performance simulations are to fully bene-fit from increasing quantities of sensor data,...
Abstract Time-series data is increasingly collected in many domains. One example is the smart electr...
The smart power grid of the future will utilize waveform level monitoring with sampling rates in the...
The exchange of data between energy stakeholders will play an important role in future smart energy ...
In recent years, the electric grid has experienced increasing deployment, use, and integration of sm...
Smart objects are increasingly widespread and their ecosystem, also known as the Internet of Things,...
Abstract—To reduce peak demand, many utility companies are transitioning from fixed rate pricing pla...
The last two decades have seen tremendous growth in data collections because of the realization of r...
This paper proposes a novel method that can reduce the volume of time series data adaptively and pro...
Non-Intrusive Load Monitoring (NILM) for residential applications aims to dis-aggregate the total el...
This Master’s thesis evaluates the performance of lightweight compression algorithm aimed for IoT se...
The main objective of this paper is to develop an efficient data compression model for online power ...
Today, time series of numerical data are ubiquitous, for instance in the Internet of Things. In such...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
The extent of time related data across many fields has led to substantial interest in the analysis o...
If building performance simulations are to fully bene-fit from increasing quantities of sensor data,...
Abstract Time-series data is increasingly collected in many domains. One example is the smart electr...
The smart power grid of the future will utilize waveform level monitoring with sampling rates in the...
The exchange of data between energy stakeholders will play an important role in future smart energy ...
In recent years, the electric grid has experienced increasing deployment, use, and integration of sm...
Smart objects are increasingly widespread and their ecosystem, also known as the Internet of Things,...
Abstract—To reduce peak demand, many utility companies are transitioning from fixed rate pricing pla...
The last two decades have seen tremendous growth in data collections because of the realization of r...
This paper proposes a novel method that can reduce the volume of time series data adaptively and pro...
Non-Intrusive Load Monitoring (NILM) for residential applications aims to dis-aggregate the total el...
This Master’s thesis evaluates the performance of lightweight compression algorithm aimed for IoT se...
The main objective of this paper is to develop an efficient data compression model for online power ...
Today, time series of numerical data are ubiquitous, for instance in the Internet of Things. In such...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
The extent of time related data across many fields has led to substantial interest in the analysis o...
If building performance simulations are to fully bene-fit from increasing quantities of sensor data,...