Abstract
This paper presents an overview of the state of the art on the research on Dynamic Line Rating
forecasting. It is directed at researchers and decision-makers in the renewable energy and smart grids
domain, and in particular at members of both the power system and meteorological community. Its aim
is to explain the details of one aspect of the complex interconnection between the environment and
power systems.
The ampacity of a conductor is defined as the maximum constant current which will meet the design,
security and safety criteria of a particular line on which the conductor is used. Dynamic Line Rating (DLR)
is a technology used to dynamically increase the ampacity of electric overhead transmission lines. It is
based on the observation that the ampacity of an overhead line is determined by its ability to dissipate
into the environment the heat produced by Joule effect. This in turn is dependent on environmental
conditions such as the value of ambient temperature, solar radiation, and wind speed and direction.
Currently, conservative static seasonal estimations of meteorological values are used to determine
ampacity. In a DLR framework, the ampacity is estimated in real time or quasi-real time using sensors on
the line that measure conductor temperature, tension, sag or environmental parameters such as wind
speed and air temperature. Because of the conservative assumptions used to calculate static seasonal
ampacity limits and the variability of weather parameters, DLRs are considerably higher than static
seasonal ratings.
The latent transmission capacity made available by DLRs means the operation time of equipment can
be extended, especially in the current power system scenario, where power injections from Intermittent
Renewable Sources (IRS) put stress on the existing infrastructure. DLR can represent a solution for
accommodating higher renewable production whilst minimizing or postponing network reinforcements.
On the other hand, the variability of DLR with respect to static seasonal ratings makes it particularly
difficult to exploit, which explains the slow take-up rate of this technology. In order to facilitate the
integration of DLR into power system operations, research has been launched into DLR forecasting,
following a similar avenue to IRS production forecasting, i.e. based on a mix of statistical methods and meteorological forecasts. The development of reliable DLR forecasts will no doubt be seen as a necessary
step for integrating DLR into power system management and reaping the expected benefits
| Original language | English |
|---|---|
| Journal | Renewable and Sustainable Energy Reviews |
| Volume | 52 |
| Pages (from-to) | 1713-1730 |
| Number of pages | 18 |
| ISSN | 1364-0321 |
| DOIs | |
| Publication status | Published - 2015 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
-
SDG 7 Affordable and Clean Energy
Keywords
- Rating
- Overhead lines
- Forecast
- Smart grid
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