The inclusion of intermittent and renewable energy sources has increased the importance of demand forecasting in power systems. Smart meters can play a critical role in demand forecasting due to the measurement granularity they provide. Despite their virtue, smart meters used for forecasting face some constraints as consumers' privacy concerns, reluctance of utilities and vendors to share data with competitors or third parties, and regulatory constraints. This paper examines a collaborative machine learning method, federated learning extended with privacy preserving techniques for short-term demand forecasting using smart meter data as a solution to the previous constraints. The combination of privacy preserving techniques and federated lea...
This article develops a differential privacy (DP) model for short-term probabilistic energy forecast...
Load forecasting is vital for a reliable and sustainable smart grid as it is used to predict the dem...
Non-intrusive load monitoring (NILM), which usually utilizes machine learning methods and is effecti...
Load forecasting is an essential task performed within the energy industry to help balance supply wi...
With high levels of intermittent power generation and dynamic demand patterns, accurate forecasts fo...
Energy demand forecasting is an essential task performed within the energy industry to help balance ...
In this proposal paper we highlight the need for privacy preserving energy demand forecasting to all...
With the employment of smart meters, massive data on consumer behaviour can be collected by retailer...
There has been a large number of contributions on privacy-preserving smart metering with Differentia...
This paper proposes a framework to investigate the value of sharing privacy-protected smart meter da...
Data collected by sensors in the advanced metering infrastructure (AMI) can be used for a multitude ...
Traditional data-driven energy consumption forecasting models, including machine learning and deep l...
With the employment of smart meters, massive data on consumer behaviour can be collected by retailer...
This article develops a differential privacy (DP) model for short-term probabilistic energy forecast...
Load forecasting is vital for a reliable and sustainable smart grid as it is used to predict the dem...
Non-intrusive load monitoring (NILM), which usually utilizes machine learning methods and is effecti...
Load forecasting is an essential task performed within the energy industry to help balance supply wi...
With high levels of intermittent power generation and dynamic demand patterns, accurate forecasts fo...
Energy demand forecasting is an essential task performed within the energy industry to help balance ...
In this proposal paper we highlight the need for privacy preserving energy demand forecasting to all...
With the employment of smart meters, massive data on consumer behaviour can be collected by retailer...
There has been a large number of contributions on privacy-preserving smart metering with Differentia...
This paper proposes a framework to investigate the value of sharing privacy-protected smart meter da...
Data collected by sensors in the advanced metering infrastructure (AMI) can be used for a multitude ...
Traditional data-driven energy consumption forecasting models, including machine learning and deep l...
With the employment of smart meters, massive data on consumer behaviour can be collected by retailer...
This article develops a differential privacy (DP) model for short-term probabilistic energy forecast...
Load forecasting is vital for a reliable and sustainable smart grid as it is used to predict the dem...
Non-intrusive load monitoring (NILM), which usually utilizes machine learning methods and is effecti...