With the global aim to achieve net-zero greenhouse gas emissions by 2050, efficient hydrogen storage methodologies have attracted substantial scientific focus.

According to the U.S. Department of Energy, the target for commercial hydrogen storage capacity is approximately 6 wt%, reflecting the critical need for innovation in this area. Traditional methods like gaseous and liquid hydrogen storage present not only economic and energetic inefficiencies but also significant safety concerns, particularly in vehicular applications.

The potential of solid-state hydrogen storage, specifically through metal hydrides, is seen as a promising alternative. Remarkably, certain metal hydrides reveal storage capacities such as MgH2 at 7 wt% and LiH at 12.6 wt%, offering compelling options compared to conventional techniques. The allure of metal and complex hydride-based storage solutions lies in their higher volumetric storage densities and operational efficiencies at reduced pressures. Despite these advantages, the variable storage capacities and kinetics pose substantial challenges, intricately linked to factors such as temperature and pressure.

Machine learning (ML) is gaining traction in addressing these challenges by predicting the optimal conditions for hydrogen storage in metal hydrides. A recent study delves into this technological integration, deploying various supervised ML models to forecast hydrogen storage capacities based on charging pressure and temperature parameters. The research utilizes a comprehensive database maintained by the U.S. Department of Energy, offering insights derived from intermetallic compounds (AB, A2B, AB2, and AB5), magnesium alloys, solid solutions, and complex compounds.

Regression techniques—including linear, polynomial, decision tree, and random forest—were evaluated for their accuracy in predictions. The decision tree regression model emerged as a standout with a coefficient of determination (R2) of 0.93, markedly surpassing other models. It showcased a mean square error of 0.19, highlighting its predictive prowess. Unlike boosted decision trees, which often increase complexity and demand more computational resources, decision tree regression maintains simplicity and interpretability while capturing nonlinear relationships inherent in the data.

This approach not only aids in predicting hydrogen storage capacities but also assists in identifying the most promising materials for further investigation. Among the candidates, complex hydrides and magnesium alloys demonstrate the highest potential for hydrogen uptake, offering valuable direction for future research and development.

As the industry seeks more efficient and safer hydrogen storage solutions, the integration of machine learning into material science stands as a transformative development. The predictive capabilities of these models can significantly streamline the process of identifying optimal conditions, thus conserving both time and resources. This research underscores a clear path forward for enhancing the viability of metal hydride hydrogen storage systems in energy storage and vehicular applications, ultimately contributing to the broader goal of a sustainable energy future.

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