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 physics-constrained deep learning


PINF: Continuous Normalizing Flows for Physics-Constrained Deep Learning

Liu, Feng, Wu, Faguo, Zhang, Xiao

arXiv.org Artificial Intelligence

The normalization constraint on probability density poses a significant challenge for solving the Fokker-Planck equation. Normalizing Flow, an invertible generative model leverages the change of variables formula to ensure probability density conservation and enable the learning of complex data distributions. In this paper, we introduce Physics-Informed Normalizing Flows (PINF), a novel extension of continuous normalizing flows, incorporating diffusion through the method of characteristics. Our method, which is mesh-free and causality-free, can efficiently solve high dimensional time-dependent and steady-state Fokker-Planck equations.


Label-free timing analysis of SiPM-based modularized detectors with physics-constrained deep learning

Ai, Pengcheng, Xiao, Le, Deng, Zhi, Wang, Yi, Sun, Xiangming, Huang, Guangming, Wang, Dong, Li, Yulei, Ran, Xinchi

arXiv.org Artificial Intelligence

Pulse timing is an important topic in nuclear instrumentation, with far-reaching applications from high energy physics to radiation imaging. While high-speed analog-to-digital converters become more and more developed and accessible, their potential uses and merits in nuclear detector signal processing are still uncertain, partially due to associated timing algorithms which are not fully understood and utilized. In this paper, we propose a novel method based on deep learning for timing analysis of modularized detectors without explicit needs of labelling event data. By taking advantage of the intrinsic time correlations, a label-free loss function with a specially designed regularizer is formed to supervise the training of neural networks towards a meaningful and accurate mapping function. We mathematically demonstrate the existence of the optimal function desired by the method, and give a systematic algorithm for training and calibration of the model. The proposed method is validated on two experimental datasets based on silicon photomultipliers (SiPM) as main transducers. In the toy experiment, the neural network model achieves the single-channel time resolution of 8.8 ps and exhibits robustness against concept drift in the dataset. In the electromagnetic calorimeter experiment, several neural network models (FC, CNN and LSTM) are tested to show their conformance to the underlying physical constraint and to judge their performance against traditional methods. In total, the proposed method works well in either ideal or noisy experimental condition and recovers the time information from waveform samples successfully and precisely.


Some highlights from our focus on the UN SDGs

AIHub

This month marks a year since we launched our focus series on the UN sustainable development goals (SDGs). Since then, we've published AI work pertaining to eight of the goals. We've had the pleasure of hearing from many experts with interesting stories to tell about their research. Here, we compile some of our favourite interviews and articles from the across the series. Interview with Lily Xu – applying machine learning to the prevention of illegal wildlife poaching Lily Xu tells us about her work applying machine learning and game theory to wildlife conservation.

  climate change scenario, interview, physics-constrained deep learning, (4 more...)
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