In conjunction with the 4th Industrial Revolution, many industries are implementing systems to collect data on energy consumption to be able to make informed decision on scheduling processes and manufacturing in factories. Companies can now use this historical data to forecast the expected energy consumption for cost management. This research proposes the use of a Temporal Convolutional Neural Network (TCN) with dilated causal convolutional layers to perform forecasting instead of conventional Long-Short Term Memory (LSTM) or Recurrent Neural Networks (RNN) as TCN exhibit lower memory and computational requirements. This approach is also chosen due to traditional regressive methods such as Autoregressive Integrated Moving Average (ARIMA) fa...
Climate change is one of the most significant challenges of the 21st century. As one of the counterm...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Electric energy costs reduction is a critical aspect for industrial enterprise management. Short-ter...
Society’s concerns with electricity consumption have motivated researchers to improve on the way tha...
Energy production and supply are important challenges for civilisation. Renewable energy sources pre...
Thesis Artifacts for: Forecasting Power Consumption of Manufacturing Industries Using Neural Network...
The ongoing climate change and increasingly strict climate goals of the European Union demand decisi...
The global environmental concerns raise the need to decrease energy, namely electricity consumption....
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
There has been a significant increase in the attention paid to resource management in smart grids, a...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
In the current trend of consumption, electricity consumption will become a very high cost for the en...
In the digitalization of industry and the industry 4.0 environment, it is important to master the ac...
This paper presents an artificial neural network (ANN) approach to electric energy consumption (EEC)...
Energy forecasting for both consumption and production is a challenging task as it involves many var...
Climate change is one of the most significant challenges of the 21st century. As one of the counterm...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Electric energy costs reduction is a critical aspect for industrial enterprise management. Short-ter...
Society’s concerns with electricity consumption have motivated researchers to improve on the way tha...
Energy production and supply are important challenges for civilisation. Renewable energy sources pre...
Thesis Artifacts for: Forecasting Power Consumption of Manufacturing Industries Using Neural Network...
The ongoing climate change and increasingly strict climate goals of the European Union demand decisi...
The global environmental concerns raise the need to decrease energy, namely electricity consumption....
Industrial and building sectors demand efficient smart energy strategies, techniques of optimization...
There has been a significant increase in the attention paid to resource management in smart grids, a...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
In the current trend of consumption, electricity consumption will become a very high cost for the en...
In the digitalization of industry and the industry 4.0 environment, it is important to master the ac...
This paper presents an artificial neural network (ANN) approach to electric energy consumption (EEC)...
Energy forecasting for both consumption and production is a challenging task as it involves many var...
Climate change is one of the most significant challenges of the 21st century. As one of the counterm...
With the ongoing integration of renewable energies into the electrical power grid, industrial energy...
Electric energy costs reduction is a critical aspect for industrial enterprise management. Short-ter...