An ensemble prediction method for forecasting sap flux density and water-use in temperate trees
Mengyi Gong, Rebecca Killick, Andrew Hirons

TL;DR
This paper introduces an ensemble prediction pipeline combining sensors and statistical models to forecast daily water-use in trees, aiding irrigation management under climate stress.
Contribution
It develops a novel ensemble additive model that captures non-linear environmental relationships and tree variability for accurate water-use prediction.
Findings
Reliable daily water-use forecasts demonstrated across nine tree species.
Method effectively accounts for climate stress and tree size variability.
Framework suitable for real-time irrigation decision support.
Abstract
Efficient irrigation management is crucial to agriculture, forestry and horticulture, especially under climate change. Developments in novel sensors and Internet of Things technology provide an opportunity to carry out real-time monitoring of tree sap flux density, which, when coupled with advanced modelling techniques, enables online prediction of tree water-use suitable for irrigation planning. This manuscript proposes one such pipeline that integrates tree sap flow sensors, weather station sensors, and statistical models to predict tree daily water-use. In particular, an ensemble prediction approach based on additive models has been developed, using weather data as the main predictors of sap flux density. The method simultaneously considers the non-linear relationships and interactions between sap flux density and its environmental drivers, as well as the variability among individual…
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