Abstract

Probabilistic seasonal rainfall forecasting is of great importance for stakeholders such as farmers and policymakers to assist in developing risk management strategies and to inform decisions. In practice, there are two kinds of commonly used tools, dynamical models and statistical models, to provide probabilistic seasonal rainfall forecasts. Dynamical models are based on physical processes but are usually expensive to operate and implement, and rely overly on initial conditions. Statistical models are easy to implement but are usually based on simple or linear relationships between observed variables. Recently, machine learning techniques have been widely used in climate projection and perform well in reproducing historical climate. For these reasons, we conducted a case study in Australia by developing a machine learning-based probabilistic seasonal rainfall forecasting model using multiple large-scale climate indices from the Pacific, Indian and Southern Oceans. Rainfall probabilities of exceeding the climatological median for upcoming seasons from 2011 to 2018 were successively forecasted using multiple climate indices of precedent six months. The performance of the model was evaluated by comparing it with an officially used forecasting model, the SOI (Southern Oscillation Index) phase model (SP) operated by Queensland government in Australia. Results indicated that the random forest (RF) model outperformed the SP model in terms of both distinct forecasts and forecasting accuracy. The RF model increased the percentages of distinct forecasts to 64.9% for spring, to 71.5% for summer, to 65.8% for autumn, and to 63.9% for winter, 1.4 ∼ 3.2 times of the values from the SP model. Forecasting accuracy was also greatly increased by 28%, 167%, 219%, and 76% for four seasons respectively, compared to the SP model. The proposed rainfall forecasting model is based on readily available data, and we believe it can be easily extended to other regions to provide seasonal rainfall outlooks.

Highlights

  • Rainfall is a natural phenomenon that results from complex global and regional atmospheric processes.Forecasting terrestrial rainfall several months in advance has significant implications for more efficient usage of water resources, e.g. agricultural planning (He et al 2014)

  • The random forest (RF) model had more distinct forecasts compared to the SOI phase (SP) model

  • The results of percentages of distinct forecasts illustrated that the RF model increased the percentage value to 64.9% for spring, to 71.5% for summer, to 65.8% for autumn, and to 63.9% for winter, which are 1.4 ~ 3.2 times as large as the SP model

Read more

Summary

Introduction

Rainfall is a natural phenomenon that results from complex global and regional atmospheric processes. Forecasting terrestrial rainfall several months in advance has significant implications for more efficient usage of water resources, e.g. agricultural planning (He et al 2014). Accurate and reliable seasonal rainfall forecasting remains a great challenge for scientific community, which limits the prospective use of natural resources to guide production activities of mankind. Australian wheat commodity contributes roughly 15% of global annual wheat trade (www.aegic.org.au). Australian agricultural sector is very important to ensure global food supply and security (Qureshi et al 2013). Highly variable interannual seasonal rainfall exerts serious adverse impacts on Australian agricultural productivity (Cobon and Toombs 2013). The drought in 2018 has resulted in yield loss of 53% in eastern Australia compared to the average of past two decades (https://www.agriculture.gov.au/abares). Researchers have developed different seasonal rainfall forecasting tools for decision-makers to deal with high rainfall variability in order to minimize losses in potentially ‘bad’ seasons and maximize profits in potentially ‘good’ seasons (Stone et al 1996, Mekanik et al 2016)

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call