Title
A linguistic decision tree approach to predicting storm surge
Abstract
A linguistic decision tree algorithm (LID3) is applied to the problem of predicting storm surge. Of particular interest is the prediction of large positive storm surge for flood warning purposes. The application site is the North Sea which has a well-understood physical system for the generation and progression of storm surge, which lends itself to testing of the LID3 algorithm on a real-world prediction problem. Using available water level and meteorological data, the decision tree provides predictions of surge on the Thames Estuary up to 8h in advance, accurate to the order of 0.1m, which is comparable to alternative data driven methods. However, the success of the data driven approaches applied here are all limited by the sparsity of training data for extreme events (which by their nature are rare). A major benefit of the decision tree approach is the ability to make inference from the resulting IF-THEN rules of the tree structure. In this application of the LID3 algorithm, clear and plausible model rules can be deduced from the tree structure that are consistent with our understanding of the physical drivers of storm surge at this location. The label semantic framework is interpreted probabilistically, allowing the user to employ standard statistical approaches to identify statistically significant rules. It is demonstrated that the rules can successfully discriminate between surges that may pose a threat and those that should not, based on tide gauge measurements available up to 8h prior to the surge signal reaching the Thames Estuary. This is promising for the potential application of such computationally efficient and easy to implement rule learning algorithms for the further investigation of complex environmental systems.
Year
DOI
Venue
2013
10.1016/j.fss.2012.10.001
Fuzzy Sets and Systems
Keywords
Field
DocType
alternative data,tree structure,thames estuary,lid3 algorithm,linguistic decision tree algorithm,decision tree approach,surge signal,linguistic decision tree approach,decision tree,storm surge,large positive storm surge,oceanography,twl
Flood warning,Data mining,Decision tree,Tree structure,Artificial intelligence,Data-driven,Inference,Surge,Storm surge,Linguistics,Mathematics,Decision tree learning,Machine learning
Journal
Volume
ISSN
Citations 
215,
0165-0114
2
PageRank 
References 
Authors
0.36
12
3
Name
Order
Citations
PageRank
S. Royston120.36
Jonathan Lawry217219.06
K. Horsburgh320.36