多场景混沌系统预测的自适应储层计算方法 / Adaptive Reservoir Computing for Multi-Scenario Chaotic System Forecasting
1️⃣ 一句话总结
本文提出了一种自适应储层计算框架,通过针对不同预测任务(如去噪、少量数据和参数泛化)分别优化回波状态网络的训练策略,在混沌系统基准测试中取得了74.91的高分,表明该方法能高效且准确地模拟多种混沌行为。
We present an adaptive reservoir computing framework for the CTF-4-Science Lorenz benchmark, which evaluates machine learning models across twelve distinct tasks spanning five qualitatively different scenarios: baseline forecasting, noisy signal reconstruction, forecasting under noise, few-shot learning, and parametric generalization. Rather than applying a uniform inference strategy, we tailor the training and prediction procedure of Echo State Networks (ESNs) to the specific demands of each evaluation scenario. Our key contributions are fourfold: (1) exact reservoir state synchronization that eliminates warmup approximation error in short-time prediction; (2) histogram-guided candidate selection that directly optimizes the long-time ergodic evaluation metric; (3) multi-seed reservoir search for few-shot regimes with severely limited training data; and (4) sequential multi-sequence training that resolves state-distribution mismatch in parametric generalization tasks. The proposed framework achieves a score of 74.91 on the public benchmark leaderboard, demonstrating that carefully adapted reservoir computing constitutes a competitive and computationally efficient approach for diverse chaotic system modeling challenges.
多场景混沌系统预测的自适应储层计算方法 / Adaptive Reservoir Computing for Multi-Scenario Chaotic System Forecasting
本文提出了一种自适应储层计算框架,通过针对不同预测任务(如去噪、少量数据和参数泛化)分别优化回波状态网络的训练策略,在混沌系统基准测试中取得了74.91的高分,表明该方法能高效且准确地模拟多种混沌行为。
源自 arXiv: 2605.28145