A simple stacked ensemble machine learning model to predict naturalized catchment hydrology and allocation status
New Zealand legislation requires that Regional Councils set limits for water resource usage to manage the effects of abstractions in over-allocated catchments. We propose a simple stacked ensemble machine learning model to predict the probable naturalized hydrology and allocation status across 317 a...
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Zusammenfassung: | New Zealand legislation requires that Regional Councils set limits for water
resource usage to manage the effects of abstractions in over-allocated
catchments. We propose a simple stacked ensemble machine learning model to
predict the probable naturalized hydrology and allocation status across 317
anthropogenically stressed gauged catchments and across 18,612 ungauged river
reaches in Otago. The training and testing of ensemble machine learning models
provides unbiased results characterized as very good (R2 > 0.8) to extremely
good (R2 > 0.9) when predicting naturalized mean annual low flow and Mean flow.
Statistical 5-fold stacking identifies varying levels of risk for managing
water-resource sustainability in over-allocated catchments; for example, at the
respective 5th, 25th, 50th, 75th, and 95th percentiles the number of
overallocated catchments are 73, 57, 44, 23, and 22. The proposed model can be
applied to inform sustainable stream management in other regional catchments
across New Zealand and worldwide. |
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DOI: | 10.48550/arxiv.2312.01649 |