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引用次数: 0
摘要
热力学积分(TI)提供了一种严格的方法,通过对一连串内插构象集合进行积分来估算自由能差。然而,TI 计算的计算成本很高,而且由于需要采样大量具有足够构象空间重叠的中间组合,通常仅限于耦合少量自由度。在这项工作中,我们建议沿着可训练神经网络代表的炼金术路径执行 TI,我们称之为神经 TI。重要的是,我们在相互作用和非相互作用系统之间设置了一个随时间变化的哈密顿参数,并使用分数匹配目标优化其梯度。由此产生的基于能量的扩散模型能够对所有中间集合进行采样,这使我们能够从单一参考计算中执行 TI。我们将这一方法应用于伦纳德-琼斯流体,报告了过剩化学势的精确计算结果,证明了神经 TI 重现了自由能的基本变化,而无需对插值哈密顿进行模拟。
Neural Thermodynamic Integration: Free Energies from Energy-Based Diffusion Models.
Thermodynamic integration (TI) offers a rigorous method for estimating free-energy differences by integrating over a sequence of interpolating conformational ensembles. However, TI calculations are computationally expensive and typically limited to coupling a small number of degrees of freedom due to the need to sample numerous intermediate ensembles with sufficient conformational-space overlap. In this work, we propose to perform TI along an alchemical pathway represented by a trainable neural network, which we term Neural TI. Critically, we parametrize a time-dependent Hamiltonian interpolating between the interacting and noninteracting systems and optimize its gradient using a score matching objective. The ability of the resulting energy-based diffusion model to sample all intermediate ensembles allows us to perform TI from a single reference calculation. We apply our method to Lennard-Jones fluids, where we report accurate calculations of the excess chemical potential, demonstrating that Neural TI reproduces the underlying changes in free energy without the need for simulations at interpolating Hamiltonians.
期刊介绍:
ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.