A review of radar-based nowcasting of precipitation and applicable
machine learning techniques
- URL: http://arxiv.org/abs/2005.04988v1
- Date: Mon, 11 May 2020 10:34:04 GMT
- Title: A review of radar-based nowcasting of precipitation and applicable
machine learning techniques
- Authors: Rachel Prudden, Samantha Adams, Dmitry Kangin, Niall Robinson, Suman
Ravuri, Shakir Mohamed, Alberto Arribas
- Abstract summary: A 'nowcast' is a type of weather forecast which makes predictions in the very short term, typically less than two hours.
This type of weather prediction has important applications for commercial aviation; public and outdoor events; and the construction industry.
New advances are possible with new partnerships between the environmental science and machine learning communities.
- Score: 3.0581668008670673
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: A 'nowcast' is a type of weather forecast which makes predictions in the very
short term, typically less than two hours - a period in which traditional
numerical weather prediction can be limited. This type of weather prediction
has important applications for commercial aviation; public and outdoor events;
and the construction industry, power utilities, and ground transportation
services that conduct much of their work outdoors. Importantly, one of the key
needs for nowcasting systems is in the provision of accurate warnings of
adverse weather events, such as heavy rain and flooding, for the protection of
life and property in such situations. Typical nowcasting approaches are based
on simple extrapolation models applied to observations, primarily rainfall
radar. In this paper we review existing techniques to radar-based nowcasting
from environmental sciences, as well as the statistical approaches that are
applicable from the field of machine learning. Nowcasting continues to be an
important component of operational systems and we believe new advances are
possible with new partnerships between the environmental science and machine
learning communities.
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