过程通知神经网络:一种混合建模方法,以提高生态及其他领域神经网络的预测性能和推理

IF 7.6 1区 环境科学与生态学 Q1 ECOLOGY
Ecology Letters Pub Date : 2024-12-03 DOI:10.1111/ele.70012
Marieke Wesselkamp, Niklas Moser, Maria Kalweit, Joschka Boedecker, Carsten F. Dormann
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引用次数: 0

摘要

尽管深度学习是数据驱动模型预测的最新技术,但其在生态学中的应用目前受到两个重要的限制:(i)深度学习方法在数据丰富的情况下是强大的,但在生态学数据通常是稀疏的;(ii)深度学习模型是黑箱方法,推断它们所代表的过程是非平凡的。基于过程的(=机制)模型不受数据稀疏性或不明确过程的约束,因此对于建立我们的生态知识和转移到应用程序非常重要。在这项工作中,我们将基于过程的模型和神经网络结合成过程通知神经网络(pinn),它将过程知识直接纳入神经网络结构。在对温带森林碳通量时空预测任务的系统评估中,我们展示了五种不同类型的pinn (i)优于基于过程的模型和神经网络的能力,特别是在具有高传输任务的数据稀疏制度中;(ii)通知错误或未检测到的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Process-Informed Neural Networks: A Hybrid Modelling Approach to Improve Predictive Performance and Inference of Neural Networks in Ecology and Beyond

Process-Informed Neural Networks: A Hybrid Modelling Approach to Improve Predictive Performance and Inference of Neural Networks in Ecology and Beyond

Process-Informed Neural Networks: A Hybrid Modelling Approach to Improve Predictive Performance and Inference of Neural Networks in Ecology and Beyond

Despite deep learning being state of the art for data-driven model predictions, its application in ecology is currently subject to two important constraints: (i) deep-learning methods are powerful in data-rich regimes, but in ecology data are typically sparse; and (ii) deep-learning models are black-box methods and inferring the processes they represent are non-trivial to elicit. Process-based (= mechanistic) models are not constrained by data sparsity or unclear processes and are thus important for building up our ecological knowledge and transfer to applications. In this work, we combine process-based models and neural networks into process-informed neural networks (PINNs), which incorporate the process knowledge directly into the neural network structure. In a systematic evaluation of spatial and temporal prediction tasks for C-fluxes in temperate forests, we show the ability of five different types of PINNs (i) to outperform process-based models and neural networks, especially in data-sparse regimes with high-transfer task and (ii) to inform on mis- or undetected processes.

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来源期刊
Ecology Letters
Ecology Letters 环境科学-生态学
CiteScore
17.60
自引率
3.40%
发文量
201
审稿时长
1.8 months
期刊介绍: Ecology Letters serves as a platform for the rapid publication of innovative research in ecology. It considers manuscripts across all taxa, biomes, and geographic regions, prioritizing papers that investigate clearly stated hypotheses. The journal publishes concise papers of high originality and general interest, contributing to new developments in ecology. Purely descriptive papers and those that only confirm or extend previous results are discouraged.
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