Electricity as a Service: Cost Causation-based Utility Rate Model in the Future Distribution Grid

Author(s):  
Athindra Venkatraman ◽  
Anupam Thatte ◽  
Le Xie
2013 ◽  
pp. 415-438
Author(s):  
Seddik Bacha ◽  
David Frey ◽  
Erwan Lepelleter ◽  
Raphaël Caire

2017 ◽  
Vol 2017 (1) ◽  
pp. 1768-1772
Author(s):  
Chan Park ◽  
Felix Bigler ◽  
Valerijs Knazkins ◽  
Florian Kienzle

2021 ◽  
Vol 70 ◽  
pp. 101212
Author(s):  
Athindra Venkatraman ◽  
Anupam A. Thatte ◽  
Le Xie

Author(s):  
Emma M. Stewart ◽  
Sila Kiliccote

The future distribution grid has complex analysis needs, which may not be met with the existing processes and tools. In addition there is a growing number of measured and grid model data sources becoming available. For these sources to be useful they must be accurate, and interpreted correctly. Data accuracy is a key barrier to the growth of the future distribution grid. A key goal for California, and the United States, is increasing the renewable penetration on the distribution grid. To increase this penetration measured and modeled representations of generation must be accurate and validated, giving distribution planners and operators confidence in their performance. This study will review the current state of these software and modeling barriers and opportunities for the future distribution grid.


Author(s):  
Khalid Aloufi

The world is facing new challenges every day. however, with the pandemic spread over the world, a new challenge is different. The pandemic challenge is taking all the challenges to concentrate and increase in one time. Although different sectors are facing consequences, the most important sectors, health and economy are the most affected. When the pandemic start, it is not known when it will last for different health and economic planning. Therefore, it is very important for decision makers and the public to know the prediction and expectations of the future of these challenges to successfully goes over it. In this work, the current situation is analyzed. Then, an expectation model is developed based on the statistics of the pandemic using a growth rate model based on the exponential and logarithmic increase rate. Based on the available open data about the pandemic spread, the model successfully can predict the future expectations. The model expects the time and the maximum number of cases of the pandemic. The model uses the equilibrium point as the day the of cases decreases. The model can be used for planning and development of strategies to overcome the challenges.


2014 ◽  
Author(s):  
Emma Stewart ◽  
Sila Kiliccote ◽  
Charles McParland
Keyword(s):  

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