Abstract
Behind the meter battery storage is becoming increasing popular in all sectors, though enthusiasm has recently lagged in the industrial sector. Even though there may be many factors contributing to this including lack of innovation, prohibitive costs, and undesirable rate structures, a difficulty arises in accounting for uncertainty of electrical load in industrial facilities while still attempting to utilize battery storage as much as possible all while trying to achieve fiscal profitability. This study utilizes Gaussian process regression and Bayesian decision theory to organize load data and quantify electrical load uncertainty to properly and effectively discharge industrial battery storage. The study employs a simulation model to set battery load setpoints for the span of the utility billing period according to the degree of risk aversion. This combination of economic analysis according to utility billing period and utilization of degree of risk aversion to make decisions on the uncertainty of the data has not before been applied to battery storage. The method resulted in an annual average reduction of peak demand by 3.8 % at the lowest amount of savings and lowest risk aversion. The highest risk aversion resulted in an annual average reduction of peak demand of 7.5 %. The maximum reduction of peak load in any month was 13.8 % in the month of December with a relatively high risk aversion. With a the highest amount risk aversion tested, the model reduced demand ten of the twelve months of the year.
| Original language | English |
|---|---|
| Article number | 105054 |
| Journal | Journal of Energy Storage |
| Volume | 53 |
| DOIs | |
| State | Published - Sep 2022 |
| Externally published | Yes |
Funding
This research is funded by the U.S. Department of Energy Office of Energy Efficiency and Renewable Energy through the Industrial Assessment Centers program under grants # DE-EE0007712 and # DE-EE0009708 and by the Utah Governor's Office of Energy Development under contract # 171881 .
Keywords
- Batteries
- Bayesian
- Energy management
- Energy storage
- Gaussian process regression
- Industrial energy