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The Effects of Computational Modeling Errors on the Estimation of Statistical Mechanical Variables

机译:计算建模误差对统计力学变量的估计的影响

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摘要

Computational models used in the estimation of thermodynamic quantities of large chemical systems often require approximate energy models that rely on parameterization and cancellation of errors to yield agreement with experimental measurements. In this work, we show how energy function errors propagate when computing statistical mechanics-derived thermodynamic quantities. Assuming that each microstate included in a statistical ensemble has a measurable amount of error in its calculated energy, we derive low-order expressions for the propagation of these errors in free energy, average energy, and entropy. Through gedanken experiments we show the expected behavior of these error propagation formulas on hypothetical energy surfaces. For very large microstate energy errors, these low-order formulas disagree with estimates from Monte Carlo simulations of error propagation. Hence, such simulations of error propagation may be required when using poor potential energy functions. Propagated systematic errors predicted by these methods can be removed from computed quantities, while propagated random errors yield uncertainty estimates. Importantly, we find that end-point free energy methods maximize random errors and that local sampling of potential energy wells decreases random error significantly. Hence, end-point methods should be avoided in energy computations and should be replaced by methods that incorporate local sampling. The techniques described herein will be used in future work involving the calculation of free energies of biomolecular processes, where error corrections are expected to yield improved agreement with experiment.
机译:在大型化学系统的热力学量估计中使用的计算模型通常需要近似能量模型,其依赖于参数化和取消误差来产生与实验测量的协议。在这项工作中,我们展示了计算统计机械衍生的热力学量时能量功能误差如何传播。假设统计集合中包括的每个微稳定在其计算能量中具有可测量的误差量,我们得出了在自由能,平均能量和熵中传播这些误差的低阶表达。通过Gedanken实验,我们在假设能量表面上显示了这些误差传播公式的预期行为。对于非常大的微肥能能能错误,这些低级公式不同意蒙特卡罗模拟的误差传播的估计。因此,在使用差的电位能量函数时可能需要这种误差传播的模拟。可以从计算的数量中移除这些方法预测的传播系统误差,而传播的随机误差会产生不确定性估计。重要的是,我们发现终点自由能方法最大化随机误差,并且潜在能量井的本地采样显着降低随机误差。因此,应避免在能量计算中避免终点方法,并且应通过包含本地采样的方法替换。本文所述的技术将在将来的工作中使用,涉及计算生物分子过程的自由能量,其中预期纠错能够产生改善的实验协议。

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