Climate Temporal Temperature Prediction via an Interpretable Kolmogorov-Arnold Neural Network

Yongxiang Lei, Bin Deng, Ziyang Wang

Research output: Contribution to journalArticlepeer-review

Abstract

Accurate temperatures forecasting relies on traditional meteorological parameters that are essential for monitoring weather informatics and guiding forecasting efforts. This study introduces a deep learning architecture for high-precision climate temperature forecasting via an improved Kolmogorov-Arnold Networks, named Temp2-KAN. Grounded in the Kolmogorov-Arnold representation theorem, Temp2-KAN explores to replace conventional linear weights in neural network with spline-parameterized univariate functions, enabling dynamic learning of nonlinear climate patterns while maintaining intrinsic interpretability. The proposed framework uniquely integrates the universal approximation capabilities of Multi-Layer Perceptrons (MLPs) with physically meaningful feature visualization through its adaptive activation functions, addressing critical limitations of black-box climate models. A temperature prediction pipeline is established that first preprocesses raw meteorological data from UK monitoring stations, then train Temp2-KAN to map historical trends to multi-horizon forecasts. Rigorous evaluations on real-world climate datasets demonstrate Temp2-KAN’s dual advantage achieving state-of-the-art prediction accuracy (reducing RMSE by 14.7% vs. MLPs) while utilizing 63% fewer trainable parameters. In addition, a systematic ablation study quantifies the sensitivity of key Temp2-KAN-specific hyperparameters (spline order k, grid resolution grid) on forecasting performance. Finally, we theoretically prove Temp2-KAN’s universal approximation capacity through function space analysis, and practically, we demonstrate its interpretability by visualizing learned activation patterns that correlate with known climate drivers. These innovations position Temp2-KAN as a paradigm-shifting tool for climate informatics, offering meteorologists both high predictive performance and mechanistic insight into temperature dynamics. The framework’s reduced hyperparameter complexity further enhance its viability for operational forecasting systems. The code is available at https://github.com/YongxiangLei/TempKAN.
Original languageEnglish
Article number2549011
Number of pages11
JournalIEEE Transactions on Instrumentation and Measurement
Volume74
Early online date8 Oct 2025
DOIs
Publication statusE-pub ahead of print - 8 Oct 2025

Bibliographical note

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Funding

This work is supported by China Scholarship Council (CSC) under Grant 202006370101. Y.X Lei (corresponding author, email: [email protected]) is with the School of Engineering, University of Warwick, Coventry, CV4 7AL, UK. B. Deng is with the School of Electric Power Engineering, South China University of Technology, Guangzhou 510640, China. Z.Y Wang is with School of Computer Science and Digital Technologies, Aston University, Birmingham, UK.

FundersFunder number
China Scholarship Council202006370101

    Keywords

    • Adaptive Activation Functions
    • Climate Temperature Prediction
    • Deep Learning
    • Kolmogorov-Arnold Network
    • Time Series Forecasting

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