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为什么化学合成和性质优化比预期的更容易?

Why is chemical synthesis and property optimization easier than expected?

机构信息

Department of Chemistry, Princeton University, Princeton, NJ 08544, USA.

出版信息

Phys Chem Chem Phys. 2011 Jun 7;13(21):10048-70. doi: 10.1039/c1cp20353c. Epub 2011 Apr 12.

DOI:10.1039/c1cp20353c
PMID:21483988
Abstract

Identifying optimal conditions for chemical and material synthesis as well as optimizing the properties of the products is often much easier than simple reasoning would predict. The potential search space is infinite in principle and enormous in practice, yet optimal molecules, materials, and synthesis conditions for many objectives can often be found by performing a reasonable number of distinct experiments. Considering the goal of chemical synthesis or property identification as optimal control problems provides insight into this good fortune. Both of these goals may be described by a fitness function J that depends on a suitable set of variables (e.g., reactant concentrations, components of a material, processing conditions, etc.). The relationship between J and the variables specifies the fitness landscape for the target objective. Upon making simple physical assumptions, this work demonstrates that the fitness landscape for chemical optimization contains no local sub-optimal maxima that may hinder attainment of the absolute best value of J. This feature provides a basis to explain the many reported efficient optimizations of synthesis conditions and molecular or material properties. We refer to this development as OptiChem theory. The predicted characteristics of chemical fitness landscapes are assessed through a broad examination of the recent literature, which shows ample evidence of trap-free landscapes for many objectives. The fundamental and practical implications of OptiChem theory for chemistry are discussed.

摘要

确定化学和材料合成的最佳条件以及优化产品性能通常比简单推理预测的要容易得多。从原则上讲,潜在的搜索空间是无限的,而在实践中则是巨大的,但对于许多目标,通常可以通过进行合理数量的不同实验来找到最佳的分子、材料和合成条件。将化学合成或性质识别的目标视为最优控制问题,可以深入了解这种幸运。这两个目标都可以通过依赖于合适变量集的适应度函数 J 来描述(例如,反应物浓度、材料的组成部分、处理条件等)。J 与变量之间的关系指定了目标目标的适应度景观。在做出简单的物理假设后,这项工作表明,化学优化的适应度景观不包含可能阻碍达到 J 的绝对最佳值的局部次优最大值。这个特征为解释许多已报道的合成条件和分子或材料性质的高效优化提供了依据。我们将这一发展称为 OptiChem 理论。通过广泛考察最近的文献,评估了化学适应度景观的预测特征,这些文献为许多目标提供了无陷阱景观的充分证据。讨论了 OptiChem 理论对化学的基础和实际意义。

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