Inductive machine learning for improved estimation of catchment-scale snow water equivalent
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Buckingham:2015:JH,
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author = "David Buckingham and Christian Skalka and
Josh Bongard",
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title = "Inductive machine learning for improved estimation of
catchment-scale snow water equivalent",
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journal = "Journal of Hydrology",
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volume = "524",
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pages = "311--325",
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year = "2015",
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ISSN = "0022-1694",
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DOI = "doi:10.1016/j.jhydrol.2015.02.042",
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URL = "http://www.sciencedirect.com/science/article/pii/S0022169415001547",
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abstract = "Summary Infrastructure for the automatic collection of
single-point measurements of snow water equivalent
(SWE) is well-established. However, because SWE varies
significantly over space, the estimation of SWE at the
catchment scale based on a single-point measurement is
error-prone. We propose low-cost, lightweight methods
for near-real-time estimation of mean catchment-wide
SWE using existing infrastructure, wireless sensor
networks, and machine learning algorithms. Because
snowpack distribution is highly nonlinear, we focus on
Genetic Programming (GP), a nonlinear, white-box,
inductive machine learning algorithm. Because we did
not have access to near-real-time catchment-scale SWE
data, we used available data as ground truth for
machine learning in a set of experiments that are
successive approximations of our goal of catchment-wide
SWE estimation. First, we used a history of maritime
snowpack data collected by manual snow courses. Second,
we used distributed snow depth (HS) data collected
automatically by wireless sensor networks. We compared
the performance of GP against linear regression (LR),
binary regression trees (BT), and a widely used basic
method (BM) that naively assumes non-variable snowpack.
In the first experiment set, GP and LR models predicted
SWE with lower error than BM. In the second experiment
set, GP had lower error than LR, but outperformed BT
only when we applied a technique that specifically
mitigated the possibility of over-fitting.",
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keywords = "genetic algorithms, genetic programming, Snow water
equivalent, Machine learning, Wireless sensor network,
Snowpack modelling",
- }
Genetic Programming entries for
David Buckingham
Christian Skalka
Josh C Bongard
Citations