We propose a new class of lossy compression based on locally exchangeable measure that captures the distribution of repeating data blocks while preserving unique patterns. The technique has been demonstrated to reduce data volume by more than 100-fold on power grid monitoring data where a large number of data blocks can be characterized as following stationary probability distributions. To capture data with more diverse patterns, we propose two techniques to transform non-stationary time series into locally stationary blocks. We also propose a strategy to work with values in bounded ranges such as phase angles of alternating current. These new ideas are incorporated into a software package named IDEALEM. In experiments, IDEALEM reduces non-...
Non-Intrusive Load Monitoring (NILM) for residential applications aims to dis-aggregate the total el...
With the advent of the digital age, data storage continues to grow rapidly, especially with the deve...
Today, time series of numerical data are ubiquitous, for instance in the Internet of Things. In such...
We propose a new class of lossy compression based on locally exchangeable measure that captures the ...
We propose a new class of lossy compression based on locally exchangeable measure that captures the ...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
Bulk of the streaming data from scientific simulations and experiments consists of numerical values,...
Sensors typically record their measurements using more precision than the accuracy of the sensing te...
The smart power grid of the future will utilize waveform level monitoring with sampling rates in the...
Sensors typically record their measurements using more precision than the accuracy of the sensing te...
The two-way communication of information between agents in the smart grid, while making way for bett...
The exchange of data between energy stakeholders will play an important role in future smart energy ...
The quality of AC power is often affected by unpredictable situations like lightning storms and shor...
Abstract Time-series data is increasingly collected in many domains. One example is the smart electr...
Non-Intrusive Load Monitoring (NILM) for residential applications aims to dis-aggregate the total el...
With the advent of the digital age, data storage continues to grow rapidly, especially with the deve...
Today, time series of numerical data are ubiquitous, for instance in the Internet of Things. In such...
We propose a new class of lossy compression based on locally exchangeable measure that captures the ...
We propose a new class of lossy compression based on locally exchangeable measure that captures the ...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
Applications such as scientific simulations and power grid monitoring are generating so much data qu...
Bulk of the streaming data from scientific simulations and experiments consists of numerical values,...
Sensors typically record their measurements using more precision than the accuracy of the sensing te...
The smart power grid of the future will utilize waveform level monitoring with sampling rates in the...
Sensors typically record their measurements using more precision than the accuracy of the sensing te...
The two-way communication of information between agents in the smart grid, while making way for bett...
The exchange of data between energy stakeholders will play an important role in future smart energy ...
The quality of AC power is often affected by unpredictable situations like lightning storms and shor...
Abstract Time-series data is increasingly collected in many domains. One example is the smart electr...
Non-Intrusive Load Monitoring (NILM) for residential applications aims to dis-aggregate the total el...
With the advent of the digital age, data storage continues to grow rapidly, especially with the deve...
Today, time series of numerical data are ubiquitous, for instance in the Internet of Things. In such...