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Designing mixed metal halide ammines for ammonia storage using density functional theory and genetic algorithms

机译:使用密度泛函理论和遗传算法设计用于氨储存的混合金属卤化物胺

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摘要

Metal halide ammines have great potential as a future, high-density energy carrier in vehicles. So far known materials, e.g. Mg(NH3)6Cl2 and Sr(NH3)8Cl2, are not suitable for automotive, fuel cell applications, because the release of ammonia is a multi-step reaction, requiring too much heat to be supplied, making the total efficiency lower. Here, we apply density functional theory (DFT) calculations to predict new mixed metal halide ammines with improved storage capacities and the ability to release the stored ammonia in one step, at temperatures suitable for system integration with polymer electrolyte membrane fuel cells (PEMFC). We use genetic algorithms (GAs) to search for materials containing up to three different metals (alkaline-earth, 3d and 4d) and two different halides (Cl, Br and I) – almost 27000 combinations, and have identified novel mixtures, with significantly improved storage capacities. The size of the search space and the chosen fitness function make it possible to verify that the found candidates are the best possible candidates in the search space, proving that the GA implementation is ideal for this kind of computational materials design, requiring calculations on less than two percent of the candidates to identify the global optimum.
机译:金属卤化物胺具有巨大的潜力,可作为未来的高密度能源载体。迄今为止已知的材料,例如Mg(NH3)6Cl2和Sr(NH3)8Cl2不适合用于汽车燃料电池应用,因为氨的释放是一个多步反应,需要提供过多的热量,从而降低了总效率。在这里,我们应用密度泛函理论(DFT)计算来预测新的混合金属卤化物胺,其存储容量提高,并且能够在适合与聚合物电解质膜燃料电池(PEMFC)集成的温度下一步释放出存储的氨。我们使用遗传算法(GA)搜索包含多达三种不同金属(碱土金属,3d和4d)和两种不同卤化物(Cl,Br和I)的材料-将近27000种组合,并确定了新颖的混合物,提高存储容量。搜索空间的大小和所选的适应度函数可以验证找到的候选对象是否是搜索空间中的最佳候选对象,从而证明GA实施对于这种计算材料设计是理想的,需要计算小于百分之二的候选人确定全局最优。

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