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Advanced Torrential Loss Function for Precipitation Forecasting

Jaeho Choi, Hyeri Kim, Kwang-Ho Kim, Jaesung Lee

TL;DR

A simple penalty expression is introduced and the resulting QUBO formulation is relaxed into a differentiable advanced torrential loss function through an approximation process, which demonstrates its superiority through the Lipschitz constant, forecast performance evaluations, consistency experiments, and ablation studies with the operational model.

Abstract

Accurate precipitation forecasting is becoming increasingly important in the context of climate change. In response, machine learning-based approaches have recently gained attention as an emerging alternative to traditional methods such as numerical weather prediction and climate models. Nonetheless, many recent approaches still rely on off-the-shelf loss functions, and even the more advanced ones merely involve optimization processes based on the critical success index (CSI). The problem, however, is that CSI may become ineffective during extended dry periods when precipitation remains below the threshold, rendering it less than ideal as a criterion for optimization. To address this limitation, we introduce a simple penalty expression and reinterpret it as a quadratic unconstrained binary optimization (QUBO) formulation. Ultimately, the resulting QUBO formulation is relaxed into a differentiable advanced torrential (AT) loss function through an approximation process. The proposed AT loss demonstrates its superiority through the Lipschitz constant, forecast performance evaluations, consistency experiments, and ablation studies with the operational model.

Advanced Torrential Loss Function for Precipitation Forecasting

TL;DR

A simple penalty expression is introduced and the resulting QUBO formulation is relaxed into a differentiable advanced torrential loss function through an approximation process, which demonstrates its superiority through the Lipschitz constant, forecast performance evaluations, consistency experiments, and ablation studies with the operational model.

Abstract

Accurate precipitation forecasting is becoming increasingly important in the context of climate change. In response, machine learning-based approaches have recently gained attention as an emerging alternative to traditional methods such as numerical weather prediction and climate models. Nonetheless, many recent approaches still rely on off-the-shelf loss functions, and even the more advanced ones merely involve optimization processes based on the critical success index (CSI). The problem, however, is that CSI may become ineffective during extended dry periods when precipitation remains below the threshold, rendering it less than ideal as a criterion for optimization. To address this limitation, we introduce a simple penalty expression and reinterpret it as a quadratic unconstrained binary optimization (QUBO) formulation. Ultimately, the resulting QUBO formulation is relaxed into a differentiable advanced torrential (AT) loss function through an approximation process. The proposed AT loss demonstrates its superiority through the Lipschitz constant, forecast performance evaluations, consistency experiments, and ablation studies with the operational model.

Paper Structure

This paper contains 1 section, 8 equations, 4 figures, 3 tables.

Figures (4)

  • Figure 1: A case of precipitation forecast comparisons from time $\mathrm{T}$ (2024-06-26 01:50:00 UTC).
  • Figure 2: Forecasts with and without advanced torrential (AT) loss in ablation studies on light and heavy precipitation cases.
  • Figure 3: An extended case of precipitation forecast comparisons from time $\mathrm{T}$ (2024-06-26 01:50:00 UTC).
  • Figure 4: A case of precipitation forecast comparisons from time $\mathrm{T}$ (2024-06-05 17:10:00 UTC).